Fractional Integral Transforms: Theory and Applications [1 ed.] 0367543877, 9780367543877

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Table of contents :
Cover
Half Title
Title Page
Copyright Page
Dedication
Contents
Preface
CHAPTER 1: Introduction and Preliminaries
1.1. NOTATION
1.2. SPECIAL FUNCTIONS AND ORTHOGONAL POLYNOMIALS
1.2.1. The Gamma Function
1.2.2. The Beta Function
1.2.3. The Hermite Polynomials Hn(x)
1.2.4. The Laguerre Polynomials Lɑn(x)(ɑ > – 1)
1.2.5. The Jacobi Polynomials Pn(ɑ,β)(x)(ɑ, β > – 1)
1.2.6. The Bessel Functions
1.2.7. The Mittag–Leffler function
1.2.8. The Hypergeometric and q-Hypergeometric Functions
1.3. NON-ORTHOGONAL BASES AND FRAMES IN A HILBERT SPACE
1.3.1. Non-orthogonal Bases and Frames
1.3.2. Reproducing-Kernel Hilbert Spaces
1.4. SHIFT-INVARIANT SPACES
1.5. GENERALIZED FUNCTIONS AND DISTRIBUTIONS
1.5.1. Testing-Function Spaces and Their Duals
1.5.2. Spaces of Generalized Functions
1.5.3. A Special Type of Generalized Functions
1.6. SAMPLING AND THE PALEY-WIENER SPACE
1.7. POISSON SUMMATION FORMULA
1.8. UNCRTAINTY PRINCIPLE
CHAPTER 2: Integral Transformations
2.1. INTRODUCTION AND BRIEF HISTORY
2.2. WHAT IS AN INTEGRAL TRANSFORM?
2.3. EXAMPLES OF INTEGRAL TRANSFORMS
2.3.1. One-Dimensional Integral Transforms
2.3.2. Higher Dimensional Transforms
2.3.3. Special Cases of Higher Dimensional Transforms
2.4. GENERAL PROPERTIES OF INTEGRAL TRANSFORMATIONS
2.5. WHY INTEGRAL TRANSFORMS?
CHAPTER 3: Fractional Integral Transforms
3.1. INTRODUCTION
3.2. PRELUDE TO FRACTIONAL INTEGRAL TRANSFORMS
3.2.1. The Fractional Fourier Transform
3.2.2. The Fractional Hankel Transform
3.3. GENERAL CONSTRUCTION OF FRACTIONAL INTEGRAL TRANSFORMS
3.3.1. Examples of the General Construction
3.3.2. Fractional Integral Transforms Associated With the Jacobi Polynomials
3.4. FRACTIONAL DERIVATIVES AND INTEGRALS VERSUS FRACTIONAL INTEGRAL TRANSFORMS
3.5. OTHER FRACTIONAL INTEGRAL TRANSFORMS
CHAPTER 4: The Fractional Fourier Transform (FrFT)
4.1. HISTORICAL OVERVIEW
4.2. PRELIMINARIES
4.3. OPERATIONAL CALCULUS
4.3.1. Convolution Theorem
4.3.2. Poisson Summation Formula for the Fractional Fourier Transform
4.3.3. Sampling Theorem for the Fractional Fourier Transform
4.3.4. The Wigner Distribution
4.4. THE FRACTIONAL HILBERT TRANSFORM
4.5. FRACTIONAL TIME-FREQUENCY REPRESENTATIONS
4.5.1. Fractional Wigner Distributions
4.5.2. Fractional Time and Frequency Shifts
4.5.3. The Fractional Cross-Ambiguity Function
4.5.4. Fractional Windowed (Sliding-Window)-Fourier Transform
4.6. UNCERTAINTY PRINCIPLE FOR THE FRACTIONAL FOURIER TRANSFORM
4.7. FRACTIONAL FOURIER TRANSFORM OF GENERALIZED FUNCTIONS
4.7.1. The Embedding Method
4.7.2. The Space of Boehmians
4.7.3. The Algebraic Method
4.8. APPLICATIONS OF THE FRACTIONAL FOURIER TRANSFORM
CHAPTER 5: Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform
5.1. INTRODUCTION
5.2. BASIC DEFINITIONS
5.3. DISCRETE FRACTIONAL FOURIER TRANSFORM AND CONVOLUTION
5.3.1. Discrete Fractional Fourier Transform
5.3.2. Fractional Convolution
5.4. SHIFT-INVARIANCE IN THE FRFT DOMAIN
5.5. THE FRACTIONAL ZAK TRANSFORM
5.6. APPLICATIONS: FRACTIONAL DELAY FILTERING
CHAPTER 6: Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)
6.1. INTRODUCTION
6.2. FRACTIONAL FOURIER TRANSFORM IN HIGHER DIMENSIONS
6.2.1. The Direct Product Representation
6.2.2. Metaplectic Representation
6.3. THE TWO-DIMENSIONAL FRACTIONAL FOURIER TRANSFORM
6.3.1. Complex Hermite Polynomials
6.3.2. Integral Representation of the Two-Dimensional Fractional Fourier Transform
6.3.3. Inversion Formula
6.3.4. Examples
6.4. ADDITIVE PROPERTY
6.5. CONVOLUTION THEOREM
6.6. POISSON SUMMATION FORMULA
6.7. A SPACE OF BANDLIMITED SIGNALS AND ITS SAMPLING THEOREM
6.7.1. Space of Bandlimited Signals
6.7.2. Sampling Theorems
6.7.3. Examples and Sampling Points Configuration
6.8. THE COUPLED FRACTIONAL FOURIER TRANSFORM OF GENERALIZED FUNCTIONS
6.9. THE GYRATOR TRANSFORM
6.9.1. Motivation and Definitions
6.9.2. Elementary Properties of the Gyrator Transform
CHAPTER 7: The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution
7.1. INTRODUCTION
7.2. THE WIGNER DISTRIBUTION
7.3. FOUR-DIMENSIONAL ROTATIONS
7.4. THE FOUR-DIMENSIONAL WIGNER DISTRIBUTION
7.5. THE FOUR-DIMENSIONAL WIGNER DISTRIBUTION AND THE COUPLED FRACTIONAL FOURIER TRANSFORM
CHAPTER 8: Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations
8.1. INTRODUCTION AND NOTATION
8.2. PROPERTIES OF THE COUPLED FRACTIONAL FOURIER TRANSFORM
8.3. CONVOLUTION AND EXTENSION OF THE COUPLED FRACTIONAL FOURIER TRANSFORM
8.4. SHORT-TIME COUPLED FRACTIONAL FOURIER TRANSFORM
8.5. PROPERTIES OF THE SHORT-TIME COUPLED FRACTIONAL FOURIER TRANSFORM
8.6. UNCERTAINTY PRINCIPLE
CHAPTER 9: The Linear Canonical Transform (LCT)
9.1. INTRODUCTION AND HISTORICAL OVERVIEW
9.2. DEFINITIONS AND SPECIAL CASES OF THE LINEAR CANONICAL TRANSFORM
9.3. PROPERTIES OF THE LINEAR CANONICAL TRANSFORM
9.3.1. Basic Properties
9.3.2. Convolution Theorems
9.3.3. Additive Property of the Linear Canonical Transform
9.3.4. Sampling Theorem
9.3.5. Eigenfunctions and Eigenvalues
9.4. THE METAPLECTIC REPRESENTATION AND CONVOLUTION
9.5. ELEMENTARY PROPERTIES OF THE METAPLECTIC TRANSFORMATIONS
9.6. TWO-DIMENSIONAL SAMPLING THEOREM FOR THE LINEAR CANONICAL TRANSFORM
9.6.1. Two-Dimensional LCT in Polar Coordinates
9.6.2. Sampling Theorem for LCT
CHAPTER 10: The Special Affine Fourier Transform (SAFT)
10.1. INTRODUCTION AND HISTORICAL REMARKS
10.2. DEFINITIONS
10.3. THE OFFSET LINEAR CANONICAL TRANSFORM
10.4. ELEMENTARY PROPERTIES OF THE SPECIAL AFFINE FOURIER TRANSFORM
10.5. POISSON SUMMATION FORMULA FOR SAFT
10.6. CONVOLUTION AND PRODUCT THEOREMS FOR SPECIAL AFFINE FOURIER TRANSFORM
10.6.1. Modulation and Convolution Operations
10.6.2. Convolution Theorem
10.6.3. Product Theorem
10.7. SHIFT-INVARIANT SPACES FOR THE SPECIAL AFFINE FOURIER TRANSFORM
10.7.1. Preliminaries
10.7.2. Discrete Special Affine Fourier Transform
10.7.3. Riesz Basis for Shift-Invariant Spaces in the SAFT Domain
10.8. ZAK TRANSFORM ASSOCIATED WITH THE SAFT
10.9. SHANNON’S SAMPLING THEOREM AND THE SAFT: REINTERPRETATION, EXTENSION AND APPLICATIONS
Appendix
Bibliography
Index
Recommend Papers

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Fractional Integral Transforms Fractional Integral Transforms: Theory and Applications presents over twenty-five integral transforms, many of which have never before been collected in one single volume. Some transforms are classic, such as the Laplace, Fourier, etc, and some are more recent, such as the Fractional Fourier, Gyrator, Linear Canonical, Special Affine Fourier Transforms, as well as, continuous Wavelet, Ridgelet, and Shearlet transforms. The book provides an overview of the theory of fractional integral transforms with examples of such transforms, before delving deeper into the study of important fractional transforms, including the fractional Fourier transform. Applications of fractional integral transforms in signal processing and optics are highlighted. The book’s format has been designed to make it easy for the readers to extract the essential information they need to learn about the fundamental properties of each transform. Supporting proof and explanations are given throughout. Features •  Brings together integral transforms never before collected into a single volume •  A useful resource on fractional integral transforms for researchers and graduate students in mathematical analysis, applied mathematics, physics and engineering •  Written in an accessible style with detailed proofs and emphasis on providing the reader with an easy access to the essential properties of important fractional integral transforms Ahmed I. Zayed is a Professor of Mathematics at the Department of Mathematical Sciences, DePaul University, Chicago, and was the Chair of the department for 20 years, from 2001 until 2021. His research interests varied over the years starting with generalized functions and distributions to sampling theory, applied harmonic analysis, special functions and integral transforms. He has published two books and edited seven research monographs. He has written 22 book chapters, published 118 research articles, and reviewed 173 publications for the Mathematical Review and 81 for the Zentralblatt für Mathematik (zbMath). He has served on the Editorial Boards of 22 scientific research journals and has refereed over 200 research papers submitted to prestigious journals, among them are IEEE, SIAM, Amer. Math. Soc., Math Physics, and Optical Soc. Journals.

Fractional Integral Transforms Theory and Applications

Ahmed I. Zayed

DePaul University, USA

Designed cover image: Ahmed I. Zayed First edition published 2024 by CRC Press 6000 Broken Sound Parkway NW, Suite 300, Boca Raton, FL 33487-2742 and by CRC Press 4 Park Square, Milton Park, Abingdon, Oxon, OX14 4RN CRC Press is an imprint of Taylor & Francis Group, LLC © 2024 Ahmed I. Zayed Reasonable efforts have been made to publish reliable data and information, but the author and publisher cannot assume responsibility for the validity of all materials or the consequences of their use. The authors and publishers have attempted to trace the copyright holders of all material reproduced in this publication and apologize to copyright holders if permission to publish in this form has not been obtained. If any copyright material has not been acknowledged, please write and let us know so we may rectify in any future reprint. Except as permitted under U.S. Copyright Law, no part of this book may be reprinted, reproduced, transmitted, or utilized in any form by any electronic, mechanical, or other means, now known or hereafter invented, including photocopying, microfilming, and recording, or in any information storage or retrieval system, without written permission from the publishers. For permission to photocopy or use material electronically from this work, access www.copyright.com or contact the Copyright Clearance Center, Inc. (CCC), 222 Rosewood Drive, Danvers, MA 01923, 978-750-8400. For works that are not available on CCC, please contact [email protected] Trademark notice: Product or corporate names may be trademarks or registered trademarks and are used only for identification and explanation without intent to infringe. Library of Congress Cataloging-in-Publication Data

Names: Zayed, Ahmed I., author. Title: Fractional integral transforms : theory and applications / Ahmed I. Zayed, DePaul University, USA. Description: First edition. | Boca Raton, FL : C&H/CRC Press, 2024. | Includes bibliographical references and index. Identifiers: LCCN 2023046154 (print) | LCCN 2023046155 (ebook) | ISBN 9780367543877 (hardback) | ISBN 9781003089353 (paperback) | ISBN 9780367544485 (ebook) Subjects: LCSH: Integral transforms. | Transformations (Mathematics) Classification: LCC QA432 .Z39 2024 (print) | LCC QA432 (ebook) | DDC 519.2/3--dc23/eng/20231031 LC record available at https://lccn.loc.gov/2023046154 LC ebook record available at https://lccn.loc.gov/2023046155

ISBN: 978-0-367-54387-7 (hbk) ISBN: 978-0-367-54448-5 (pbk) ISBN: 978-1-003-08935-3 (ebk) DOI: 10.1201/9781003089353 Typeset in TeXGyreTermes-Regular font by KnowledgeWorks Global Ltd.

Publisher’s note: This book has been prepared from camera-ready copy provided by the authors

Dedication

To

My wife Elena and my daughter Nora for their love and support

Taylor & Francis Taylor & Francis Group

http://taylorandfrancis.com

Contents

Preface Chapter

xiii 1  Introduction and Preliminaries

1

1.1

NOTATION

1

1.2

SPECIAL FUNCTIONS AND ORTHOGONAL POLYNOMIALS

4

1.2.1

The Gamma Function

4

1.2.2

The Beta Function

5

1.2.3

The Hermite Polynomials Hn (x)

6

1.3

Laguerre Polynomials Lα n (x)(α > – 1) (α,β) Jacobi Polynomials Pn (x)(α, β > –

1.2.4

The

7

1.2.5

The

1.2.6

The Bessel Functions

1.2.7

The Mittag–Leffler function

11

1.2.8

The Hypergeometric and q-Hypergeometric Functions

12

NON-ORTHOGONAL BASES AND FRAMES IN A HILBERT SPACE

13

1.3.1

Non-orthogonal Bases and Frames

13

1.3.2

Reproducing-Kernel Hilbert Spaces

16

1)

8 9

1.4

SHIFT-INVARIANT SPACES

17

1.5

GENERALIZED FUNCTIONS AND DISTRIBUTIONS

19

1.5.1

Testing-Function Spaces and Their Duals

19

1.5.2

Spaces of Generalized Functions

20

1.5.3

A Special Type of Generalized Functions

21

1.6

SAMPLING AND THE PALEY-WIENER SPACE

22

1.7

POISSON SUMMATION FORMULA

26

1.8

UNCRTAINTY PRINCIPLE

27

Chapter

2  Integral Transformations

28

2.1

INTRODUCTION AND BRIEF HISTORY

28

2.2

WHAT IS AN INTEGRAL TRANSFORM?

29 vii

viii  Contents

2.3

EXAMPLES OF INTEGRAL TRANSFORMS

29

2.3.1

One-Dimensional Integral Transforms

29

2.3.2

Higher Dimensional Transforms

33

2.3.3

Special Cases of Higher Dimensional Transforms

34

2.4

GENERAL PROPERTIES OF INTEGRAL TRANSFORMATIONS

36

2.5

WHY INTEGRAL TRANSFORMS?

39

Chapter

3  Fractional Integral Transforms

41

3.1

INTRODUCTION

41

3.2

PRELUDE TO FRACTIONAL INTEGRAL TRANSFORMS

45

3.2.1

The Fractional Fourier Transform

45

3.2.2

The Fractional Hankel Transform

48

3.3

3.4 3.5

Chapter

GENERAL CONSTRUCTION OF FRACTIONAL INTEGRAL TRANSFORMS

50

3.3.1

Examples of the General Construction

52

3.3.2

Fractional Integral Transforms Associated With the Jacobi Polynomials

56

FRACTIONAL DERIVATIVES AND INTEGRALS VERSUS FRACTIONAL INTEGRAL TRANSFORMS

58

OTHER FRACTIONAL INTEGRAL TRANSFORMS

61

4  The Fractional Fourier Transform (FrFT)

62

4.1

HISTORICAL OVERVIEW

62

4.2

PRELIMINARIES

64

4.3

OPERATIONAL CALCULUS

68

4.3.1

Convolution Theorem

75

4.3.2

Poisson Summation Formula for the Fractional Fourier Transform 79

4.3.3

Sampling Theorem for the Fractional Fourier Transform

80

4.3.4

The Wigner Distribution

82

4.4

THE FRACTIONAL HILBERT TRANSFORM

85

4.5

FRACTIONAL TIME-FREQUENCY REPRESENTATIONS

88

4.5.1

Fractional Wigner Distributions

89

4.5.2

Fractional Time and Frequency Shifts

92

4.5.3

The Fractional Cross-Ambiguity Function

93

4.5.4

Fractional Windowed (Sliding-Window)-Fourier Transform

98

Contents  ix

4.6 4.7

4.8

Chapter

UNCERTAINTY PRINCIPLE FOR THE FRACTIONAL FOURIER TRANSFORM

99

FRACTIONAL FOURIER TRANSFORM OF GENERALIZED FUNCTIONS

100

4.7.1

The Embedding Method

101

4.7.2

The Space of Boehmians

102

4.7.3

The Algebraic Method

104

APPLICATIONS OF THE FRACTIONAL FOURIER TRANSFORM

106

5  Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform

108

5.1

INTRODUCTION

108

5.2

BASIC DEFINITIONS

108

5.3

DISCRETE FRACTIONAL FOURIER TRANSFORM AND CONVOLUTION

113

5.3.1

Discrete Fractional Fourier Transform

113

5.3.2

Fractional Convolution

114

5.4

SHIFT-INVARIANCE IN THE FRFT DOMAIN

115

5.5

THE FRACTIONAL ZAK TRANSFORM

119

5.6

APPLICATIONS: FRACTIONAL DELAY FILTERING

121

Chapter

6  Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)

122

6.1

INTRODUCTION

122

6.2

FRACTIONAL FOURIER TRANSFORM IN HIGHER DIMENSIONS

124

6.2.1

The Direct Product Representation

124

6.2.2

Metaplectic Representation

125

6.3

THE TWO-DIMENSIONAL FRACTIONAL FOURIER TRANSFORM

126

6.3.1

Complex Hermite Polynomials

126

6.3.2

Integral Representation of the Two-Dimensional Fractional Fourier Transform

128

6.3.3

Inversion Formula

129

6.3.4

Examples

131

6.4

ADDITIVE PROPERTY

132

6.5

CONVOLUTION THEOREM

137

6.6

POISSON SUMMATION FORMULA

138

x  Contents

6.7

6.8 6.9

Chapter

A SPACE OF BANDLIMITED SIGNALS AND ITS SAMPLING THEOREM

142

6.7.1

Space of Bandlimited Signals

142

6.7.2

Sampling Theorems

143

6.7.3

Examples and Sampling Points Configuration

146

THE COUPLED FRACTIONAL FOURIER TRANSFORM OF GENERALIZED FUNCTIONS

148

THE GYRATOR TRANSFORM

152

6.9.1

Motivation and Definitions

152

6.9.2

Elementary Properties of the Gyrator Transform

155

7  The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution

160

7.1

INTRODUCTION

160

7.2

THE WIGNER DISTRIBUTION

160

7.3

FOUR-DIMENSIONAL ROTATIONS

161

7.4

THE FOUR-DIMENSIONAL WIGNER DISTRIBUTION

163

7.5

THE FOUR-DIMENSIONAL WIGNER DISTRIBUTION AND THE COUPLED FRACTIONAL FOURIER TRANSFORM

165

Chapter

8  Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations

172

8.1

INTRODUCTION AND NOTATION

172

8.2

PROPERTIES OF THE COUPLED FRACTIONAL FOURIER TRANSFORM

173

CONVOLUTION AND EXTENSION OF THE COUPLED FRACTIONAL FOURIER TRANSFORM

176

8.4

SHORT-TIME COUPLED FRACTIONAL FOURIER TRANSFORM

178

8.5

PROPERTIES OF THE SHORT-TIME COUPLED FRACTIONAL FOURIER TRANSFORM

180

UNCERTAINTY PRINCIPLE

182

8.3

8.6

Chapter

9  The Linear Canonical Transform (LCT)

184

9.1

INTRODUCTION AND HISTORICAL OVERVIEW

184

9.2

DEFINITIONS AND SPECIAL CASES OF THE LINEAR CANONICAL TRANSFORM

184

Contents  xi

9.3

PROPERTIES OF THE LINEAR CANONICAL TRANSFORM

187

9.3.1

Basic Properties

187

9.3.2

Convolution Theorems

190

9.3.3

Additive Property of the Linear Canonical Transform

191

9.3.4

Sampling Theorem

193

9.3.5

Eigenfunctions and Eigenvalues

195

9.4

THE METAPLECTIC REPRESENTATION AND CONVOLUTION

197

9.5

ELEMENTARY PROPERTIES OF THE METAPLECTIC TRANSFORMATIONS

199

TWO-DIMENSIONAL SAMPLING THEOREM FOR THE LINEAR CANONICAL TRANSFORM

201

9.6.1

Two-Dimensional LCT in Polar Coordinates

201

9.6.2

Sampling Theorem for LCT

203

Chapter 10  The Special Affine Fourier Transform (SAFT)

209

9.6

10.1 INTRODUCTION AND HISTORICAL REMARKS

209

10.2 DEFINITIONS

209

10.3 THE OFFSET LINEAR CANONICAL TRANSFORM

210

10.4 ELEMENTARY PROPERTIES OF THE SPECIAL AFFINE FOURIER TRANSFORM

213

10.5 POISSON SUMMATION FORMULA FOR SAFT

215

10.6 CONVOLUTION AND PRODUCT THEOREMS FOR SPECIAL AFFINE FOURIER TRANSFORM

218

10.6.1

Modulation and Convolution Operations

218

10.6.2

Convolution Theorem

218

10.6.3

Product Theorem

220

10.7 SHIFT-INVARIANT SPACES FOR THE SPECIAL AFFINE FOURIER TRANSFORM

221

10.7.1

Preliminaries

221

10.7.2

Discrete Special Affine Fourier Transform

222

10.7.3

Riesz Basis for Shift-Invariant Spaces in the SAFT Domain

223

10.8 ZAK TRANSFORM ASSOCIATED WITH THE SAFT

225

10.9 SHANNON’S SAMPLING THEOREM AND THE SAFT: REINTERPRETATION, EXTENSION AND APPLICATIONS

228

Appendix

233

Bibliography

235

Index

261

Taylor & Francis Taylor & Francis Group

http://taylorandfrancis.com

Preface Integral transforms have existed for two centuries and their historical roots go back to the work of the French mathematicians Pierre Simon Laplace and Joseph Fourier whose work led to the formation of the two seminal integral transforms that were later named after them: the Laplace and Fourier transforms. Integral transforms have proved to be a useful tool in solving many problems in mathematics, applied mathematics, physics and engineering. Hundreds, if not thousands, of articles and books have been written about them. Although the subject of integral transforms is considered classic with a long history, it has not ceased to grow. Many novel transforms with a plethora of practical applications have been introduced in the last three decades, such as the linear canonical transforms, wavelets and shearlets transforms. In 1980 an off-shoot of the subject of integral transforms started to emerge in the work of Victor Namias who introduced a new integral transform which he called fractional order Fourier transform and which he used to solve problems in quantum mechanics. Namias’s idea of a fractional Fourier transform had appeared implicitly in earlier work by J. Wiener in 1927 and E. U. Condon in 1937, but it was Namias who developed it explicitly and was the first to use the phrase fractional transform. At the beginning, Namias’s work received little attention and the one that was received was mainly from mathematicians, such as A. C. McBride, F. H. Kerr and D. Mustard. Almost a decade later, at the beginning of the 1990s, the subject started to take shape and receive more attention when engineers and physicists found numerous practical applications of Namias’s transform in signal processing and optics. Some of the pioneers in this field were L. B. Almeida, M. Kutay, A. Lohmann, D. Mendlovic, H. M. Ozaktas and Z. Zalevsky, just to mention a few. After the publication of his paper on the fractional Fourier transform, Namias extended his work to another integral transform, namely the Hankel transform, and he called the new transform fractional Hankel transform. Namias’s work opened a window on new possibilities of extending the fractional transform idea to other integral transforms. Currently there is a slew of fractional integral transforms, such as fractional Hilbert, fractional Stockwell, fractional wavelets, fractional Radon transforms, etc. It is no exaggeration to say that nowadays, practically every integral transform has a fractional version. However, so far most of them have not shown to render any useful practical applications to compete with the fractional Fourier transform. The notion of fractions existed in mathematics for thousands of years as part of the counting systems used by the Ancient Egyptians, Babylonians and Indian Mayans. The term fractional appeared in classical mathematical analysis in the work of Riemann on fractional derivatives and fractional integrals. There is a connection between fractional derivatives

xiii

xiv  Preface

and fractional integrals on the one hand and fractional integral transforms on the other hand, which will be discussed in Chapter 3 of this volume. The fractional Fourier transform has distinguished itself among other fractional integral transforms of being a special case of a more general class of integral transforms that arose in quantum mechanics, time-frequency representations and abstract harmonic analysis. The fractional Fourier transform is a special case of a class of integral transforms known as the Linear Canonical Transforms which may be viewed as a group of unitary transformations acting on the Hilbert space of all square-integrable functions on the real line L2 (R). Their action on that Hilbert space is represented by the Metaplectic group. The idea of this book came to me when some of my colleagues and students, who were interested in learning the rudiments of the subject, asked me for references. I then realized that although there are many books in the literature on integral transforms, there is a very limited number on fractional integral transforms. The first and most noticeable one is the book by Ozaktas, Zalevsky and Kutay, The fractional Fourier transform with Applications in Optics and Signal Processing, (2001) which is more than twenty years old. Since the publication of that book, new results and advances in the field have taken place which deserved to be compiled in a publication. Another point of departure from the former book is that the former focused mainly on the fractional Fourier transform and its applications, while this one deals with the general topic of fractional integral transforms and then delves into the study of important fractional transforms, including the fractional Fourier transform. The book is designed to give the reader an overview of the subject from its infancy until the present state of affairs. It is written at a level that a graduate student in mathematics will find accessible. The book is not meant to be a textbook with exercises and class activities, nevertheless, I provided detailed proofs of results that a student can easily follow. I envisioned this book to be a supplementary reference for a course on integral transforms. The first five chapters should also be accessible to scientists with some basic knowledge of mathematical analysis and could be used as an introductory course on fractional integral transforms, in general, and on the fractional Fourier transform, in particular. I hope this book will be useful to scientists in different fields. In fact, more than fifty percent of the references cited in the bibliography were written by physicists and engineers and are published in engineering and optics research journals. The book is organized as follows: To make the book self-sufficient, I included in Chapter 1 the preliminary material and basic results on special functions, functional analysis and harmonic analysis that will be used later. Some special topics, like sampling theorems, Poisson summation formula, generalized functions and distributions and uncertainty principle, which are discussed in later chapters, were also included in Chapter 1 but without proofs. However, references where the interested reader can find the proofs are given. Chapter 2 is an introduction to the general topic of integral transforms and its history. It includes a list of more than 25 integral transforms, some are more than hundred years old, like the Laplace transform, and some are recent, like the Gyrator transform. The general concept of fractional integral transforms is presented in Chapter 3 with a number of examples of such transforms, such as fractional Fourier, fractional Hankel and fractional Jacobi transforms. The connection between fractional derivatives and fractional integrals on the one hand and fractional integral transforms on the other hand is discussed in this chapter.

Preface  xv

Chapter 4 focuses on the fractional Fourier transform and its basic properties. It may be viewed as a tour of the fractional Fourier transform’s journey; it begins by a historical overview of the development of the transform, then proceeds to unwrap some of its unique properties and finally ends with one of its basic applications in optics. This is the longest chapter in the book because in addition to the discussion of the basic properties of the transform, it explores how the fractional Fourier, fractional Hilbert, fractional Wigner and fractional ambiguity transforms intertwine. Chapter 5 discusses shift-invariant and sampling spaces in the setting of the fractional Fourier transform. This discussion leads to the introduction of a discrete fractional Fourier transform, fractional convolution structure and fractional Zak transform. Chapter 6 introduces the coupled fractional Fourier transform which is a novel extension of the fractional Fourier transform to two dimensions. The chapter discusses the unique properties of this transform, in particular, its sampling theorem and the associated sampling points configurations. The chapter is concluded by a discussion of a relatively new integral transform that is intimately related to the two-dimensional fractional Fourier transform, and which is called the Gyrator transform. The Gyrator transform, which was also discovered in optics in the year 2000, is obtained from the two-dimensional fractional Fourier by coordinate rotations. The relationship between the two-dimensional coupled fractional Fourier transform and the four-dimensional Wigner distribution is presented in Chapter 7. This relationship inevitably leads to the study of four-dimensional rotations which is not as well known as three-dimensional rotations. To make the material accessible to junior researchers, a detailed discussion of four-dimensional rotations is presented. Chapter 8 contains more properties of the coupled fractional Fourier transform, such as its extension, convolution and uncertainty relations. It also introduces the short-time coupled fractional Fourier transform and its basic properties. Chapter 9 is an introduction to the class of linear canonical transforms which contains the fractional Fourier transform as a special case. Several properties of the linear canonical transform, such as its convolution, sampling theorems and metaplectic group representation are presented. The metaplectic representation of the linear canonical transform facilitates the extension of the transform to higher dimensions and makes the derivation of its properties managable. Chapter 10, which is the last chapter of the book, introduces the Special Affine Fourier Transform and another variant of it, known as the offset linear canonical transform. The special affine Fourier transform is a generalization of the linear canonical transform and is the most general inhomogeneous, lossless linear mapping in phase space. Elementary properties, Poisson summation formula, Zak transform and sampling theorems for the special affine Fourier transform are presented in this chapter. The book ends with a bibliography that contains a wholesome list of references. Although there are thousands of articles written on these topics, it was impractical to include most of them. I have limited my choices to those references that are closely related to the topics presented in this volume. I apologize to the authors whose work I have missed. The majority of the references are published in engineering and optics research journals which attests to the fact that the subject of fractional integral transforms is not only relevant to mathematicians, but to engineers and physicists as well.

xvi  Preface

I strived to make some chapters self-contained. To this end, I had to restate results presented in previous chapters and provide proofs with significant level of detail. This might have come at the expense of brevity and elegancy. To appreciate the development of any mathematical topic, one ought to know its history and how it started. To help the reader achieve that, I have included a brief historical introduction to each of the main integral transforms presented in this volume. Inspite of concerted efforts of everyone involved in this book project, one may expect to find some typographic errors which I hope will be few and obvious and will not cause any distraction. Some of the work presented in this volume is a result of the author’s own research and publications, either individually or in collaboration over the years with several colleagues, of whom the most recent are Professors Ayush Bhandari, Firdous Shah, Azhar Tantary and Rajakumar Roopkumar. My collaboration with Professor Bhandari began when he was an undergraduate student at Nanyang Technological University, Singapore. But ironically, I have never met either Professors Shah, Tantary or Roopkumar, but thanks to the internet that made our collaboration possible. This project took more time than I anticipated because most of the work done on it took place while I was chairing a large mathematics department with more than 70 full-time and part-time instructors, having other university administrative duties and dealing with restricted working conditions under Covid-19 lockdown. I take this opportunity to acknowledge the encouragement and guidance I have received over the years from Professors Paul Butzer, Johen Benedetto and Gilbert Walter. Finally, I would like to express my appreciation to the staff of CRC Press, Taylor & Francis Group, in particular, to Mansi Kabra and Kumar Shashi for their support throughout the production process.

CHAPTER

1

Introduction and Preliminaries

In this preliminary chapter, we introduce some of the definitions and notation that will be used throughout the book, and state some results that will be recalled later on in our presentation.

1.1

NOTATION

The notation used in this book is standard, yet it may differ√ from that used in physics and engineering literature. For example, the imaginary number, −1, is denoted by i, while in most engineering literature, it is denoted by j. We use C and R to denote the sets of complex and real numbers, respectively, Z to denote the integers and N to denote the set of natural numbers. The real and complex n-dimensional Euclidean spaces are denoted by Rn and Cn ; that is, x ∈ Rn (Cn ) means x = (x1 , . . . , xn ) , xi ∈ R (C) , i = 1, . . . , n. The conjugate, x − iy, of a complex number z = x + iy is denoted by z¯, the real and imaginary parts of z are denoted by Re z and Im z, respectively. The absolute value and the argument of z will be denoted by |z| , arg z, respectively, where q √ |z| = z z¯ = x2 + y 2 and arg z = tan−1 (y/x). Sometimes, we may use the vector notation x = (x1 , . . . , xn ) to emphasize that x has n components. The inner product of x, y ∈ Cn , is defined as x·y =

n X

xk y k ,

k=1

and hence the norm of a vector x is given by v u n uX kxk = t |xk |2 . k=1

The transpose of an m × n, matrix M is an n × m matrix which will be denoted by M T and the inverse of an n × n matrix will be denoted by M −1 if it exists. DOI: 10.1201/9781003089353-1

1

2  Fractional Integral Transforms: Theory and Applications

The differential operator Dα =

∂ |a| αn 1 ∂xα 1 · · · ∂xn

has the usual meaning: α = (α1 , . . . , αn ) is a multi-index with αi (i = 1, . . . , n) being a P non-negative integer and | α |= ni=1 αi . For n = 1, the kth derivative of a function f (x) is denoted by Dk f (x) or f (k) (x), where d D = dx . The support of a function f (x) defined on some open set I in Rn , denoted by supp f, is the closure with respect to I of the set of points where f (x) , 0. The characteristic function of a set A is defined as (

χA (x) =

1 if x ∈ A 0 if x < A.

The Heaviside function, H(x), is defined as H(x) = χ[0,∞) (x) . For a real number x , 0, we define the sign of x, denoted by sgn x, as x/|x|, or equivalently (

sgn x =

1 if x > 0, −1 if x < 0.

The translation, modulation, and dilation operators are defined by Ta f (x) = f (x − a), Ea f (x) = eiax f (x), 1 Da f (x) = p f (x/a), a , 0, |a| respectively. The supremum, infimum, maximum and minimum are abbreviated as sup, inf, max and min, respectively. The Kronecker delta is defined as (

δm,n =

0 1

if m , n if m = n.

Let I denote an open set in Rn (n ≥ 1) and dµ be an arbitrary Borel measure on I. We define Lp (I, µ), for 0 < p < ∞, as the set of all measurable functions f on I such that |f |p is integrable on I with respect to dµ, i.e., 

Lp (I, µ) = f : f is measurable on I and When I = mean

Rn

Z I

and dµ(x) = dx (the Lebesgue measure), the integral Z∞ −∞

···

Z∞

−∞



|f (x)|p dµ(x) < ∞ .

f (x1 , . . . , xn ) dx1 · · · dxn .

R

I f (x) dx

will

Introduction and Preliminaries  3

For p = ∞, we define L∞ (I, µ) as the set of all functions that are essentially bounded on I with respect to µ. A function f is said to be essentially bounded on I with respect to µ if there exists a positive real number M such that µ {x ∈ I : |f (x)| > M } = 0. In this case, we define the essential supremum, abbreviated ess. sup, by ess. sup f = inf {M : µ{x ∈ I : |f (x)| > M } = 0} . If ess. sup f = M, then |f (x)| ≤ M for almost all x ∈ I; the exception is a subset E of I with µ(E) = 0. We define Lploc (I, µ)(0 < p < ∞) as Lploc (I, µ) = {f : f is measurable on I and

Z

|f (x)|p dµ(x) < ∞,

J

for every open set J whose closure J¯ is a compact subset of I}. For p ≥ 1 and positive W (x), Lp (I, W ) is a Banach space with norm

kf kLp (I,W ) =

!1/p

  

|f (x)|p W (x) dx

R I

 

ess.supx∈I |f (x)|,

, 1≤p 0.

0

Hence,

Z1

Γ(z) =

Z∞

z−1 −t

t 0

where

Z1

P (z) = 0

1

z−1 −t

t

tz−1 e−t dt = P (z) + F (z),

e dt +

Z1

e dt =

z−1

t

∞ X (−t)n n=0

0

n!

!

dt =

∞ X (−1)n n=0

n!(z + n)

,

R and F (z) = 1∞ tz−1 e−t dt is an entire function.

Therefore, the Γ-function is a meromorphic function with simple poles at z = −n, n = 0, 1, 2, . . . . The residue at the pole z = −n is (−1)n /n!. It follows from the definition of the Γ-function that Γ(1) = 1 and 1 Γ(z) = z

Z∞ 0

1 tz e−t dt = Γ(z + 1) z

or Γ(z + 1) = zΓ(z). Thus, if n is a positive integer, we have Γ(z + n) = z(z + 1)(z + 2) · · · (z + n − 1)Γ(z),

(1.1)

Introduction and Preliminaries  5

which implies that Γ(n + 1) = 1.2.3. · · · n = n!. Since 1/Γ(z) is an entire function, it can be written in terms of the canonical product of its zeros (the poles of Γ) as suggested by the Hadamard factorization theorem for entire functions. In fact, we have ∞ Y 1 = zeγz Γ(z) n=1



z −z/n e , n 

1+



(1.2)

where γ is Euler’s constant defined by n X 1

γ = lim

n→∞

k=1

k

!

− ln n = 0.577215 · · · .

(1.3)

From (1.2), it follows easily that ∞ Y 1 z2 = −z 2 1− 2 Γ(z)Γ(−z) n n=1

or Γ (z) Γ (−z) = −

π z sin(πz)

Γ(z)Γ(1 − z) =

π sin(πz)

which gives

!

= −π −1 z sin(πz),

(z non-integer),

(z non-integer).

Upon replacing z by z + 1/2, we obtain 

Γ in particular, Γ

  1 2

=



1 1 +z Γ − z = π sec(πz), 2 2  



π.

1.2.2 The Beta Function

The Beta function B(x, y) is defined as Z1

B(x, y) =

tx−1 (1 − t)y−1 dt; Re x, Re y > 0.

0

In the above integral, if we make the change of variable, t = 1 − u, we find that B(x, y) = B(y, x), and if we set t = u/(u + 1), we obtain Z∞

B(x, y) = 0

ux−1 du; (1 + u)x+y

Re x, Re y > 0.

(1.4)

6  Fractional Integral Transforms: Theory and Applications

By multiplying the relation Z∞

tx+y−1 e−(1+v)t dt =

0

Γ(x + y) , (1 + v)x+y

by v x−1 , integrating with respect to v between 0 and ∞, and interchanging the integrals, we obtain the main relation between the gamma and the beta functions B(x, y) =

Γ(x)Γ(y) . Γ(x + y)

1.2.3 The Hermite Polynomials Hn (x)

1. Differential Equation: The Hermite polynomials Hn of degree n satisfy the differential equation y 00 − 2xy 0 + 2ny = 0. 2. Orthogonality Relation: The Hermite polynomials are orthogonal on the real line 2 with respect to the weight function e−x Z ∞ −∞

2

e−x Hn (x)Hm (x)dx =

√ n π2 n! δm,n .

3. Recurrence Relations: (a) Three-Term Recurrence Relation: Hn (x) = 2xHn−1 (x) − 2(n − 1)Hn−2 (x),

n = 2, 3, 4, . . .

H0 (x) = 1 and H1 (x) = 2x. Moreover, Hn (−x) = (−1)n Hn (x). (b) Recurrence Relation for the Derivative: d {Hn (x)} = 2nHn−1 (x), dx and

d {Hn (x)} = 2xHn (x) − Hn+1 (x). dx

4. Generating Function: ∞ X Hn (x) n w = exp(2xw − w2 ). n=0

n!

5. Mehler’s Formula [175, p. 61]: A generating function for the product of Hermite polynomials is given by the formula ∞ X Hn (x)Hn (t) n 1 z = √ n n=0

2 n!

!

2xtz − (x2 + y 2 )z 2 exp . 1 − z2 1 − z2

Introduction and Preliminaries  7

6. Rodrigues’ Formula: Hn (x) = (−1)n ex

2

dn  −x2  e . dxn

7. The Hermite Functions: The Hermite functions are defined as 2 /2

φn (x) = e−x

Hn (x)

and they are the eigenfunctions of the Sturm-Liouville problem y 00 − x2 y = λy,

−∞ < x < ∞,

y(−∞) and y(∞) are finite, with −(2n + 1) being the corresponding eigenvalues. One of the most important properties of the Hermite functions for our forthcoming discussion is that they are also eigenfunctions of the Fourier transformation F with exp(in π/2) being the corresponding eigenvalues, i.e., F[φn (x)](w) = einπ/2 φn (w). 8. Orthogonality Relation: The Hermite functions are orthogonal in the sense Z ∞ −∞

φn (x)φm (x)dx =

√ n π2 n! δm,n .

Moreover, they form an orthogonal basis of L2 (R); hence, if f ∈ L2 (R), then the expansion ∞ X

f (x) =

an φn (x),

(1.5)

n=0

is valid in the sense of L2 (R), where an =

1 √ 2n n! π

Z ∞ −∞

f (x)φn (x)dx.

(1.6)

1.2.4 The Laguerre Polynomials Lα n (x)(α > – 1)

1. Differential Equation: The generalized Laguerre polynomials are solutions to the differential equation xy 00 + (α + 1 − x)y 0 + ny = 0. 2. Orthogonality Relation: The generalized Laguerre polynomials are orthogonal on the half line [0, ∞) with respect to the weight function xα e−x , i.e., Z ∞ 0

α e−x xα Lα n (x)Lm (x)dx =

Γ(n + α + 1) δm,n . Γ(n + 1)

8  Fractional Integral Transforms: Theory and Applications

3. Generating Functions: We have ∞ X

n −α−1 −xw/(1−w) Lα e , n (x)w = (1 − w)

n=0

and

∞ X

 √  Lα n (x) wn = ew (xw)−α/2 Jα 2 xw , Γ(n + α + 1) n=0

where Jν is the Bessel function. 4. Generating Function for the Product [293, 5.1.15]: ∞ X

n!einα Lνn (x2 )Lνn (y 2 ) Γ(ν + n + 1) n=0 #

"

=

xy eiα (x2 + y 2 ) (xy)−ν e(iν/2)(π/2−α) Jν exp , − 1 − eiα 1 − eiα sin(α/2) 



5. Rodrigues’ Formula: Lα n (x) = (α,β )

1.2.5 The Jacobi Polynomials Pn

x−α ex dn  −x n+α  e x . n! dxn

(x)(α, β > – 1)

1. Differential Equation: The Jacobi polynomials are solutions to the differential equation (1 − x2 )y 00 + [β − α − (α + β + 2)x] y 0 + n(n + α + β + 1)y = 0. 2. Orthogonality Relation: They are orthogonal on [−1, 1] with respect to the weight function (1 − x)α (1 + x)β , Z 1 −1

(α,β) (1 − x)α (1 + x)β Pn(α,β) (x) Pm (x) dx =

2α+β+1 Γ(n + α + 1)Γ(n + β + 1) δm,n. 2n + α + β + 1 Γ(n + 1)Γ(n + α + β + 1) 3. Generating Function: ∞ X

h i−α p 2α+β P (x)wn = √ 1 − w + 1 − 2xw + w2 1 − 2xw + w2 n=0 h

× 1+w+

p

1 − 2xw + w2

i−β

,

for w sufficiently small. 4. Rodrigues’ Formula: Pn(α,β) (x) =

n h i (−1)n −α −β d n+α n+β (1 − x) (1 + x) (1 − x) (1 + x) . 2n n! dxn

Introduction and Preliminaries  9

1.2.6 The Bessel Functions

Using Frobenius’ method to solve the differential equation z 2 y 00 + zy 0 + (z 2 − ν 2 )y = 0,

ν∈R

in a neighborhood of the regular singularity z = 0, leads to the solution Jν (z) =

∞ X

(−1)k z ν+2k , 2ν+2k k!Γ(ν + k + 1) k=0

and J−ν . 1. Definition: The first solution Jν (z) is called the Bessel function of the first kind and order ν. If ν is not an integer, Jν and J−ν are independent. If ν is a negative integer, the factor 1/Γ(ν + k + 1) must be replaced by 0 whenever ν + α + 1 ≤ 0. For all values of ν, z −ν Jν (z) is an even entire function in z. It is easy to see that r

J− 1 (z) = 2

2 cos z πz

r

and J 1 (z) = 2

2 sin z. πz

Other types of Bessel functions are: Yν (z) =

1 {Jν (z) cos νπ − J−ν (z)} , (sin νπ)

and Kν (z) = where Iν (z) =

ν , −1, −2, . . . ,

π {I−ν (z) − Iν (z)} , (2 sin πν)

∞ X

(z/2)ν+2k , Γ(k + 1)Γ(k + ν + 1) k=0

|z|, ∞.

The function Yν is called the Bessel function of the second kind or Neumann’s function, Kν is the modified Bessel function of the third kind or MacDonald’s function, and Iν is the modified Bessel function of the first kind. 2. Differential Equation: The functions y1 = xa Jν (bxc ) and y2 = xa Yν (bxc ) are solutions of the differential equation !

2a − 1 0 a2 − ν 2 c2 y 00 − ( )y + b2 c2 x2c−2 + y = 0 , bxc > 0. x x2 3. Differentiation and Recurrence Relations: We list some differentiation formulas and recurrence relations for the Bessel function

10  Fractional Integral Transforms: Theory and Applications

of the first kind; similar formulas and relations for the other types of the Bessel functions can be obtained:

Moreover, we have

d ν [z Jν (z)] = z ν Jν−1 (z), dz

(1.7)

i d h −ν z Jν (z) = −z −ν Jν+1 (z). dz

(1.8)

2Jν0 (z) = Jν−1 (z) − Jν+1 (z),

(1.9)

and

2 sin νπ , (ν is non-integer). πz

0 Jν0 (z)J−ν (z) − J−ν (z)Jν (z) =

The three-term recurrence relation is 2νJν (z) = z [Jν−1 (z) + Jν+1 (z)] .

(1.10)

4. Eigenfunctions: The eigenfunctions of the Sturm-Liouville problem ν 2 − 14 y − x2

!

00

0 ≤ x ≤ b,

y = λy,

1 ν>− , 2

y(0) = 0 = y(b), √ √ √ are φn (x) = xJν ( λn x) and the eigenvalues, λn , are the zeros of Jν (b λ). The orthogonality relation of the eigenfunctions takes the form Z b

xJν

p



λm x Jν

p



λn x dx = 0 if m , n.

0

5. Integral Representations (Poisson’s Integral Representation): Jν (z) =





Z 1

√ πΓ ν + 12 



(1 − t2 )ν−1/2 eizt dt

−1

zν = ν−1 √ 2 πΓ(ν + 1/2)

Z π/2

cos(z sin θ)(cos θ)2ν dθ,

0

(1.11)

for Re v > − 21 . Moreover, we have 1 Jn (z) = 2π

Z α+2π

ei(nθ−z sin θ) dθ ,

α

[307, p. 20]

(1.12)

and √ Z π(z/2)µ ∞ −z cosh t Kµ (z) = e (sinh t)2µ dt. Γ(µ + 1/2) 0

[307, p. 172]

(1.13)

Introduction and Preliminaries  11

6. Generating Function: A generating function of the Bessel functions of the first kind and integer order is given by    ∞ X z 1 k Jk (z)t = exp t− . 2 t k=−∞ 7. Results Related to the Zeros of the Bessel Function: The zeros of the Bessel function Jν (z) (ν real), i.e., the solutions of the equation Jν (z) = 0, are all simple, except possibly the zero at the origin. If ν is an integer n, Jn has no complex zeros and has an infinite number of real zeros which are symmetrically located about the origin. The zero at the origin is of order n. Since z −ν Jν (z) is an entire function in z, it can be expressed in terms of the canonical product of its zeros αν,k as suggested by the Hadamard factorization theorem for entire functions. In fact, we have ∞ Y zν z2 Jν (z) = ν 1− 2 2 Γ(ν + 1) k=1 αν,k

!

.

8. Orthogonality Relation: A very useful property of the Bessel functions is the orthogonality relation Z b

xJν (αν,m x/b)Jν (αν,n x/b)dx = 0

b2 [Jν+1 (αν,n )]2 δm,n ; m, n = 1, 2, 3, . . . , 2 (1.14)

where b > 0, ν > −1. 1.2.7 The Mittag–Leffler function

The Mittag-Leffler function Ea (z) is defined as Ea (z) =

∞ X

zk , Γ(ak + 1) k=0

a > 0.

It is an entire function of order 1/a that reduces to ez when a = 1. In fact, E1 (z) = ez ,

E2 (z 2 ) = cosh z.

The generalized Mittag–Leffler function Ea,b (z) is defined as Ea,b (z) =

∞ X

zk , Γ(ak + b) k=0

a, b > 0 ,

and it reduces to the Mittag–Leffler function when b = 1. It can also be defined by the integral Z a−b t 1 t e Ea,b (z) = dt , 2πi c ta − z

12  Fractional Integral Transforms: Theory and Applications

where the integration path, c, is a loop that starts and ends at −∞ and encircles the disc |t| ≤ |z|1/a in the positive sense. Moreover, it satisfies the relations Z ∞ 0

and



d dz

m

e−t tb−1 Ea,b (ta z) dt =

1 , 1−z

[z b−1 Ea,b (z a )] = z b−m−1 Ea,b−m (z a ).

1.2.8 The Hypergeometric and q -Hypergeometric Functions

Recall the Pochhammer symbol (a)0 = 1, (a)n = a(a + 1)(a + 2) · · · (a + n − 1), n = 1, 2, 3, . . . . Or (a)n =

Γ(a + n) , n = 0, 1, 2, . . . . Γ(a)

The hypergeometric function [107] p Fq (ar ; bt ; z) =

∞ X (a1 )n · · · (ap )n z n

(b1 )n · · · (bq )n n!

n=0

,

which converges for all z if p ≤ q, diverges (except for z = 0) if p > q + 1, and converges for |z| < 1 if p = q + 1. We use the notation (a; q)0 = 1,

(a; q)n =

n Y

(1 − aq k−1 ), |q| < 1, n = 1, 2, . . . , ∞,

k=1

(a1 , . . . , am ; q)n =

m Y

(al ; q)n ,

l=1

(a; q)α = Note that

(a; q)∞ . (aq α , q)∞

(q a ; q)n = (a)n = a(a + 1) · · · (a + n − 1); q→1− (1 − q)n lim

hence for a = 1 the limit is n!. The symbol r+1 φr stands for the q-hypergeometric function r+1 φr (a1 , . . . , ar+1 ; b1 , . . . , br ; q, z) =

∞ X (a1 , . . . , ar+1 ; q)n n z . n=0

(q, b1 , . . . , br ; q)n

Introduction and Preliminaries  13

1.3 1.3.1

NON-ORTHOGONAL BASES AND FRAMES IN A HILBERT SPACE Non-orthogonal Bases and Frames

In this section, we assume that the reader is familiar with the rudiments of the theory of Hilbert spaces. By a non-orthogonal expansion in a Hilbert space H we mean a series P expansion of any x ∈ H in the form x = n an xn , where {xn } is a complete set of vectors that is not necessarily orthogonal. Although non-orthogonal expansions are less convenient to work with than orthogonal expansions, they provide a more general frame work; see [31, 67, 73, 74, 127, 357]. This section is devoted to the study of such expansions. p Let H be a Hilbert space with inner product h·, ·i and norm kxk = hx, xi, for x ∈ H. Definition 1. A sequence of vectors {xn }∞ n=1 in a Hilbert space H is said to be a basis (Schauder basis) of H if to each x ∈ H, there corresponds a unique sequence of scalars {cn }∞ n=1 such that x=

∞ X

cn xn ,

(1.15)

n=1

where the convergence is understood to be in the norm, that is

N

X

cn xn → 0 as N → ∞.

x −

n=1

{xn }∞ n=1

Recall that a basis of H is said to be orthogonal if hxm , xn i = 0, whenever m , n, and an orthogonal basis is said to be orthonormal if, in addition, hxn , xn i = 1 for all n. An orthogonal basis is complete in the sense that if hx, xn i = 0 for all n, then x = 0. Every orthogonal set in a separable Hilbert space is countable and every separable Hilbert space has an orthonormal basis. For orthonormal basis, the expansion (1.15) is given by x=

∞ X

hx, xn i xn ,

(1.16)

n=1

with kxk2 =

∞ X

|hx, xn i|2 .

(1.17)

hx, xn i hy, xn i.

(1.18)

n=1

More generally, for any x, y ∈ H hx, yi =

∞ X n=1

It can be shown [328, p. 29] that every basis {xn }∞ n=1 of a Hilbert space possesses a ∞ ∗ unique biorthonormal basis {xn }n=1 , which means that hxm , x∗n i = δm,n , and {x∗n }∞ n=1 , is also a basis of H. Moreover, for every x ∈ H we have x=

∞ X n=1

hx, x∗n i xn =

∞ X n=1

hx, xn i x∗n .

14  Fractional Integral Transforms: Theory and Applications

Such a non-orthogonal expansion is called a biorthogonal expansion. If hxm, x∗n i = 0 whenever m , n, but hxn , x∗n i is not necessarily equal to one, {x∗n }∞ n=1 will be called a ∞ biorthogonal basis of {xn }n=1 . In this case, we have for any x ∈ H x=

∞  X

d¯n

−1

hx, x∗n i xn

n=1

=

∞ X

(dn )−1 hx, xn i x∗n ,

(1.19)

n=1

where dn = hx∗n , xn i , 0. It can be verified that for all n, dn , 0. Definition 2. Let G = {gn } be a basis in a separable Hilbert space H. Then 1. G is called unconditional if X

cn gn ∈ H implies that

X

|cn | gn ∈ H.

2. G is said to be bounded if there exist two non-negative numbers A and B such that for all n A ≤ kgn k ≤ B. 3. G is said to be a Riesz basis if there exist a topological isomorphism T : H → H and an orthonormal basis {un } of H such that T gn = un for each n. Definition 3. Let G = {gn } be a sequence in H (not necessarily a basis of H). Then G is called a frame if there exist two numbers A, B > 0 such that for any f ∈ H, we have A kf k2 ≤

X

|hf, gn i|2 ≤ B kf k2 .

n

The numbers A and B are called the frame bounds. The frame is said to be tight if A = B and is exact if it ceases to be a frame whenever any single element is deleted from the frame. To every frame G there corresponds an operator S, known as the frame operator, which maps H into itself and is defined by Sf =

X

hf, gn i gn , for all f ∈ H.

n

In view of the definition, frames are complete, since if hf, gn i = 0 for all n, then A kf k2 ≤

X

|hf, gn i|2 = 0,

n

which implies that f = 0. For the proof of the following theorem, see [357, pp. 261]. Theorem 1. In a separable Hilbert space H the following conditions are equivalent: 1. {gn } is an exact frame , 2. {gn } is a bounded unconditional basis, 3. {gn } is a Riesz basis.

Introduction and Preliminaries  15

If {gn } is an orthonormal basis of H, then the Parseval equality kf k2 =

X

|hf, gn i|2 ,

f ∈H

n

shows that an orthonormal basis is a tight exact frame with frame bounds A = B = 1. If {gn } is a tight frame with frame bound A = 1 = B, and if kgn k = 1 for all n, then {gn } is an orthonormal basis. For, if {gn } is a tight frame with frame bound = 1, then kgk k2 =

X

|hgk , gn i|2 = kgk k4 +

n

X

gk, gn 2 . n,k





But since kgk k = 1, it follows that gk, gn = 0 for all n , k. The completeness of {gn } is a consequence of the fact that frames are complete. The following theorem summarizes some of the main properties of frames and frame operators that will be needed later. For a proof, see [357, pp. 263-265]. Theorem 2. Let H be a separable Hilbert space and {gn }∞ n=−∞ ⊂ H be a frame with frame bounds A and B. Then 1. The frame operator Sf =

P n

hf, gn i gn is a bounded linear operator on H with

AI ≤ S ≤ BI, where I is the identity operator. 2. S is invertible with B −1 I ≤ S −1 ≤ A−1 I. Moreover, S −1 is a positive operator; hence it is self-adjoint. 3.

 −1 S gn is a frame with frame bounds B −1 , A−1 .

4. Every f ∈ H can be written in the form XD

f=

E

f, S −1 gn gn =

n

X

hf, gn i S −1 gn .

5. If there exists a sequence of scalars {cn } such that f = X n

(1.20)

n

|cn |2 =

X n

|an |2 +

X

P n

cn gn , then

|an − cn |2 ,

n

where an = f, S −1 gn .



6. In addition, if {g n } is an exact frame, then {gn } and S −1 gn are biorthonormal,

i.e., gm , S −1 gn = δm,n . 



The frame S −1 gn is called the dual frame of the frame {gn } . Equation (1.20) is the analogue of (1.19) for frames and the two coincide if any of the conditions of Theorem 1 is satisfied, and in this case S −1 gn = gn∗ . Part (5) shows that although the expansion of f in terms of the frame {gn } is not necessarily unique, using the expansion with coefficients an = f, S −1 gn is the most P economical in the sense that for any other coefficients {cn } with f = n cn gn , we have P P 2 2 n |cn | ≥ n |an | . 



16  Fractional Integral Transforms: Theory and Applications

1.3.2 Reproducing-Kernel Hilbert Spaces

Let H be a Hilbert space consisting of complex-valued functions defined on some set X. A function K(x, t), x, t ∈ X is called a reproducing kernel of H if 1. For every t, K(x, t) as a function of x belongs to H, 2. For every x, t ∈ X and f ∈ H f (t) = hf (x), K(x, t)i. A Hilbert space H is called a reproducing-kernel Hilbert space (RKHS) if it possesses a reproducing kernel. A Hilbert space H has a reproducing kernel if and only if for every x ∈ X, the evaluation functional F(f ) = f (x), f ∈ H is continuous for every x ∈ X, i.e. there exists a constant C > 0 such that |f (x)| ≤ C kf kH , for all f ∈ H, [21]. By the Riesz representation theorem, for each x ∈ X there exists a unique element Kx ∈ H such that for all f ∈ H, f (x) = hf, Kx iH . The reproducing kernel is given by K(x, t) = hKx , Kt iH . The reproducing kernel if it exists, it is unique. Below is a short list of some of the properties of reproducing kernels that will be needed in the sequel: 1. K(x, t) = K(t, x) 2. K(x, x) ≥ 0. 3. |K(x, t)| ≤

p

K(x, x)

p

K(t, t),

x, t ∈ X

4. Every finite-dimensional function space H is a RKHS. In fact, if {ek (x)}m k=0 is an orthonormal basis for H, then K(x, t) =

m X

ek (x)ek (t)

k=0

is a reproducing kernel. More generally, we have 5. If H is a separable reproducing-kernel Hilbert space with orthonormal basis {ek (x)}∞ k=0 , then K(x, t) =

∞ X

ek (x)ek (t)

k=0

is the reproducing kernel. Not every separable Hilbert space is a RKHS.

Introduction and Preliminaries  17

Definition 4. A basis {Sn (x)}∞ n=0 of a reproducing-kernel Hilbert space H is called a sampling basis if there exists a sequence {tn } in X such that for every f ∈ H f (x) =

X

f (tn )Sn (x),

n

where the series converges in the norm. Let {Sn (x)}∞ n=0 be an orthonormal basis of a reproducing-kernel Hilbert space H. Then {Sn }∞ is a sampling basis if and only if K(x, tn ) = Sn (x), where K(x, t) is the repron=0 ducing kernel. For, Since {Sn }∞ n=0 is an orthonormal basis, we have f (x) =

∞ X

hf, Sn iSn (x).

n=0

Therefore, if {Sn (x)}∞ n=0 is a sampling basis, we have f (tn ) = hf (x), Sn (x)i = hf (x), K(x, tn )i. Hence Sn (x) = K(x, tn ). Conversely, Since f (x) =

∞ X

hf (t), Sn (t)iSn (x),

n=0

it follows that f (x) =

∞ X

hf (t), K(t, tn )iSn (x) =

∞ X

f (tn )Sn (x),

n=0

n=0

hence, {Sn (x)} is a sampling basis. Because in a separable Hilbert space every basis possesses a biorthogonal basis, the above results can be extended to the case in which {Sn (x)} is not necessarily an orthogonal basis. For details, see [357, Section 10.1].

1.4

SHIFT-INVARIANT SPACES

Shift-invariant spaces have been the focus of many research papers in recent years because of their close connection with sampling theory [5, 95, 299], wavelets and multiresolution analysis [84, 302, 303, 304]. They have many applications in signal and image processing [34, 36]. For example, in many signal processing applications, it is of interest to represent a signal as a linear combination of shifted versions of some basis functions, ϕ1 , . . . , ϕn , called the generators of the space, that generate a stable basis for the space. Shift-invariant spaces came to light with the introduction of wavelets and multiresolution analysis. Recall [84, 191] that the scaling function φ of a multiresolution analysis is assumed to satisfy the following conditions: 1. The translates of φ, i.e., {φ(x − n)}n∈Z are orthonormal on the real line, i.e. Z R

φ(x − m)φ(x − n)dx = 1.

(1.21)

18  Fractional Integral Transforms: Theory and Applications

2. φ satisfies the two-scale relation φ(x) =

∞ √ X 2 αn φ(2x − n) ,

∞ X

with

n=−∞

|αn |2 < ∞

(1.22)

n=−∞

where αn = hφ, φ−1,n i and φ−1,n (x) =



2φ(2x − n).

By taking the Fourier transform of (1.21) and (1.22), one can show that the equivalence of these two conditions in the Fourier transform domain are: ∞ X

ˆ + 2πk)|2 = 1 |φ(w

a.e.

k=−∞

and

w ˆ w ˆ φ φ(w) =h 2 2 

where

w h 2 



 



,

∞ 1 X √ = αn einw/2 . 2 n=−∞

The function h(w) is a periodic function with period 2π that belongs to L2 [0, 2π]. Some of these ideas permeated to the general theory of shift-invariant and sampling spaces. We consider only subspaces of L2 (R) with one generator in the form (

V (ϕ) = f (t) =

+∞ X

)

c [n] ϕ (t − n), ϕ ∈ L2 (R) , c = {c [n]} ∈ `2 ,

(1.23)

n=−∞

where `2 is the space of all square-summable sequences and kck2`2 is the squared `2 -norm of the sequence. The closure of V(ϕ) is a closed subspace of L2 (R). Furthermore, it is shift-invariant in the sense that for all f ∈ V(ϕ), its shifted version, f (· − k) ∈ V(ϕ), k ∈ Z, where Z denotes the set of integers. For the basis functions to be stable, it is required that the family of functions {ϕ (t − n)}∞ n=−∞ forms a Riesz basis or equivalently, there exists two positive constants 0 < η1 , η2 < +∞, such that ∀c ∈ `2 ,

η1 kck2`2

2 ∞

X

6 c[k]ϕ (t − k) 6 η2 kck2`2

n=−∞

b (ω) = If we denote the Fourier transform of a function h(t) by h we obtain the Fourier domain equivalent of (1.24) as

η1 6

X+∞ n=−∞

(1.24)

L2

|ϕb (ω + 2πn)|2 6 η2 .

R +∞ √1 h(t)e−jωt dt, 2π −∞

(1.25)

The ratio ρ = η2 /η1 is called the condition number of the Riesz basis. The basis is shift-orthonormal 1 or a tight frame if ρ = 1. 1Shift-orthonormality means that hϕ, ϕ (· − k)i = δk where hx, yi =

 product and δk =

1, 0,

if k = 0 denotes the Kronecker delta. if k , 0

R +∞ −∞

x(t)y ∗ (t)dt is the L2 -inner

Introduction and Preliminaries  19

1.5

GENERALIZED FUNCTIONS AND DISTRIBUTIONS

In this section, we give a brief introduction to the theory of generalized functions (distributions). The reader may consult the following references for more details [43, 52, 108, 204, 207, 208, 209, 258, 352, 361]. 1.5.1 Testing-Function Spaces and Their Duals

Generalized functions are defined as elements of the dual space of some testing-function space. Therefore, to introduce generalized functions, we first need to introduce the concept of a testing-function space. Definition 5. Let I be an open subset of Rn . A set of functions V (I) is said to be a testing-function space (on I) if: 1. all the elements of V (I) are infinitely differentiable functions on I, i.e., they belong to C ∞ (I), 2. V (I) is either a complete countably normed or a complete countable-union space, k 3. the convergence of a sequence {φm }∞ m=1 to φ0 in V (I) implies that limm→∞ D φm = k D φ0 uniformly on every compact subset of I, for all |k| = 0, 1, 2, . . . .

Examples of testing-function spaces: 1. The space E(I) of all infinitely differentiable functions on I. When I = Rn , we write E. 2. The space PT ⊂ E, of all infinitely differentiable periodic functions with period T. 3. The space D(I), of all infinitely differentiable functions with compact support in I and when I = Rn , we write D. 4. The Schwartz space of functions S which is the space of all rapidly decreasing infinitely differentiable functions, i.e., the space of infinitely differentiable functions in Rn that satisfy the relations 

γm,|k| (φ) = sup 1 + |x|2 x∈Rn

m



Dk φ(x) < ∞,

, m, |k| = 0, 1, 2, . . . ,

where γm,|k| (φ) is a semi-norm. Definition 6. The dual space V ∗ (I) of V (I), which is the space of all continuous linear functionals acting on V (I), is called a space of generalized functions on I and any element f of V ∗ (I) is called a generalized function on I. The action of f on φ ∈ V (I) is denoted by hf, φi. The spaces of generalized functions are complete. If f is a conventional function that is Lebesgue measurable on I such that for any φ ∈ V (I), the integral Z

f (x)φ(x)dx I

20  Fractional Integral Transforms: Theory and Applications

exists in the Lebesgue sense, and if for any sequence {φm }∞ m=1 converging to φ0 in V (I), we have Z Z f (x)φm (x)dx → f (x)φ0 (x)dx I

I

as m → ∞, we say that f is a regular generalized function belonging to V ∗ (I). More precisely, f can be identified with an element f˜ in V ∗ (I) where D

E

f˜, φ =

Z

f (x)φ(x)dx, I

for every φ ∈ V (I). In view of the linearity and the continuity of the integral, it readily follows that f˜ ∈ V ∗ (I). We identify f with f˜ and write hf, φi =

Z

f (x)φ(x)dx; I

hence f ∈ V ∗ (I). A generalized function f ∈ V ∗ (I) that is not regular is called singular. Definition 7. A generalized function f ∈ V ∗ (I) is said to vanish in an open set J ⊂ I if for any φ ∈ V (I) with supp φ ⊂ J, we have hf, φi = 0. The null set of f is the union of all open subsets J of I on which f vanishes. The complement of the null set of f with respect to I is called the support of f. f is said to be concentrated in a subset A of I if A contains the support of f. Thus, the support of f, written suppf, is the smallest closed set B (with respect to I) such that f is zero on I − B. Definition 8. Two generalized functions f and g in V ∗ (I) are said to be equal on an open set J ⊂ I if and only if f − g vanishes on J. A generalized function is said to be regular on J if it coincides with a regular generalized function concentrated in J. The limit of a sequence of regular generalized functions may not be regular. For example, consider f (x) = (1/x) Φ (x),  > 0, where Φ (x) is the characteristic function of the set (−∞, −) ∪ (, ∞). Then, for any φ ∈ D Z

hf , φi =

φ(x) dx, x

|x|>

and it follows that lim→0 f = f, where f (x) = 1/x if x , 0, yet f is not locally integrable in any neighborhood of the origin; hence it is not regular. 1.5.2 Spaces of Generalized Functions

Now we give examples of spaces of generalized functions, but first let us observe that the spaces E, PT , D, S, E(I) and D(I) are all testing-function spaces; therefore, their dual spaces are spaces of generalized functions. Moreover, since D ⊂ S ⊂ E and D is dense in E, it follows that D∗ ⊇ S ∗ ⊃ E ∗ , and similarly E ∗ (I) ⊂ D∗ (I). 1. The space D∗ is known as the space of Schwartz distributions and D∗ (I) as the space of Schwartz distributions on I.

Introduction and Preliminaries  21

2. The space E ∗ is the space of all Schwartz distributions with compact support, i.e., f ∈ E ∗ if and only if f ∈ D∗ and f has compact support. 3. The space PT∗ is called the space of periodic distributions with period T. 4. The space S ∗ is the space of tempered distributions. It contains all locally integrable functions with polynomial growth at ±∞ (cf. Section 1.1), which are sometimes called distributions with slow growth. 1.5.3

A Special Type of Generalized Functions

In this section, we introduce the δ-function and some of its generalizations because of the important role they play in function transformations. 1. The Dirac-delta function , δ(x), is defined by hδ, φi = φ(0), φ ∈ D. It is a prototype of singular generalized functions. Showing that it is indeed singular is easy. Assume to the contrary that it is regular. Hence, there exists a locally integrable function f such that Z Rn

f (x)φ(x) dx = φ(0), for all φ ∈ D.

For a > 0, let (

φa (x) =





exp(a2 / |x|2 − a2 , |x| < a . 0, |x| ≥ a

Then φa ∈ D and Z

Z

f (x)φa (x)dx = Rn

¯a (0) B

1 f (x)φa (x)dx = , e

¯a (0) is the closed ball with center at 0 = (0, . . . , 0) and radius a, i.e., B ¯a (0) = where B n {x ∈ R , |x| ≤ a} . But if f were a locally integrable function, Lebesgue’s theorem would imply that Z lim

a→0 ¯a (0) B

f (x)φa (x)dx = 0,

which is a contradiction. 2. It can be shown that

2

2

e−x /w = δ(x). lim √ w→0 πw

(1.26)

3. From the inversion formula of the Fourier transform of the delta function, we obtain 1 2π

Z ∞ −∞

eiw(x−t) dw = δ(x − t).

(1.27)

22  Fractional Integral Transforms: Theory and Applications

4. Let S be a manifold in Rn of dimension less than n, dσ be the induced Lebesgue measure on S and f be a locally integrable function. For any φ ∈ D, let hf, φi =

Z

f (x)φ(x)dσ. S

This equation defines a continuous linear functional or a generalized function that is concentrated in S. 5. If S is the hyperplane whose equation is x1 = 0, we have hδ(x1 ), φ(x)i =

Z Z

Z

δ(x1 )φ(x)dx = Z

=



δ(x1 )φ(x1 , . . . , xn )dx1 dx2 · · · dxn

φ(0, x2 , . . . , xn )dx2 · · · dxn .

Similarly, D

δ

(k)

E

Z

(x1 ), φ(x) =

δ

(k)

(x1 )φ(x)dx = (−1)

k

Z



∂ k φ ∂xk1 x

dx2 · · · dxn .

1 =0

1.6

SAMPLING AND THE PALEY-WIENER SPACE

In this section, we discuss how functions, under certain conditions, can be reconstructed from their values (samples) at a discrete set of points. One of the fundamental theorems in this setting is the Whittaker-Shannon-Kotel’nikov (WSK) sampling Theorem [167, 264, 315] which shows how a function f ∈ L2 (R) whose Fourier transform fˆ has support on an interval [−σ, σ] can be reconstructed from its samples. Such a function is called bandlimited to [−σ, σ], and σ is called the bandwidth. The term bandlimited functions (signals) came from electric engineering where it means that the frequency content of a time signal f (t) is limited by certain bounds from below and above [342]. In communication engineering when f represents a signal, its energy is represented by its L2 norm and, hence; the WSK theorem is a tool to reconstruct finite energy, bandlimited signals from their samples. The WSK theorem, which has numerous practical applications [95, 149, 299, 357], has been extended to integral transforms other than the Fourier transform, such as the Fresnel, Bessel-Hankel, Hartley, Sturm-Liouville transforms, and many more integral transforms [113, 130, 349, 359, 360]. Sampling theorems for fractional integral transforms will be discussed in details in later chapters, but for more information on sampling theory, the reader may consult the following references [19, 30, 128, 129, 168, 176, 229, 231, 351, 356, 357, 358]. Before introducing the WSK theorem, we recall the following result by Paley and Wiener, which gives a description of the class of functions bandlimited to [−σ, σ] and which is denoted by P Wσ . Theorem 3 (Paley-Wiener, [228]). A function f is band-limited to [−σ, σ] if and only if Z σ

f (t) = −σ

e−iωt g(ω) dω

(t ∈ R) ,

(1.28)

Introduction and Preliminaries  23

for some function g ∈ L2 (−σ, σ) and if and only if f is an entire function of exponential type σ that is square integrable on the real line, i.e., f is an entire function such that |f (z)| ≤ sup |f (x)| exp(σ |y|),

z = x + iy,

x∈R

and

Z

|f (x)|2 dx < ∞.

R

For an extension of the Paley-Wiener Theorem , see [242] The Whittaker-Shannon-Kotel’nikov (WSK) sampling theorem states: Theorem 4. Let f be a function band-limited to [−σ, σ], then f can be reconstructed from its samples, f (kπ/σ), that are taken at the equally spaced nodes kπ/σ on the time axis R via the construction formula ∞ X

kπ f f (t) = σ k=−∞ 



sin (σt − kπ) (σt − kπ)

(t ∈ R),

(1.29)

the series being absolutely and uniformly convergent on R. See, e.g., [357, p. 16]. The points {tk = kπ/σ} are called the sample points and the functions Sk (t) =

sin σ(t − tk ) = sinc (σ(t − tk )/π) , σ(t − tk )

where

(

sinc (z) =

(1.30)

sin πz/(πz) , z , 0 1, z = 0,

are called the sampling functions. It should be noted that the sampling functions in this case are shifts of one function, namely the sinc function. The space of functions bandlimited to [−σ, σ] may also be denoted by Bσ , because it is a special case of more general spaces of functions known as the Bernstein spaces. The space of all functions bandlimited to a compact set S ⊂ R may be denoted by B(S). The sampling theorem may be viewed from a different perspective as a by-product of the theory of reproducing-kernel Hilbert spaces which was discussed in a previous section. To this end, let us note that the space L2 (R) is not a reproducing-kernel Hilbert space, but one of its subspaces, namely the Paley-Wiener space P Wπ of all functions bandlimited to [−π, π] is a RKHS with reproducing kernel K(x, t) = Moreover,

sin π(x − t) . π(x − t)

sin π(x − tn ) , tn = n, n = 0, ±1, ±2, . . . π(x − tn ) is an orthonormal sampling basis for the space P Wπ . Consequently, we have 



K(x, tn ) =

∞ X sin π(x − t) sin π(x − n) sin π(t − n) = , π(x − t) π(x − n) π(t − n) n=−∞

24  Fractional Integral Transforms: Theory and Applications

and for any f ∈ P Wπ , the following formula holds ∞ X

f (x) =

f (n)

n=−∞

sin π(x − n) . π(x − n)

The series in Equation (1.29) can be put in the Lagrange-type interpolation form ∞ X

f (t) =

f (tk )

k=−∞

G(t) , (t − tk )G0 (tk )

(1.31)

2 2 where tk = kπ/σ and G(t) = sin σt = σt ∞ k=1 1 − t /tk . We have pointed out that the sampling theorem has been extended to integral transforms other than the Fourier transform. The key link to that extension lies in Kramer’s sampling theorem which may be stated as follows:



Q

Theorem 5 (Kramer [168]). Let there exist a function K(x, t) continuous in t such that K(x, t) ∈ L2 (I) as a function of x for every real number t, where I is a finite interval I = [a, b]. Assume that there exists a sequence of real numbers {tn }n∈Z such that {K(x, tn )}n∈Z is a complete orthogonal family in L2 (I). Then for any function of the form Z b

F (t) =

f (x)K(x, t) dx = hf , Ki ,

a

with f ∈ L2 (I), we have

∞ X

F (t) =

F (tn )Sn∗ (t) ,

(1.32)

(1.33)

n=−∞

where Sn∗ (t) =

Rb a

K(x, t)K(x, tn )dx Rb a

|K(x, tn )|2 dx

.

(1.34)

If there exists a non-negative function g(x) ∈ L1 (I) such that |K(x, t)|2 ≤ g(x), for almost all x ∈ I and all t, then the series converges uniformly on compact subsets of R The WSK Sampling Theorem is a special case of Kramer’s samplingtheorem because itn t ∞ if we take I = [−σ, σ], K(x, t) = eixt and tn = nπ , it is easy to see that e n=−∞ is a σ 2 complete orthogonal set in L (I), and in addition Sn∗ (t) =

sin σ(t − tn ) = sinc (σ(t − tn )/π) , σ(t − tn )

where

(

sinc (z) =

sin πz/(πz) , z , 0 1, z = 0.

Hence Equations (1.32), (1.33) and (1.34) reduce to (1.28), (1.29) and (1.30).

Introduction and Preliminaries  25

Kramer [168] noted that the kernel function K(x, t) and the sampling points {tn }n∈Z may be obtained from certain boundary-value problems. For example, consider the differential operator L defined as L = p0 (x)

dn d + · · · + pn−1 (x) + pn (x) , n dx dx

x ∈ I,

where pk (x) is a complex-valued function with n−k continuous derivatives, k = 0, 1, . . . , n, for any x ∈ I = (a, b), and p0 (x) , 0 for any x ∈ [a, b], with −∞ ≤ a < b ≤ ∞. The adjoint operator L∗ is defined as L∗ g = (−1)n

n−1 dn n−1 d (p g) + (−1) (p g) + · · · + pn g. 0 dxn dxn−1 1

The operator L is said to be formally self-adjoint if L = L∗ . If the coefficient functions pk (k = 0, 1, . . . , n) are real-valued, then it is easy to see that if L is formally self-adjoint, then n is even. Let Uj (y) = 0, j = 1, . . . , n, be linearly independent homogeneous boundary conditions of the form Uj (y) =

n  X



αj,k y (k−1) (a) + βj,k y (k−1) (b) ,

j = 1, 2, . . . , n.

k=1

To any such system of boundary conditions, there exists an associated system of boundary conditions, known as the adjoint system, and if the two systems are equivalent, we say that they are self-adjoint [72, p. 287], [297]. The boundary-value problem: Ly = −ty,

x ∈ I,

(1.35)

Uj (y) = 0,

j = 1, . . . , n,

(1.36)

is said to be self-adjoint if the differential operator and the boundary conditions are selfadjoint. It is known that the eigenfunctions of a regular, self-adjoint boundary-value problem are complete in L2 (I). Kramer observed that if the regular, self-adjoint boundary-value problem (1.35) and (1.36) possesses a function φ(x, t) that generates the eigenfunctions of the problem {φn (x)} when the eigenvalue parameter t is replaced by the eigenvalues {tn }, i.e., φ(x, tn ) = φn (x), then one can take the sampling points to be {tn } and the kernel function K(x, t) to be φ(x, t). As a special case of Kramer’s result, Campbell [60] (see also [45]) considered the regular second order Sturm- Liouville boundary-value problem: L(ϕ) := −ϕ00 + q(x)ϕ = µ2 ϕ , 0

aϕ(0, µ) + bϕ (0, µ) = 0 0

cϕ(π, µ) + dϕ (π, µ) = 0

x ∈ [0, π]

(1.37) (1.38) (1.39)

where q ∈ L1 (0, π), a, b, c, d ∈ R, a2 + b2 , 0 and c2 + d2 , 0. Since the problem is regular,

26  Fractional Integral Transforms: Theory and Applications

the spectrum is discrete, bounded from below and simple. If we denote by µ2n the eigenvalues and ϕ (x, µn ) the normalized eigenfunctions, Kramer’s theorem would read: If Z π

F (µ) =

f (x)ϕ(x, µ)dx ,

(1.40)

0

where f ∈ L2 (0, π) and ϕ(x, µ) is a solution of the initial-value problem (1.37) and (1.38), then X F (µ) = F (µn )Sn∗ (µ) , (1.41) n≥0

Sn∗ (µ)

where is given by (1.34). The importance of Campbell’s theorem is reflected in the fact that the kernels of many integral transformations arise from such Sturm- Liouville boundary-value problems. We will see several examples of that in forthcoming chapters. For related references, see [19, 60, 128, 129, 168, 176, 177, 214, 229, 231, 336, 349, 351, 356, 357, 358].

1.7

POISSON SUMMATION FORMULA

Another formula related to the sampling theorem is the Poisson Summation Formula [42, 57] which relates the Fourier series of a function to its Fourier transform. It is also closely related to the Zak transform which will be introduced in a later chapter [144, 143]. There are different versions of this formula depending on one’s definition of the Fourier transform. Following our definition of the Fourier transform, the formula may be stated as follows: Suppose that f ∈ L1 (R) and σ > 0. If we denote the Fourier transform of f by fˆ and assume P ˆ that ∞ k=−∞ |f (2kσ)| < ∞, then ∞ ∞ X 1 σ X √ f (t + tk ) = fˆ(2kσ)e2ikσt , π 2π k=−∞ k=−∞

(1.42)

where tk = kπ/σ. In particular, if σ = π, we have ∞ ∞ X X 1 √ f (t + k) = fˆ(2kπ)e2ikπt , 2π k=−∞ k=−∞

from which we have

∞ ∞ X X 1 √ f (k) = fˆ(2kπ). 2π k=−∞ k=−∞

The last equation in turn implies that if f is bandlimited to [−π, π], we have ∞ X 1 √ f (k) = fˆ(0). 2π k=−∞

A sufficient condition for the absolute convergence of both sides of the formula is that |f (x)| ≤ C

1 , (1 + |x|)1+

ˆ f (w) ≤ D

1 ; (1 + |w|)1+

 > 0,

for some positive constants, C and D. The formula has extensions to higher dimensions and to other lattice points; see [114].

Introduction and Preliminaries  27

1.8

UNCRTAINTY PRINCIPLE

The uncertainty principle was first introduced in quantum mechanics by the German physicist Werner Heisenberg in 1927 who was awarded the Nobel Prize in Physics in 1932 for his work on the creation of quantum mechanics. The uncertainty principle states that the position and the momentum of a particle cannot simultaneously be determined precisely, the more precisely the position is determined, the less precisely the momentum can be determined. Mathematically, this may be stated as follows: if we denote the standard deviation of the position by σx and the standard deviation of the momentum by σp , then σx σp ≥ h/2, where h is the reduced Planck constant, h/(2π). In mathematics there is a number of different analogues of the uncertainty principle, but the most basic one involves a function and its Fourier transform. It says that if a signal f (t) is concentrated in the region |t − t0 | ≤ t , it cannot also have its Fourier transform fˆ(ω) be concentrated in |ω − ω0 | ≤ ω , unless 1 ≤ t ω . Another formulation of the uncertainty principle for the Fourier transform may be stated as follows: if f ∈ L2 (R), then 1 2

Z

Z

2

|f (t)| dt ≤

R

2

1/2 Z

2

t |f (t)| dt R

2 1/2 , ω f (ω) dω 2 ˆ

R

(1.43)

2

with the equality holds only if f (t) = Ce−πt . For a proof, see [357, P. 34]. A slightly more general version of (1.43) is obtained by replacing f (t) by eitω0 f (t + t0 ) which is clearly in L2 (R). With some calculations, this yields 1 kf (t)k2 = 2

1 2

Z

|f (t)|2 dt

R

Z



1/2 Z

(t − t0 )2 |f (t)|2 dt

R

R



2

(ω − ω0 )2 fˆ(ω) dω

1/2

,

with the equality holds only if 2 −iω (t−t ) 0 0

f (t) = Ce−π(t−t0 )

.

It should be noted that there are different versions of the uncertainty principle depending on one’s definition of the Fourier transform; [29, 68, 319]. For more information on the uncertainty priciple, see [81, 23, 262, 263, 286].

CHAPTER

2

Integral Transformations

2.1

INTRODUCTION AND BRIEF HISTORY

Integral transforms have a long history that goes back to the eighteenth century. One of the earliest integral transforms is the Laplace transform which was named after the French mathematician Pierre Simon Laplace (1749–1827 ) who put probability theory on solid foundation in his work Théorie analytique des probabilités (Analytical Theory of Probabilities) [173]. The Laplace transform still plays an important role in both theory and applications of mathematics. Another classical integral transform that has ubiquitous applications is the Fourier transform which was an extension of the Fourier series introduced by the French mathematician Jean Baptiste Fourier (1768–1830) in his work Théorie analytique de la chaleur (The Analytical Theory of Heat) [103]. Some integral transforms were introduced by engineers, such as the Gabor transform which was named after the Hungarian electrical engineer and physicist Dennis Gabor who won the Nobel Prize in 1971 for inventing holography [104]. The Gabor transform is a special case of the windowed (sliding window) Fourier transform. Some integral transforms were introduced by physicists, such as the wavelets transform introduced by the French geophysicists A. Grossmann and J. Morlet [118], J. Morlet et al. [210, 211]. Other transforms were introduced by mathematicians, such as the Laplace, Fourier, Hilbert and the Mellin transforms. A number of transforms were discovered by scientists in one discipline and later were rediscovered by other scientists in a different discipline. The Radon transform is a good example of that. The Radon transform was introduced by the Austrian mathematician, Johann Radon in 1917 in his seminal paper [247] “Über die Bestimmung Von Funcktionen durch ihre Integralwerte länge gewisser Manningfaltigkeiten,” or “On the determination of functions from their integrals along certain manifolds.” in which he showed how to reconstruct a function from its integrals along certain manifolds. In particular, he showed how to reconstruct a function of two variables from its integrals along straight lines. This mathematical idea, which went unnoticed for more than forty years, turned out to be the foundation of one of the revolutionary developments in medical imaging, namely computerized tomography, or CT Scan. It was Allen Cormack, a South African physicist working at the Radiology Department at the University of Cape Town’s medical school, who in his quest for a solution to a radiology problem, realized the significance of Radon’s DOI: 10.1201/9781003089353-2

28

Integral Transformations  29

paper, which he, together with Godfrey Hounsfield, a British engineer, used to develop a new X-ray machine that revolutionized the field of medical imaging; it was the first CT scan machine ever invented. For more on the Radon transform, see [89, 352, 354]. Therefore, it is generally fair to say that major contributions to the field of integral transforms are shared equally by mathematicians, physicists and engineers.

2.2

WHAT IS AN INTEGRAL TRANSFORM?

A general form of integral transforms may be written as F[f (x)](y) = Fa (y) =

Z

Ka (x, y, f )dµ(x), Ω

where x ∈ Rn (Cn ), y ∈ Rm (Cm ) and a ∈ Rk is a set of k parameters, Ω is a measurable subset of Rn (Cn ) and dµ is an appropriate measure. The function Ka is called the kernel of the transform, f is the transformed function and F is its integral transform. In other words, an integral transform is a transformation F that maps f into F Although the subject of non-linear integral transforms deserves considerable attention, throughout this book our focus will be on linear integral transforms, and from now on the term integral transform will mean linear integral transform. Integral transforms differ from one another by the choice of the kernel K, the set Ω and the measure dµ. A linear integral transform generally takes the form F[f (x)](y) = F[f ](y) = Fa (y) =

Z

Ka (x, y)f (x)dµ(x). Ω

The above integral transform is clearly linear, i.e., F[af + bg] = aF[f ] + bF[g],

a, b ∈ R(C).

Because a number of integral transforms have physical applications in which f and F may represent physical quantities, we may visualize an integral transform as a device in which the input is represented by f, the output by F, and the core of the device is the kernel of the transform K. The action of the kernel on the input is represented by an integral over some measurable set Ω.

2.3

EXAMPLES OF INTEGRAL TRANSFORMS

In this section, we give examples of integral transforms in one and higher dimensions. 2.3.1

One-Dimensional Integral Transforms

Below are examples of some classical one-dimensional integral transforms that follow the pattern described above: 1. The Laplace Transform [40]: K(x, t) = e−xt , Ω = [0, ∞), dµ = dx, Z ∞

F (t) = 0

f (x)e−xt dx.

30  Fractional Integral Transforms: Theory and Applications

√ 2. The Fourier Transform [49, 228, 281]: K(x, t) = eixt / 2π, Ω = R, dµ = dx, 1 F (t) = √ 2π

Z

f (x)eixt dx.

R

Another variant of the Fourier transform is given by Z

F (t) =

f (x)e2πixt dx.

R

3. The Cosine and Sine Transforms: F (t) =

q

Z ∞

2/π

f (x) cos(tx)dx,

F (t) =

q

Z ∞

2/π

0

f (x) sin(tx)dx. 0

An intimately related transform to the cosine and sine transforms is the Hartley transform defined as Z 1 f (x)Cas (tx)dx, H[f ](t) = √ 2π R where the kernel is Cas(z) = cos z + sin z. The Hartley transform was introduced by an engineer R. Hartley [123] in 1942 to overcome what he considered a drawback of the Fourier transform which transforms a real-valued function into a complex-valued function [47, 48]. 4. The Mellin Transform [196]: K(x, t) = xt−1 , Ω = [0, ∞), dµ = dx, Z ∞

F (t) =

f (x)xt−1 dx.

0

√ 5. The Hankel Transform [70, 71, 80]: K(x, t) = xtJν (xt), Ω = [0, ∞), dµ = dx, where Jν is the Bessel function of order ν > −1/2, Z ∞ √ f (x) xtJν (xt)dx. F (t) = 0

Another version of the Hankel transform is given by Z ∞

xf (x)Jν (xt)dx.

F (t) = 0

6. The Legendre transform [58]: K(x, t) = (1/2)Pt (x), Ω = [−1, 1], dµ = dx, F (t) =

1 2

Z 1 −1

f (x)Pt (x)dx,

t ∈ R,

where Pt (x) = F (−t, t + 1; 1, (1 − x)/2) , is the Legendre function and F (a, b; c, x) = 2 F1 (a, b; c, x) is the hypergeometric function. The Legendre transform is a special case of the Jacobi transform [90, 306].

Integral Transformations  31

7. The Sturm-Liouville Trannsform [359, 352, 305]: Consider the boundary-value problem (BVP) y 00 − q(x)y = −λy , −∞ < a ≤ x ≤ b < ∞ , (2.1) y(a) cos α + y 0 (a) sin α = 0

(2.2)

0

y(b) cos β + y (b) sin β = 0 ,

(2.3)

and let φ(x, λ), ψ(x, λ) be the solutions of (2.1) such that φ(a, λ) = sin α ,

φ0 (a, λ) = − cos α

ψ(b, λ) = sin β ,

ψ 0 (b, λ) = − cos β .

There exists a linear integral transformation T from L2 [a, b] into the space of all entire functions of order one and type at most (b − a) defined by Z b

f (x)φ(x, λ)dx,

(T f )(λ) = F (λ) = a

f ∈ L2 [a, b] , λ ∈ C

(2.4)

Moreover, F is completely determined by its values at the eigenvalues of the problem {λn }∞ n=0 and can be reconstructed from these values according to the formula F (λ) =

∞ X

F (λn )

n=0

P (λ) (λ − λn )P 0 (λn )

where P (λ) is the Wronskian of φ and ψ. 8. The Stieltjes Transform [289]: K(x, t) = F (t) =

1 x+t ,

Ω = [0, ∞), dµ is a Lebesque measure

Z ∞ f (x)

dµ(x).

0

x+t

9. The Hilbert Transform [122]: K(x, t) =

1 π(x−t) ,

1 F (t) = π

Ω = R, dµ = dx,

f (x) dx. R x−t

Z

2 /2σ

1 10. The Weierstrass Transform [71, 131]: K(x, t) = √2πσ e−(x−t) R, dµ = dx, Z 1 2 F (t) = √ f (x)e−(x−t) /2σ dx. 2πσ R

11. The Bargmann Transform R, dµ = dt,

[25, 26, 145]: K(z, t) =

1 F (z) = √ 4 π

where z = x + iy.

Z R

1

f (t)e− 2 (z

2 +t2 )+

, σ > 0, Ω =

1 − 1 (z 2 +t2 )+ √ 4 πe 2

√ 2zt

dt,

√ 2zt

, Ω=

32  Fractional Integral Transforms: Theory and Applications 2 √1 eiπ(x−t) /λz , iλz

12. The Fresnel Transform [113, 137]: K(x, t) = 1 F (t) = √ iλz

Z

2 /λz

f (x)eiπ(t−x)

dx,

Ω = R, dµ = dt,

z , 0, λ > 0.

R

13. The Wavelet Transform [84, 85, 86, 314]: K(x, a, b) = √1 ψ |a|



x−b a



, Ω = R, dµ =

dx, Z

F (a, b) =

f (x)ψa,b (x)dx, R

where ψa,b (x) = √1 ψ |a|



x−b a



, a > 0, b ∈ R, and ψ satisfies the admissibility con-

dition

2 ˆ |ψ(w)| dw < ∞, |w| R

Z

(2.5)

where ψˆ is the Fourier transform of ψ. 14. The Windowed-Fourier Transform, or Short-time Fourier Transform, or Sliding Win√ dow Fourier Transform [84, 294]: K(x, t, w) = g(x−t)eiwx / 2π, Ω = R, dµ = dx, where g ∈ L2 (R) is the window function, 1 F (t, w) = √ 2π

Z

f (x)g(x − t)eiwx dx, w, t ∈ R.

R

Closely related to the windowed-Fourier transform is the convolution transform, which is defined for a function f with respect to a kernel function G as Z

F (t) =

G(t − x)f (x)dx,

R

where G is assumed to satisfy certain conditions; see [133, 134] and [352, Ch.17]. 15. The Gabor Transform [104, 146]: The Gabor transform is a special case of the windowed Fourier transform √ where the window function is the Gaussian function 2 K(x, t, w) = e−π(t−x) eiwx / 2π, Ω = R, dµ = dx, 16. The Stockwell Transform [93, 290]: K(x, t, w) = R, dµ = dx, |w| F (t, w) = √ 2π

Z

f (x)e(x−t)

2 w 2 /2

|w| (x−t)2 w2 /2 −2πiwx √ e e , 2π

e−2πiwx dx, w , 0.

R

17. The Linear Canonical Transform [213, 212]: i i h 2 1 exp ax − 2xt + dt2 , Ka,b,c,d (x, t) = √ 2b 2πib 



where ad − bc = 1, b , 0, Ω = R, dµ = dx, 1 F (t) = √ 2πib

i i h 2 f (x) exp ax − 2xt + dt2 dx. 2b R

Z





Ω=

Integral Transformations  33

18. The Special Affine Fourier Transform [1, 2]: i 1 i h 2 Ka,b,c,d;p,q (x, t) = p exp ax + dt2 + 2x(p − ω) + 2t(bq − dp) , 2b 2π|b| 



where ad − bc = 1, b , 0, p, q ∈ R, Ω = R, dµ = dx. Hence 1 F (t) = p 2π|b|



Z

f (x) exp R

i i h 2 ax + dt2 + 2x(p − ω) + 2t(bq − dp) dx. 2b 

19. The Offset Linear Canonical Transform [234, 236]: i i h 2 eiqt K(x, t)a,b,c,d;p,q = √ exp ax + d(t − p)2 + 2x(p − t) , 2b 2iπb 



where ad − bc = 1, b , 0, p, q ∈ R, Ω = R, dµ = dx, eiqt F (t) = √ 2iπb

i i h 2 ax + d(t − p)2 + 2x(p − t) dx. f (x) exp 2b R 



Z

For more examples, we refer the reader to [46, 53, 109, 111, 112, 120, 165]. The first few examples may give the impression that most one-dimensional integral transforms are taken over the full real line or the half line [0, ∞). But examples 6 and 7 show that this is not always the case. The integral transforms in Examples 13-16 deserve special attention because they map functions of one variable into functions of two variables and in higher dimensions, they map functions of n variables into functions of 2n variables. This type of transformations has interesting applications. For example, in signal processing when f represents a signal in the time domain, F (t, w) represents a time-frequency representation of the signal. The Hilbert transform deviates slightly from the pattern because its kernel is a singular function. 2.3.2 Higher Dimensional Transforms

The generalization of most of these integral transforms to higher dimensions is usually straightforward as can be seen from the next few examples. • The Fourier Transform: F (t) = where x · t =

1 (2π)n/2

Z Rn

f (x)ei(t·x) dx,

t ∈ Rn ,

Pn

k=1 xk tk .

• Windowed-Fourier Transform: F (t, w) =

1

Z n/2

(2π)

Rn

f (x)g(t − x)ei(w·x) dx,

t, w ∈ Rn .

34  Fractional Integral Transforms: Theory and Applications

• The Two-dimensional Fresnel Transform: F (u, v) =

eikz iλz



Z Z

f (x, y) exp R R

i ik h (u − x)2 + (v − y)2 dxdy, 2z 

where k = 2π/λ is the wavenumber and λ is the wave length. This transform arises in optics to model Fresnel diffraction. • The Continuous Wavelet Transform: Z

F (a, b) = where ψ ∈ L2 (Rn ) with Z Rn

f (x)ψa,b (x)dx,

n ˆ |ψ(w)| dw < ∞. |w|n

and ψa,b (x) = a

Rn

−n/2

x−b ψ , a 



(2.6)

a > 0, b ∈ Rn .

2.3.3 Special Cases of Higher Dimensional Transforms

In this subsection, we give examples of integral transforms that exist in dimensions n ≥ 2 and have no analogue in dimension one. • The Directional Wavelet Transform [20]: In R2 , one can define a continuous wavelet transform with rotation given by the matrix !

cos θ − sin θ Rθ = , sin θ cos θ so that the kernel of the transformation is ψ a,b,θ (x) = a−1 ψ



Rθ (x − b) . a 

• The Continuous Ridgelet Transform [63]: The two-dimensional continuous ridgelet transform of f ∈ L2 (R2 ) is defined as Rψ f (a, b, θ) = where ψa,b,θ (x1 , x2 ) = a

−1/2

Z R2

f (x)ψa,b,θ (x)dx,

(x1 cos θ + x2 sin θ) − b ψ , a 



ψ ∈ L2 (R) and satisfies condition (2.6) with a > 0, b ∈ R, θ ∈ [0, 2π). The ridgelet transform is related to the Radon transform. The definition of the Radon transform is given at the end of this section for a reason explained there. Let us denote the Radon transform of f by (Rf )(p, u) = f †(p , u),

Integral Transformations  35

where u is a unit vector. We use the notation (Ru f )(p) = fu† (p). Then Rψ f = a−1/2



Z

ψ R

p−b † fu (p)dp. a 

Thus, the Ridgelet transform may be viewed as an application of a one-dimensional wavelet transform to a slice of the Radon transform; see [91, 92]. • The Continuous Shearlet Transform [171]: To introduce the shearlet transform , let us first introduce the dilation and translation operators DA and Tt in Rn as follows: DA ψ(x) = |det A|−1/2 ψ(A−1 x), and Tt ψ(x) = ψ(x − t), where x, t ∈ Rn and A is an n × n non-singular matrix. Consider the parabolic scaling matrix !

a 0 A= , 1/2 0 a and the shearing matrix

a > 0,

!

1 s S= , 0 s

s ∈ R.

The kernel of the Continuous Shearlet Transform is given by ψa,s,t (x) = Tt DA DS ψ(x), and the continuous shearlet transform is defined as SHf (a, s, t) = F (a, s, t) =

Z R2

f (x)ψa,s,t (x)dx,

x ∈ R2 ,

where ψ ∈ L2 R2 satisfying 

Z R2

ˆ 1 , ω2 )|2 |ψ(ω dω1 dω2 < ∞. |ω1 |2

• The Gyrator Transform [251, 152]: The Gyrator transform is an important but less known two-dimensional integral transform that is closely related to the twodimensional Fourier and the two-dimensional fractional Fourier transforms. The Gyrator transform of order α is defined as Z Z

(Rα f )(ω1 , ω2 ) =

f (t1 , t2 )Gα (t1 , t2 , ω1 , ω2 ) dt1 dt2 , R R

36  Fractional Integral Transforms: Theory and Applications

where 1 2π| sin α|   i × exp [(t1 t2 + ω1 ω2 ) cos α − (t2 ω1 + t1 ω2 )] . sin α

Gα (t1 , t2 , ω1 , ω2 ) =

This transform originated in optics and was implemented in paraxial optics. For more on this transform, see Chapter 6. • The Radon Transform [89]: Although the Radon transform does not exactly fit in the standard pattern, it is mentioned here because of its importance and connection to the ridgelet transform. The Radon transform of f ∈ L2 (Rn ), is defined as Z

Rf (ζ, t) =

Rn

f (x)δ (t − ζ · x) dx,

where ζ is a unit vector in Rn and t ∈ Rn . It does not exactly fit in the standard pattern because the kernel is not a function but is the Dirac delta function which is a generalized function, [205, 206].

2.4

GENERAL PROPERTIES OF INTEGRAL TRANSFORMATIONS

In the study of linear integral transformations, the following questions are of particular interest: • What are the domain and range of the transformation? That is what are the function spaces to which f and F belong? • More importantly, does the transform have an inverse? That is given F, can one find f ? The answer to this question is of paramount importance in applications. A transform that has no inverse is practically useless. • It would be interesting if the transform preserves the product formula, i.e., F[f g] = F[f ]F[g]; however, this is not always feasible. Alternatively, one may ask: can we find an operation, called convolution, denoted by ∗ so that F[f ∗ g] = F[f ]F[g]? The answer to the last question is sometimes yes, but finding the appropriate convolution can be very challenging. The inversion formulas for many integral transforms take the form Z

f (x) =

F (t)H(t, x)dη(t), D

for some domain D and Borel measure dη. If both the transform and its inverse are given by Z Z F (t) =

f (x)K(t, x)dx, R

we formally have

and f (x) =

F (t)H(x, t)dt, R

Z R

K(t, x)H(x, y)dx = δ(t − y),

Integral Transformations  37

as can be seen for the Fourier transform, where 1 2π

Z

eitx e−iyx dx = δ(t − y).

R

With some calculations, one can show that a similar formula holds for the fractional Fourier transform; see Chapter 4. In some cases where the integral transform is given by Z ∞

F (t) =

f (x)K(tx)dx, 0

the inversion formula may also take the form Z ∞

f (x) =

F (t)H(tx)dt. 0

In this case, we have the following relation between K and H, [281] ˜ H(1 ˜ − s) = 1, K(s)

(2.7)

where the tilde stands for the Mellin transform. For, if we take the Mellin transform of F and interchange the integrals, we formally obtain F˜ (s) =

Z ∞

s−1

t

Z ∞

Z ∞

f (x)dx

F (t)dt =

ts−1 K(tx)dt

0

0

0

Z ∞ η dη ( )s−1 K(η) f (x)dx = x x 0 Z ∞ Z0∞ Z ∞

x−s f (x)dx

=

˜ η s−1 K(η)dη = f˜(1 − s)K(s).

0

0

˜ Repeating the same process for f , we obtain f˜(s) = F˜ (1 − s)H(s), which when combined with the previous equation, yields Eq. (2.7) ˜ H(1 ˜ − s) = 1. K(s) In the special case where the forward and inverse transforms are the same, as for the cosine. sine and Hankel transforms, we have ˜ H(1 ˜ − s) = 1, H(s)

or

˜ − s) = H(1

For the cosine transform F (t) =

Z ∞

q

2/π

f (x) cos txdx, 0

the Mellin transform of the kernel, K(y) = ˜ K(s) =

q

p

2/π cos y, is

2/πΓ(s) cos(πs/2)

1 . ˜ H(s)

(2.8)

38  Fractional Integral Transforms: Theory and Applications

and hence

˜ − s) = K(1

q

2/πΓ(1 − s) sin(πs/2).

In view of Eq. (1.4), Γ(s)Γ(1 − s) =

π , sin πs

˜ K(1 ˜ − s) = 1, which is consistent with Eq. (2.8). Similar argument applies we have K(s) to the sine transform. As for the Hankel transform given by Z ∞

F (t) =

√ f (x) txJν (tx)dx,

0

we have F˜ (s) =

Z ∞

s−1

t

F (t)dt =

Z ∞ √

0

Z ∞

xf (x)dx

0

=

ts−1

√ tJν (tx)dt

0

Z ∞ √ Z0∞

=

Z ∞ η dη ( )s−1/2 Jν (η) xf (x)dx x x Z0 ∞

x−s f (x)dx

η s−1/2 Jν (η)dη

0

0

˜ = f˜(1 − s)K(s), ˜ where K(s) is the Mellin transform of the kernel K(y) = that the Mellin transform of the kernel is given by 



yJν (y). But it can be verified



ν+s+1/2 2 s−1/2  ˜ , K(s) = 2 ν−s+3/2 Γ 2

Γ

which yields





ν−s+3/2 2 1/2−s ˜ − s) = 2  . K(1 ν+s+1/2 Γ 2

Γ

˜ K(1 ˜ − s) = 1. Therefore, K(s) It should be noted that the Hankel transform pair may also be defined as Z ∞

F (t) = 0

Z ∞

xf (x)Jν (tx)dx, and f (x) =

tF (t)Jν (tx)dt. 0

Repeating the same process as above, we obtain ˜ F˜ (s) = f˜(2 − s)K(s)

˜ and f˜(s) = F˜ (2 − s)K(s),

˜ K(2 ˜ − s) = 1, where K ˜ is the Mellin transform of the kernel K(η) = which yields K(s) Jν (η). The last relation looks slightly different from Eq. (2.7) because the input function f (x) is replaced by xf (x).

Integral Transformations  39

In view of the fact that the Mellin transform of the Bessel function of order ν is given by ˜ K(s) = we have ˜ − s) = K(2

ν+s  2  , Γ ν−s+2 2

2s−1 Γ

21−s Γ Γ





ν−s+2 2

ν+2 2





,

˜ K(2 ˜ − s) = 1. and; hence, K(s)

2.5

WHY INTEGRAL TRANSFORMS?

One may wonder what integral transforms are good for. In this section, we will try to answer this question. 1. In solving some difficult mathematical problems, it may be useful to transform these problems by means of some function transformation to a new setting where the problems can be easily solved. Having solved the problems in the new setting, one has to transform the solution back to the original setting, and this is where the inverse transformation comes into play. A prototype situation in which this method has been used is in solving certain initial-value and boundary-value problems involving ordinary or partial differential equations. These problems may be converted into a system of algebraic equations that can be solved and then the solution is converted back to the original setting using the inverse transformation. Several classical linear integral transforms, such as the Laplace, Fourier, Hankel and Mellin transforms, are good examples of that. 2. Sometimes the transform function F itself has some physical meaning and ought to be studied in its own right. For example, in electrical engineering the original function f (t) may represent a signal that is a function of time, e.g., a radar or radio signal. The Fourier transform F (ω) of f (t) in this case represents the frequency content of the signal f. Thus, both f and F give two different representations of the same object. Another example is the windowed Fourier transform in which f (t) may represent a signal in the time domain and its transform function F (t, w) represents its timefrequency distribution. A black and white image may be represented by a function of two variables f (x, y) and its transform may represent the output of an operation on the image, such as rotation, cropping, or magnification. 3. In some applications, the transform function F, is a set of data that can be measured experimentally and from which the original function f could be reconstructed. The original function f may represent the internal distribution, perhaps density of some physical quantity, of a hard-to-reach object like a human brain. An example of such a transformation is the Radon transform, which enables one to reconstruct a function f of n(n ≥ 2) variables from the values of its integrals over all

40  Fractional Integral Transforms: Theory and Applications

hyperplanes of dimension n − 1. As a special case, if n = 2, the Radon transform F, can be measured physicall, and then one can use the Radon transform to reconstruct the function f (x, y) from the values of its integrals over all straight lines in the x-y plane. This was the main mathematical idea behind the invention of computerized tomography or CT scan. For more information on integral transforms and their applications, see [51, 52, 87, 88, 96, 117, 142, 243, 255, 256, 257, 298, 321, 341, 352, 361].

CHAPTER

3

Fractional Integral Transforms

3.1

INTRODUCTION

Fractional integral transforms have a relatively short history compared to the conventional integral transforms. But before we talk about fractional integral transforms, let us examine the word fraction. According to the Webster Dictionary: fraction means a piece broken off, or fragment, or portion of something. So, how does this apply to integral transforms? In general, a fractional integral transform is a variation of a known integral transform. It depends on some parameters and reduces to the known integral transform for special values of the parameters. For simplicity, if the fractional transform depends on one parameter only, say 0 ≤ α ≤ 1, it ought to reduce to the original transform when α = 1. In most cases, the fractional transform reduces to the identity transformation when α = 0. The term Fractional Integral Transform, to the best of my knowledge, started to appear in the literature in the early 1980s in the work of Victor Namias [217] who introduced an integral transform that generalized the Fourier transform and which he called the fractional order Fourier transform. Nowadays, there are several fractional integral transforms, such as fractional Hankel, fractional wavelets, fractional Radon, fractional Stockwell, fractional windowed Fourier transforms and so on. Most of them are related directly or indirectly to the fractional Fourier transform and because of this relationship we will begin our discussion by the latter. Namias introduced the concept of Fourier transform of fractional order in which the ordinary Fourier transform is regarded as a transform of order one and the identity transformation as a transform of order zero, and what is in between is called fractional Fourier transform. Moreover, he sought to maintain the additive property so that two successive applications of the transform of order one half would yield the ordinary Fourier transform. More explicitly, the fractional Fourier transform may be viewed as a family of transformations, {Fα } indexed by a parameter α, with 0 ≤ α ≤ 1, such that F0 is the identity transformation and F1 , is the standard Fourier transformation. That is F0 [f ] = f,

F1 [f ] = fˆ,

where fˆ is the Fourier transform of f, and, in addition, Fα Fβ = Fα+β . DOI: 10.1201/9781003089353-3

41

42  Fractional Integral Transforms: Theory and Applications

The range of the parameter does not have to be the interval [0, 1] because this interval can be mapped by a simple substitution into the interval [a, b], a < b. In fact, because of its periodicity, the fractional Fourier transform is parameterized by an angle 0 ≤ θ ≤ 2π, where F0 , is the identity transformation and the conventional Fourier transform is obtained when θ = π/2. This is one of the reasons that some authors call the fractional Fourier transform the angular Fourier transform. It is easy to show that Fθ = Fθ+2π , i.e., F0 [f ] = f,

Fπ/2 [f ] = fˆ,

Fπ [f (x)] = f (−x),

F2π [f ] = f.

(3.1)

Eq. (3.1) has a physical meaning in optics as we will see in a later chapter. Recall that the kernel K(t, x) of the Fourier transform is the exponential function eitx . The kernel of the fractional Fourier transform, Kα (t, x), 0 ≤ α ≤ 1, is a function that generalizes the exponential function but reduces to it when the parameter is equal to one. But there are a number of generalizations of the exponential function that depend on a parameter 0 ≤ α ≤ 1, and yield the exponential function when α = 1. As a result any integral transform with such a function as a kernel may be called fractional Fourier transform. The question is: What other properties do these functions share with the exponential function? and, What properties do these so-called fractional Fourier transforms share with the standard Fourier transform? In what follows we shall give examples of such functions. The idea of generalizing the sine, cosine and Fourier transforms, can be traced back to the work of W. H. Young in 1912 [329] who introduced infinite integrals involving a generalization of the sine and cosine functions, and hence, the exponential function. Young’s approach was to introduce the function Cp (t) =

∞ X tp+2k (−1)k k=0

Γ(p + 2k + 1)

;

0 ≤ p ≤ 2,

which yields C0 (t) = cos t, C1 (t) = sin t. He used this function to construct the following generalizations of the cosine, sine transforms and; hence, of the Fourier transform: fˆ(w) =

Z ∞

f (t)Cp (wt)dt. 0

The function Cp has other similar properties to the cosine and sine functions: Cp (t) = and

Z ∞

d Cp+1 (w), dt

e−t Cp (wt)dt =

0

wp , (1 + w2 )

which is a generalization of the relations Z ∞ 0

e−t sin(wt)dt =

w , (1 + w2 )

Fractional Integral Transforms  43

and

Z ∞

e−t cos(wt)dt =

0

1 . (1 + w2 )

To present another example of a fractional cosine, sine and Fourier transforms, let us recall from Chapter 1 that the Mittag-Leffler function is defined as ∞ X

(Ax)k . Γ(1 + αk) k=0

Eα,A (x) =

It is an entire function of order 1/α and type A. In particular, for α = 1, we have E1,A (x) = eAx . The Mittag-Leffler Transform of f (x) is defined as Z

Fα,A (t) =

f (x)Eα,A (tx)dx, R

whenever the integral exists [352]. For α = 1, A = 1, and f (x) = 0, x < 0, the Mittag-Leffler Transform reduces to the Laplace transform and for α = 1, A = i, we have the Fourier transform. Let us denote Eα,1 by Eα , for short and define Eα (ixα ) = cosα xα + i sinα xα , where cosα xα =

∞ X

(−1)k

k=1

and sinα xα =

∞ X

(−1)k

k=1

0 < α ≤ 1,

x2kα , Γ(2kα + 1)

x(2k+1)α . Γ(2kα + α + 1)

It is evident that for α = 1, these functions reduce to the cosine and sine functions. Using these functions as kernels, the author in [150, 151] obtained fractional cosine, sine and Fourier transforms; see also [192]. Another form of generalization of the cosine, sine and exponential functions are given by their q-analogue as follows. Consider the functions defined by Cq (cos θ; ω) =

(−ω 2 ; q 2 )∞ 2iθ −2iθ ; q; q 2 , −ω 2 ) 2 φ1 (−qe , −qe (−qω 2 ; q 2 )∞

and (−ω 2 ; q 2 )∞ Sq (cos θ; ω) = (−qω 2 ; q 2 )∞

2q 1/4 ω 1−q

!

cos θ

×2 φ1 (−q 2 e2iθ , −q 2 e−2iθ ; q 3 ; q 2 , −ω 2 ), where 0 < q ≤ 1. It can be shown that these functions reduce to the cosine and sine functions as q → 1.

44  Fractional Integral Transforms: Theory and Applications

The symbol r+1 φr stands for the function (see Section 1.2.8) ∞ X (a1 , . . . , ar+1 ; q)n n z . r+1 φr (a1 , . . . , ar+1 ; b1 , . . . , br ; q, z) = n=0

(q, b1 , . . . , br ; q)n

To see how these functions resembles the cosine and sine functions, first let us set w(cos θ) =

(e2iθ , e−2iθ ; q)∞ , sin θ (q 1/2 e2iθ , q 1/2 e−2iθ ; q)∞

W (x) =

p

1 − x2 w(x).

(3.2)

One interesting feature of these functions is that they form an orthogonal system on (−1, 1) like the system {1, cos nπx, sin mπx} , m, n = 1, 2, . . . . It has been shown [56, 292] that, Z 1 −1 Z 1 −1 Z 1 −1

=

Z 1

0

Cq (x; ω)Cq (x; ω )w(x) dx =

−1

Sq (x; ω)Sq (x; ω 0 )w(x) dx = 0 ,

Cq (x; ω)Sq (x; ω 0 )w(x) dx = 0, Cq2 (x; ω)w(x) dx

Z 1

=

(q 1/2 , −q 1/2 ω 2 ; q)∞ π (q, −ω 2 ; q)∞

−1

Sq2 (x; ω)w(x) dx

(−ω 2 ; q 2 )∞ 1/2 , −ω 2 ; −q 1/2 ω 2 ; q, q) 2 φ1 (q (−qω 2 ; q 2 )∞

where ω and ω 0 are different solutions of the equation √  √    −iω; q ∞ − iω; q ∞ 1 1/4 1/4 Sq (q + q ); ω = = 0. 2 2i(−qω 2 ; q 2 )∞

(3.3)

Let us denote the non-negative zeros of the above equation by ωn , where ω0 = 0, ω1 < ω2 < ... . The q-exponential function is defined as in the standard way ( see Ismail and Zhang [141] ) as Eq (x; iω) = Cq (x; ω) + iSq (x; ω).

(3.4)

Bustoz and Suslov [56, 292] proved that {Eq (x; iωn )}∞ n=−∞ is a complete orthogonal system 2 in L (−1, 1) with respect to the weight function w(x) and satisfies the orthogonality relation Z 1 −1

Eq (x; iωm ) Eq (x; −iωn )w(x)dx = 2k(ωn )δm,n ,

(3.5)

where k(ω) = π

(q 1/2 , −q 1/2 ω 2 ; q)∞ (−ω 2 ; q 2 )∞ 1/2 , −ω 2 ; −q 1/2 ω 2 ; q, q). 2 φ1 (q (q, −ω 2 ; q)∞ (−qω 2 ; q 2 )∞

(3.6)

Using the function Eq (x; iω) one may define a fractional Fourier transform that reduces to the Fourier transform as q → 1. For more details and generalizations of those functions, we refer the reader to the work of Ismail in [139, 140]. For other types of q-analogue of the Fourier and Hankel transforms, we refer the reader to the work of T. Koornwinder [164].

Fractional Integral Transforms  45

We close this section by another form of a fractional Fourier transform which was introduced in [283] and is given by Z

(Fα f )(w) =

ei(sign w)|w|

1/α t

f (t)dt,

w ∈ R and 0 < α ≤ 1,

R

For w > 0 and α = 1, we get the standard Fourier transform.

3.2

PRELUDE TO FRACTIONAL INTEGRAL TRANSFORMS

In the previous section we saw examples of generalizations of the exponential function that depend on a parameter, say 0 ≤ α, q ≤ 1, that yield the exponential function when the parameter is equal to one. Therefore, one may argue that any integral transform with such a function as a kernel, may be called a fractional Fourier transform. However, it is widely regarded by researchers in the field that the only authentic fractional Fourier transform is the one introduced by Namias because it generalizes in a natural way almost all the important properties of the Fourier transform and it extends its applications to new domains. Thus, from now on and throughout this book, the term fractional Fourier transform will refer to Namias’s fractional Fourier transform. In this section, we will briefly introduce Namias’s approach, which was used to obtain other fractional integral transforms, such as the fractional Hankel transform. A more extensive study of the fractional Fourier transform will be presented in subsequent chapters. 3.2.1 The Fractional Fourier Transform

Let’s recall that the eigenfunctions of the Fourier transformation as an operator F are the Hermite functions (see Section 1.2.3) defined as 2 /2

φn (x) = e−x

Hn (x),

n = 0, 1, 2, ...

where Hn (x) is the Hermite polynomial of degree n. The corresponding eigenvalues are exp(in π/2). That is F[φn (x)](w) = einπ/2 φn (w). It is also known that the Hermite functions are orthogonal basis of L2 (R); hence, for any f ∈ L2 (R), we have f (x) =

∞ X

an φn (x),

(3.7)

n=0

where the convergence is (at least) in the sense of L2 (R), and the expansion coefficients are given by Z ∞ 1 an = n √ f (x)φn (x)dx. (3.8) 2 n! π −∞ Namias introduced his fractional Fourier transform as follows. Consider the operator Fα satisfying the eigenvalue equation Fα [φn (x)] = einα φn (x).

46  Fractional Integral Transforms: Theory and Applications

The operator Fα is called the fractional Fourier transformation. It can be shown that using the differential equation for the Hermite functions y 00 − x2 y = −(2n + 1)y, the transformation Fα can be written in the form Fα = eiαA , where A=−

1 1 d2 + x2 − 1/2, 2 dx2 2

so that eiαA [φn (x)] = einα φn (x).

(3.9)

Equation (3.9 ) shows that the Hermite functions are also eigenfunctions of the operator eiαA , but with eigenvalues einα . On account of equation (3.7), the effect of Fα on f (x) is given by Fα [f ](x) =

∞ X

an einα φn (x).

(3.10)

n=0

The following properties of the fractional Fourier transform are evident from Eq. (3.10): 1. F0 = I, the identity operator, 2. Fπ/2 = F , where F is the Fourier transform, 3. Fα Fβ = Fα+β ˜ where I[f ˜ (x)] = f (−x), 4. Fπ = I, 5. Fα+2π = Fα . Property (4) follows from the fact that the Hermite functions φn (x) are even for n even and odd for n odd, i.e., φn (−x) = (−1)n φn (x). From Eqs. (3.7) and (3.8), we have Fα [f ](x) =

Z ∞ −∞

f (t)Kα (x, t)dt,

where ∞ 1 X 1 e−(x +t inα √ Kα (x, t) = √ φ (t)φ (x)e = n n π n=0 2n n! π 2

2 )/2

∞ inα X e n=0

2n n!

Hn (t)Hn (x).

Using Mehler’s formula [175, p. 61] (see Section 1.2.3) ∞ X Hn (x)Hn (t) n 1 z = √ n n=0

2 n!

!

2xtz − (x2 + y 2 )z 2 exp . 1 − z2 1 − z2

Fractional Integral Transforms  47

we obtain 2 +t2 )/2

(

2 +t2 )/2

(

e−(x

2xteiα − (x2 + t2 )e2iα q exp 1 − e2iα π(1 − e2iα )

Kα (x, t) =

e−(x

)

)

=

2xt − (x2 + t2 )eiα q exp e−iα − eiα π(1 − e2iα )

=

(x2 + t2 ) ieiα ixt q − +1 exp sin α 2 sin α π(1 − e2iα )

=

ixt (x2 + t2 ) q exp −i cot α . sin α 2 π(1 − e2iα )

(

1

1 π(1−e2iα )

The constant √

"

(

1

#)

)

may be simplified to

1 ei(π/4−α/2) q √ = √ = 2π sin α π(1 − e2iα ) 1



1 + i cot α √ . 2π

After some calculations, the kernel Kα (t, x) of the fractional Fourier transform is reduced to ei(π/4−α/2) ixt i(x2 + t2 ) cot α Kα (t, x) = √ exp − sin α 2 2π sin α h i d(α) = √ exp ib(α)xt − ia(α)(x2 + t2 ) 2π n h

!

io

= c(α) exp i b(α)xt − a(α)(x2 + t2 ) where a(α) =

cot α , 2

b(α) = csc α,

d(α) =



1 + i cot α

d(α) and, c(α) = √ . 2π

It is evident that Kα (t, x)√is symmetric in the variables t and x so that Kα (t, x) = Kα (x, t) and Kπ/2 (t, x) = (1/ 2π)eixt . Therefore, for all 0 ≤ α ≤ 2π, the one-dimensional fractional Fourier transform of a function f is given by Fα [f ](t) = Fα (t) = where Kα (t, x) =

Z ∞ −∞

f (x)Kα (t, x)dx

 −i[a(α)(t2 +x2 )−b(α)xt] ,   c(α) · e

δ(t − x),

  δ(t + x),

where a(α), b(α) are given as above, c(α) = Dirac delta function.

q

1+i cot α , 2π

α , pπ α = 2pπ α = (2p − 1)π

(3.11)

(3.12)

α ∈ R, p is an integer and δ is the

48  Fractional Integral Transforms: Theory and Applications

In the case where α = 2pπ, we rewrite Kα in the form (

tx (x2 + t2 ) +i Kα (x, t) = c(α) exp −i 2 tan α sin α (

)

(x − t)2 1 1 = c(α) exp −i + ixt − 2 tan α sin α tan α 

(

)

)

(x − t)2 = c(α) exp −i + ixt tan(α/2) , 2 tan α where

s

c(α) =

i + tan α . 2π tan α

Hence, with some easy calculations, one can show that the limit of Kα (x, t) may be put in the form s

i −i lim Kα (x, t) = lim exp (x − t)2 α→0 α→0 2π tan α 2 tan α n o 1 1 = lim √ exp −(x − t)2 /λ2 α→0 πλ = δ(t − x), where 1/λ =

p





i/(2 tan α). The last step follows from the known relation 2

2

−ex /w lim √ = δ(x); w→0 πw see Eq. (1.26). The proof for the case α = (2p + 1)π is similar. 3.2.2 The Fractional Hankel Transform

The second fractional integral transform introduced in the literature was the fractional Hankel transform, also introduced by Namias in [218, 362]. Namias used the method he developed to derive the fractional Fourier transform to obtain a fractional Hankel transform. Recall (Chapter 2) that the Hankel transform pair of order ν is given by Hπ [f ] = F (t) =

Z ∞

Z ∞

xf (x)Jν (tx)dx,

f (x) =

0

tF (t)Jν (tx)dt, 0

where Jν is the Bessel function; see Section 1.2.6. Namias denoted the Hankel transform by Hπ for reasons to be clear later. Observing that the functions φνn (x) = xν e−x

2 /2

Lνn (x2 ),

are the eigenfunctions of the Hankel transform with eigenvalues (−1)n , where Lνn (x) are the generalized Laguerre polynomials (see Section 1.2.4), i.e. Hπ [φνn (x)] = einπ φνn (x).

Fractional Integral Transforms  49

Namias sought a fractional transform, as he did with the Fourier transform, such that Hα [φνn (x)] = einα φνn (x).

(3.13)

The fractional operator Hα may also be represented in the form eiαA , where A=−

1 d x2 ν2 (ν + 1) 1 d2 − + + − . 2 2 4 dx 4x dx 4 4x 2

Using the fact that the generalized Laguerre polynomials form a complete orthogonal system in L2 [0, ∞), with the orthogonality relation Z ∞ 0

e−y y ν Lνn (y)Lνm (y)dy =

Γ(ν + n + 1) δm,n , n!

m, n = 0, 1, 2, . . . ,

we have for an appropriate function f, the expansion f (x) =

∞ X

an φνn (x),

(3.14)

n=0

where the coefficients an are given by an =

2n! Γ(ν + n + 1)

Z ∞

f (y)e−y

2 /2

0

y ν+1 Lνn (y 2 )dy.

Thus, it follows in view of Eqs. (3.13) and (3.14) that Hα [f (x)] =

∞ X

einα an φνn (x).

n=0

Taking account of the formula (see Section 1.2.4) ∞ X

n!einα Lνn (x2 )Lνn (y 2 ) Γ(ν + n + 1) n=0 #

"

=

eiα (x2 + y 2 ) xy (xy)−ν e(iν/2)(π/2−α) exp − Jν , iα iα 1−e 1−e sin(α/2) 



we obtain, with some calculations, the fractional Hankel transform formula Hα [f ](x) = ×

ei(ν+1)(π/2−α/2) ix2 exp − cot(α/2) sin(α/2) 2 Z ∞ 0

!

!

iy 2 xy yf (y) exp − cot(α/2) Jν dy, 2 sin(α/2)

which reduces to the Hankel transform when α = π.





50  Fractional Integral Transforms: Theory and Applications

3.3

GENERAL CONSTRUCTION OF FRACTIONAL INTEGRAL TRANSFORMS

In this section, we present a general approach to constructing fractional integral transforms that yields Namias’s fractional Fourier and Hankel transforms as special cases. For more details, we refer the reader to [343]. Let H be a separable Hilbert space with inner product h , i, and A be a continuous linear transformation on H with a complete set of normalized eigenvectors {φn }∞ n=0 such that ∞ kφn k = 1. Let the corresponding eigenvalues be denoted by {λn }n=0 so that A[φn ] = λn φn for all n = 0, 1, 2, . . . . A prototype of the operator A is any self-adjoint, compact operator. If f ∈ H, we have f=

∞ X

hf, φn iφn =

fˆn φn ,

n=0

n=0

where

∞ X

fˆn = hf, φn i.

It follows that A[f ] =

∞ X

λn hf, φn iφn ,

n=0

provided that the series converges. A sufficient condition for this to hold is that {λn }∞ n=0 be uniformly bounded. For,

2 n n

X

X

ˆ λk fk φk = |λk |2 |fˆk |2

k=m

k=m

≤ sup |λk |2 k

n X

|fˆk |2 → 0

as m, n → ∞.

k=m

We now define the fractional transformation of order 0 ≤ α of the operator A, denoted by Aα , as Aα f =

∞ X

λα n hf, φn iφn ,

(3.15)

n=0 α ∞ whenever the series converges. If {λn }∞ n=0 is uniformly bounded, so is {λn }n=0 and the operator Aα is well defined, but multi-valued because the power function, f (z) = z α , is a multi-valued function. The operator is unique once the branch of the power function is determined. In most cases the principal branch is chosen. For more details, see [220, p. 139-142]. Let I = (a, b), where −∞ ≤ a < b ≤ ∞ and L2ρ (I) be the Hilbert space of all square integrable functions on I, with respect to a measure dρ. Let A, φn and λn have the same meaning as above and assume that φn (x) ∈ L2ρ (I). If ∞ X n=0

|λn |2α |φn (x)|2 < ∞,

(3.16)

Fractional Integral Transforms  51

it is easy to see that for each fixed x, the function kα (x, t), defined by ∞ X

kα (x, t) =

λα n φn (x)φn (t).

n=0

is in L2ρ (I) as a function of t. For, kkα k2t

Z

2

= I

|kα (x, t)| dρ(t) =

∞ X

|λn |2α |φn (x)|2 < ∞.

n=0

Since for each fixed x, the series defining kα (x, t) converges to it in the sense of L2ρ (I), it also converges to it weakly. Therefore, we can interchange the inner product and summation to obtain an integral representation of the operator Aα given by (3.15) as Z

Aα [f ](x) =

f (t)k α (x, t) dρ(t) = hf (t), kα (x, t)i.

I

It is evident that the transformation Aα satisfies the following analogous properties to those of the fractional Fourier transform Fα : 1. A0 = I 2. A1 = A 3. Aα Aβ = Aα+β If, in addition λn = eiβn for some β, then the transformation is periodic with period 2π/β, i.e., Aα+2π/β = Aα . Let us consider the case where the eigenvalues of A are of the form λn = λn , where λ = |λ|eiβ so that Aφn = λn φn , and require that the series ∞ X

λn |φn (x)|2 < ∞,

for |λ| < 1.

(3.17)

n=0

This series converges if, for example, φn (x) = O(np ) for some p and all x as n → ∞. We now define the fractional (angular) transform, Aα , of order 0 ≤ α ≤ 1 as Aα [f ](x) = lim

|λ|→1−

∞ X

nα inαβ

|λ|

e

hf, φn iφn (x) =

n=0

∞ X

einαβ hf, φn iφn (x),

n=0

whenever the last series converges. This definition yields the integral representation Z

Aα [f ](x) =

lim

|λ|→1− I

f (t)k α (x, t, λ) dρ

Z

= I

Z

f (t)k α (x, t, 1) dρ =

I

f (t)k α (x, t) dρ

or Aα [f ](x) = lim hf (t), kα (x, t, λ)i = hf (t), kα (x, t)i, |λ|→1−

(3.18)

52  Fractional Integral Transforms: Theory and Applications

where kα (x, t, λ) =

∞ X

|λ|nα e−inαβ φn (x)φn (t),

n=0

and kα (x, t) =

∞ X

e−inαβ φn (x)φn (t).

(3.19)

n=0

If we use the polar coordinates, (r, θ), the kernel kα (x, t) can be viewed as the radial limit of the function kα (x, t, λ) as |λ| → 1 along the ray θ = α. This gives more meaning to the phrase angular transform as it has been used in connection with the fractional Fourier transform. 3.3.1 Examples of the General Construction

We now demonstrate our definition of a fractional integral transform with the following examples, which include Namias’s fractional Fourier and Hankel transforms as special cases. Example 1: (The Fractional Fourier Transform) Let I = R, H = L2 (R), and φn be the Hermite functions φn (x) = q

1

2 /2

e−x √ 2n n! π

Hn (x),

and the transformation A be the Fourier transformation so that where λn = einβ , where β = π/2.

A[φn (x)] = λn φn (x),

To obtain an integral representation of Aα , we combine (3.18) and (3.19) Aα [f ](x) =

∞ X

inαβ

Z ∞

e

−∞

n=0 Z ∞

= −∞



f (t)φn (t)dt φn (x)

f (t)kα (x, t) dt ,

where kα (x, t) =

∞ X

α , nπ; n = 0, 1, 2, 3, . . . ,

einαπ/2 φn (t)φn (x).

n=0

On account of Mehler’s formula, we obtain after some calculations 2xteiαβ − (x2 + t2 )e2iαβ 1 2 2 e−(x +t )/2 exp kα (x, t) = √ √ 1 − e2iαβ π 1 − e2iαβ

!

which can be simplified to ei(π/4−απ/4) ixt i(x2 + t2 ) cot(απ/2) kα (x, t) = p exp − sin(απ/2) 2 2π sin(απ/2) h i c(α) = √ exp ib(α)xt − ia(α)(x2 + t2 ) , 2π

!

,

Fractional Integral Transforms  53

where cot(απ/2) , 2

a(α) =

b(α) = csc(απ/2)

and

c(α) =

q

1 + i cot(απ/2) .

The discrepancy between our formula and Namias’s formula is that in Namias’s formula the standard Fourier transform is obtained when α = π/2 while in ours it is obtained when α = 1. Example 2: (The Fractional Mellin Transform) The Mellin transform of a function f (t) is defined as

Z ∞

F (ω) =

tω−1 f (t) dt.

0

It can be obtained from the Fourier or the two-sided Laplace transforms by a change of variables. Likewise, we define the fractional Mellin transform of a function f˜(x) as Z ∞

c(α) F˜ (ω) = √ 2π

xiω(csc α)−1 f˜(x) dx.

0

This is obtained from the fractional Fourier transform with kernel kα (ω, t) by setting x = et ,

f˜(x) = f (ln x) exp[−ia(α)(ln x)2 ] and

2 F˜ (ω) = eia(α)ω F (ω).

Example 3: (The Fractional Hankel Transform ) Let I = R+ = (0, ∞), H = L2 (0, ∞) and s

φνn (x) =

n! e−x/2 xν/2 Lνn (x), Γ(n + ν + 1)

ν > −1,

where Lνn (x) is the generalized Laguerre polynomial of degree n and index ν. We choose the transformation A to be the Hankel transformation ν

Z ∞

A [f ](x) =

√ f (t)Jν ( xt)dt ,

0

where Jν (z) is the Bessel function of the first kind and order ν. In Formula 7.4.21 (4) in [117], which states that Z ∞

ν+1 −βx2

x 0

e

"

Lνn (ax2 )Jν (xy)dx

where a, Re β > 0, Re ν > −1, if we put x = Aν [φνn ](u) =

Z ∞ 0

#

(β − a)n ay 2 2 = ν+1 ν+n+1 y ν e−y /(4β) Lνn , 2 β 4β(a − β) √

z, a = 1, β =

√ φνn (z)Jν ( uz)dz = λn φνn (u),

1 2

and y =



u, we obtain

λn = 2(−1)n = 2einπ .

54  Fractional Integral Transforms: Theory and Applications

Therefore, the fractional Hankel transform of order α is defined as Aνα [f ](x) = where kαν (x, t) =

Z ∞ 0

∞ X

f (t)kαν (x, t)dt,

2α einπα φνn (x)φνn (t).

n=0

To calculate

kαν (x, t)

explicitly, recall that

kαν (x, t) = lim kαν (x, t, λ) = 2α |λ|→1−

∞ X

λαn φνn (x)φνn (t),

n=0

where λ = |λ|eiπ . We now appeal to formula (4.17.6) in [175, p. 79] ∞ X n=0

n! Lν (x)Lνn (t)z n Γ(n + ν + 1) n    √  2 xyz 1 (x + t)z 1 = exp − Iν ; (1 − z) (xtz)ν/2 1−z 1−z

|z| < 1,

where Iν (z) is the modified Bessel function of the first kind and order ν, and set z = λα to obtain

=

2α (1 − λα )λαν/2

∞ X

n! Lνn (x)Lνn (t)λαn Γ(n + ν + 1) n=0 ! √   (x + t)(1 + λα ) 2 xtλα exp − Iν , 2(1 − λα ) 1 − λα ν

kαν (x, t, λ) = 2α e−(x+t)/2 (xt) 2

where λα = |λ|α eiπα . Taking the limit as |λ| → 1, we obtain after some calculations √ ! π   i2α−1 e−iα 2 (1+ν) i(x + t) απ i xt ν . (3.20) kα (x, t) = exp − cot Iν sin απ 2 2 sin απ 2 2 Because Iν (z) = (1/i)ν Jν (iz) and Jν (−z) = (−1)ν Jν (z), we have the following definition of the fractional Hankel transform. Definition 9. The fractional Hankel transform Aνα (ν ≥ 0, 0 < α ≤ 1) of a function f (t) is defined as √ ! π   Z ei 2 (1+ν)(1−α) ∞ i(x + t) xt απ ν Aα [f ](x) = 1−α f (t) exp − dt, cot Jν απ  2 sin 2 2 2 sin απ 0 2 whenever the integral exists.

Fractional Integral Transforms  55

Clearly, Aν1 [f ] = Aν [f ] and Aν0 [f ] = f as can be seen from (3.15). One can also verify that the above kernel tends to the delta function as α → 0. Furthermore, we can obtain another version of the sine and cosine transforms in view of the relations s

J1/2 (x) =

2 sin x, and J−1/2 (x) = πx 

s

2 cos x, πx 

x > 0.

Our definition of the fractional Hankel transform agrees with that given in [9, 189, 218]. But our derivation is not only more general than theirs, but also provides a systematic and unified way to treat all these fractional transforms. The fractional Hankel transform is particularly useful when axial symmetry is present. To demonstrate that, we start by defining the fractional Fourier transform in two dimensions, then show how it can be reduced to the fractional Hankel transform given above. Let x = hx1 , x2 i and t = ht1 , t2 i be two-dimensional vectors. We use the standard notation x · t = x1 t1 + x2 t2 and kxk = x · x = x21 + x22 . Definition 10. We define the two-dimensional fractional Fourier transform (of order α) of a function f (t1 , t2 ) as Fα (x1 , x2 ) = Fα [f ](x1 , x2 ) Z Z n h io c(α) ∞ ∞ = √ f (t1 , t2 ) exp −ia(α) kxk2 + ktk2 − 2(x · t)b(α) dt1 dt2 2π −∞ −∞ where a(α) and c(α) are as defined before and b(α) = sec α. Let x1 = r cos θ,

x2 = r sin θ,

t1 = ρ cos φ,

t2 = ρ sin φ,

and assume that f is axially symmetric, i.e., independent of φ. Set Gα (r, θ) = Fα (r cos θ, r sin θ) and

g(ρ) = f (ρ cos φ, ρ sin φ).

Thus, c(α) Gα (r, θ) = √ × 2π Z ∞ Z 2π 0

n

h

io

g(ρ) exp −ia(α) r2 + ρ2 − 2rρb(α) cos(φ − θ)

ρdρdφ

0

∞ 2π i 2 c(α) i 2 = √ e− 2 r cot α g(ρ)e− 2 ρ cot α exp {irρ csc α cos(φ − θ)} ρdρdφ 2π 0 0 Z Z 2π i 2 c(α) − i r2 cot α ∞ = √ e 2 g(ρ)e− 2 ρ cot α ρdρ eirρ csc α cos(φ−θ) dφ. 2π 0 0

Z

Z

Using the relation (see Section 1.2.6) x p 2

 Jp (x) = √ 2 π Γ p + 21

Z 2π 0

(sin ψ)2p eix cos ψ dψ,

56  Fractional Integral Transforms: Theory and Applications

we obtain Gα (r, φ) =

q

2π(1 + i cot α)e

− 2i r2 cot α

Z ∞

i 2 cot α

g(ρ)− 2 ρ

ρJ0 (rρ csc α)dρ,

0

which means, apart from a multiplicative constant, that Gα is the fractional Hankel transform of g with the Bessel function of order zero as the kernel. To see that, set x = r2 , t = ρ2 , g(ρ) = f (ρ2 ) in Definition 9 and then replace α by 2α/π.

3.3.2 Fractional Integral Transforms Associated With the Jacobi Polynomials

Example 4: Let I = (−1, 1), H = L2 (I), and 1 ψn(α,β) (x) = q (1 − x)α/2 (1 + x)β/2 p(α,β) (x), n (α,β) hn (α,β)

where pn

α, β > −1,

(x) is the Jacobi polynomial of degree n (see Section 1.2.5), and h(α,β) = n n

(α,β)

It is known that ψn

(x)

2α+β+1 Γ(n + α + 1)Γ(n + β + 1) . (2n + α + β + 1) Γ(n + 1)Γ(n + α + β + 1) o∞ n=0

is an orthonormal basis of L2 (I). To obtain the series

∞ X

λn ψn(α,β) (x)ψn(α,β) (t)

n=0

in closed form, we first make the change of variable x = cos 2θ and t = cos 2φ, and use formula (2.3) in [24] ∞ X

∞ X

λn ψn(α,β) (x)ψn(α,β) (t) =

n=0

λn ψn(α,β) (cos 2θ)ψn(α,β) (cos 2φ)

n=0

= 2α+β (sin θ sin φ)α (cos θ cos φ)β

∞ X

cn p(α,β) (cos 2θ)p(α,β) (cos 2φ)λn n n

n=0

Γ(α + β + 2)(1 − λ) = (sin θ sin φ)α (cos θ cos φ)β 2Γ(α + 1)Γ(β + 1)(1 + λ)α+β+2 !

F4

α+β +2 α+β +3 a2 b2 , ; α + 1, β + 1; 2 , 2 , (3.21) 2 2 k k

where a = sin θ sin φ, cn =

b = cos θ cos φ,

k=

1 2

√

1 λ+ √ , λ

(2n + α + β + 1) Γ(n + 1)Γ(n + α + β + 1) , 2α+β+1 Γ(n + α + 1)Γ(n + β + 1)



Fractional Integral Transforms  57

and F4 (a, b; c, c0 ; x, y) is Appell’s hypergeometric function of the fourth type and two variables [284, p. 53], defined by the equation F4 (a, b; c, c0 ; x, y) =

∞ X ∞ X (a)r+s (b)r+s r=0 s=0

r!s!(c)r (c0 )s

with (a)k = a(a + 1)(a + 2) · · · (a + k − 1) =

xr y s ,

Γ(a + k) . Γ(a)

The series in (3.21) converges for all θ and φ since k ≥ 1. A more convenient form of (3.21) can be obtained by applying a transformation of Watson [307] to reduce it to ∞ X

×

n=0 ∞ X

λn ψn(α,β) (cos 2θ)ψn(α,β) (cos 2φ) = 2α+β (sin θ sin φ)α (cos θ cos φ)β λn cn p(α,β) (cos 2θ)p(α,β) (cos 2φ) n n

n=0 ∞ (1 − λ) zJα (z sin θ sin φ)Jβ (z cos θ cos φ)  √ α+β+2 0 8 i λ  √  iz 1 × exp dz λ+ √ 2 λ Z ∞ −1 d √ = Jα (z sin θ sin φ)Jβ (z cos θ cos φ) α+β−1 dλ 0 2(i λ)  √  iz 1 × exp dz. λ+ √ 2 λ

Z

=

(α,β)

Thus, the kernel of the associated transform Aa ka(α,β) (x, t, λ) =

∞ X

, 0 ≤ a ≤ 1 is given by

λan ψn(α,β) (x)ψn(α,β) (t)

n=0

Z ∞

= C(λ) 0



zJα (z sin θ sin φ)Jβ (z cos θ cos φ) exp

where C(λ) =

 iz  a/2 λ + λ−a/2 dz, 2 

(1 − λa ) 8 iλa/2

α+β+2 .

Therefore, the associated angular (fractional) integral transform of order a taken along the ray arg λ = δ in the complex λ-plane is defined as A(α,β) [f ](x) = a

Z 1 −1

f (t)ka(α,β) (x, t, eiδ )dt.

Putting x = cos 2θ and t = cos 2φ, we obtain A(α,β) [f ](cos 2θ) = 2 a

Z π/2 0

f (cos 2φ)ka(α,β) (cos 2θ, cos 2φ, eiδ ) sin 2φ dφ,

58  Fractional Integral Transforms: Theory and Applications

or A(α,β) [f ](cos 2θ) = Fa(α,β) (cos 2θ) a =

sin(aδ/2) α+β+3 2(i) eiaδ(α+β+1)/2

Z π/2

f (cos 2φ) sin 2φ dφ 0

Z ∞ 0

3.4

zJα (z sin θ sin φ)Jβ (z cos θ cos φ) exp (iz cos(aδ/2)) dz.

FRACTIONAL DERIVATIVES AND INTEGRALS VERSUS FRACTIONAL INTEGRAL TRANSFORMS

In the next example we will show how the general procedure for constructing fractional integral transforms presented in the previous section can be used to obtain the RiemannLiouville fractional integral of a function and how it is related to fractional derivatives. As an introduction to the next example, let us recall the definitions of fractional integrals and derivatives. Because integration may be viewed as an inverse operation to differentiation, it is natural to associate with it the symbol d−1 /dx−1 . Thus, we adopt the notation d−1 f = dx−1

Z x

f (t)dt. a

(3.22)

Despite its popularity, this notation is rather ambiguous because it does not display the dependence of the definite integral on the lower limit of integration. Nevertheless, we shall use it because the role that the lower limit of integration plays in our investigation is minor. From (3.22), we obtain by successive integration d−n f 1 = dx−n (n − 1)!

Z x

(x − t)n−1 f (t) dt.

a

Thus, if we replace n by a non-negative number q, we obtain Riemann’s definition of the qth integral of a function f as d−q f 1 = −q dx Γ(q)

Z x

(x − t)q−1 f (t)dt.

a

For example, if a = 0, the qth integral (q > 0) of xp , where p > −1, can be evaluated with the aid of the Beta Function to yield x d−q p 1 x = (x − t)q−1 tp dt dx−q Γ(q) 0 Z xp+q 1 Γ(p + 1) q+p = (1 − t)q−1 tp dt = x . Γ(q) 0 Γ(q + p + 1)

Z

(3.23)

Using Riemann’s definition of a fractional integral, we can now define the fractional derivative as follows [352, Ch. 20].

Fractional Integral Transforms  59

Definition 11. The Riemann–Liouville fractional derivative operator of order q is defined as  R  1/Γ(−q) x (x − t)−q−1 f (t)dt , q < 0 q d a Dxq f (x) = q f (x) = m d q−m  dx f (x)) , q ≥ 0, m (Dx dx

where

dm 1 dm q−m (D f (x)) = dxm x Γ(m − q) dxm

Z x

(x − t)m−q−1 f (t)dt,

a

and m − 1 ≤ q < m , m = 1, 2, 3, . . . . The Weyl fractional integral of order q is defined as 1 (Wq f )(x) = Γ(q)

Z ∞

(t − x)q−1 f (t)dt.

x

Example 5: (The Fractional Riemann-Liouville Integral) [344, 350]. Let I = √ [0, 2π], H = L2 (I) and φn (x) = (1/ 2π)einx , for n = 0, ±1, ±2, . . . Define the transformation (integrator) A by φn (x) , in

A[φn (x)] = Hence, Am [φn (x)] =

φn (x) , (in)m

n , 0.

n , 0 and m = 0, 1, 2, . . . .

For any f ∈ L2 (I) that is periodic with period 2π and satisfies Z 2π

f (t)dt = 0, 0

we have the Fourier series expansion f (x) =

X

fˆn φn (x),

n,0

where fˆn =

Z 2π

f (t)φn (t) dt,

0

and

P

n,0

means

P∞

n=−∞,n,0

. Consequently,

Am [f (x)] =

φn (x) fˆn , (in)m n,0 X

m = 0, 1, 2, . . . ,

and we define the fractional operator Aα by Aα [f (x)] =

φn (x) fˆn , (in)α n,0 X

0 ≤ α ≤ 1.

(3.24)

Here we shall use Zygmund’s notation [372, Ch. XII, p. 134], to show that Aα [f (x)] can be represented by a fractional integral transform in the form α

Z 2π

f (t)kα (x, t) dt ,

A [f (x)] = 0

(3.25)

60  Fractional Integral Transforms: Theory and Applications

where kα (x, t) = Ψα (x) = It is easy to see that

1 1 X ein(x−t) φ (x)φ . (t) = n n (in)α 2π n,0 (in)α n,0 X

h

i

Aα Aβ [f (x)] = Aα+β [f (x)]. We may write (3.25) in the form Aα [f (x)] =

1 2π

where Ψα (x) = with γn(α)

= (in)

−α

−α

= |n|

Z 2π

f (t)Ψα (x − t) dt ,

α > 0,

(3.26)

0

X einx

(in)α n,0

=

X

γn(α) einx ,

(3.27)

n,0

1 exp − iπα sgn n 2 



(α)

for n , 0, γ0

= 0.

Because the sequence {1/nα } tends to zero monotonically, the series in (3.27) converges uniformly in each interval of type [, 2π − ],  > 0; see Ch. I, Eq. (2.6) in [372]. And by (1.5) and (1.14) of Ch. V [372] (see also p. 186), the series (3.27) is the Fourier series of an integrable function Ψα (x). Since Ψα (x) is integrable and f ∈ L2 (I) ⊂ L1 (I), the integral in (3.26), being a convolution of two integrable functions, exists and defines an integrable function, namely Aα [f (x)]. Moreover, it follows from Theorem 4.4, Ch. III (see also p. 94) that the series (3.24) converges almost everywhere to Aα [f (x)] and it is the Fourier series of Aα [f (x)]. Now we examine the relationship between fractional derivatives and fractional integral transforms. The fractional derivative f (α) of f of order 0 < α < 1 is defined as f (α) (x) =

d 1−α A [f (x)], dx

0 ≤ α ≤ 1,

and hence if A1−α [f (x)] is absolutely continuous, we have f (α) (x) =

1 X (in)α fˆn einx . (in)α fˆn φn (x) = √ 2π n,0 n,0 X

If α > 0 is arbitrary, we define f (α) (x) =

dn n−α A [f (x)], dxn

0 ≤ α,

where n is the least integer greater than α. It can be shown that for 0 ≤ α and 0 ≤ x ≤ 2π [372, Ch. XII, (8.8)] 2π nα lim xα−1 + (x + 2π)α−1 + · · · (x + 2nπ)α−1 − (2π)α−1 . Γ(α) n→∞ α 

Ψα (x) =



Fractional Integral Transforms  61

Thus, if f is periodic with period 2π and its integral vanishes over a period, then 1 2π

Z 2π 0

1 f (x − t)Ψα (t) dt = lim n→∞ Γ(α) Z ∞

1 = Γ(α) or Aα [f (x)] =

1 Γ(α)

Z 2π

f (x − t)

0

n X

(t + 2kπ)α−1 dt

k=0

f (x − t)tα−1 dt,

0

Z x

f (t)(x − t)α−1 dt,

−∞

which is related to the Weyl fractional integral of f of order α.

3.5

OTHER FRACTIONAL INTEGRAL TRANSFORMS

Because the Fourier transform is related to other integral transforms and the exponential function is used in other transforms, fractional versions of those transforms have been introduced by replacing the kernel of the Fourier transform by the kernel of the fractional Fourier transform. Examples of such transforms are the fractional Radon transform [333], fractional wavelet [198, 272, 275, 283, 363], fractional shearlets [188] and fractional Gabor transform. Different versions of those transforms have also been introduced. For example, in one version of the fractional wavelet transform F α (a, b) of f with respect to a mother wavelet ψ, the wavelet transform is defined as F α (a, b) =

Z

Fα (x)ψa,b (x)dx, R

where Fα is the fractional Fourier transform of f . In another version, F α (a, b) =

Z

α f (x)ψa,b (x)dx,

R 2

2

α = ψ e−i(t −b )/2 cot α . where ψa,b a,b The fractional Gabor (windowed Fourier transform) is defined as the standard Gabor transform but with the exponential function being replaced by the kernel of the fractional Fourier transform, i.e.,

Z

F (t, w) =

f (x)g(t − x)kα (x, w)dx,

R

where kα is the kernel of the fractional Fourier transform and g is the Gaussian function. For related work, see [83, 166, 268, 283].

CHAPTER

4

The Fractional Fourier Transform (FrFT)

In Chapter 3 we derived the integral representations of several fractional integral transforms, among them was the fractional Fourier transform. In this chapter, we will discuss in more details properties of the fractional Fourier transform, its existence and operational calculus. But we will begin by a historical introduction to give the reader an overview of the development of the subject over the last four decades and then proceed to discuss the properties of the transform.

4.1

HISTORICAL OVERVIEW

The subject of fractional integral transforms started in 1980 with the introduction of the fractional Fourier transform (FrFT) by Victor Namias in his seminal paper The fractional order Fourier transform and its application to quantum mechanics [217]. The fractional Fourier transform, which is a generalization of the Fourier transform, has gained considerable attention in recent years because of its important applications in signal analysis, optics and signal recovery, and also because of its ability to treat some mathematical problems that could not otherwise be handled by the standard Fourier transform. Although Namias was the first to explicitly use the term fractional order Fourier transform, his ideas appeared implicitly in the work of N. Wiener in 1929 [316] in which he sought to bring out the relationship between the expansion of a function in a series of orthogonal Hermite functions and its Fourier transform. He then used this relationship to extend certain results of Hermann Weyl which led to what Wiener called Fourier development of fractional order. Another historical thread to the fractional Fourier transform can be traced to the work of E. Condon in 1937 [79]. To shed light on Condon’s work, let us recall that the Fourier transform of a function f is given by Z 1 ˆ F[f ](x) = f (x) = √ f (t)eixt dt, (4.1) 2π R and its inverse is given by Z 1 −1 ˆ √ fˆ(x)e−ixt dx, (4.2) F [f ](t) = f (t) = 2π R DOI: 10.1201/9781003089353-4

62

The Fractional Fourier Transform (FrFT)  63

whenever the integrals exist. It is easy to see that the Fourier transformation F as an operator satisfies the relations F[f ] = fˆ,

F[fˆ] = F 2 [f ] = f (−x),

F 3 [f ] = fˆ(−t),

F 4 [f ] = f,

(4.3)

and f = F −1 [fˆ] = F −1 F[f ], which shows that the Fourier transformation is of period 4. Observing that the Fourier transformation generates a cyclic group of order 4 that is isomorphic to the group of rotations of a plane about a fixed point through multiples of a right angle, E. Condon, in his article Immersion of the Fourier transform in a continuous group of functional transformations [79] showed that there exists a continuous group of functional transformations containing the ordinary Fourier transforms as a subgroup. He then proceeded to obtain an explicit representation of that group and, hence, obtained a representation of the fractional Fourier transform but without calling it that. Condon’s paper did not receive much attention, but a reference to it as a footnote was cited in V. Bargmann’s paper On a Hilbert Space of Analytic Functions and an Associated Integral Transform in which he studied a Hilbert space of analytic functions and a transformation acting on it given by an integral transform which is now known as the Bargamnn transform [25, 26]. Approximately two years after the publication of Condon’s paper, H. Kober [163] in an article written in German but published in an English journal, Quarterly Journal of Mathematics (Oxford University) obtained what he called roots of Hankel, Fourier and other continuous transformations and in which he derived the fractional Hankel and Fourier transforms. In that article Kober cited a paper by E. Hille [132] on semi-groups of transformations in Hilbert spaces which appeared in the Proceedings of the National Academy of Science in 1938, but there was no mention of Condon’s paper which appeared in the same journal a year earlier. There is considerable overlap between Condon’s and Kober’s papers but in Kober’s paper the kernels of the fractional Hankel and Fourier transforms were explicitly given. Another link to the fractional Fourier transform appeared in the work of N. G. De Bruijn [50] and his investigation of the Wigner distribution and Weyl correspondence. This link comes as no surprise since, as we will see later, the Wigner distribution and the fractional Fourier transform are closely related. De Bruijn obtained an integral transform that resembles the fractional Fourier transform but with the cosine and sine functions appearing in the kernel of the fractional Fourier transform were replaced by the cosh and sinh functions. Unaware of Wiener’s and Condon’s work, V. Namias in 1980 [217] introduced a transform, which he called the fractional order Fourier transform, to solve ordinary and partial differential equations arising in quantum mechanics from classical quadratic Hamiltonians. In Namias’s work the fractional Fourier transforms {Fθ∈T } , were indexed by a parameter θ ∈ T = R/2πZ and formed a cyclic group of order 4 with F0 = I = F2π , Fπ/2 = F, F−π/2 = F −1 , where I is the identity transformation and F is the conventional Fourier transformation.

64  Fractional Integral Transforms: Theory and Applications

McBride and Kerr [193, 194] and Kerr [157, 158, 159, 160], put Namias’s work on a more solid foundation by providing it with more rigorous arguments. More than ten years after the publication of Namias’s work, D. Mustrad [215, 216] derived some results concerning the fractional Fourier transform, such as a fractional convolution, uncertainty principle, and its relationship with the Wigner distribution, but he referred to the transform as the Condon-Bargmann fractional Fourier transform. It is somewhat intriguing that Mustard used Namias’s definition and derivation of the fractional Fourier transform without ever citing Namias’s work. Not much was reported on the fractional Fourier transform since the publication of McBride and Kerr’s papers until the early 1990’s when A. Lohmann, D. Mendlovic, H. Ozaktas and L. Almeida published a number of papers on the implementation and application of the fractional Fourier transform in optics and signal processing [185, 186, 187, 197, 199, 200, 201, 220, 221, 222, 223, 224, 225, 226, 227]. This was a turning point on the development of the subject that has resulted in hundreds of publications so far. The transform has become the focus of many research papers because of its different applications in many fields [6, 7, 8, 12, 13, 14, 15, 16, 27, 32, 33, 54, 61, 62, 65, 66, 69, 99, 100, 119, 126, 162, 169, 170, 174, 182, 183, 189, 190, 202, 203, 221, 227, 233, 234, 235, 238, 239, 240, 241, 244, 245, 250, 259, 267, 285, 291, 325, 332, 339, 348, 350]

4.2

PRELIMINARIES

In this section, we will discuss some analytic properties of the fractional Fourier transform, its existence, and domain of definition. To begin, let us recall the definition of the transform and some of the notation associated with it. The fractional Fourier Transform or FrFT of a function f (t) ∈ L1 (R), is defined as [15, 16, 220], Fθ [f ] (x) = Fθ (x) =

Z ∞ −∞

f (t)Kθ (x, t) dt,

(4.4)

where

Kθ (x, t) =

 −i a(θ)(t2 +x2 )−b(θ)xt]  , θ , pπ  c(θ) · e [

δ(t − x),   δ(t + x),

θ = 2pπ θ = (2p − 1)π

(4.5)

is the transformation kernel with a(θ) = cot θ/2, To accommodate for

b(θ) = csc θ

and c(θ) =

q

1+i cot θ . 2π

√ 2π which appears in some formulas, we may occasionally, write √ √ c(θ) = d(θ)/ 2π, where d(θ) = 1 + i cot θ.

The kernel Kθ (t, x), which is clearly symmetric in x and t, is parameterized by an angle θ ∈ R and p is an integer. For simplicity, we may write a, b, c or aθ , bθ , cθ instead of

The Fractional Fourier Transform (FrFT)  65

a(θ), b(θ) and c(θ). The special cases where θ = 0, π/2, and π yield the following FrFT of f: F0 [f ](u) = f (u), Fπ/2 [f ](u) = fˆ(u), Fπ [f ](u) = f (−u), where fˆ denotes the ordinary Fourier transform of f ; see Eq. (4.1). From now on we shall focus our attention on the cases where α , nπ. Existence: It is evident that the integral in (4.4) exists if f ∈ L1 (R) and it can be easily extended to Lp (R) for 1 ≤ p ≤ 2, using arguments similar to those used for extending the T conventional Fourier transform to Lp (R) for 1 ≤ p ≤ 2. For example, since L1 L2 is dense in L2 , for f ∈ L2 , choose a sequence {fn }∞ n=0 such that fn → f, and define Fθ [f ] as Fθ [f ] = lim Fθ [fn ]. n→∞

In [160], Kerr defined the fractional Fourier transform of f ∈ L2 (R) as Fθ [f ](x) = lim

Z R

R→∞ −R

f (t)Kθ (t, x)dt,

where the limit is taken in the mean. In fact, Fθ is not only a homeomorphism on L2 (R), but a unitary operator on it as well, [69]. Moreover, in view of the relation Z iax2 Fθ (x) = |Fθ (x)| ≤ |c(θ)| |f (t)| dt = |c(θ)| kf k1 ; e R

we have kFθ k∞ ≤ |c(θ)| kf k1 , which shows that Fθ is a bounded linear transformation from L1 (R) into L∞ (R). In fact, Fθ (x) is continuous and goes to zero as |x| → ∞, (see Property 3 below); i.e., Fθ ∈ C0 (R). To show the continuity of Fθ , we have ∆F (x, t) = Fθ (x + ∆x) − Fθ (x) =

Z

f (t) (Kθ (x + ∆x, t) − Kθ (x, t)) dt

R

Z

= c(θ)

n

o

f (t) exp −ia(θ)(x2 + t2 ) + ib(θ)tx I(x, t)dt,

R

where

I(x, t) = ei(∆x)[−a(θ)(∆x)−2a(θ)x+b(θ)t] − 1.

Therefore, |∆F (x, t)| ≤ |c(θ)|

Z

|f (t)| |I(x, t)| dt ≤ 2|c(θ)| kf k1 < ∞,

R

and by the Lebesgue dominated convergence theorem, we may take the limit inside the integral to obtain lim∆x→0 |∆F (x, t)| = 0 since lim∆x→0 |I(x, t)| = 0. The fact that lim|x|→∞ Fθ (x) = 0 will follow from the Riemann-Lebesgue Lemma; see item 3 below. It should be emphasized that if f ∈ L1 (R), there is no guarantee that Fθ ∈ L1 (R). For example, let 2 f (t) = eiat −t for t ≥ 0, and 0, otherwise.

66  Fractional Integral Transforms: Theory and Applications 2.0

1.0

0.8

1.5

0.6

1.0

0.4 0.5

0.2

-3

Figure 4.1

-6

Figure 4.3

-2

1

-1

2

3

-6

Figure 4.2

Zero FT

-4

-2

-4

0

-2

2.0

1.5

1.5

1.0

1.0

0.5

0.5

2

4

6

-6

Figure 4.4

One half FT

4

6

2

4

6

One quarter FT

2.0

0

2

-4

0

-2

One FT

Hence Z ∞

Fθ (x) = c(θ)

n

o

2 −t

exp −ia(x2 + t2 ) + ibxt eiat

0 2

= c(θ)e−iax

Z ∞

dt

e−t(1−ibx) dt

0 2

e−iax = c(α) < L1 (R). (1 − ibx) It is worth noting here that the inverse transform of (4.4) is given by Z ∞

f (t) = −∞

Fbθ (x) K−θ (t, x) dx,

(4.6)

provided that the integral exists. To demonstrate the relationship between the fractional and the conventional Fourier transforms of a real-valued function, we will use a very simple function f (t) = χ[−1,1] , the characteristic function of the interval [−1, 1], whose Fourier transform, or in other words, its Fourier transform of order one (θ = π/2) is sin x/x, apart from a multiplicative constant. Since the fractional Fourier transform Fθ is in general a complex-valued function, we will plot only its absolute value, |Fθ | for θ = 0, π/8, π/4, π/2, that is the fractional Fourier transform of f of order, 0, 1/4, 1/2, 1. See Figs. 4.1–4.4.

The Fractional Fourier Transform (FrFT)  67

In the following √ the fractional Fourier transform of some functions. But √ table we list recall that cα = 1 + i cot α/ 2π.

The Fractional Fourier Transform

f (t)

N o.

Fα (x)

1)

φ0 (t) = exp(−t2 /2)

exp(−x2 /2)

2)

φn (t) = Hn (t) exp(−t2 /2)

einα Hn (x) exp(−x2 /2)

3)

δ(t)

cα exp − ix2 (cot α)

4)

δ(t − k)

cα exp −i (x

5)

1

 2  √ 1 − i tan α exp i x2 tan α

6)

eikt

 2 2  √ 1 − i tan α exp i x +k tan α + ik sec α 2

7)

exp(−t2 /2 + kt)

exp − x2 − ik2 eiα sin α + kxeiα

2



2 +k 2 )







2

2

2

(cot α) + ikx csc α





The proof of the first two entries follows from the fact that φ0 and φn are eigenfunctions of the FrFT. The proof of entries (3) and (4) follows from the definition of the delta function, while that of the last three entries follows from Eq. (4.8) below.

68  Fractional Integral Transforms: Theory and Applications

4.3

OPERATIONAL CALCULUS

For the reader’s convenience, we start this section by listing some of the main properties of the fractional Fourier transform. Some of these properties are easy to prove and will be left to the reader. But the ones that are more technical, we will restate as theorems and provide them with proof. 1. Linearity: The Fractional Fourier Transform is linear, i.e., Fθ [αf + βg] = αFθ [f ] + βFθ [g] where α and β are constants. 2. Eigenvalues and Eigenfunctions: The eigenfunctions of the fractional Fourier transform are the Hermite functions hn (see Chapter 3), and the corresponding eigenvalues are einθ , that is Fθ [hn (t)] (x) = einθ hn (x), 3. Riemann-Lebesgue Lemma: If f ∈ L1 (R), its fractional Fourier transform Fθ (x) is continuous and tends to zero as |x| → ∞, i.e., lim|x|→∞ Fθ (x) = 0 4. Additivity: Fθ Fφ = Fθ+φ , 5. Commutativity: Fθ Fφ = Fφ Fθ , 6. Associativity: Fθ1 (Fθ2 Fθ3 ) = (Fθ1 Fθ2 ) Fθ3 . 7. Inverse: (Fθ )−1 = F−θ . 8. Parseval’s Relation: hf, gi = hFθ , Gθ i; where Fθ , Gθ are the fractional Fourier transforms of f and g, respectively. Hence, kf k2 = kFθ k2 . Moreover, hf, Gθ i = hFθ , gi, 9. Shift: h

i

Fθ (Tτ f ) = exp −iτ 2 cos θ sin θ/2 + iτ x sin θ Fθ (x − τ cos θ) , where Tτ f (t) = f (t − τ ) is the shift operator. 10. Modulation: 

Fθ e

iβt

!

β2 f (t) (x) = exp i cos θ sin θ + iβx cos θ Fθ (β sin θ + x) 2    β = exp iβ cos θ x + sin θ Fθ (β sin θ + x) 2 

The Fractional Fourier Transform (FrFT)  69

11. Multiplication by the input variable: Fθ (tf (t)) (x) = −i sin θ

d Fθ (x) + x cos θFθ (x), dx

or more generally 

Fθ (tn f (t)) (x) = −i sin θ

d + x cos θ dx

n

Fθ (x).

12. Differentiation: Fθ f 0 (t) (x) = cos θ 

d Fθ (x) − ix sin θFθ (x) . dx

More generally, 

Fθ f Hence,

and

(n)

d (t) (x) = cos θ − ix sin θ dx 



n

Fθ (x) .

 d Fθ (x) = cos θFθ f 0 (t) (x) + i sin θFθ (tf (t)) (x), dx

xFθ (x) = cos θFθ (tf (t)) (x) + i sin θFθ f 0 (t) (x). 

13. Convolution: Let

(

2

f (t) = f (t)e−ia(θ)t ,

and set 2

h(t) = (f ? g) (t) = d(θ)eia(θ)t then



(

(



f ∗ g (t),

2

Hθ (x) = eia(θ)x Fθ (x)Gθ (x),

where ∗ is the standard convolution operation for the Fourier transform. 14. Product: Let

*

2

f (t) = f (t)eia(θ)t ,

and define h(t) = (f ⊗ g) (t) = d(−θ)e then

h

2

i

−ia(θ)t2



*

*



f ∗ g (t),

Fθ f (t)g(t)e−ia(θ)t (x) = (Fθ ⊗ Gθ ) (x);

see [348].

70  Fractional Integral Transforms: Theory and Applications

15. Poisson Summation Formula for the Fractional Fourier Transform: The Poisson summation formula for the fractional Fourier transform takes the form c(θ)

∞ X

2

f (t + 2σk)e−ia(θ)(t+2σk)

k=−∞ ∞ X

=

1 2 Fθ (kπ sin θ/σ)eia(θ)(kπ sin θ/σ) e−ikπt/σ 2σ k=−∞

=

∞ 1 X 2 Fθ (uk )eia(θ)uk e−itk t 2σ k=−∞

where tk = kπ/σ and uk = tk sin θ. 16. Sampling Theorem: If f (t) ∈ L2 (R) is bandlimited to [−σ, σ], that is the support of Fθ (x) is [−σ, σ]; hence Z σ

f (t) = −σ

Fθ (x)K−θ (t, x)dx ,

then f can be reconstructed from its samples at the points {un }n∈Z via the formula 2

f (t) = eia(θ)t

∞ X

2

f (un )e−ia(θ)un

n=−∞

sin σb(θ)(t − un ) , σb(θ)(t − un )

where un = (nπ/σ) sin θ; [325, 339, 345, 350] 17. Wigner Distribution: If we denote the Wigner distribution of f by Wf (u, v), then the Wigner distribution of Fθ is related to the Wigner distribution of f by the formula WFθ (u, v) = Wf (u cos θ − v sin θ, u sin θ + v cos θ). That is the Wigner distribution of Fθ is obtained from the Wigner distribution of f by a θ-rotation in the clockwise direction. We now turn our attention to the proofs of the above mentioned properties. Properties (1), (2) and (5) are easy to prove and left to the reader. We begin by proving the additive property of the transform which is essential in establishing that the fractional Fourier transforms form a one-parameter periodic group. Theorem 6 (Addition Formula). Let Fα and Fβ be the fractional Fourier transform of f with respect to the angles α and β, respectively. Then Fβ Fα = Fα+β . Proof For simplicity let us denote a(α), b(α), c(α) by aα , bα , cα . Since Z

Fα (x) =

f (t)Kα (x, t)dt, R

The Fractional Fourier Transform (FrFT)  71

it follows that Z

Fβ [Fα ] (u) =

Fα (x)Kβ (u, x)dx ZR

=

Z

Kβ (u, x)dx R 2

= cα cβ e−iaβ u

f (t)Kα (x, t)dt

Z R

2

f (t)e−iaα t I(x, t)dt,

(4.7)

R

where

Z

2 (a +a )+ix(b t+b u) α α β β

e−ix

I(x, t) =

dx.

R

with the help of the relation [96, P. 121] Z

e

−p2 x2 +iwx

R

√ π −w2 /4p2 e , dx = p

(4.8)

we have √

    i b2α t2 + b2β u2 + 2bα bβ ut 

π I(x, t) = q exp   4(aα + aβ ) i(aα + aβ ) (  ) √ π i (csc2 α)t2 + (csc2 β)u2 + 2(csc α csc β)ut = q exp 2(cot α + cot β) i(aα + aβ ) (  ) √ π i (sin α sin β) (csc2 α)t2 + (csc2 β)u2 + 2(csc α csc β)ut = q exp 2 sin(α + β) i(aα + aβ ) = =

√ π q

q

exp

i(aα + aβ ) √ π

i  h  i sin β t2 + sin α u2 + 2ut  sin α



sin β

2 sin(α + β)

n

 o

exp i(Au2 + Bt2 ) + i csc(α + β)ut ,

i(aα + aβ )

where A=

sin α , 2 sin β sin(α + β)

B=

sin β . 2 sin α sin(α + β)

Substituting I(x, t) back into Eq. (4.7), we have √ πcα cβ Fβ [Fα ] (u) = q i(aα + aβ ) ×

Z R

n h

io

f (t) exp i (A − aβ )u2 + (B − aα )t2 + csc(α + β)ut

dt.

(4.9)

72  Fractional Integral Transforms: Theory and Applications

But (A − aβ ) = =

sin α cot β − 2 sin β sin(α + β) 2   1 sin α − cos β 2 sin β sin(α + β) "

=

1 sin α(1 − cos2 β) − cos α sin β cos β 2 sin β sin(α + β)

= −

#

cot(α + β) = −aα+β . 2

Similarly, (B − aα ) = − cot(α+β) = −aα+β . Therefore, the exponential factor in Eq. 2 (4.9) is reduced to the desired one n

o

−i aα+β (u2 + t2 ) − csc(α + β)ut = −iaα+β (u2 + t2 ) + ibα+β ut. As for the constant term outside the integral, we have √ √ √ √ πcα cβ π 1 + i cot α 1 + i cot β p p = i(cot α + cot β)/2 2π i(cot α + cot β)/2 p √ 1 sin α sin β 1 + i(cot α + cot β) − cot α cot β p = √ i sin(α + β) 2π p 1 sin α sin β + i(cos α sin β + sin α cos β) − cos α cos β p = √ i sin(α + β) 2π p 1 i sin(α + β) − cos(α + β) p = √ i sin(α + β) 2π 1 q = √ 1 + i cot(α + β) = cα+β . 2π Therefore, Fβ [Fα ] (u) = Fα+β (u). As a corollary of Theorem 6, we obtain the commutative and associative relations for the fractional Fourier transform, Fβ [Fα ] = Fα [Fβ ] and Fα Fβ Fγ = Fα Fβ Fγ . Next we derive the inversion formula for the FrFT. Theorem 7. The inverse of Fα is F−α that is Fα F−α = I. In other words F−α [Fα ](u) = f (u).

The Fractional Fourier Transform (FrFT)  73

Proof Z

F−α [Fα ] (u) =

Fα (x)K−α (u, x)dx ZR

=

Z

K−α (u, x)dx ZR

=

f (t)Kα (x, t)dt R

Z

f (t)dt

Kα (x, t)K−α (u, x)dx

R

R

Z

2 −t2 )



f (t) eiaα (u

= cα c−α



Z

R

2π|cα |2 b

=

eibα x(t−u) dx

dt R

Z



f (t) eiaα

(u2 −t2 )



δ(t − u)dt = f (u).

R

The last equation follows from Eq. (1.27) and the fact that 2π|cα |2 = bα . Theorem 8. (Parseval’s Relation:) Let Fα , Gα denote the fractional Fourier transform of f, g, respectively. Then hf, gi = hFα , Gα i; hence kf k2 = kFα k2 . Moreover, hf, Gα i = hFα , gi, Proof hFα , Gα i =

Z

Fα (x)Gα (x)dx ZR

=

Z

 Z

f (t)Kα (x, t)dt

dx ZR

=

R

Z

Z

f (t)dt

Z

f (t)dt

b

Kα (x, t)K α (x, y)dx R

Z

R 2π|c(α)|2

Z

g¯(y)dy R

= |c(α)|2 =

g¯(y)K α (x, y)dy

R

R



Z

R

Z

2 −y 2 )

e−ia(t

g¯(y)dy 2

f (t)e−iat dt

R

eibx(t−y) dx

R

Z

2

eiay g¯(y)δ(t − y)dy

R

f (t)¯ g (t)dt = hf, gi.

= R

By putting f = g, we obtain kf k2 = kFα k2 . The proof of the last relation is smiliar and left to the reader. Theorem 9 (Shift and Modulation Rules). The following relations hold; h

i

Fα (Tτ f ) = exp −iτ 2 cos α sin α/2 + iτ x sin α Fα (x − τ cos α) , and 

Fα e

iβt

β f (t) exp iβ cos α x + sin α 2 







Fα (β sin α + x)

74  Fractional Integral Transforms: Theory and Applications

Proof With some computations, the proof of the shift and modulation formulas is straightforward. For example, for the shift rule, observe that Z

Fα (Tτ f )(x) =

f (t − τ )Kα (x, t)dt

ZR

=

f (t)Kα (x, t + τ )dt, R

where

n

i

h

o

Kα (x, t + τ ) = c(α) exp −ia x2 + t2 + τ 2 + 2tτ + ibx(t + τ ) . On the other hand Fα (x − τ cos α) =

Z

f (t)Kα (x − τ cos α, t)dt,

R

where Kα (x − τ cos α, t) = c(α) n

h

i

o

× exp −ia x2 + t2 + τ 2 cos2 α − 2xτ cos α + ibt(x − τ cos α) . By multiplying Kα (x − τ cos α, t) by (

τ2 exp −i cos α sin α + iτ x sin α 2

)

and simplifying, we obtain Kα (x, t + τ ). The proof of the modulation rule is similar. The next theorem deals with the multiplication by the input variable and the differentiation of the input function. Theorem 10 (Multiplication by the input variable and Differentiation:). Let f ∈ S, the Schwartz space of functions. We have Fα (tf (t)) (x) = −i sin α

d Fα (x) + x cos αFα (x) dx

(4.10)

or more generally d Fα (t f (t)) (x) = −i sin α + x cos α dx 

n

n

Fα (x).

(4.11)

Furthermore, Fα f 0 (t) (x) = cos α 

d Fα (x) − ix sin αFα (x) . dx

(4.12)

More generally, 

Fα f

(n)

d (t) (x) = cos α − ix sin α dx 



n

Fα (x) .

(4.13)

Hence,  d Fα (x) = cos αFα f 0 (t) (x) + i sin αFα (tf (t)) (x), dx

(4.14)

xFα (x) = cos αFα (tf (t)) (x) + i sin αFα f 0 (t) (x).

(4.15)

and 

The Fractional Fourier Transform (FrFT)  75

Proof Equation (4.10) follows from the observation that ∂ Kα (x, t) = (−2ia(α)x + ib(α)t) Kα (x, t), ∂x and that tKα (x, t) = −i sin α

∂ Kα (x, t) + x cos αKα (x, t). ∂x

Equation (4.11) follows by induction and writing t2 f (t) as tg(t), where g(t) = tf (t), and so on. Equation (4.12) follows from the fact that ∂ ∂ Kα (x, t) = cos α − ix sin α Kα (x, t), ∂t ∂x 





and (4.13) is obtained by induction. Equation (4.14) and (4.15) are obtained by solving (4.10) and (4.12). 4.3.1 Convolution Theorem

One of the earliest results on the convolution and product of the FrF is due to Almeida [14] whose main result reads as follows: Let W be that subspace of the space of all integrable functions with the property that f ∈ W if and only if the Fourier transform fˆ of f is also in W. Let f and g be in W and denote their convolution h by f ∗ g, i.e., 1 h(x) = (f ∗ g)(x) = √ 2π

Z ∞

f (t)g(x − t) dt.

(4.16)

−∞

Then the fractional Fourier transform of h, denoted by Hα , is given by 2 /2) tan α

Hα (u) = | sec α|e−j(u

Z ∞ −∞

Fα (v)g [(u − v) sec α] ej(v

2 /2) tan α

dv;

(4.17)

see Eq. 5 in [14]. It should be noted that the space W is the same as the space L1 (R) W in Almeida’s notation, where W is the Wiener algebra consisting of functions that are Fourier transforms of functions in L1 (R). As for the FrFT of the product h of two functions f and g, i.e., h(x) = f (x)g(x), we have (cf. Eq. 2 in [14]) T

| csc α| 2 Hα (u) = √ ej(u /2) cot α 2π

Z ∞ −∞

Fα (v)Gπ/2 [(u − v) csc α] e−j(v

2 /2) cot α

dv.

(4.18)

Unlike the convolution theorem for the Fourier transform, which states that the Fourier transform of the convolution of two functions is the product of their Fourier transforms, the one for the FrFT does not seem to be as nice or as practical as the one for the Fourier transform. The reason, in our opinion, is that the convolution operation defined by (4.16) is not the right sort of convolution for the FrFT.

76  Fractional Integral Transforms: Theory and Applications

In the general framework of convolution theory (see [352, Ch. 4]), it is known that to any integral transformation L, one may, at least theoretically, associate with it a convolution operation, ?, such that L(f ? g) = L(f )L(g). (4.19) For example, the convolution operation associated with the Hankel transform is too complicated to be stated here, but the interested reader can find the details in [352, Section 21.6]. In [348] we proposed a new convolution structure for the FrFT that is different from those introduced in [14] and [225]. Unlike those introduced in [14] and [225], ours preserves property (4.19) and is easier to implement, in particular, in filter design. Theorem 11 is particularly useful in filter design. For example, if we are interested only in the frequency spectrum of the fractional Fourier transform in the region [ω1 , ω2 ] of a signal f , we choose the filter impulse response, g, so that Gα is constant over [ω1 , ω2 ], and zero or of rapid decay outside that region. Passing the output of the filter through the 2 chirp multiplier, eja(α)u , yields that part of the spectrum of f over [ω1 , ω2 ]. This is clearly easier to implement than the one suggested in [14]. Equation (4.17) does not seem to have an immediate application in signal processing, but products of similar nature have proved to be useful in optics, see [220]. Let us introduce the following definition. Definition 12. For any two integrable functions f and g, we define the convolution operation ? as   2 ( ( h(x) = (f ? g)(x) = d(α)eia(α)x f ∗ g (x), where ∗ is the standard convolution operation for the Fourier transform as defined by (4.16) (

2

and f (t) = f (t)e−ia(θ)t . Likewise, we define the operation ⊗ by −ia(α)x2

(f ⊗ g) (x) = d(−α)e *



*

*



f ∗ g (x) ,

2

where f (t) = f (t)eia(θ)t , See Fig. 4.5 for a realization of the convolution operation ?. Proposition 1. The operation ? given in Definition 12 is both commutative, i.e., f ? g = g ? f and associative, ((f ? g) ? h) = (f ? (g ? h)) (4.20) Proof That ? is commutative is easy to prove and left to the reader. To prove that it is associative, let us first simplify the notation and have tilde signify multiplication by the 2 2 chirp e−ia(α)t so that f˜(t) = e−ia(α)t f (t). Let f ? g = u and g ? h = v. The left-hand side of (4.20) takes the form 2 ˜ ((f ? g) ? h) (x) = (u ? h)(x) = d(α)eia(α)x (˜ u ∗ h)(x) ,

but

2

u(x) = d(α)eia(α)x (f˜∗ g˜)(x),

The Fractional Fourier Transform (FrFT)  77

Figure 4.5

Convolution for the FRFT

hence u˜ = d(α)(f˜∗ g˜)(x). It follows that 2

((f ? g) ? h) (x) = (u ? h)(x) = d2 (α)eia(α)x





˜ (x). (f˜∗ g˜) ∗ h

(4.21)

Similarly, for the right-hand side of (4.20) we have 2 ˜ v(x) = d(α)eia(α)x (˜ g ∗ h)(x) ;

hence ˜ v˜(x) = d(α)(˜ g ∗ h)(x) , and we have 2

(f ? (g ? h)) (x) = (f ? v)(x) = d2 (α)eia(α)x





˜ (x). f˜∗ (˜ g ∗ h)

(4.22)

Since the convolution operation ∗ is associative, it follows from (4.21) and (4.22) that so is the operation ?. Now we state and prove our convolution theorem. Theorem 11. Let h(x) = (f ? g)(x) and Fα , Gα , Hα denote the FrFT of f, g and h respectively. Then 2 Hα (u) = eia(α)u Fα (u)Gα (u). (4.23) Moreover,

h

2

i

Fα f (x)g(x)e−ia(α)x (u) = (Fα ⊗ Gα ) (u) .

(4.24)

78  Fractional Integral Transforms: Theory and Applications

Proof From the definition of the FrFT and Definition 12, we have Z ∞

Hα (u) = c(α) = c2 (α)

Z ∞

2 +u2 )−but]

h(t)e−i[a(t

2 +u2 )−but]

e−i[a(t

2

eiat dt

Z ∞

−∞

= c2 (α)

dt

−∞ 2

2

f (x)e−iax g(t − x)e−ia(t−x) dx

−∞

Z ∞ Z ∞

n

o

f (x)g(t − x) exp −i[a(t2 + u2 ) − but + 2ax2 − 2atx] dx dt .

−∞ −∞

By making the change of variable, t − x = v, we obtain Hα (u) = c2 (α) iau2

2

Z ∞ Z ∞

Z ∞

= c (α)e

n

o

f (x)g(v) exp −ia(x2 + u2 + v 2 ) + ibu(x + v) dx dv

−∞ −∞ 2 2 f (x)e(−ia(x +u )+ibux) dx

−∞

Z ∞

g(v)e(−ia(v

2 +u2 )+ibuv

) dv

−∞

2

= eiau Fα (u)Gα (u) , which is (4.23). As for (4.24), we have from Definition 12 −ia(α)u2

(Fα ⊗ Gα ) (u) = e 2

= e−ia(α)u c(−α)



*

*



d(−α) F α ∗ Gα (u)

Z ∞

2

−∞

2

eia(α)x Fα (x)eia(α)(u−x) Gα (u − x) dx.

But from the definition of the FrFT, we obtain (Fα ⊗ Gα ) (u) = 2

e−ia(α)u c(α)c(−α)

Z ∞

Z ∞

f (z)dz −∞ 2

−∞

Gα (u − x)

× exp{i[a(u − x)2 − az + bxz]} dx −ia(α)u2

=e

Z ∞

c(α)c(−α)

e−i[2az

2 −bzu]

f (z)dz

−∞

×

Z ∞ −∞

Gα (v) exp{i[a(v 2 + z 2 ) − bvz]} dv Z ∞

= c(α)

2

f (z)g(z)e−iaz exp{−ia(z 2 + u2 ) + ibzu}dz

−∞

Z ∞

= −∞

2



f (z)g(z)e−iaz Kα (u, z)dz = F f (z)g(z)e−iaz

2



(u)

which is Eq. (4.24). In order to remove the exponential factor in (4.23), we may redefine the convolution of f and g as follows. √ d(α) 2 ( ( h(x) = (f ˜?g)(x) = √ eia(α)x f ∗ g ( 2x), π 



where ∗ is the standard convolution operation for the Fourier transform.

The Fractional Fourier Transform (FrFT)  79

√ √ Corollary 1. Let h(x) = (f ˜?g)(x). Then Hα (u) = Fα (u/ 2)Gα (u 2). Proof Z

n

o

h(x) exp −ia(x2 + u2 ) + ibux dx

Hα (u) = c(α) R

=

c(α)d(α) −iau2 √ e π −iau2

= c(α)2 e

Z

2

f (t)e−iat dt

R

Z

Z

eibxu e−ia(

R −iat2

f (t)e

Z

dt

R

eibu(y+t)/





2x−t)2

2 −iay 2

e

√ g( 2x − t)dx

g(y)dy

R

u u f (t) exp −i(at2 + a( √ )2 ) + ibt( √ ) dt 2 2 R   Z u u × g(y) exp −i(ay 2 + a( √ )2 + iby( √ ) dy 2 2 R √ √ = Fα (u/ 2)Gα (u/ 2). = c(α)2



Z



4.3.2 Poisson Summation Formula for the Fractional Fourier Transform

The Poisson summation formula for the Fourier transform and the WSK sampling theorem are closely related. In fact, it has been shown [57] that the sampling theorem may be derived from the Poisson summation formula; however, we will not pursue this relationship here and we will treat them separately. For related work, see [180]. The Poisson summation formula for the fractional Fourier transform is a formula that relates a Fourier-type series obtained from a periodic extension of a function f ∈ L1 (R) to a series involving samples of the fractional Fourier transform Fα of f. Theorem 12 (The Poisson Summation Formula for the Fractional Fourier transform). Let f ∈ L1 (R), and σ > 0. The Poisson Summation Formula for the fractional Fourier transform takes the form c(α)

∞ X

2

f (t + 2σk)e−ia(α)(t+2σk)

=

∞ 1 X kπ sin α ia(α)(kπ sin α/σ)2 −ikπt/σ Fα ( )e e 2σ k=−∞ σ

=

∞ 1 X 2 Fα (uk )eia(α)uk e−itk t 2σ k=−∞

k=−∞

where tk = kπ/σ and uk = tk sin α, provided that the series converge. Proof First, let us recall from Chapter 1, the following Poisson summation formula for the Fourier transform √ ∞ ∞ X 2π X f (t + 2σk) = fˆ(kπ/σ)e−ikπt/σ , σ > 0. (4.25) 2σ k=−∞ k=−∞ Let

Z

Fα (x) = c(α) R

n

o

f (t) exp −ia(x2 + t2 ) + ibxt dt,

80  Fractional Integral Transforms: Theory and Applications

which we may write as 1 2 ˜ G(x) = Fα (x)eiax = √ 2π

Z

g(t)eibxt dt,

R

2

where g(t) = d(α)f (t)e−iat . Since f is in L1 (R), so is g, and we have 1 ˆ ˜ G(x) = G(x/b) = √ 2π

Z

g(t)eixt dt,

R

ˆ is the Fourier transform of g. By substituting g and G ˆ into the Poisson summation that is G formula for the Fourier transform Eq. (4.25), we obtain the result. 4.3.3 Sampling Theorem for the Fractional Fourier Transform

The Whittaker-Shannon-Kotel’nikov (WSK) sampling theorem [357], commonly known as Shannon sampling theorem, enables us to reconstruct a bandlimited function from its samples taken at the Nyquist rate. Likewise, the sampling theorem for the fractional Fourier transform will enable us to reconstruct a function bandlimited in the fractional Fourier transform domain from its samples. The sampling theorems for band-limited and timelimited signals in the fractional Fourier transform domain may be deduced from the WSK sampling theorem; see [37, 106, 339, 345, 350]. Let Ω = [−σ, σ] and n

o

BΩ = f : f ∈ L2 (R) such that SuppFα ⊆ Ω

be the space of all L2 (R) functions bandlimited to Ω in the fractional Fourier transform domain. First, we will show that the space BΩ is a reproducing-kernel Hilbert space and then derive its sampling theorem. To this end, we have Z

f (t) =

Fα (x)K−α (t, x)dx ZΩ

=

Z

K−α (t, x)dx ZΩ

=

f (y)Kα (x, y)dy R

Z

f (y)dy

K−α (t, x)Kα (x, y)dx Ω

R

Z

f (y)e−ia(α)(y

= c(α)c(−α)

2 −t2 )

Z σ

dy

=

1 2π sin α

Z

eib(α)x(y−t) dx

−σ

R

f (y)e−ia(α)(y

R

2 −t2 )

2 sin bα σ(y − t) dy bα (y − t)

Z

=

f (y)R(t, y)dy, R

where R(t, y) = e−ia(α)(y

2 −t2 )

sin bα σ(y − t) , π(y − t)

bα = b(α),

is the reproducing kernel. As a special case, when α = π/2, we obtain R(t, y) =

sin σ(y − t) , π(y − t)

The Fractional Fourier Transform (FrFT)  81

which is the reproducing kernel of the space of functions bandlimited to [−σ, σ] in the Fourier transform domain. Theorem 13. Let f (t) be bandlimited to [−σ, σ], in the fractional Fourier transform domain, that is the support of Fα (x) is [−σ, σ]. Then 2

∞ X

2

n=−∞ ∞ X

f (t) = eia(α)t

= eia(α)t

2

f (un )e−ia(α)un 2

f (un )e−ia(α)un

n=−∞

sin σ(bα t − tn ) σ(bα t − tn ) sin σbα (t − un ) , σbα (t − un )

where un = nπ/(σb(α)) = tn sin α. Proof First, note that if F is a square-integrable function with support in [−σ, σ], then (

*

so are F (t) and F (t) . Since f (t) is bandlimited to [−σ, σ], we have, Z σ

f (t) = −σ

or

Fα (x)K−α (t, x)dx

2

f (t)e−ia(α)t 1 g(t) = = √ d(−α) 2π

Z σ −σ

2 −ib(α)tx

Fα (x)eia(α)x

dx.

2 By setting F˜α (x) = Fα (x)eia(α)x , we obtain

1 g(t) = √ 2π

Z σ −σ

F˜α (x)e−ib(α)tx dx.

(4.26)

n √ o∞ On the account of the fact that einπx/σ / 2σ is an orthonormal system on [−σ, σ], n=−∞ it is easy to see that

e−ibxt =

∞ X sin σ [b(α)t − tn ] −inπx/σ e , n=−∞

σ [b(α)t − tn ]

for |x| ≤ σ,

where tn = nπ σ . By substituting this last summation into (4.26) and interchanging the summation and integration signs which is valid because of the uniform convergence of the series, we obtain g(t) = = =

∞ X sin σ [b(α)t − tn ] n=−∞ ∞ X

σ [b(α)t − tn ]

1 √ 2π

Z σ −σ

sin σ [b(α)t − tn ] nπ g( ) σ [b(α)t − tn ] σb(α) n=−∞ ∞ X sin σ [b(α)t − tn ]

n=−∞

σ [b(α)t − tn ]

g(un ).

F˜α (x)e−inπx/σ dx

82  Fractional Integral Transforms: Theory and Applications

Therefore, we finally have 2

∞ X

2

n=−∞ ∞ X

f (t) = eia(α)t

= eia(α)t

2

f (un )e−ia(α)un 2

f (un )e−ia(α)un

n=−∞

sin σ(bα t − tn ) σ(bα t − tn ) sin σbα (t − un ) . σbα (t − un )

Shannon sampling theorem has been generalized in a number of different ways. For example, it has been shown that a bandlimited signal can be reconstructed from samples of the signal and its first p derivatives each taken at 1/(p + 1) of the Nyquist rate. A more general extension of this result was introduced by A. Papoulis [229] in what is known as Papoulis sampling theorem or the generalized sampling theorem. Papoulis posed the following question: If a bandlimited signal is fed simultaneously into a multi-channel system consisting of p linear systems, such as filters with system functions H1 (ω), . . . , Hp (ω), is it possible to reconstruct f from the samples of the p output signals, g1 (t), . . . , gp (t) ?, where 1 gk (t) = √ 2π

Z σ −σ

F (ω)Hk (ω)eitω dω,

k = 1, . . . , p,

and F is the Fourier transform of f. He then answered that question in the affirmative under the condition that a system of linear equations involving the system functions has a solution. The samples of the output signals are each taken at 1/p of the Nyquist rate. As a special case of Papoulis theorem, one obtains the formula for reconstructing a bandlimited function from its samples and the samples of its first p derivatives each taken at 1/(p + 1) of the Nyquist rate. For this reason, Papoulis theorem is sometimes referred to as the Generalized Sampling Theorem. An extension of Papoulis theorem to the one-dimensional fractional Fourier transform domain has been obtained by D. Wei [309], D. Wei and Q. Ran [311]. For more on sampling in the fractional Fourier transform domain, see [33, 37, 248, 260, 266, 270, 276, 296, 325]. 4.3.4 The Wigner Distribution

The Wigner distribution of a signal f (t) is a time-frequency representation of f. It has applications in quantum mechanics, signal analysis and optics [77, 115, 116, 202, 215, 265, 321]. It was introduced in quantum physics by E. P. Wigner in 1932 [317], but it was the Dutch mathematician N. G. de Bruijn [50] who introduced it in mathematics in 1973 and developed many of its properties. The Wigner distribution was introduced again in signal analysis in 1980 by T. Claasen and W. Mecklenbräuker [75, 76]. Recall that the Wigner distribution of a signal f is defined as 1 Wf (t, ω) = √ 2π

Z

f (t + x/2)f (t − x/2)eiωx dx.

R

It has been shown that the Wigner distribution of the Fourier transform fˆ of f is related to the Wigner distribution of f by the relation Wfˆ(t, ω) = Wf (−ω, t).

The Fractional Fourier Transform (FrFT)  83

Hence, it may be said that Wfˆ(t, ω) is obtained from Wf (t, ω) by a rotation of π/2 in the clockwise direction. Thus, one may ask what does correspond to a rotation of the Wigner distribution by an angle π/4 in the clockwise direction? Whatever it is, one may call it the one half Fourier transform, which as we will soon see, is consistent with the definition of the FrFT. More generally, what does correspond to a rotation of the Wigner distribution by an angle θ in the clockwise direction? In other words, find g such that Wg (t, ω) = Wf (t cos θ − ω sin θ, t sin θ + ω cos θ). It turns out that g is the fractional Fourier transform of f with angle θ. In some engineering literature t is usually used to denote time and ω to denote frequency; however, we may not adopt this convention to allow for more general interpretation. Definition 13. The cross–Wigner distribution function Wf,g (u, v) of two functions f and g is defined as ∞ 1 x x iωx √ f t+ g t− e dx 2 2 2π −∞ Z ∞ 2 √ e−2itω f (x)g(2t − x)e2iωx dx. 2π −∞



Z

Wf,g (t, ω) = =

 



The auto-Wigner distribution of a function f is defined as Wf (t, ω) = Wf,f (t, ω). We will show that the cross-Wigner distribution of the fractional Fourier transforms Fα and Gα of f and g is obtained from the cross-Wigner distribution of f and g by a rotation with an angle α in the clockwise direction. Theorem 14. Let WFα ,Gα (u, v) denote the cross-Wigner distribution of Fα , Gα . Then WFα ,Gα (u, v) = Wf,g (u cos α − v sin α, u sin α + v cos α) . In particular, for α = π/2, we have Wfˆ,ˆg (u, v) = Wf,g (−v, u)

or equivalently Wf,g (u, v) = Wfˆ,ˆg (v, −u).

Proof 2 WFα ,Gα (u, v) = √ e−2iuv Fα (y)Gα (2u − y)e2ivy dy 2π R Z Z h i 2 2 −2iuv 2ivy = √ |cα | e e dy f (x) exp −ia(x2 + y 2 ) + ibxy dx 2π R R Z

×

Z

h

i

g(t) exp ia(t2 + (2u − y)2 ) − ibt(2u − y) dt

R

=

2 √ e−2iuv |cα |2 2π

Z R

2

f (x)e−iax dx

Z R

h

i

g(t) exp iat2 − 2ibtu I(x, t; u, v)dt

84  Fractional Integral Transforms: Theory and Applications

where Z

I(x, t; u, v) =

n

o

exp 2ivy − iay 2 + ibxy + ia(2u − y)2 + ibty dy

R 4iau2

Z

= e

exp {−iy (−2v − bx + 4au − bt)} dy

R 4iau2

= (2π)e

4iau2

= (2π)e and U=

δ(4au − 2v − bx − bt) δ(2bU − bx − bt)

2au v − = u cos α − v sin α. b b

Therefore, we have 2 WFα ,Gα (u, v) = √ |cα |2 e−2iuv 2π

Z

2

f (x)e−iax J(x, u, v)dx,

(4.27)

R

where Z

J(x, u, v) =

h

i

g(t) exp iat2 − 2ibtu I(x, t; u, v)dt

R 4iau2

Z

h

i

g(t) exp iat2 − 2ibtu δ(2bU − bx − bt)dt

= (2π)e

R

n o 2π 4iau2 = g(2U − x) exp ia(2U − x)2 − 2ibu(2U − x) . e b Substituting J(x; u, v) into Eq. (4.27), we obtain

2 (2π) 4iau2 √ e−2iuv |cα |2 e b 2π 

WFα ,Gα (u, v) =

n

Z

2

f (x)e−iax

R

2

o

× g(2U − x) exp ia(2U − x) − 2ibu(2U − x) dx. By replacing x by U + x, in the last integral and keeping in mind that |cα |2 = 1/(2π), b we have WFα ,Gα (u, v) =

2 2 √ e−2iuv e4iau 2π

Z

f (U + x)g(U − x)

R

n

o

× exp −ia(U + x)2 + ia(U − x)2 − 2ibu(U − x) dx 2

= 2e−2iuv e4iau

Z

f (U + x)g(U − x)

R

× exp {2ix(bu − 2aU ) − 2ibuU } dx. In view of the fact that −2ibuU = −2iu(2au − v) = −4iau2 + 2iuv, and 4a2 2av u+ ) b " !b # b2 − 4a2 2a = 2ix u + v = 2ix (u sin α + v cos α) , b b

2ix(bu − 2aU ) = 2ix(bu −

The Fractional Fourier Transform (FrFT)  85

it follows that 2 WFα ,Gα (u, v) = √ 2π

Z

f (U + x)g(U − x) exp (2ixV ) dx,

R

where V = u sin α + v cos α. Finally, by replacing x by x/2 in the last equation, we obtain 1 √ f (U + x/2)g(U − x/2)eiV x dx = Wf,g (U, V ) 2π R = Wf,g (u cos α − v sin α, u sin α + v cos α) , Z

WFα ,Gα (u, v) =

which completes the proof.

4.4

THE FRACTIONAL HILBERT TRANSFORM

The Hilbert transform has many interesting and important engineering applications ranging from airfoil [352, Ch. 14] and optical filter designs to signal processing [49, 229, 243]. Of particular interest to us here are its applications in communication theory. The role that the Hilbert transform plays in single side-band SSB suppressed carrier modulation and compatible single side-band CSSB modulation is well known [229, 243]. The Hilbert transformation is also used in the construction of analytic signals, which in turn can be used to construct the complex envelop of a real signal. The complex envelop method is very useful in finding the output of bandpass filters. Moreover, the Hilbert transform of a bandpass signal is used in the reconstruction of the signal by sampling the signal and its Hilbert transform, each at half the Nyquist rate [357, p. 67]. The Hilbert transform of a signal f (t) is defined as 1 H[f ](t) = f˜(t) = π

Z ∞ f (x) −∞

x−t

dx ,

and the analytic part of f is defined as F (t) = f (t) + if˜(t) = f (t) + iH[f ](t). One of the most important properties of analytic signals is that they contain no negative frequency components. In other words, the analytic part of a signal is obtained by suppressing the signal’s negative frequencies. For this to hold, the Hilbert transform, f˜, of the signal f must be closely related to the Fourier transform, fˆ, of f , and indeed it is. In fact, if 1 fˆ(ω) = R(ω) + iX(ω) = √ 2π then f (t) =

Z ∞

q

2/π

Z ∞

f (t)eiωt dt ,

−∞

(R(ω) cos tω − X(ω) sin tω) dω ,

0

f˜(t) =

q

(4.28)

(4.29)

Z ∞

2/π

(X(ω) cos tω + R(ω) sin tω)dω ; 0

(4.30)

86  Fractional Integral Transforms: Theory and Applications

Figure 4.6

Fractional Hilbert filter

and F (t) =

q

Z ∞

2/π

fˆ(ω)e−itω dω .

(4.31)

0

An important relation between the Fourier and Hilbert transforms is the following [352, p.277]: ])(ω) = −isgn(ω)fˆ(ω). (H[f (4.32) Examples of how analytic signals can be used in signal analysis applications and modulations can be found in [49, p. 269] and [229, pp. 251-255]. The goal of this section is to extend Equations (4.28–4.32) to the fractional Fourier transform. In other words, we shall define an analytic representation of a signal f that is obtained by suppressing the negative frequency content of the fractional Fourier transform, Fα [f ] (ω), of f. To this end, we have to modify and generalize the definition of the Hilbert transform. Other generalizations of the Hilbert transform that are related to the FrFT have been introduced in [82, 185]. However, ours is essentially different from theirs. Definition 14. The fractional Hilbert transform FrHT of a signal f (t) is defined as 2

eia(α)t Hα [f ](t) = π

2 Z ∞ f (x)e−ia(α)x

−∞

x−t

dx ,

for α  nπ. 2

Computing the FrHT of a signal f is equivalent to multiplying it by a chirp, e−ia(α)t , then passing the product f1 (t) through a standard Hilbert filter and finally multiplying the 2 output f˜1 (t) by the chirp eia(α)t ; see Fig. 4.6. The generalized Hilbert transform does not possess the semi-group property, Hβ Hα = 2 Hβ+α . To see that, let f (x) = eia(α)x , then Hα [f ] = 0 since the Hilbert transform of the function g(t) = 1 is zero, while it is easy to see that Hβ+α [f ]  0. Definition 15. We define the generalized analytic part of a signal f (t) as F˜α (t) = f (t) + iHα [f ](t) . Notice that the generalized Hilbert transform and the generalized analytic part of f both reduce to the standard ones when α = π/2. The two main results of this section will be stated as theorems.

The Fractional Fourier Transform (FrFT)  87

Theorem 15. [347] Let Fα (ω) be the FrFT with angle α of a signal f (t), and let Hα (t) and F˜α (t) be its fractional Hilbert transform and generalized analytic part respectively. Then Z ∞ ˜ Fα (t) = 2 Fα (ω)K−α (ω, t)dω , for α , nπ. 0

This means F˜α (t) is obtained from f by suppressing the negative frequency content of Fα (ω). Similarly, to suppress the positive frequencies of the FrFT, we may take the function Gα (t) = f (t) − iHα [f ](t) , instead of F˜α (t). Proof Let

Z ∞

I(t) =

Fα (ω)K−α (ω, t)dω , 0

hence Z ∞

Z ∞

I(t) =

K−α (ω, t)dω

−∞

0

Z ∞



f (u)Kα (u, ω)du

Z ∞

f (u)du

=



Kα (u, ω)K−α (ω, t)dω .

−∞

0

But since a(−α) = −a(α) , b(−α) = b(α) and d(α)d(−α) = csc α, it is easy to see that n h i o csc α exp ia(α) t2 − u2 + ib(α)(u − t)ω . 2π

Kα (u, ω)K−α (ω, t) = Therefore, I(t) =

csc α 2π

or

Z ∞

Z ∞

f (u)du −∞

n

h

i

o

exp ia(α) t2 − u2 + ib(α)(u − t)ω dω ,

0

csc α ia(α)t2 e I(t) = 2π

where

Z ∞

J(u, t) =

Z ∞

2

f (u)e−ia(α)u J(u, t) du ,

−∞

exp {ib(α)(u − t)ω} dω .

0

If we set λ = b(u − t), we can reduce J(u, t) to Z ∞

J(u, t) =

e

iλω

Z

dω =

0

= Therefore, I =

csc α ia(α)t2 [I1 + I2 ] 2π e

Z ∞

I1 = π

−ia(α)u2

f (u)e

1 ∞ (1 + sgn ω)eiλω dω 2 −∞   1 2i 2πδ(λ) + . 2 λ

, where

δ(bu − bt) du

and I2 = i

−∞

2 Z ∞ f (u)e−ia(α)u

−∞

b(u − t)

Upon replacing u by v/b, in I1 we obtain Z ∞

I1 = (π/b)

f (v/b)e−ia(α)v

−∞ 2

= (π/b)f (t)e−ia(α)t .

2 /b2

δ(v − bt) dv

du .

88  Fractional Integral Transforms: Theory and Applications

Now it follows that "

I(t) =

i csc α ia(α)t2 2 e (π/b)f (t)e−ia(α)t + 2π b "

= =

2 Z ∞ f (u)e−ia(α)u

(u − t)

−∞ 2

#

du

#

∞ f (u)e−ia(α)u i 1 2 f (t) + eia(α)t du 2 π (u − t) −∞ 1 {f (t) + iHα [f ](t)} ; 2

Z

and therefore F˜α (t) = 2I(t) = 2

Z ∞

Fα (ω)K−α (ω, t)dω . 0

The proof of the last statement is similar. The next theorem generalizes Equation (4.32). Theorem 16. Let Fα and Hα be defined as above. Then (

Fα [Hα [f ]](ω) =

−isgn(ω)Fα [f ](ω), isgn(ω)Fα [f ](ω),

Proof Let g(t) =

1 π

if 0 < α < π if π < α < 2π

2 Z ∞ f (x)e−ia(α)x

x−t

−∞

dx

2

so that Hα [f ](t) = eia(α)t g(t). Thus, Z ∞

Fα [Hα [f ]](ω) = = = =

−∞

Z c(α) ∞

2

Kα (t, ω)eia(α)t g(t)dt

−ia(t2 +ω 2 )+ibtω

2 Z ∞ f (x)e−iax

e dt e π −∞ x−t −∞ Z ∞ Z ∞ ibtω ! e c(α) 2 2 f (x)e−ia(x +ω ) dt dx π −∞ x −∞ − t c(α) π

Z ∞

−ia(x2 +ω 2 )

f (x)e −∞

Z ∞

=

iat2

1 f (x)Kα (x, ω) π −∞

Z ∞ ibω(x−y) e −∞

Z ∞ −ibωy e −∞

y

y

dx

!

dy dx

!

dy dx

= iFα (ω)sign (−bω)

4.5

FRACTIONAL TIME-FREQUENCY REPRESENTATIONS

The representation of a signal by means of its spectrum or Fourier transform is a powerful tool in solving many problems in signal processing and optics. However, in some instances this is not the most useful way of representing signals. For instance, we often think of music or speech as signals in which the spectrum evolves over time in a significant way. We

The Fractional Fourier Transform (FrFT)  89

imagine that at each instant we hear a certain combination of frequencies, and that they are constantly changing. This time evaluation of the frequencies is not reflected directly in the Fourier transform. A signal can be reconstructed from its Fourier transform, but the transform contains information about the frequencies of the signal over all times instead of showing how the frequencies vary with time. Many of the signals encountered in practical applications such as speech, music and biological signals, have time-varying frequencies that are not adequately represented by the Fourier transform. Time-frequency analysis provides a characterization of signals in terms of joint time and frequency content. One of the earliest methods of achieving time-dependent frequency analysis is the Gabor transform which is named after D.Gabor who introduced it in his fundamental work [104]. His work led to the development of the Windowed (short-time) Fourier transform which works by first dividing a signal into short consecutive segments using a window function and then computing the Fourier transform of each segment. On the other hand, this method also has its limitation which is attributed to the fact that shortening the time window comes at the expense of the frequency resolution because the uncertainty principle of the Fourier transform asserts a reciprocal relation between the spread of a function and the spread of its Fourier transform; see Section 1.8. Nowadays there are several important time-frequency representations. such as the Wigner distribution, radar and cross ambiguity functions, short-time (sliding widow) Fourier transform and wavelets. In this section, we will examine the relationship between the fractional Fourier transform and a number of time-frequency representations, such as the Wigner distribution, the crossambiguity function and the windowed Fourier transform [15, 16, 28, 41, 64, 265, 340]. We will present three fractional time-frequency representations: the fractional Wigner distribution (FWD), the fractional ambiguity function and the fractional Windowed Fourier transform, all depending on an angular parameter α, and which, for α = π2 , reduce to the corresponding conventional representations. Because all these fractional time-frequency representations are closely related to the uncertainty principle for the fractional Fourier transform, we will close our study of these different representations by a discussion of the uncertainty principle for the fractional Fourier transform. 4.5.1 Fractional Wigner Distributions

The Wigner distribution appeared in the work E. P. Wigner [317] on quantum mechanics and was later introduced into signal analysis by Ville [301]. The Wigner-Ville distribution (WVD), which considers an analytic version of the signal, presents a unique signature of the signal and possesses all the desirable properties of a time-frequency representation [147]. It is closely related to the Radar Ambiguity Function [318] We begin by defining the fractional Wigner distribution which may also be called (FrWD) of two functions f and g.

90  Fractional Integral Transforms: Theory and Applications

Definition 16. The fractional (or weighted) Wigner distribution (FrWD) of two functions f and g is defined as α Wf,g (t, ω) =

1 1 f t + x g¯ t − x Kα (x, ω) dx. 2 2 R

Z

 





(4.33)

α = W α for short. When f = g, we shall write Wf,f f

For α = π2 , the FrWD, Wα (t, ω) , coincides with the Wigner distribution (WD) Wf,g (t, ω) , of f and g [186, 215] defined by 1 Wf,g (t, ω) = √ 2π

1 1 f t + x g¯ t − x eiωx dx. 2 2 R

Z



 



and for all α , (2k+1)π , we obtain new classes of time-frequency representations (TFR). 2 α exists. For, by the Cauchy-Schwarz inequality we have If f, g ∈ L2 (R), then Wf,g 2 α Wf,g (t, ω)

Z     2 f t + 1 x g¯ t − 1 x dx 2 2 R !  2  2 ! Z  Z  1 1 2 f t + x dx g t − x dx ≤ |c(α)| 2 2 R R Z  Z 

= |c(α)|2

|g(y)|2 dy = 4|c(α)|2 kf k22 kgk22 < ∞.

|f (x)|2 dx

≤ 4|c(α)|2

R

R

α ∈ L2 (R2 ). In fact, we shall soon show that Wf,g

Theorem 17. Let f, g ∈ L2 (R) and Fα , Gα be their fractional Fourier transforms, respectively. Then 1. hf, gi = hFα , Gα i = c(−α)

Z Z

α Wf,g (t, ω) exp{ia(α)ω 2 }dω dt.

R R

In particular, kf k22 = kFα k22 = c(α)

Z Z

Wfα (t, ω) exp{ia(α)ω 2 }dω dt.

R R

2. The following generalization of Moyal’s formula holds hWfα1 ,g1 , Wfα2 ,g2 iL2 (R2 ) = hf1 , f2 iL2 (R) hg1 , g2 iL2 (R) .

(4.34)



α

Wf,g = kf k kgk .

(4.35)

In particular, α ∈ L2 (R2 ) if f and g are in L2 (R). Hence, Wf,g

The Fractional Fourier Transform (FrFT)  91

Proof (1) For fixed t, it follows from the inversion formula of the fractional Fourier transform that Z x x α f (t + )¯ g (t − ) = Wf,g (t, ω) K−α (x, ω) dω. 2 2 R Setting t1 = t + x/2 and t2 = t − x/2, we obtain Z



α Wf,g

f (t1 )¯ g (t2 ) = R

t1 + t2 , ω K−α (t1 − t2 , ω) dω. 2 

In particular, if x = 0, i.e., t1 = t2 = t, then Z

α Wf,g (t, ω) K−α (0, ω) dω

f (t)¯ g (t) = R

Z

α Wf,g (t, ω) exp{i(cot α/2)ω 2 }dω.

= c(−α) R

For f = g, the FrWD satisfies the time-frequency marginals |f (t)|2 =

Z

Wfα (t, ω) K−α (0, ω) dω.

R

Moreover, we have Z

Z

¯ α (ω) dω Fα (ω)G

f (t)¯ g (t) dt = R

R

Z Z

= c(−α)

α Wf,g (t, ω) exp{ia(α)ω 2 }dω dt.

R R

In particular, Z

|f (t)|2 dt =

Z

R

|Fα (ω)|2 dω = c(−α)

R

Z Z

Wfα (t, ω) exp{ia(α)ω 2 }dω dt.

R R

(2) With some computations, it is easy to see that Z R

¯ fα ,g (u, ω) dω = Wfα1 ,g1 (t, ω)W 2 2

Z

f1 (t + x/2)¯ g1 (t − x/2)f¯2 (u + x/2)g2 (u − x/2) dx,

R

(4.36) from which, when u = t, we obtain Z R

¯ fα ,g (t, ω) dω Wfα1 ,g1 (t, ω)W 2 2

Z

=

f1 (t + x/2)¯ g1 (t − x/2)f¯2 (t + x/2)g2 (t − x/2) dx,

R

(4.37) and hence Z Z ZR ZR

¯ fα ,g (t, ω) dω dt = Wfα1 ,g1 (t, ω)W 2 2 f1 (t + x/2)¯ g1 (t − x/2)f¯2 (t + x/2)g2 (t − x/2) dx dt.

(4.38)

R R

Therefore, upon substituting x = t + x/2 and y = t − x/2, in the right-hand side, we have Z Z R R

f1 (x)¯ g1 (y)f¯2 (x)g2 (y) dx dy = hf1 , f2 iL2 (R) hg1 , g2 iL2 (R) ,

(4.39)

92  Fractional Integral Transforms: Theory and Applications

and by combining this last equation and (4.38) we obtain hWfα1 ,g1 , Wfα2 ,g2 iL2 (R2 ) = hf1 , f2 iL2 (R) hg1 , g2 iL2 (R) .

(4.40)

In particular, if f1 = f2 = f and g1 = g2 = g, we have

α

Wf,g = kf k kgk .

Furthermore, if f1 = f2 = g1 = g2 = f, we have

α 2

Wf = kf k2 .

4.5.2

Fractional Time and Frequency Shifts

In this section, we discuss fractional time and frequency shifts . A signal f (t) that is shifted by a time t0 and frequency ω0 in the fractional Fourier transform domain is given by n

h

g (t) = f˜(t) = exp −ib(α)ω0 t + ia(α) ω02 + t2

io

f (t − t0 ) .

We now show how the fractional Wigner distribution of g = f˜ is related to that of f. Theorem 18. Let f, g be defined as above. Then Wgα (t, ω) = Hα (t, ω) Wfα (t − t0 , ω − ω0 + t cos α) , where n

h

io

Hα (t, ω) = exp ia(α) ω02 + t2 cos2 α − 2ωω0 − −2t cos α (ω − ω0 )

.

Proof By substituting g in (4.33), we have Wgα (t, ω) =

Z

g(t + x/2)g(t − x/2)Kα (x, ω)dx

R

1 1 f t − t0 + x f¯ t − t0 − x 2 2 R ( "    #)  1 1 2 2 × exp −ib(α)ω0 t + x + ia(α) ω0 + t + x 2 2 

Z

 



=

(



× exp ib(α)ω0

"

1 1 t − x − ia(α) ω02 + t − x 2 2 



2 #)

Kα (x, ω) dx.

After some simplifications, we obtain 1 1 f t − t0 + x f¯ t − t0 − x 2 2 R × exp [−ib(α)xω0 + 2ia(α)xt] Kα (x, ω)dx    Z  1 1 ¯ = c(α) f t − t0 + x f t − t0 − x E(t, ω, x)dx, 2 2 R Wgα (t, ω) = c(α)

Z



 



(4.41)

The Fractional Fourier Transform (FrFT)  93

where n

o

E(t, ω, x) = exp −ia(α)(x2 + ω 2 ) + ib(α)x (ω − ω0 ) + 2ia(α)tx . But it is easy to see that Kα (x, ω − ω0 + t cos α) = n

h

io

exp −ia(α) x2 + ω 2 + ω02 + t2 cos2 α − 2ωω0 + 2t cos α(ω − ω0 ) × exp {ib(α)x(ω − ω0 + t cos α)} . By choosing n

io

h

Hα (t, ω) = exp ia(α) ω02 + t2 cos2 α − 2ωω0 + 2t cos α (ω − ω0 )

,

it is evident that E(t, ω, x) = Hα (t, ω) Kα (x, ω − ω0 + t cos α), which is the exponential factor in Eq. (4.41), and this completes the proof. In other words, we have shown that, apart from the modulation factor, Hα , the FrWD of f˜ is equal to the FrWD of f shifted by t0 on the time axis and by ω0 − t cos α on the frequency axis. In particular, when α = π/2, we obtain the known result for the standard Wigner distribution. 4.5.3 The Fractional Cross-Ambiguity Function

Another time-frequency representation that plays an important role in radar, sonar signal processing and radio astronomy is the ambiguity function. Its idea was originally introduced in signal processing by E. P. Wigner in 1948 [317] but it was P. Woodward who formulated it in the context of radar theory [322]. Woodward proposed treating the question of radar signal ambiguity as part of the question of target resolution. To do that, he introduced a function that described the correlation between a radar signal and its Doppler-shifted and time-translated version. This function exhibits the interplay between measurement ambiguity and target resolution, and for this reason it is called the radar ambiguity function. The ambiguity function of a signal f (t) is defined as 1 A(τ, ω) = √ 2π

Z

f (t)f (t − τ )eiωt dt.

R

Its absolute value is called the uncertainty function as it is related to the uncertainty principle of radar signals. The study of the radar ambiguity function in the context of pure mathematics and, in particular, in group theory and harmonic analysis, was pioneered by C. Wilcox [318], L. Auslander and R. Tolimieri [22]. For applications of the ambiguity functions in optics, see [230]. Most of the material presented in this section is based on the author’s work in [265]. The cross-ambiguity function Af,g (u, v) of two functions f, g is defined as 1 Af,g (u, v) = √ 2π

Z R

f (t + u/2) g¯ (t − u/2) e−ivt dt.

94  Fractional Integral Transforms: Theory and Applications

The function Rf,g (u) = Af,g (u, 0) is called the cross-correlation function of f and g and Rf (u) = Af (u, 0) is called the auto-correlation function of f. In this section, we generalize the cross-ambiguity function by introducing a fractional ambiguity function . Definition 17. The fractional (or weighted) ambiguity function of two integrable functions f and g is defined as Aα f,g (u, v) =

Z

f (t + u/2) g¯ (t − u/2) K−α (t, v) dt.

(4.42)

R α When f = g, we denote Aα f,f by Af . 2 The fractional ambiguity function Aα f,g exists, for example, if f, g ∈ L (R). For, by the Cauchy-Schwarz inequality we have

2 α Af,g (u, v)

Z     2 f t + 1 u g¯ t − 1 u dt 2 2 R ! !    Z  Z 1 2 1 2 2 ≤ |c(α)| g t − 2 u dt f t + 2 u dt R R Z  Z 

= |c(α)|2

≤ |c(α)|2 =

|f (x)|2 dx

R 2 |c(α)| kf k22 kgk22

|g(y)|2 dy

R

< ∞.

2 2 In fact, we shall soon show that Aα f,g ∈ L (R ); see Eq. (4.51) below.

Theorem 19. Let f, g ∈ L2 (R) and Fα and Gα be their fractional Fourier transforms, respectively. Then 1. hf, gi = hFα , Gα i =

Z Z

Aα f,g (0, v) Kα (t, v)dv dt.

In particular, 2

2

kf k = kFα k =

Z Z

Aα f (0, v) Kα (t, v)dv dt.

2. The following generalization of Moyal’s formula holds α hAα f1 ,g1 , Af2 ,g2 iL2 (R2 ) = hf1 , f2 iL2 (R) hg1 , g2 iL2 (R) .

(4.43)



α

Af,g = kf k kgk ,

(4.44)

In particular, 2 2 2 which shows that Aα f,g ∈ L (R ) if f and g are in L (R).

Proof 1) Fix u. Then it follows from the inversion formula for the FrFT that f (t + u/2) g¯ (t − u/2) =

Z R

Aα f,g (u, v) Kα (t, v) dv,

The Fractional Fourier Transform (FrFT)  95

which, upon substituting t1 = t + u/2 and t2 = t − u/2, leads to Z

Aα f,g (t1 − t2 , v) Kα

f (t1 )¯ g (t2 ) =



R

t1 + t2 , v dv. 2 

(4.45)

For t = t1 = t2 , we have Z

Aα f,g (0, v) Kα (t, v) dv;

f (t)¯ g (t) = R

thus,

Z

Z

f (t)¯ g (t)dt = R

Z Z

Aα f,g (0, v) Kα (t, v) dv dt,

Fα (ω)Gα (ω)dω = R

R R

which leads to kf k22 = kFα k22 =

Z Z

Aα f (0, v) Kα (t, v) dv dt.

R R

2) Similarly, and in view of the fact that Z

2 −t2 )

Kα (t, v)K−α (x, v)dv = eia(x

δ(x − t),

(4.46)

R

and because 2π|c(α)|2 /b(α) = 1, we have Z R

¯α Aα f1 ,g1 (u, v)Af2 ,g2 (w, v) dv

Z

f1 (t + u/2)¯ g1 (t − u/2)f¯2 (t + w/2)g2 (t − w/2) dt,

= R

(4.47) from which, when w = u, we obtain Z R

¯α Aα f1 ,g1 (u, v)Af2 ,g2 (u, v) dv

Z

=

f1 (t + u/2)¯ g1 (t − u/2)f¯2 (t + u/2)g2 (t − u/2) dt,

R

(4.48) and hence Z Z ZR ZR

¯α Aα f1 ,g1 (u, v)Af2 ,g2 (u, v) du dv = f1 (t + u/2)¯ g1 (t − u/2)f¯2 (t + u/2)g2 (t − u/2) du dt.

(4.49)

R R

Therefore, upon substituting x = t + u/2 and y = t − u/2, in the right-hand side of (4.49), we have α (4.50) hAα f1 ,g1 , Af2 ,g2 iL2 (R2 ) = hf1 , f2 iL2 (R) hg1 , g2 iL2 (R) . In particular, if f1 = f2 = f and g1 = g2 = g, we have

α

Af,g = kf k kgk .



2 Moreover, if f1 = f2 = g1 = g2 = f, we have Aα f = kf k .

(4.51)

96  Fractional Integral Transforms: Theory and Applications

Next we show how the fractional ambiguity function is related to the fractional Wigner distribution function. Z Z

α Wf,g (t, ω) K−α (t, η)K−α (τ, ω)dt dω

ZR ZR

=

Z

K−α (t, η)K−α (τ, ω)dt dω

f (t + u/2)¯ g (t − u/2)Kα (u, ω) du

ZR R

f (t + τ /2)¯ g (t − τ /2)K−α (η, t) dt = Aα f,g (τ, η),

= R

where the last step follows by interchanging the integral signs and using (4.46). In the rest of this section we derive more properties of the fractional cross–ambiguity function Aα f,g (u, v). Let g = f in (4.45), then Z

f (t)f (τ ) =

Aα f (t − τ, v)Kα (

R

t+τ , v) dv. 2

(4.52)

Set Hf (t, τ ) = f (t)f (τ ). It is easy to see that Hf satisfies the following properties: 1. H(t, τ ) = H(τ, t) 2. H(t, t) ≥ 0 3. H(x, x)H(t, τ ) = H(t, x)H(x, τ ). ˜ 2 (R2 ) denote that subset of L2 (R2 ) consisting of all functions H(t, τ ) satisfying Let L conditions (1)–(3). Consider the mapping U [Aα f ] = Hf defined by (4.52). It is easy to see that 2 kAα f k = kHf k = kf k , where kHf k and kAα f k are defined in the usual way, e.g., kHf k2 =

Z Z

Hf (t, τ ) 2 dtdτ.

R R

˜ 2 (R2 ), there exists f ∈ L2 (R) such that U [Aα ] = F . In fact, if F is For any F (t, τ ) ∈ L f p given, we can choose f (t) = F (t, τ0 )/ F (τ0 , τ0 ), where τ0 is chosen so that F (τ0 , τ0 ) > 0. For, Aα f (u, v) = =

u u f (t + )f (t − )K−α (t, v) dt 2 2 R Z 1 u u F (t + , τ0 )F (t − , τ0 )K−α (t, v) dt. F (τ0 , τ0 ) R 2 2

Z

The integral exists because f ∈ L2 (R) if F ∈ L2 (R2 ). The last equation leads to 1 u u F (t + , τ0 )F (t − , τ0 ) = F (τ0 , τ0 ) 2 2

Z R

Aα f (u, v)Kα (t, v) dt

The Fractional Fourier Transform (FrFT)  97

or 1 t+τ F (t, τ0 )F (τ, τ0 ) = , v) dv Aα f (t − τ, v)Kα ( F (τ0 , τ0 ) 2 R = f (t)f (τ ) = Hf (t, τ ). Z

Furthermore, since F satisfies properties (1)–(3) Hf (t, τ ) = f (t)f (τ ) = =

F (t, τ0 )F (τ, τ0 ) F (t, τ0 )F (τ0 , τ ) = F (τ0 , τ0 ) F (τ0 , τ0 ) F (τ0 , τ0 )F (t, τ ) = F (t, τ ). F (τ0 , τ0 )

Recall from the Definition of the cross–ambiguity transformation that Aα f,g is defined as a mapping from L2 (R) × L2 (R) → L2 (R2 ), given by Aα (f, g) = Aα (u, v). Clearly, this f,g ∞ ∞ 2 mapping is bilinear. If {fn }n=1 and {gn }n=1 are two sequences in L (R) such that fn → f and gn → g in L2 (R), then by writing fn gn − f g as fn gn − fn g + fn g − f g and using the Cauchy-Schwarz inequality, we conclude the following theorem Theorem 20. The cross–ambiguity transformation Aα is a continuous transformation from L2 (R) × L2 (R) into L2 (R2 ), in the sense that if fn → f and gn → g in L2 (R), then α Aα fn ,gn (u, v) → Af,g (u, v). 2 α Let {ψn (t)}∞ n=1 be an orthonormal basis of L (R) and set ψm,n (u, v) = Aψm ,ψn (u, v). From (4.50), we have

hψk,l , ψm,n i = hψk , ψm ihψl , ψn i = δk,m δl,n 2 2 which shows that {ψm,n (u, v)}∞ m,n=1 is an orthonormal set in L (R ) and hence it is a basis for the closure of its span, which we shall denote by AL. Now let f ∈ L2 (R). Then

f (t) =

∞ X

fˆn ψn (t) with kf k2 =

∞ X ˆ 2 fn . n=1

n=1

Similarly, if F ∈ AL, we have F (u, v) =

∞ X

Fˆm,n ψm,n (u, v),

with

m,n=1

∞ X ˆ 2 Fm,n < ∞.

kF k2 =

m,n=1

Therefore, if Aα f ∈ AL, then Aα f (u, v) =

∞ X

cm,n ψm,n (u, v),

m,n=1

with

α α ˆ ˆ cm,n = hAα f , ψm,n i = hAf,f , Aψm ,ψn i = hf, ψm ihf, ψn i = fm fn .

P ˜ 2 (R2 ) Conversely, if cm,n = fˆm fˆn , then f = fˆm ψm ∈ L2 (R). Thus, a function F (u, v) ∈ L is an ambiguity function if and only if Fˆm,n = fˆm fˆn .

98  Fractional Integral Transforms: Theory and Applications

4.5.4 Fractional Windowed (Sliding-Window)-Fourier Transform

First, let us recall the definition of the windowed Fourier transform Fh (t, w) of f with respect to a window function h, and recall some of its properties. 1 Fh (t, w) = √ 2π

Z

f (x)h(x − t)eiwx dx,

R

L2 (R).

where f, h ∈ Let f, g ∈ L2 (R), and denote their windowed-Fourier transforms with respect to a window function h by F and G, respectively. Then Parseval’s relation for the transform takes the form hF, GiL2 (R2 ) = khk2 hf, gi , (4.53) where hF, GiL2 (R2 ) =

Z Z

F (t, w)G(t, w)dtdw . R R

In particular, if khk = 1, then the transformation is an isometry from L2 (R) into L2 (R2 ). The inversion formula for the Windowed-Fourier transform is Z Z 1 f (x) = √ F (w, t)h(x − t)e−ixw dtdw . 2 2πkhk R R We now introduce the fractional windowed Fourier transform and then derive some of its properties. Definition 18. Let h ∈ L2 (R) be the window function and assume that f ∈ L2 (R). We define the fractional windowed Fourier transform of f with angle α and window function h as Z Fα;h [f ](t, w) = Fα;h (t, w) = f (x)h(x − t)Kα (x, w)dx. R

Theorem 21. Let Fα;h and Gα;h be the fractional windowed Fourier transforms of f and g, respectively. Then we have hFα;h , Gα;h iL2 (R2 ) = khk2 hf, gi, where hFα;h , Gα;h iL2 (R2 ) =

Z Z

Fα;h (t, w)Gα;h (t, w)dtdw. R R

2

In particular, Fα;h L2 (R2 ) = khk2 kf k2 . Moreover, the inversion formula for the fractional windowed Fourier transform is given by

f (x) =

1 khk2

Z Z

h(x − t)Fα;h (t, w)K−α (x, w)dwdt

R R

Proof For fixed t, Fα;h is the fractional Fourier transform of f (x)ht (x), where ht (x) = h(x − t). Therefore, by Parseval’s relation for the FrFT, we have hFα;h , Gα;h iL2 (R) = hFα [f ht ], Fα [ght ]iL2 (R) Z

=

Fα;h (w)Gα;h (w)dw R

= hf ht , ght i =

Z R

f (x)g(x)h(x − t)h(x − t)dx.

The Fractional Fourier Transform (FrFT)  99

By integrating over t, we obtain the result. The inversion formula follows from the inversion formula of the FrFT Z

f (x)h(x − t) =

Fα;h (w)K−α (x, w)dw, R

and multiplying by h(x − t) and then integrating with respect to t over R.

4.6

UNCERTAINTY PRINCIPLE FOR THE FRACTIONAL FOURIER TRANSFORM

The uncertainty principle for the Fourier transform asserts a reciprocal relation between the spread of a function and the spread of its Fourier transform. In practice this implies that shortening the time window comes at the expense of the frequency resolution [102, 277]. In this section, we present an uncertainty principle for the fractional Fourier transform . Theorem 22. Let f (t) be a real-valued function such that lim tf 2 (t) = 0,

and lim ωFα2 (ω) = 0,

|t|→∞

and let

Z

2

|ω|→∞

Z

2

t |f (t)| dt,

T=

Z

U=

0

ω 2 |Fα (ω)|2 dω,

σ= Z

2

|f (t)| dt,

V =

|Fα0 (ω)|2 dω,

where the integrals are taken over the whole real line. Then 1 2 E ≤ (T V + σU ) cos2 α + 2σT sin2 α, 2

(4.54)

where E is the energy of the signal defined as Z

E=

|f (t)|2 dt =

Z

|Fα (ω)|2 dω.

In particular, if α = π/2, we obtain the uncertainty principle for the standard Fourier transform 1 2 E ≤ σT. 4 Proof The assumption on f implies that 1 2

Z

1 2

2

tdf (t) =



 Z ∞ 2 tf (t) − f (t)dt −∞ Z 2

1 = − E= 2

tf (t)f 0 (t)dt.

By the Cauchy-Schwartz inequality, we have 2 tf (t)f (t)dt Z  Z Z

1 2 E = 4



0

2

2

t |f (t)| dt

 0 2 f (t) dt .

(4.55)

100  Fractional Integral Transforms: Theory and Applications

But by property (4.12) , we have Z

f 0 (t)Kα (t, ω) dt = Fα0 (ω) cos α − iωFα (ω) sin α,

and it follows from Parseval’s relation that Z

0 2 f (t) dt =

Z   0 F (ω) 2 cos2 α + ω 2 |Fα (ω)|2 sin2 α dω. α

(4.56)

By substituting (4.56) into (4.55), we obtain   1 2 E ≤ T V cos2 α + σ sin2 α 4

(4.57)

Similarly, 1 2

Z

ωdFα2 (ω) =

1 − E= 2

Z

ωFα (ω)Fα0 (ω) dω,

which yields 1 2 E ≤ 4

Z

2

2

 Z

ω |Fα (ω)| d ω

 0 F (ω) 2 d ω . α

(4.58)

With some computations one can show that Z

0 F (ω) 2 d ω = U cos2 α + T sin2 α, α

which upon its substitution in (4.58), reduces (4.58) to   1 2 E ≤ σ U cos2 α + T sin2 α . 4

(4.59)

Adding (4.57) and (4.59), we obtain (4.54).

4.7

FRACTIONAL FOURIER TRANSFORM OF GENERALIZED FUNCTIONS

Among a number of different extensions of the FrFT, is its extension to spaces of generalized functions (distributions). The aim of this section is to obtain fractional Fourier transform of generalized functions. We will develop this extension using two different approaches, one analytic and one algebraic. Extending an integral transform to a class of generalized functions can be achieved in a number of different ways. Chief among them is the embedding method, in which the kernel of the integral transform is embedded in a suitable space of test-functions. The dual space of a testing-function space is a space of generalized functions. The integral transform of an element of the dual space is defined as the function given by taking the action of that element of the dual space on the kernel of the transform. That is if A is a space of test functions, A∗ is its dual, and k(t, x) is the kernel of the integral transform under consideration, then under the assumption that k(t, x) ∈ A, we can define the integral transform of any element f ∈ A∗ as F (x) = hf (t), k(t, x)i .

The Fractional Fourier Transform (FrFT)  101

Other methods, such as the adjoint and sequence methods, can also be used; see [52, 108, 232, 346, 352] for details. The algebraic method we shall introduce in this section is different from all of the above since it uses the algebraic structure of the integral transform under consideration rather than its analytic properties. This is particularly useful if such a structure is available. The method is elegant and the extension is natural once an appropriate space of generalized functions is constructed. In this approach, the way generalized functions are constructed resembles the way in which the rational numbers are constructed from the integers. In the next subsection, we shall extend the FrFT to a space of generalized functions using the embedding method. This will be done very briefly since most of the derivation is routine. In Subsection 2, we construct a space of generalized functions using the algebraic approach, and then in Subsection 3, we define the fractional Fourier transforms of elements of that space. 4.7.1 The Embedding Method

In this section, we extend the FrFT to a space of generalized functions using the embedding method, which depends on analytic properties of the FrFT. Since this method is well known, we shall outline only the main steps of how to use it to extend the FrFT to generalized functions. The procedure is very similar to the one that Zemanian used to extend the Laplace transform to generalized functions [361, Ch. 3]. Since the kernel of the FrFT, Kα (t, x), is an infinitely differentiable function in both t and x, it belong to the space E consisting of all infinitely differentiable functions. The dual space E ∗ of E is the space of generalized functions with compact supports. We have the following definition. Definition 19. The FrFT of a generalized function f with compact support is defined as Fα (x) = hf (t), Kα (t, x)i. The FrFT, Fα (x), of a generalized function with compact support f is an infinitely differentiable function that grows no faster than a polynomial on the real axis as |x| → ∞. In fact, F (1) (x) = −2ia(α)xhf (t), Kα (t, x)i + ib(α)hf (t), tKα (t, x)i, Hence

|F (1) (x)| ≤ C|x| for all x and sufficiently large C.

By induction, one can show that |F (n) (x)| ≤ C|x|n for all x and sufficiently large C. The following theorem gives an inversion formula for the FrFT of a generalized function with compact support. Theorem 23. Let Fα [f ](x) = Fα (x) be the FrFT of a generalized function with compact support f. Then Z r

f (t) = lim where the limit is taken in the

Fα (x)K−α (t, x) dx, r→∞ −r space D∗ of Schwartz distributions.

102  Fractional Integral Transforms: Theory and Applications

Proof We need to show that hf (t), φi = lim h r→∞

Z r −r

Fα (x)K−α (t, x) dx, φi ,

for all φ ∈ D, where D is the space of all infinitely differentiable functions that vanish outside some compact set. We have Z ∞

Z r

h

−r

Fα (x)K−α (t, x) dx, φ(t)i =

Z r

φ(t) dt −∞ Z ∞

=

−r Z r

φ(t) dt −∞

−r

= hf (u),

Fα (x)K−α (t, x) dx hf (u), Kα (u, x)iK−α (t, x) dx

Z ∞

Z r

φ(t) dt −∞

−r

Kα (u, x)K−α (t, x) dxi

Changing the order of integration is possible because φ is bounded and has compact support and the integrand is a continuous function of t and x. Therefore, Z r

lim h

r→∞

−r

Fα (x)K−α (t, x) dx, φ(t)i =

lim hf (u),

Z ∞

r→∞

= hf (u), lim

φ(t) dt −∞

−r

Z ∞

Z r

r→∞ −∞

= hf (u),

Z r

φ(t) dt

Z ∞

−r

Kα (u, x)K−α (t, x) dxi

Z ∞

φ(t) dt −∞

Kα (u, x)K−α (t, x) dxi

−∞

Kα (u, x)K−α (t, x) dxi.

In view of Theorem (7), we have lim h

r→∞

Z r −r

Fα (x)K−α (t, x) dx, φ(t)i =

= hf (u),

Z ∞ −∞

4.7.2

φ(t)K0 (u, t) dti = hf (u), F0 [φ](u)i = hf (u), φ(u)i .

The Space of Boehmians

In this section, we introduce a space of generalized functions that will be needed in the extension of the FrFT. The elements of that space, which are called Boehmians, are more general than Schwartz distributions and regular operators [207, 208]. They were first introduced by J. Mikusiński in [209] as an extension of the notion of regular operators that was developed earlier by T. Boehme in [43]. Unlike the theory of generalized functions developed by Schwartz [258], Gel’fand and Shilov [108] and Zemanian [361], the theory of Boehmians treats generalized functions more as algebraic objects than as elements of the dual space of some testing-function space. Simply put, Boehmians are equivalence classes of “quotients of sequences" constructed from an integral domain of continuous functions as rational numbers are constructed from the integers.

The Fractional Fourier Transform (FrFT)  103

For Boehmians, the integral domain operations are addition and a binary operation called convolution. This convolution operation is not necessarily the same as the standard convolution operation denoted earlier by ∗. This flexibility in choosing the convolution operation is what makes the extension of the FrFT to Boehmians possible. To make this section self-contained, we shall give a brief introduction to Boehmians since they are not very well known. Boehmians. Let G be a complex linear space and H be a subspace of G. Let ⊗ be a binary operation from G × H into G such that the following conditions are satisfied: If φ, ψ ∈ H, then φ ⊗ ψ ∈ H and φ ⊗ ψ = ψ ⊗ φ.

(4.60)

If f ∈ G and φ, ψ ∈ H, then (f ⊗ φ) ⊗ ψ = f ⊗ (φ ⊗ ψ).

(4.61)

If f, g ∈ G, φ ∈ H and λ ∈ C, then (f + g) ⊗ φ = f ⊗ φ + g ⊗ φ and λ(f ⊗ φ) = (λf ⊗ φ). Let ∆ be a family of sequences of elements of H such that: if f ∈ G, {φn } ∈ ∆, and f ⊗ φn = 0 for all n ∈ N, then f = 0

(4.62)

where N is the set of natural numbers, and if {φn }, {ψn } ∈ ∆, then {φn ⊗ ψn } ∈ ∆.

(4.63)

A pair of sequences (fn , φn ) is called a quotient of sequences, and will be denoted by fn /φn , if fn ∈ G for n = 1, 2, ..., {φn } ∈ ∆, and fn ⊗ φm = fm ⊗ φn for all m, n ∈ N . Two quotients of sequences fn /φn and gn /ψn are equivalent if fn ⊗ ψn = gn ⊗ φn for every n ∈ N . The equivalence class of fn /φn will be denoted by [fn /φn ]. The space of equivalence classes of quotients of sequences will be denoted by B(G, H, ⊗, ∆) and its elements will be called Boehmians. Addition and multiplication by scalars are defined in B(G, H, ⊗, ∆) as follows: λ[fn /φn ] = [λfn /φn ]; and [fn /φn ] + [gn /ψn ] = [(fn ⊗ ψn + gn ⊗ φn )/(φn ⊗ ψn )]. Clearly, B(G, H, ⊗, ∆) is a vector space. The mapping f → [(f ⊗ φn )/φn ] is an isomorphism of G with a subspace of B(G, H, ⊗, ∆). It is convenient to treat G as a subspace of B(G, H, ⊗, ∆). If F = [fn /φn ] ∈ B(G, H, ⊗, ∆) and G = [gn /ψn ] ∈ B(H, H, ⊗, ∆), then we can define F ⊗ G as follows: F ⊗ G = [(fn ⊗ gn )/(ψn ⊗ φn )]. It is easy to see that F ⊗ G ∈ B(G, H, ⊗, ∆) and that it is an extension of ⊗ from G × H

104  Fractional Integral Transforms: Theory and Applications

onto B(G, H, ⊗, ∆) × B(H, H, ⊗, ∆). Using the identification of H with a subspace of B(G, H, ⊗, ∆), we can write [fn /φn ] ⊗ ψ = [(fn ⊗ ψ)/φn ], and, in particular, [fn /φn ] ⊗ φk = fk . If G is equipped with a notion of convergence, then we can define a convergence in B. We say that a sequence of Boehmians {Fn } is ∆-convergent to a Boehmian F , and we ∆

write Fn → F , if there exists {δn } ∈ ∆ such that (Fn − F ) ⊗ δn ∈ G for every n ∈ N and the sequence {(Fn − F ) ⊗ δn } converges to zero in G. It can be proved that, under certain conditions, B equipped with ∆-convergence is a complete quasi-normed space. It is often convenient to use a second type of convergence: δ-convergence. We say that δ a sequence of Boehmians {Fn } is δ-convergent to a Boehmian F , and we write Fn → F , if there exists {δn } ∈ ∆ such that Fn ⊗ δk , F ⊗ δk ∈ G, for every k, n ∈ N , and the sequence {Fn ⊗ δk } converges to F ⊗ δk in G, for every k ∈ N . It can be proved that the sequence {Fn } is ∆-convergent to F if and only if every subsequence of {Fn } contains a subsequence that is δ-convergent to F [206, 208]. 4.7.3 The Algebraic Method

Now we are in a position to define the fractional Fourier transform of members of a class of generalized functions that was constructed in the preceding subsection. For related work, see [153]. Let D be the space of all infinitely differentiable functions with compact supports and S be the Schwartz space of infinitely differentiable, rapidly decreasing functions. In the notation of the preceding subsection, let us take G to be L1 (R), H = D, and ⊗ to be the convolution operation ?. Furthermore, let ∆ be the family of all sequences of real-valued functions, {φn (x)}∞ n=1 ⊂ D such that 1. 2.

−ia(α)x2 dx −∞ φn (x)e

R∞

R∞

−∞ |φn (x)| dx < M ,

=

1 c(α) ,

for all n,

for some M and all n,

3. σn (δ) = max|x|≥δ |φn (x)| → 0 as n → ∞, for each δ > 0. Lemma 1. Let {φn } and {ψn } be two sequences in ∆. Then, {φn ? ψn } is also in ∆. Proof 1) Let kn (x) = (φn ? ψn ) (x). From the definition of the FrFT, it follows that Fα [f ] (0) =

Z ∞ −∞

Z ∞

f (t)Kα (t, 0) dt = c(α)

2

f (t)e−ia(α)t dt.

−∞

Thus, by Theorem 11, we have 2

Fα [kn ] (u) = eia(α)u Fα [φn ] (u)Fα [ψn ] (u) , and therefore Fα [kn ] (0) = Fα [φn ] (0)Fα [ψn ] (0) = c(α) which is equivalent to (1).

Z ∞ −∞

2

kn (t)e−ia(α)t dt = 1 ,

The Fractional Fourier Transform (FrFT)  105

2) From the definition of kn it follows Z ∞ −∞

|kn (u)| du ≤

Z ∞

Z ∞

du −∞

−∞

|φn (t)||ψn (u − t)| dt ≤ M 2 , for all n.

3) The proof of (3) is similar. In view of Lemma 1, one can verify that the space B(L1 (R), D, ?, ∆) is a space of Boehmians and will be called the space of integrable Boehmians. Now we can define the fractional Fourier transform of an integrable Boehmian. Definition 20. The fractional Fourier transform with angle α of an integrable Boehmian, [fn /φn ] is defined as Fα [fn /φn ] = [Fα [fn ]/Fα [φn ]] . Before we show that this definition makes sense, let us observe that if f is in L1 (R), 2 2 then e±ia(α)x f is also in L1 (R), and similarly if φ is in D, then e±ia(α)x φ is also in D. Since the FrFT of an integrable function f is a continuous function that vanishes at ±∞, it is easy to see that the FrFT of a function φ in D is in the Schwartz space S. Again in the notation of the preceding subsection, let us take G to be the space of all continuous functions, C(R) and H = S. The operation ⊗ will be defined as follows: 2

F (u) ⊗ G(u) = eia(α)u F (u)G(u). The set ∆, which will be denoted by ∆p in this case, is defined as the set of all sequences {Φn } , where Φn ∈ S and Φn is the FrFT of a function φn ∈ D with {φn } ∈ ∆. Now one can verify that (S, ⊗) is a commutative ring with the mapping ⊗ : C(R) × S → C(R) satisfying properties (4.60)– (4.63) listed in preceding subsection. Furthermore, we need to show that if {Φn } and {Ψn } , are in ∆p , then {Φn ⊗ Ψn } , is 2 also in ∆p . But this follows immediately from the fact that e±ia(α)u Φn (u)Ψn (u) is in S, whenever Φn (u) and Ψn (u) are in S and that 2

(Φn ⊗ Ψn ) (u) = eia(α)u Fα [Φn ] (u)Fα [Ψn ] (u) = Fα [φn ? ψn ] . Finally, we must show that Definition 20 is independent of the representation of a Boehmian. Let [fn /φn ] and [gn /ψn ] be two different representations of the same integrable Boehmians, i.e., fn ? ψn = gn ? φn for all n. Then 2

Fα [fn ? ψn ] (u) = eia(α)u Fα [fn ] Fα [ψn ] , and

2

Fα [gn ? φn ] (u) = eia(α)u Fα [gn ] Fα [φn ] ,

which implies that Fα [fn ⊗ ψn ] (u) = Fα [gn ⊗ φn ] (u), or equivalently Fα [fn /φn ] = Fα [gn /ψn ]. Now putting all these facts together, we obtain the following theorem.

106  Fractional Integral Transforms: Theory and Applications

Theorem 24. The class A = (C(R) , S , ⊗ , ∆p ) is a class of Boehmians and that the fractional Fourier transform is a linear transformation from the class of integrable Boehmians, B, into the class A.

4.8

APPLICATIONS OF THE FRACTIONAL FOURIER TRANSFORM

We close this chapter by highlighting some applications of the fractional Fourier transform and refer the interested reader to other sources for details. As we pointed out before, the fractional Fourier transform was originally introduced by Wiener and Namias to solve problems in quantum mechanics, but in the early 1990’s some physical implementations of the transform were realized in the field of optics. After its introduction in optics, the concept of fractional transforms started to receive considerable attention in signal analysis and other fields. The Fourier transform plays an important role in both signal processing and optics, and as such, it is no surprise that the fractional Fourier transform, which is a generalization of the Fourier transform, has found many applications in those two fields. In signal processing, the Fourier transform fˆ(w) of a signal f (t) represents the frequency content of the signal which may be displayed as the spectrum analyzer of the signal on hi-fi systems. It is also used in a number of time-frequency representations of signals [3, 4, 15, 16, 249, 268, 366]. In optics, historically two of the most important integral transforms used were the Fourier and the Fresnel integral transforms, but more recently the fractional Fourier transform has proved to be another important transform in the field. It has been shown that the Fresnel transform is equivalent to a scaled version of the FrFT. The Fourier transform models diffraction patterns such as the Fraunhofer diffraction, while the Fresnel transform models the Fresnel-Kirchoff diffraction. Both transforms can be realized by using lenses and free space propagation. In an optical system with several lenses and using a point source for illumination, one first observes the Fourier transform of the object at the image of the point source, then an inverted image of the object, followed by an inverted Fourier transform, and then the image of the object and so on. This is a physical implementation of Eq. (4.3). In the simplest case, when the Fourier transform is observed at the focal plane, one may argue that whatever is being observed halfway between the lens and the focal plane may be called the one half Fourier transform. This was one of the key ideas behind the physical representation of the fractional Fourier transform. This simple idea led to considerable progress in the field that has been demonstrated by several optical implementations of the fractional Fourier transform using lenses [203]; see also [9, 10, 11, 44, 148, 201, 320] Although the fractional Fourier transform has been experimentally realized by optical systems consisting of lenses and filters, its main utility has been accentuated in modeling ray propagation in graded-index media (GRIN) [202]. In a quadratic graded index media (GRIN) the refractive index distribution of such a medium is given by h

i

n2 (r) = n21 1 − (n2 /n1 )r2 , where r2 = x2 + y 2 is the radial distance from the optical axis and n1 and n2 are the GRIN

The Fractional Fourier Transform (FrFT)  107

medium parameters. It is known that a parallel bundle of rays will be focused at a distance p L = (π/2) n1 /n2 away from the input plane. Therefore, if an image represented by a function f (x, y) is presented at the input plane z = 0, then the Fourier transform fˆ(u, v) is observed at the plane z = L. That is the plane z = L is the focal plane . Since the system is uniform in the axis direction, it is reasonable to call the light distribution at distance z = αL, where 0 < α < 1, the fractional Fourier transform of order α. In other words, the fractional Fourier transform Fα [f ] can be physically observed as the functional form of the scalar light distribution at z = αL; see [202]. In addition to its applications in optics, the FrFT has many applications in digital and image processing, in particular in filtering and image restoration. Filtering in the fractional Fourier transform domain is especially useful when the noise or distortion is of a chirp nature and the Wigner distribution of the signal and the noise overlap in some configuration but can be separated by rotation. In other words, the FrFT is used to separate a signal from its noisy component if the Wigner distributions of the signal and the noise are distinct and can be separated by appropriate rotations in the time-frequency domain. Furthermore, the FrFT is also used in optical encryption [280].

CHAPTER

5

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform

5.1

INTRODUCTION

Shift-invariant spaces play an important role in sampling theory, multiresolution analysis, and many other areas of signal and image processing. A special class of the shift-invariant spaces is the class of sampling spaces in which functions are determined by their values on a discrete set of points. One of the tools used in the study of sampling spaces is the Zak transform which is also related to the Poisson summation formula. A common thread among all these notions is the Fourier transform. In this chapter, we extend some of these concepts to the fractional Fourier transform (FrFT) domain. First, we introduce two definitions of the discrete fractional Fourier transform and two semi-discrete fractional convolutions associated with them. We employ these definitions to derive necessary and sufficient conditions pertaining to FrFT domain, under which integer shifts of a function form an orthogonal basis or a Riesz basis for a shiftinvariant space. The study of shift-invariant spaces and Riesz basis in the fractional Fourier transform domain leads us naturally to introduce the fractional Zak transform.

5.2

BASIC DEFINITIONS

Shift-invariant spaces (SIS) have been the focus of many research papers in recent years because of their close connection to wavelets and multiresolution analysis [84, 144, 302, 303]. They are subspaces of L2 (R) that are invariant under integer translates. Typically, they are taken as the closure of sets of the form V (φ1 , . . . , φr ) =  

r +∞ X X



p=1 n=−∞

f : f (t) =

DOI: 10.1201/9781003089353-5

cp [n] φp (t − n) , φp ∈ L2 (R) ,

r +∞ X X p=1 n=−∞

 

|cp [n]|2 < ∞ . 

108

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  109

The functions φp are called the generators of the space. In many signal processing applications, it is of interest to represent a signal as a linear combination of shifted versions of some basic function ϕ that generates a stable basis for a space. Therefore, for simplicity, we consider spaces generated by one generator. That is (

V (ϕ) = f (t) =

+∞ X

) 2

c [n] ϕ (t − n), ϕ ∈ L (R) , {c [n]} ∈ `2 .

(5.1)

n=−∞

The closure of V(ϕ) is a closed subspace of L2 (R). Furthermore, it is shift-invariant in the sense that for any f ∈ V(ϕ), its shifted version, f (· − k) ∈ V(ϕ), k ∈ Z, where Z denotes the set of integers. For the basis functions to be stable, it is imperative that the family of functions {ϕ (t − n)}∞ n=−∞ forms a Riesz basis or equivalently, there exists two positive constants 0 < η1 , η2 < ∞ such that ∀c ∈ `2 ,

η1 kck2`2

2



X

c[k]ϕ (t − k) 6 η2 kck2`2 6

n=−∞

(5.2)

L2

where kck2`2 is the squared `2 -norm of the sequence. We define the Fourier transform of b (ω) = √1 R +∞ h(t)eiωt dt. Recall, the Fourier domain equivalent of (5.2) is h(t) by h 2π −∞ η1 6

+∞ X

|ϕb (ω + 2πn)|2 6 η2 .

(5.3)

n=−∞

The ratio ρ = ηη21 is called the condition number of the Riesz basis. The basis is shiftorthonormal or a tight frame if ρ = 1, [94, 114], where shift-orthonormality means that R +∞ hϕ, ϕ (· − k)i = δk , where hx, yi = −∞ x(t)y ∗ (t)dt is the L2 -inner product and (

δk =

1, if k = 0 . 0, if k , 0

If {ϕ (t − n)}∞ n=−∞ is an orthonormal basis and the space V(ϕ) is a reproducing-kernel Hilbert space with reproducing kernel K(x, y), then K(x, y) =

+∞ X

ϕ (x − n) ϕ (y − n) ,

(5.4)

n=−∞

R

so that f (x) = R f (y)K(x, y)dy. The following presentation is based on the authors’ work in [36]. Definition 21. (Semi-discrete Convolution) Let φ ∈ L2 (R). The semi-discrete convolution operator ∗ is defined as a linear map from `2 into L2 (R) such that, φ∗ : c 7−→ (φ ∗ c) (t) =

+∞ X n=−∞

c [n] φ (t − n).

110  Fractional Integral Transforms: Theory and Applications

The range of this map is the shift-invariant space with the generator φ. In the Fourier domain, +∞ X

z {φ ∗ c} = φb (ω) Cb (ω) , where Cb (ω) =

c [k] eiωk ,

k=−∞

where z denotes the Fourier transformation. As a result, any function in the space V(φ) can be viewed as a semi-discrete convolution of a sequence {c[k]} ∈ `2 and φ ∈ L2 (R), +∞ X

f (t) = (φ ∗ c) (t) =

c [n] φ (t − n).

(5.5)

n=−∞

In light of the shift-invariant space model in (5.1), any signal of interest f (t) ∈ V(ϕ) can be represented in form of a linear combination of the integer translates of ϕ(t) that are weighted by coefficients c[k], k ∈ Z, and in case of the classical Shannon’s sampling theorem, we have, c[n] = f (n), n ∈ Z, where f is bandlimited to [−π, π] and φ(t) = sinc (t) . The generating function is often constrained by the application at hand. Closely related to SIS are sampling spaces which we are about to introduce. Definition 22. A sampling space is a space V(φ) ⊂ L2 (R) satisfying the following conditions: 1. There exists a function ψ ∈ V(φ) such that {ψ(. − k)}k∈Z is a Riesz basis of V(φ). 2. For any sequence {ck }k∈Z ∈ `2 , the series 3. For every f ∈ V (φ), f (x) = uniformly.

k∈Z ck ψ(. − k)

P

P+∞

k=−∞ f (k) ψ (x − k)

converges pointwise.

converges in the mean and

The last condition may be written as f (x) = (f (k) ∗ ψ) (x). An example of a SIS that is also a sampling space is the space of bandlimited functions to [−π, π], where φ(x) = ψ(x) = sinc (x), sinc(z) =

sin(πz) πz

and the expansion in item (3) above is just the Shannon sampling theorem. f (x) =

+∞ X

f (k)

k=−∞

sin π(x − k) , π(x − k)

x ∈ R,

(5.6)

where f is bandlimited to [−π, π]. The reproducing kernel is seen from (5.4) to be K(x, y) =

sin [π (x − y)] . π (x − y)

(5.7)

One of the important tools used in the study of sampling spaces is the Zak transform [84, 85, 144, 145, 353]. The Zak transform , which was introduced in quantum mechanics

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  111

by J. Zak [331] to solve Schrödinger’s equation for an electron subject to a periodic potential in a constant magnetic field, may be defined as Zf (t, ω) =

+∞ X

f (t + k)e−2iπkω ,

f ∈ L1 (R)

\

L2 (R).

k=−∞

It is evident that Zf (t, ω + 1) = Zf (t, ω), Zf (t + 1, ω) = e2iπω Zf (t, ω) and that the Zak transform is a unitary transformation from L2 (R) onto L2 (Q), with



Zf

L2 (Q)

= kf kL2 (R) ,

where Q is the unit square Q = [0, 1] × [0, 1]. To see the connection between the Zak transform and sampling spaces, let us for the sake of convenience define the Fourier transform of f as fˆ(w) =

Z ∞

f (t)e−2πiwt dt

−∞

so that the inverse transform, whenever it exists, is given by Z ∞

f (t) =

fˆ(w)e2πiwt dw.

−∞

If f belongs to a sampling space with sampling function ψ ∈ L2 ∩ L1 , it follows that P since f (t) = k f (k) ψ (t − k), we have ˆ fˆ(w) = Fˆ (w)ψ(w), where Fˆ (w) =

X k

f (k)e−2πikw .

Clearly Fˆ (w) is periodic with period one; hence, ˆ ˆ + k) , f (w + k) = |P (w)| ψ(w

which, in view of the fact that P (w) = Zf (0, w), implies that 2



Gf (w) = Zf (0, w) Gψ (w), where Gg (w) = k∈Z |ˆ g (w + k)|2 , which is called the Grammian of g ∈ L2 (R). Therefore, for such a function, we have P



2

2



A Zf (0, w) ≤ Gf (w) ≤ B Zf (0, w) ,

(5.8)

for some A, B > 0. From this relation, we obtain A

+∞ X k=−∞

|f (k)|2 ≤

Z 1 0

Gf (w)dw ≤ B

+∞ X k=−∞

|f (k)|2 ,

(5.9)

112  Fractional Integral Transforms: Theory and Applications

and

ˆ Z 1P Z f (w + k) k∈Z ˆ dw = ψ(w) dw < ∞, Zf (0, w) R 0

(5.10)

whenever ψˆ ∈ L1 (R). The Shannon sampling theorem is also known to follow from the Poisson summation formula +∞ X k=−∞

or equivalently

X k

+∞ X

f (t + k) =

fˆ(k)e2πikt ,

(5.11)

f (k)e−2πikw ,

(5.12)

k=−∞

fˆ(w + k) =

X k

which, when f is band-limited to (−1/2, 1/2), leads to X k

Moreover, due to (5.12), Zf (0, w) =

Z

f (k) =

f (t)dt.

(5.13)

R

P+∞

ˆ

k=−∞ f (w + k).

Definition 23. A function f is said to be an interpolating function if f (0) = 1 and f (k) = 0 for all k = ±1, ±2, . . . . It follows from (5.12) that if f is an interpolating function, then X k

fˆ(w + k) = 1.

(5.14)

In our discussion so far, we have presented some multi-faceted applications of systems formed by integer shifts of functions and in which the Fourier transform plays an important role. In the rest of this chapter, we generalize these results to chirp-modulated shift-invariant spaces. These are spaces in which the generators are modulated by chirps and then translated by integral multiples of a fixed quantity ∆ that depends on an angle θ. We study these systems in the sense of the fractional Fourier transform. As it will be apparent, most of these problems are related to finding the equivalent representation of shift-orthogonality and Riesz basis condition in the fractional Fourier transform (FrFT) domain. In other words, we will derive the equivalent of the Riesz basis condition (5.3) but in the fractional Fourier domain. This will help us to look at different problems which use the same model as in (5.1), in a unified fashion. Having developed the fractional Fourier transform (FrFT) generalization of (5.3), our next step will be to extend some of the aforementioned notions, such as the Zak transform, to the fractional Fourier transform domain. The rest of the chapter is organized as follows. In Section 5.3, we introduce new definitions that will be used later on, such as the generalized discrete fractional Fourier transform, fractional convolution and semi-discrete fractional convolution. In Section 5.4, we derive our first main result which gives a necessary and sufficient condition pertaining to the fractional Fourier transform domain, under which integer shifts of a function form an orthogonal basis or a Riesz basis. In Section 5.5, we introduce the fractional Zak transform, which is a generalization of the Zak transform, that is more suitable for the fractional Fourier transform domain. In the last section we briefly discuss fractional delay filtering.

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  113

5.3

DISCRETE FRACTIONAL FOURIER TRANSFORM AND CONVOLUTION

5.3.1

Discrete Fractional Fourier Transform

For the reader’s convenience , let us recall the definition of the fractional Fourier transform or FrFT of a signal or a function, say x(t) ∈ L2 (R), bθ (ω) = zθ [x] (ω) = x

Z ∞ −∞

x(t)Kθ (t, ω) dt

(5.15)

where Kθ (t, ω) =

 −ia(θ)(t2 +ω 2 )+ib(θ)ωt , θ , pπ   c(θ) · e  

δ(t − ω), δ(t + ω),

θ = 2pπ θ = (2p − 1)π

(5.16)

q

is the transformation kernel with c(θ) = 1+i2πcot θ , a(θ) = cot θ/2 and b(θ) = csc θ. The kernel Kθ (t, ω) is parameterized by an angle θ ∈ R and p is some integer. For simplicity, we may write a, b, c instead of a(θ), b(θ) and c(θ) The inverse-FrFT with respect to angle θ is the FrFT with angle −θ, given by Z ∞

x(t) = −∞

bθ (ω) K−θ (t, ω) dω. x

(5.17)

Definition 24. ([239]) The discrete time fractional Fourier transform or the DTFrFT of a sequence, f [n] ∈ `2 , n ∈ Z with sampling time t = n, n ∈ Z, is given by, Fbθ (ω) = c(θ)

+∞ X n=−∞

2 2 +ib(θ)nω ) f [n] |e−ia(θ)(ω +n {z }.

(5.18)

Kθ (n,ω)

The inverse discrete time fractional Fourier transform (IDTFrFT) of Fbθ (ω) is, Z

f (n) = hΩi

Fbθ (ω)K−θ (n, ω)dω

(5.19)

and hΩi = 2π |b(θ)| denotes the integral width. Next, we define up-chirping and down-chirping operations. 2

Definition 25. (Chirp-modulation) Let λθ (·) = eia(·) be a domain independent modulation function. The chirp modulated and demodulated versions of a signal f (t) are respectively, denoted by, *

f (t) = f (t) λθ (t) and

|

{z

}

(

f (t) = f (t) λ∗θ (t)

|

Modulation/Up-chirping

{z

}

Demodulation/Down-chirping

where ∗ in the super-script denotes the complex conjugation. Note that, chirp-modulation is a unitary operation, that is, 

*

*



f (t) , g (t) = hf (t) , g (t)i .

(5.20)

114  Fractional Integral Transforms: Theory and Applications

5.3.2 Fractional Convolution

In this section, we develop the semi-discrete fractional convolution operator. The fractional convolution operator will be denoted by “∗θ .” At θ = π2 the fractional convolution operator assumes its conventional definition. For simplification purposes, we will denote the (usual) convolution operator by “∗” instead of “∗π/2 .” The following definition will be needed in the sequel. Definition 26. The fractional convolution of two input signals, x(t) and y(t) is defined as [348]: (x ∗θ y) (t) = d(θ)λθ (t) · ([x(t)λ∗θ (t)] ∗ [y(t)λ∗θ (t)]) |

{z

(5.21)

}

convolution of modulated inputs

n

(

(

o

= d (θ) λθ (t) x(t) ∗ y (t) , where d(θ) =



1 + i cot θ.

The definition of fractional convolution is consistent with the FrFT duality principal —fractional convolution in time domain results in multiplication of fractional spectrum followed by down-chirping operation in FrFT domain, that is bθ (ω)ybθ (ω); zθ [x(t) ∗θ y(t)] = λθ (ω) · x

see [348] .

By combining the fractional convolution and Eq. (5.5), we obtain the semi-discrete fractional convolution . Definition 27. Let φ(t) ∈ L2 (R) ben a compactly supported o function whose infinite linear P+∞ shifts span a space S(φ) = span k=−∞ c(k)φ (t − k) . We define the semi-discrete fractional convolution ∗θ of a sequence p(n) ∈ `2 , n ∈ Z and φ(t) by, ∞ X

h(t) = (p ∗θ φ) (t) = c (θ) λθ (t)

(

(

p (n) φ (t − n) .

(5.22)

n=−∞

This is a generalization of Eq. (5.5). We will show that the fractional Fourier transform spectrum of h(t) is b (ω) = zθ [p(k) ∗ φ (t)] = λ (ω) Pb (ω) φ b (ω) , h θ θ θ θ θ

(5.23)

with Pbθ (ω) being given by Eq. (5.18) and φbθ is the fractional Fourier transform of φ. In fact, we will prove a more general result that deals with non-uniform shifts by introducing an analogue of Pˆθ (w), denoted by Pˆ˜θ (w), for non-uniform shifts. Definition 28. Let {tk }∞ k=−∞ be a sequence of real numbers such that tk < tk+1 , and lim tk = ∞,

k→∞

lim tk = −∞.

k→−∞

We define the Generalized Discrete Fractional Fourier Transform of a sequence {p(k)} as ∞ ∞ X X 2 2 ˆ ˜ Pθ (w) = p(k)Kθ (tk , w) = c(θ) p (k) e−ia(tk +w )+ibtk w k=−∞

k=−∞

(5.24)

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  115

and define the convolution of {p(k)} with φ ∈ L2 (R) as ∞ X

h(t) = (p(k) ?θ φ) (t) = c (θ) λθ (t)

(

(

p(k) φ(t − tk ),

k=−∞

or

∞ X

(

h(t) = λ∗θ (t)h(t) = c(θ)

*

(

p(k) φ(t − tk ),

k=−∞

where 2 (

2

p(k) = p(k)−iatk , φ(t) = φ(t)e−iat ,

(

and a = a(θ). Lemma 2. Let p, φ and h have the same meaning as above. Then, ˆ θ (w) = λθ (w)Pˆ˜θ (w)φˆθ (w), h

(5.25)

where Pˆ˜θ (w) is given by Eq. (5.24). Proof Consider the fractional Fourier transform of h ˆ θ (w) = h

Z ∞ −∞

h(t)Kθ (t, w)dt

= c2 (θ) = c2 (θ) = c(θ)

∞ X

(

Z ∞

2

p(k)

k=−∞ ∞ X

−∞

φ(t − tk )e−ia(t−tk ) e−iaw

2

p(k)e−iatk

Z ∞

2 +ibtw

dt

2 +w 2 )+ibw(x+t ) k

φ(x)e−ia(x

dx

−∞

k=−∞ ∞ X

2

p(k)e−ia(tk +w

2 )+ibwt k

2 eiaw φˆθ (w)

k=−∞

= λθ (w)Pˆ˜θ (w)φˆθ (w), where Pˆ˜θ is given by (5.24). When tk = k, Eq. (5.25) reduces to (5.23) which is the usual DTFrFT.

5.4

SHIFT-INVARIANCE IN THE FRFT DOMAIN

In this section, we derive conditions on the existence of orthonormal and Riesz bases in shift-invariant spaces in the fractional Fourier transform domain. The next theorem gives such a condition on the scaling function to generate a Riesz basis. Throughout the rest of this chapter, we will denote by tk the sequence tk = 2kπ sin θ. Theorem 25. Let {p(n)} ∈ `2 , φ ∈ L2 (R) and consider the chirp-modulated shift-invariant subspaces of L2 (R)  

+∞ X



k=−∞

Vθ (φ) = closure c (θ) λθ (t) where tk = k∆, and ∆ = 2π sin θ = 2π/b(θ).

(

(

 

p [k] φ (t − k)



116  Fractional Integral Transforms: Theory and Applications (

Then { φ(t − k)} is a Riesz basis for Vθ if and only if there exist two positive constants η1 , η2 > 0 such that 2 X (5.26) η1 ≤ φˆθ (w + tk ) ≤ η2 ∀w ∈ [0, ∆] , and φˆθ is the fractional Fourier transform of φ. Proof Let f ∈ Vθ (φ). Hence f (t) = (p ∗θ φ) (t), and by Eq. (5.23) it follows that fˆθ (w) = λθ (w)Pˆθ (w)φˆθ (w), where Pˆθ (w) is given by (5.18), i.e., Pˆθ (w) = c(θ)

+∞ X

p(k)e−ia(θ)(w

2 +k 2 )+ib(θ)kw

.

k=−∞

Thus, +∞ Z

2

b

fθ (ω) 2

L (R)

2 b (ω) dω λθ (ω) Pbθ (ω) φ θ

= −∞

tZk+1

+∞ X

=

2 b b (ω) dω Pθ (ω) φ θ

k=−∞ t k

Z∆ 2 2 b b (ω + t ) Pθ (ω + tk ) φ θ k dω.

+∞ X

=

k=−∞ 0

But since eib(θ)mtk = e2iπmk = 1, we have Pˆθ (w + tk ) = c(θ) = c(θ)

∞ X

2 +m2

p(m)e−ia[(w+tk )

=−∞ ∞ X

p(m)e−ia[w

2 +m2

]+ibm(w+tk )

]+ibmw e−ia[2wtk +t2k ]

m=−∞ 2 2 = Pˆθ (w)e−ia(w+tk ) +iaw .





Hence Pˆθ (w + tk ) = |Pˆθ (w)|, and it follows that +∞

2 2 2 X Z ∆

ˆ

fθ = Pˆθ (w) φˆθ (w + tk ) dw

=

k=−∞ 0 Z ∆ 0

2 ˆ ˜ Pθ (w) G φ;θ (w)dw ,

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  117

˜ φ;θ (w) = P |φˆθ (w + tk )|2 is a shifted Grammian of φ with angle θ. Moreover where G k ||Pˆθ ||2 L2

Z ∆X

=

(0,∆)

0

p(k)p∗ (m)Kθ (k, w)K−θ (m, w)dw

k,m

X 2

= |c(θ)|

p(k)p∗ (m)e−ia(k

2 −m2 )

e−ibw(m−k) dw

0

k,m

= |c(θ)|2 ∆

Z ∆

X

X ( 2 2 |p(k)|2 = p(k) = kp(k)k .

k

k

Because |c(θ)|2 = c(θ)c∗ (θ) = c(θ)c(−θ) =

csc θ 2π ,

we have |c(θ)|2 ∆ = 1. Thus

Z ∆ 2

2 ˜

ˆ ˆ 2

fθ = kf k = Pθ (w) G φ;θ (w)dw, 0

˜ φ;θ (w) ≤ η2 , we have and if η1 ≤ G

2



(

2



(

η1 kp(n)k2 = η1 p(n) ≤ kf k2 ≤ η2 kp(n)k2 = η2 p(n) , (

which, in view of (5.2), shows that { φ(t − k)} is a Riesz basis. Corollary 2. Let {p(n)} ∈ `2 , φ ∈ L2 (R) and consider the chirp-modulated shift-invariant subspaces of L2 (R) (

V (φ) = closure f ∈ L2 : f (t) = (p ?θ φ) (t); = c (θ) λθ (t)

+∞ X

(

(

)

p (k) φ (t − tk )

k=−∞ (

Then { φ(t − tk )} is a Riesz basis for V(φ) if and only if there exist two positive constants η1 , η2 > 0 such that η1 ≤

+∞ X

2 ˆ φθ (w + k) ≤ η2

(5.27)

k=−∞

∀w ∈ [0, ∆] , and φˆθ is the fractional Fourier transform of φ. Proof Since f (t) = (p ?θ φ) (t), we have from Eq. (5.25), fˆθ (w) = λθ (w)Pˆ˜θ (w)φˆθ (w); and hence |fˆθ (w)|2 = |Pˆ˜θ (w)|2 |φˆθ (w)|2 , where Pˆ˜θ (w) is given by Eq. (5.24). The proof is very similar to that of Theorem 25, except one uses the fact that |Pˆ˜θ (w)| is periodic with period one and that Z 1 2 X+∞ ˜ ˆ Pθ (w) dw = 0

k=−∞

|p[k]|2 = kpk2 ,

118  Fractional Integral Transforms: Theory and Applications

˜ φ,θ with Gφ,θ . and replaces the Grammian G (

To generate an orthonormal basis for the space V(φ) generated by { φ(t − k)}∞ k=−∞ , we borrow the following idea from wavelet theory. Consider the function g(t) given by φˆθ (ω) gˆθ (w) = q . ˜ φ;θ (w) G ˜ φ;θ (w + It is easy to see that ∆–translates of g generate an orthonormal basis. For, since G ˜ tk ) = Gφ;θ (w), we have ∞ X

|gθ (w + tk )|2 =

k=−∞

∞ X 1 |φˆθ (w + tk )|2 = 1, ˜ φ;θ (w) G k=−∞

which in view of (5.3), completes the proof. 2 We close this section by an example of V (φ) . Let φn (t) = eia(θ)t sinc (t − n) and call φ (t) = φ0 (t). The family of functions {φn (t)}n∈Z has the following important properties: ♠ Shift-Orthonormality: {φn (t)}n∈Z forms an orthonormal basis. The orthonormality property is easily verified as hφn (t) , φk (t)i = δn−k . ♠ Fractional Bandlimitedness: The family of functions {φn (t)}n∈Z corresponds to a space of functions which are bandlimited in the FrFT domain. The fundamental member of this family, φ (t) has a fractional bandlimited spectrum since 2

n

2

o

zθ eia(θ)t sinc (t) = c (θ) e−ia(θ)ω χ[−π sin(θ),π sin(θ)] (ω), where χI (ω) is the characteristic function of the set I. The above example enables us to present Shannon’s sampling theorem for the fractional Fourier transform [325, 345, 350] from an approximation theoretic perspective. Let Vθ (φ) be the space spanned by modulated, weighted and shifted versions of φ (t), that is, Vθ (φ) =

 

ia(θ)t2

e



+∞ X

 

(

p [k] sinc (t − k) : {p[k]}k ∈ `2 . 

k=−∞

Indeed, let f be bandlimited to [−π, π] and P be the idempotent, orthogonal projection operator PVθ (φ) : L2 → Vθ (φ) defined by PVθ (φ) f =

+∞ X

hf, φn iφn ,

2

φn (t) = eia(θ)t sinc (t − n) .

n=−∞

The modulated coefficients of expansion are computed by, Z∞

hf, φn i | {z }

p[k]e−ia(θ)k

= 2

f (t) φ∗n (t) dt

−∞

Z∞

=

(

f (t) sinc (t − n) dt

−∞ 2



= f (t) e−ia(θ)t ∗ sinc (−t)

t=n

2

= f (n) e−ia(θ)n

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  119

which turns out to be p[n] = f (n) , i.e., samples of f (t). Consequently, we have, PVθ (φ) f =

+∞ X

hf, φn (·)i φn (t)

n=−∞

= eia(θ)t

2

+∞ X

2

f (n) e−ia(θ)n sinc (t − n),

n=−∞

which is the Shannon’s sampling formula for the fractional Fourier transform. Furthermore, due to the projection step, this approximation is optimal in the least square sense. Once the samples are obtained, the reconstruction is simply the semi-discrete fractional convolution between the samples (or coefficients) and the generating function.

5.5

THE FRACTIONAL ZAK TRANSFORM

In this section, we extend the Zak transform and some of its properties to the fractional Fourier transform domain. Definition 29. We define the fractional Zak transform with angle θ of a function f ∈ L2 (R) as 2 2 1 X f (t + k)e−ia(θ)(w +k )+ib(θ)kw . Zf,θ (t, w) = √ ∆ k∈Z Since, Zf,θ (t, w + ∆) = e−ia(2w+∆)∆ Zf,θ (t, w), we have, Zf,θ (t, w + m∆) = e−ia(2w+m∆)m∆ Zf,θ (t, w),

(5.28)

Moreover, Z ∆ Zf,θ (t, w) 2 dw 0

=

∞ 1 X 2 2 f (t + k)f ∗ (t + m)e−ia(k −m ) ∆ m,k=−∞ ∞ X

=

Z ∆

e−ibw(m−k) dw

0

|f (t + k)|2 .

(5.29)

k=−∞

Hence Z 1Z ∆ Z 1 X ∞ Zf,θ (t, w) 2 dwdt = |f (t + k)|2 dt 0

0

=

0 k=−∞ ∞ Z k+1 X

k=−∞ k

2

|f (x)|2 dx = ||f ||2L2 .

Thus, Zf,θ L2 (Q) = kf k2L2 (R) , where Q = [0, 1] × [0, ∆] . That is the fractional Zak transform is an isometry between L2 (R) and L2 (Q).

120  Fractional Integral Transforms: Theory and Applications (

(

Theorem 26. Let f belong to the sampling space generated by ψ. Then there exists A, B > 0 such that ˜ f,θ (w) G A≤ (5.30) ≤ B, Zf,θ (0, w) 2 which is the analogue of Eq. (5.8), and A

+∞ X

2

|f (k)| ≤

Z ∆ 0

k=−∞

Gf ;θ (w)dw ≤ B

+∞ X

|f (k)|2 ,

(5.31)

k=−∞

which is the analogue of Eq. (5.9). Moreover, if ψˆθ ∈ L1 (R), then ˆ

Z 1P

k∈Z |fθ (w + tk )|

|Zf,θ (0, w)|

0

Z

|ψˆθ (w)|dw < ∞,

dw =

(5.32)

R

holds and it is the analogue of Eq. (5.10). (

(

Proof Since f belongs to the sampling space generated by ψ, we have (

2

f (t) = e−iat f (t) = c(θ)

∞ X

(

(

f (k)ψ(t − k)

k=−∞

or f (t) = c(θ)λθ (t)

∞ X

2

2

f (k)e−iak ψ(t − k)e−ia(t−k) .

k=−∞

From the last equation and (5.23), we obtain 

∞ X

fˆθ (w) = c(θ)



f (k)e

−ia(k2 +w2 )+ibwk

2

 eiaw ψˆθ (w),

k=−∞

√ 2 ∆ c(θ)Zf,θ (0, w)ψˆθ (w). or e−iaw fˆθ (w) = √ Because | ∆c(θ)|2 = 1, and Zf is periodic in w with period ∆; see Eq. (5.28), we obtain 2 2 |fˆθ (w + k∆)|2 = Zf,θ (0, w) ψˆθ (w + k∆) , e (w) = ˜ f ;θ (w) = Zf,θ (0, w) 2 G ˜ ψ;θ (w), where G Setting tk = k∆, we have G h;θ P 2 b | h (w + t )| . Since k k∈Z θ

Z ∆ 0

˜ ψ;θ (w)dw = G

+∞ X

Z ∆

k=−∞ 0



|ψˆθ (w + tk )|2 dw = ||ψˆθ ||2L2 < ∞,

˜ ψ;θ (w) < ∞, almost everywhere. But by (5.26), η1 ≤ G ˜ ψ,θ (w) ≤ η2 , and it follows that G hence (5.30) follows. By integrating (5.30) and using (5.29), we obtain (5.31). Finally, it follows that, |fˆθ (w + tk )| = |Zf,θ (0, w)||ψˆθ (w + tk )|.

Shift-Invariant and Sampling Spaces of the Fractional Fourier Transform  121

Hence, ˆ

Z ∆P

k∈Z |fθ (w + tk )|

0

|Zf,θ (0, w)|

dw =

Z ∆ +∞ X ψˆθ (w + tk ) dw 0

Z

=

k=−∞

|ψˆθ (w)|dw < ∞,

R

which completes the proof.

5.6

APPLICATIONS: FRACTIONAL DELAY FILTERING

In many problems of practical interest one is interested in the samples of τ –shifted version of a fractional bandlimited signal f (t), that is f (t − τ )|t=nT , τ ∈ [0, T ]. This is known as fractional delay filtering (FDF) of f (t). In view of the FrFT sampling theory, it is known that the Nyquist rate for sampling frequency modulated signals is lower than the one used in conventional Fourier theory. The τ –delayed samples of f (t) can be obtained as follows: fτ (k) = f (t − τ )|t=k 2

= eia(θ)(k−τ )

∞ X

2

f (n) e−ia(θ)n sinc (k − τ − n) .

n=−∞

A drawback of this methodology is that in practice one only has finite number of samples of the function of interest and in addition the series has a low convergence rate. The function f (t) evaluated at t = t0 leads to, 2

f (t0 ) e−ia(θ)t0 = f (0) sinc (t0 ) + 2

sin (πt0 ) X f (n) e−ia(θ)n (−1)n . π t0 − n n,0,n∈Z For more details on this topic, the reader may consult [38].

CHAPTER

6

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)

6.1

INTRODUCTION

In Chapters 3 and 4, we discussed the historical development and derivation of the onedimensional fractional Fourier transform, as well as, some of its main properties. The transform has been generalized in a number of different ways. For example, in one direction, the kernel of the transform was replaced by more general kernels leading to more general integral transforms, such as the linear canonical transform and the special affine Fourier transform. In another direction, the transform has been extended to higher dimensions [240, 253, 254]. In this chapter, we will introduce an extension of the fractional Fourier transform to two dimensions and then discuss several of its properties, such as its additivity, convolution theorem, Poisson summation formula, sampling theorem and an extension to a space of generalized functions. We conclude the chapter by introducing another integral transform that is related to the two-dimensional fractional Fourier transform and which is known as the Gyrator transform. In later chapters, we will present more general transforms, such as the linear canonical and the special affine Fourier transforms which include the fractional Fourier transform as a special case. But first, let us recall that the N -dimensional Fourier transform, denoted by fˆ or F of a function f, is defined as 1 F (w) = √ N ( 2π)

Z RN

f (x)ei(w·x) dx,

so that its inverse is given by 1 f (x) = √ N ( 2π)

Z RN

F (w)e−i(w·x) dw,

whenever the integrals exist, where x, w ∈ RN ,

w · x = w1 x1 + · · · + wN xN ,

DOI: 10.1201/9781003089353-6

f (x) = f (x1 , x2 , . . . , xN ), 122

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  123

and

Z

Z

f (x)dx =

···

Z

f (x1 , x2 , . . . , xN )dx1 · · · dxN .

One of the useful properties of the Fourier transform is given by its convolution theorem which states that: if f ∈ Ls (RN ), g ∈ Lt (RN ), then 1 h(x) = (f ∗ g) (x) = √ N ( 2π)

Z RN

f (x − y)g(y)dy,

exists almost everywhere and h ∈ Lr (RN ), where 1 1 1 = + − 1, r s t

r, s, t ≥ 1,

and H(w) = F (w)G(w),

(6.1)

where F, G, H are the Fourier transform of f, g, h, respectively. Another important property associated with the Fourier transform is the Poisson summation formula, which in N dimensions, takes the form X

f (x + 2πk) =

k∈ZN

X 1 e−i(k·x) fˆ(k), (2π)N/2 N

(6.2)

k∈Z

where k = (k1 , k2 , . . . , kN ) ∈ ZN . A sufficient condition for Eq. (6.2) to hold is |f (x)| ≤ C1 (1 + |x|)−N −1 ,





and fˆ(w) ≤ C2 (1 + |w|)−N −2 ,

(6.3)

for some C1 , C2 , 1 , 2 > 0, [114]. As a prelude to one of the main results of this chapter, let us recall Namias’s original idea which we will generalize to higher dimensions. Namias’ idea started with the observation that the Hermite functions 2 hn (x) = e−x /2 Hn (x) are the eigenfunctions of the Fourier transform with eigenvalues einπ/2 , that is Fπ/2 [hn (x)] = F [hn (x)] (ω) = einπ/2 hn (ω),

(6.4)

where Hn (x) is the Hermite polynomial of degree n. Namias looked for a family of integral transforms {Fθ } indexed by a parameter θ such that when θ = π/2, Fπ/2 coincides with the ordinary Fourier transform and, in addition, the eigenfunctions of Fθ are the Hermite functions but with eigenvalues einθ , that is Fθ [hn (x)] (ω) = einθ hn (ω).

(6.5)

When θ = π/2, Eq. (6.5) reduces to Eq. (6.4). Although Namias’ work was confined to the Fourier transform in one variable, his work has been extended to N dimensions in a straightforward fashion by taking the tensor product

124  Fractional Integral Transforms: Theory and Applications

of N copies of the one-dimensional fractional Fourier transform. It was also shown that in two dimensions, the relationship between the fractional Fourier transform and the Wigner distribution is maintained to some extent but in a simple way. More on this topics can be found in the next chapter. Therefore, the goals of this chapter are as follows: 1. To introduce a new definition of the two-dimensional fractional Fourier transform Fα,β that is not a tensor product of two one-dimensional copies of the fractional Fourier transform. We will refer to this transform as the coupled fractional Fourier transform (CFrFT). It is a by-product of a generalization of Eq. (6.5) that uses a relatively new family of Hermite functions, known as complex Hermite functions of two variables. 2. To derive properties of the new transform, such as its inversion formula, additivity, convolution theorem, Poisson summation formula, sampling theorem and an extension to a space of generalized functions. 3. To introduce the Gyrator transform and present some of its properties. The chapter is organized as follows. In the next section we briefly discuss the standard n-dimensional fractional Fourier transform and some of its properties. In Section 6.3, we introduce the coupled two-dimensional fractional Fourier transform and its inversion formula, followed by a presentation of its additive property and convolution formula in Sections 6.4 and 6.5. The Poisson summation formula and the sampling theorem associated with the transform are introduced in Sections 6.6 and 6.7. In Section 6.8, we extend the coupled fractional Fourier transform to a space of generalized functions. The last section of the chapter, Section 6.9 is dedicated to the Gyrator transform which is closely related to the two-dimensional fractional Fourier transform.

6.2

FRACTIONAL FOURIER TRANSFORM IN HIGHER DIMENSIONS

The fractional Fourier transform can be extended to higher dimensions using different methods. In this section, we give a brief presentation of two these methods. 6.2.1

The Direct Product Representation

The fractional Fourier transform in n-variables is defined by taking the tensor product of n copies of the one-dimensional fractional Fourier transforms [220]. That is Z

Fθ1 ,...,θn (ω1 , . . . , ωn ) =

···

R

Z

Kθ1 (t1 , ω1 ) · · · Kθn (tn , ωn ) f (t1 , . . . , tn )dt1 · · · dtn , (6.6)

R

where Kθi (ti , ωi ) , i = 1, 2, . . . , n, is the kernel of the one-dimensional fractional Fourier transform given by (5.16) In particular, in two dimensions we have Z Z

Fθ1 ,θ2 (ω1 , ω2 ) =

Kθ1 (t1 , ω1 ) Kθ2 (t2 , ω2 ) f (t1 , t2 )dt1 dt2 , R R

(6.7)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  125

The eigenvalue equation takes the form Fθ1 ,...,θn hk1 ,...,kn (t1 , . . . , tn ) = ei(θ1 k1 +···+θn kn ) hk1 ,...,kn (t1 , . . . , tn ), 



(6.8)

where hk1 ,...,kn (t1 , . . . , tn ) = hk1 (t1 ) · · · hkn (tn ), and hki (ti ) is the Hermite function of order ki . In particular, in two dimensions, we have the important relation ih

h

i

Fθ1 ,θ2 hk1 ,k2 (t1 , t2 ) = ei(θ1 k1 +θ2 k2 ) hk1 ,k2 (t1 , t2 ) = ei(θ1 k1 ) hk1 (t1 ) ei(θ2 k2 ) hk2 (t2 ) . 



(6.9) 6.2.2 Metaplectic Representation

The fractional Fourier transform can also be viewed from a different perspective suggested by abstract harmonic analysis [101]. Let p = (p1 , . . . , pn ), q = (q1 , . . . , qn ) denote the momentum and position of a particle and (p, q) be its Phase-Space Representation. . The Symplectic form on R2n is defined as (p, q), (p0 , q 0 ) = pq 0 − qp0 =





n X

pk qk0 −

k=1

p0k qk = (p, q) · J (p0 , q 0 ),

k=1

where J =

n X

0 I −I 0

!

,

and I is the n × n identity matrix. The set of all 2n × 2n matrices T that satisfy T (p, q), T (p0 , q 0 ) = (p, q), (p0 , q 0 )





form the symplectic group Sp(n, R). Let A=

A B C D





!

∈ Sp(n, R),

where A, B, C, D are n × n matrices. Note that both J , A are 2n × 2n matrices. It is easy to show that J −1 = −J , A∗ ∈ Sp(n, R)

and A−1 = J A∗ J −1 ,

where A∗ is the Hermitian adjoint of A which is equal to the transpose of A when A is real. Moreover, we have ! D∗ −B ∗ −1 A = , −C ∗ A∗ which yields A∗ D − BC ∗ = I.

126  Fractional Integral Transforms: Theory and Applications

It is known [101, P. 193] that there exists a unitary operator µ(A) called the metaplectic representation of Sp(n, R) on L2 (Rn ) whose action is given by µ(A)f (x) = (i)

n/2

−1/2

(det

Z

e2πiS(x,y) f (y)dy,

B)

where S(x, y) = −(1/2)xDB −1 x + yB −1 x − (1/2)yB −1 Ay, As a special case if θJ

A = Aθ = e

cos θI sin θI − sin θI cos θI

=

detB , 0. !

.

and sin θ , 0, then µ (Aθ ) f (x) = (i csc θ)n/2

Z

2 +y 2 )+2πi(csc θ)xy

e−πi(cot θ)(x

f (y)dy,

which is the fractional Fourier transform, for more details, see [101, 115].

6.3

THE TWO-DIMENSIONAL FRACTIONAL FOURIER TRANSFORM

In this section, we introduce a new two-dimensional fractional Fourier transform that is not a tensor product of two one-dimensional transforms. The construction of the new transform follows Namias’s approach as given by Eq. (6.5), but uses a relatively new system of complex Hermite functions of two variables that was introduced by M. Ismail in [138]. To make the chapter self-contained, we will briefly present this system in the next subsection. 6.3.1

Complex Hermite Polynomials

The complex Hermite polynomials Hm,n (z, z) may be defined as [138] Hm,n (z1 , z2 ) =

m∧n X

k

(−1) k!

k=0

m k

!

n k

!

z1m−k z2n−k .

(6.10)

Their generating function is given by ∞ X m,n=0

Hm,n (z1 , z2 )

tm sn = etz1 +sz2 −ts , m! n!

and they satisfy the following orthogonality relation 1 π

Z R2

Hm,n (x + iy, x − iy)H p,q (x + iy, x − iy)e−x

2 −y 2

dxdy = m!n!δm,p δn,q .

They satisfy the three-term recurrence relations zHp,q (z, z) = qHp,q−1 (z, z) + Hp+1,q (z, z), zHp,q (z, z) = pHp−1,q (z, z) + Hp,q+1 (z, z).

(6.11)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  127

We also have the important generating function for the product of those Hermite polynomials ∞ X

Hm,n (z1 , z 1 )Hn,m (z2 , z 2 )

m,n=0

tm sn m! n!

−tsz1 z 1 + tz1 z 2 + sz2 z 1 − tsz2 z 2 1 exp . 1 − ts 1 − ts 

=



(6.12)

Let 1 −tsz1 z 1 + tz1 z 2 + sz2 z 1 − tsz2 z 2 exp K(z1 , z 1 , z2 , z 2 ; s, t) = . π(1 − ts) 1 − ts 



(6.13)

By multiplying Eq. (6.12) by H p,q (z2 , z 2 ) and integrating with respect to the measure 2 dω = e−|z2 | dz2 , where z1 = u + iv, z2 = x + iy, and using the orthogonality relation (6.11), we obtain ∞ 1 X π m,n=0

Hm,n (z1 , z 1 )

tm sn m! n!

Z R2

Hn,m (z2 , z 2 )H p,q (z2 , z 2 )dω

Z

K(z1 , z 1 , z2 , z 2 ; s, t)H p,q (z2 , z 2 )dω

=

R2 q t sp

=

q!p! Hq,p (z1 , z 1 ) = tq sp Hq,p (z1 , z 1 ).

q! p!

(6.14)

We may now write (6.14) as tq sp Hq,p (z1 , z 1 ) =   Z −tsz1 z 1 + tz1 z 2 + sz2 z 1 − tsz2 z 2 1 exp H p,q (z2 , z 2 )dω π(1 − ts) R2 1 − ts =

1 π(1 − ts)

(

−ts(u2 + v 2 + x2 + y 2 ) + (t + s)(ux + vy) + i(t − s)(vx − uy) exp 1 − ts R2

Z

2 +y 2 )

×H p,q (x + iy, x − iy)e−(x

dxdy.

In particular, if t = s = i, we have (i)p+q Hq,p (u + iv, u − iv) = 1 2π

(

)

(u2 + v 2 + x2 + y 2 ) + 2i(ux + vy) exp H p,q (x + iy, x − iy) 2 R2

Z

2 +y 2 )

× e−(x

dxdy,

which yields (i)

p+q

−(u2 +v 2 )/2

Hq,p (u + iv, u − iv)e

=

1 2π

Z R2

ei(ux+vy) H p,q (x + iy, x − iy)

2 +y 2 )/2

× e−(x

dxdy

)

128  Fractional Integral Transforms: Theory and Applications

But from (6.10 ) it is easy to see that H m,n (z, z) = Hn,m (z, z), and hence, we have 2 +v 2 )/2

(i)p+q Hq,p (z1 , z 1 )e−(u

1 2 2 Hq,p (x + iy, x − iy)e−(x +y )/2 2π R2 × ei(ux+vy) dxdy, Z

=

or (i)p+q hq,p (z1 , z 1 ) = ei(p+q)π/2 hq,p (z1 , z 1 ) = where

1 2π

Z R2

hq,p (z2 , z 2 )ei(ux+vy) dxdy, (6.15)

hq,p (z, z) = Hq,p (z, z)e−|z|

2 /2

,

is the Hermite function of two variables. Eq. (6.15) shows that the Hermite functions are the eigenfunctions of the two-dimensional Fourier transform with eigenvalues (i)p+q = ei(p+q)π/2 ; see Eqs. (6.4) and (6.9). 6.3.2

Integral Representation of the Two-Dimensional Fractional Fourier Transform

Now we are in a position to introduce the fractional Fourier transform in two variables [334, 335, 337]. Let s = eiα , t = eiβ so that st = ei(α+β) , and let γ = (α + β)/2, δ = (α − β)/2. Thus, K(z1 , z 1 , z2 , z 2 ; s, t) =

1 × π(1 − ei(α+β) )

(

−ei(α+β) (u2 + v 2 + x2 + y 2 ) + (eiα + eiβ )(ux + vy) + i(eiβ − eiα )(vx − uy) exp 1 − ei(α+β)

)

In addition, we have 1 1 − ei(α+β) eiα + eiβ 1 − ei(α+β)

i

eiβ − eiα 1 − ei(α+β)

e−i(α+β)/2 ie−iγ = , e−i(α+β)/2 − ei(α+β)/2 2 sin γ ei(α−β)/2 + e−i(α−β)/2 = −i(α+β)/2 , e − ei(α+β)/2 eiδ + e−iδ i cos δ = −iγ = , iγ e −e sin γ sin δ −eiδ − eiδ =i . = i −iγ iγ e −e sin γ =

(6.16) (6.17) (6.18) (6.19)

Therefore, if we put 2 +y 2 +u2 +v 2 )/2

k (z1 , z 1 , z2 , z 2 ; s, t) = K (z1 , z 1 , z2 , z 2 ; s, t) e−(x and observing that

"

#

e2iγ 1 i cos γ cot γ + = =i , 2iγ 1−e 2 2 sin γ 2

,

(6.20)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  129

we have k (z1 , z 1 , z2 , z 2 ; s, t) = d(γ)× n





o

exp −a(γ) x2 + y 2 + u2 + v 2 + b(γ, δ) (ux + vy) + c(γ, δ) (vx − uy) ,

(6.21)

where cot γ 2 i sin δ c(γ, δ) = sin γ a(γ) = i

i cos δ sin γ ie−iγ d(γ) = . 2π sin γ b(γ, δ) =

, ,

(6.22) (6.23)

From now on we will write a, b, c, d, instead of a(γ), b(γ, δ), c(γ, δ), d(γ) for short and replace s, t by α, β, respectively. We will also use√the notation a ˜, ˜b, c˜, d˜ to denote the same quantities but without the imaginary number i = −1, that is, a = i˜ a, b = i˜b, .. etc. We are now ready to introduce the definition of the two-dimensional coupled fractional Fourier transform and some of its properties, such as its inversion formula. Definition 30. For a function f ∈ L1 R2 , we define the two-dimensional coupled fractional Fourier transform (CFrFT) as 

Z

Fα,β (z1 , z 1 ) =

R2

or

k (z1 , z 1 , z2 , z 2 ; α, β) f (z2 , z 2 )dz2

γ , nπ

Z

Fα,β (u, v) =

R2

k (x, y, u, v; α, β) f (x, y)dxdy,

γ , nπ

(6.24)

where z1 = u + iv, z2 = x + iy. The definition may be extended to f ∈ L2 R2 in the usual way. When α = β, δ = 0 and γ = α and the two-dimensional fraction Fourier transform becomes a tensor product of two one-dimensional fractional Fourier transforms, i.e., 

Z

Fα,α (u, v) = d(α)

n

R2





o

exp −a(α) x2 + y 2 + u2 + v 2 + b(α) (ux + vy)

× f (x, y)dxdy,

(6.25)

where a(α) = i cot α/2, b(α) = i csc α, which is the standard fractional Fourier transform defined in (6.7 ). Furthermore, if α = β = π/2, the two-dimensional coupled fraction Fourier transforms reduces to the standard two-dimensional Fourier transform. 6.3.3 Inversion Formula

We now derive an inversion formula for the two-dimensional coupled fractional Fourier transform. Proposition 2. The inversion formula for the two-dimensional coupled fractional Fourier transform given by (6.24) is Z

f (x, y) = d(−γ) n 

R2

F (u, v) 

o

× exp a x2 + y 2 + u2 + v 2 − b(xu + yv) − c(xv − yu) dudv,

(6.26)

130  Fractional Integral Transforms: Theory and Applications

whenever the integral exists. A sufficient condition for the integral to exist is that Fα,β ∈  L1 R2 . Proof Let 2 +y 2

g(x, y) = f (x, y)e−a(γ)(x

2 +v 2

)

and G(u, v) = Fα,β (u, v)ea(γ)(u

).

Then from (6.24 ) and (6.21), we have Z

G(u, v) = d(γ)

n

R2







g(x, y) exp ix ˜bu + c˜v + iy ˜bv − c˜u

o

dxdy,

where ˜b = b/i, c˜ = c/i. Setting U = ˜bu + c˜v, we have

Z

G(u, v) = d(γ)

R2

and V = ˜bv − c˜u, g(x, y)ei(xU +yV ) dxdy.

Using the inversion formula for the two-dimensional Fourier transform, we obtain 1 g(x, y) = (2π)2 d(γ) But since

Z R2

G(u, v) exp {−i (xU + yV )} dU dV.

˜b   c˜ ˜b2 + c˜2 dudv = csc2 γdudv, dU dV = dudv = −˜ c ˜b

we have after some simplification Z

g(x, y) = d(−γ)

R2

n

o

G(u, v) exp −ix(˜bu + c˜v) − iy(˜bv − c˜u) dudv,

or f (x, y) = d(−γ)× Z R2

n 



o

Fα,β (u, v) exp a x2 + y 2 + u2 + v 2 − b(xu + yv) − c(xv − yu) dudv,

which is the inversion formula for the two-dimensional coupled Fractional Fourier transform. Remark. The above result shows that the kernel of the inverse transform is obtained from the kernel of the forward transform by replacing γ by −γ in much the same way as in the standard fractional Fourier transform, but instead of replacing α, β by −α, −β, separately, here we replace (α + β)/2 by −(α + β)/2.

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  131

6.3.4 Examples 2

2

Example 1: If f (x, y) = ea(x +y ) χΩ , where χΩ is the characteristic function of the rectangular region Ω = [−r, r] × [−R, R], then 2 +v 2 )

Fα,β (u, v) = d(γ)e−a(u where

Z

ei(xA+yB) dxdy,



sin δ cos δ u+ v = (u cos δ + v sin δ) / sin γ, sin γ sin γ

(6.27)

cos δ sin δ B = ˜bv − c˜u = v− u = (v cos δ − u sin δ) / sin γ. sin γ sin γ

(6.28)

A = ˜bu + c˜v =

Therefore, using the fact that h

i

AB = uv cos 2δ + (v 2 − u2 )(sin 2δ)/2 / sin2 γ, we have −a(u2 +v 2 )

Z r

Fα,β (u, v) = d(γ)e

=

−a(u2 +v 2 )

2ie−iγ π sin γ

!

dx



−R

sin Ar sin BR A B i sin Ar sin BR

h

A

B

2 +v 2 )

e−a(u







R sin γ (v cos δ − u sin δ) uv cos 2δ + sin 2δ(v 2 − u2 )/2

r sin γ (u cos δ + v sin δ)

×

eiyB dy

exp −i cot γ(u2 + v 2 )/2

2i sin γe−iγ sin

Z R

−r

= 4d(γ)e =

e

ixA

sin

.

(6.29)

As a special case, if α = β = π/2, then γ = π/2, δ = 0, and it follows that f (x, y) = χΩ . Under these conditions Eq. (6.29) reduces to 2 sin ru sin Rv , π u v

F (u, v) =

(6.30)

which is consistent with the classical result that the Fourier transform of the characteristic function of the set Ω is given by (6.30). Example 2: If f (x, y) = 1, then 2 +v 2 )

Fα,β (u, v) = d(γ)e−a(u

−a(u2 +v 2 )

Z 2

ZR

= d(γ)e

−i˜ ax2 +ixA

e R

where A, B are given by Eqs. (6.27, 6.28).

i

h

exp −a(x2 + y 2 ) + ixA + iyB dxdy Z

dx R

e−i˜ay

2 +iyB

dy,

132  Fractional Integral Transforms: Theory and Applications

Using the following formulas (see Eq. (4.8)) Z

2 x2 +qx

e−p

dx = eq

2 /4p2

R

and

Z

−ix2

e

r

π , p2 r

dx = (1 − i)

R

=p2 < 0,

π , 2

we obtain ! ! √ √ (1 − i) π iA2 /4˜a (1 − i) π iB 2 /4˜a √ √ e e , 2˜ a 2˜ a

−a(u2 +v 2 )

Fα,β (u, v) = d(γ)e or

2 +v 2 )

Fα,β (u, v) = d(γ)e−a(u But since

h i π(1 − i)2 exp i(A2 + B 2 )/4˜ a . 2˜ a

2 2 ˜b2 + c˜2 = cos δ + sin δ = csc2 γ, sin2 γ sin2 γ

one can easily verify that A2 + B 2 = ˜b2 (u2 + v 2 ) + c2 (u2 + v 2 ) = (˜b2 + c˜2 )(u2 + v 2 ) = csc2 γ(u2 + v 2 ). Replacing a ˜ by its value cot γ/2 and simplifying the expression for Fα,β , we obtain i Fα,β (u, v) = d(γ)e (−2πi tan γ) exp (u2 + v 2 ) 2 sin γ cos γ    i 2 1 2 = d(γ) (−2πi tan γ) exp (u + v ) − cot γ 2 sin γ cos γ 

−i cot γ(u2 +v 2 )/2



i

h

= d(γ) (−2πi tan γ) exp i tan γ(u2 + v 2 )/2 h

i

= e−iγ sec γ exp i tan γ(u2 + v 2 )/2

6.4

ADDITIVE PROPERTY

In this section, we prove the additive property of the two-dimensional coupled fractional Fourier transform [154]. Theorem 27. Let γi = following formula holds

αi +βi 2 ,

i = 1, 2 and asssume that γ1 , γ2 , γ1 + γ2 , nπ. Then the Fγ2 [Fγ1 ] = Fγ1 +γ2 .

In particular 



Fα2 ,β2 Fα1 ,β1 = Fα1 +α2 ,β1 +β2 . Proof Since Z

Fα1 ,β1 [f ](u, v) =

R2

f (x, y)k1 (x, y; u, v; α1 , β1 )dxdy,

(6.31)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  133

we have Z





J = Fα2 ,β2 Fα1 ,β1 (z, w) = Z

=

R2

Fα1 ,β1 (u, v)k2 (u, v; z, w, α2 , β2 )dudv

Z

R2 R2

f (x, y)k1 (x, y; u, v)k2 (u, v; z, w)dx dy du dv.

(6.32)

where n

o

k1 (x, y; u, v; α1 , β1 ) = d1 exp −a1 (x2 + y 2 + u2 + v 2 ) + b1 (xu + yv) + c1 (vx − uy) , n

o

k2 (u, v; z, w; α2 , β2 ) = d2 exp −a2 (u2 + v 2 + z 2 + w2 ) + b2 (uz + vw) + c2 (uw − vz) , and ai = a(γi ), bi = b(γi , δi ), ci = c(γi , δi ), di = d(γi ), i = 1, 2. To simplify the notation, we will drop the angles α and β from the kernel and write ki (x, y; u, v) instead of ki (x, y; u, v; αi , βi ), i = 1, 2. One can verify that k1 (x, y; u, v)k2 (u, v; z, w) = n

d1 d2 exp −a1 (x2 + y 2 ) − a2 (z 2 + w2 ) − (a1 + a2 )(u2 + v 2 ) +u(b1 x − c1 y + b2 z + c2 w) + v(b1 y + c1 x + b2 w − c2 z)} .

(6.33)

Therefore, we have Z

J=

n

R2

where

o

f (x, y) exp −a1 (x2 + y 2 ) − a2 (z 2 + w2 ) I1 I2 dxdy,

Z

n

o

n

o

exp −(a1 + a2 )u2 + iu(˜b1 x − c˜1 y + ˜b2 z + c˜2 w) du,

I1 = d1 R

Z

I2 = d2

exp −(a1 + a2 )v 2 + iv(˜b1 y + c˜1 x + ˜b2 w − c˜2 z) dv,

R

and a1 = i˜ a1 , b1 = i˜b1 , etc.. To evaluate I1 and I2 , we use the relation Z

−p2 x2 +iwx

e

r

dx =

R

to obtain

(

)

(

)

r

π A2 exp − , a1 + a2 4(a1 + a2 )

r

π B2 exp − , a1 + a2 4(a1 + a2 )

I1 = d1 I2 = d2

π −w2 /4p2 e , p2

where A = (˜b1 x − c˜1 y + ˜b2 z + c˜2 w), B = (˜b1 y + c˜1 x + ˜b2 w − c˜2 z).

(6.34)

134  Fractional Integral Transforms: Theory and Applications

Therefore,   h i π −1 I1 I2 = d1 d2 exp A2 + B 2 . a1 + a2 4(a1 + a2 ) With some computations, we obtain 

(6.35)

A2 + B 2 = (˜b21 + c˜21 )(x2 + y 2 ) + (˜b22 + c˜22 )(z 2 + w2 ) + 2xz(˜b1˜b2 − c˜1 c˜2 ) + 2xw(˜b1 c˜2 + ˜b2 c˜1 ) − 2yz(˜b2 c˜1 + ˜b1 c˜2 ) + 2yw(˜b1˜b2 − c˜1 c˜2 ) = +

(x2 + y 2 ) (z 2 + w2 ) 2xz cos(δ1 + δ2 ) + + sin γ1 sin γ2 sin2 γ1 sin2 γ2 2xw sin(δ1 + δ2 ) 2yz sin(δ1 + δ2 ) 2yw cos(δ1 + δ2 ) − + . sin γ1 sin γ2 sin γ1 sin γ2 sin γ1 sin γ2

(6.36)

Because

i sin γ1 sin γ2 −1 = , 4(a1 + a2 ) 2 sin(γ1 + γ2 ) we have after simplifying Eq. (6.35) 

I1 I2 = d1 d2

(

π sin γ2 (x2 + y 2 ) sin γ1 (z 2 + w2 ) exp i + a1 + a2 2 sin γ1 sin(γ1 + γ2 ) 2 sin γ2 sin(γ1 + γ2 ) 

cos(δ1 + δ2 )(xz + yw) sin(δ1 + δ2 )(xw − yz) + . sin(γ1 + γ2 ) sin(γ1 + γ2 ) 

+

(6.37)

Before we substitute this back into Eq. (6.34), let us observe that sin γ2 (x2 + y 2 ) 2 sin γ1 sin(γ1 + γ2 )   2 2 −i(x + y ) sin γ2 cos γ1 − 2 sin γ1 sin(γ1 + γ2 )   2 2 −i(x + y ) sin γ1 cos(γ1 + γ2 ) 2 sin γ1 sin(γ1 + γ2 ) −i cot(γ1 + γ2 ) 2 (x + y 2 ) = a1,2 (x2 + y 2 ) 2

−a1 (x2 + y 2 ) + i = = =

(6.38)

where

−i cot(γ1 + γ2 ) . 2 Similar calculation holds for the term z 2 + w2 . Finally, we have a1,2 = a(γ1 + γ2 ) =



d1 d2

π a1 + a2

ie−iγ1 2π sin γ1



= =

!

ie−iγ2 2π sin γ2

!

2π sin γ1 sin γ2 i sin(γ1 + γ2 )



ie−i(γ1 +γ2 ) = d1,2 = d(γ1 + γ2 ). (2π) sin(γ1 + γ2 )

(6.39)

Therefore, by substituting (6.39) into (6.37) and then (6.37) into (6.34),we obtain Z

J(z, w) = d(γ1 + γ2 ) +

R2

n



f (x, y) exp −a1,2 x2 + y 2 + z 2 + w2

b1,2 (xz + yw) + c1,2 (xw − yz)} dxdy



(6.40)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  135

where a1,2 = a(γ1 + γ2 ), b1,2 = b(γ1 + γ2 , δ1 + δ2 ), c1,2 = c(γ1 + γ2 , δ1 + δ2 ). Hence, J equals the right-hand side of Eq. (6.31), and this completes the proof. Under similar conditions to those in the above theorem, one can show that the composition of the transform is associative Fγ3 (Fγ2 Fγ1 ) = (Fγ3 Fγ2 ) Fγ1 . The next theorem completes Theorem 27 by covering the case when γ1 + γ2 = nπ. Theorem 28. Let γ1 .γ2 , nπ and assume that γ1 + γ2 = nπ. Then Fα2 , β2 (Fα1 , β1 [f ]) (z, w) = f (z cos(δ1 + δ2 ) + w sin(δ1 + δ2 ), −z sin(δ1 + δ2 ) + w cos(δ1 + δ2 )) ,

n is even

= f (−z cos(δ1 + δ2 ) − w sin(δ1 + δ2 ), z sin(δ1 + δ2 ) − w cos(δ1 + δ2 )) ,

n is odd.

Proof We have as in Theorem 27 



J(z, w) = Fα2 ,β2 Fα1 ,β1 (z, w) Z

=

Z

R2 R2

f (x, y)k1 (x, y; u, v)k2 (u, v; z, w)dx dy du dv.

(6.41)

But since γ1 = nπ − γ2 , cot γ1 = − cot γ2 ; hence, a1 = −a2 , and it follows that n

k1 (x, y; u, v)k2 (u, v; z, w) = d1 d2 exp −a1 (x2 + y 2 ) + a1 (z 2 + w2 ) +u(b1 x − c1 y + b2 z + c2 w) + v(b1 y + c1 x + b2 w − c2 z)} .

(6.42)

Thus, Z

J(z, w) = d1 d2

R2

n

o

f (x, y) exp −a1 (x2 + y 2 ) + a1 (z 2 + w2 ) I1 I2 dxdy,

(6.43)

where Z

I1 =

n

o

exp iu(˜b1 x − c˜1 y + ˜b2 z + c˜2 w) du

R

= 2πδ(U + +˜b2 z + c˜2 w),

(6.44)

and Z

I2 =

n

o

exp iv(˜b1 y + c˜1 x + ˜b2 w − c˜2 z) dv,

R

= 2πδ(V + ˜b2 w − c˜2 z), where U = ˜b1 x − c˜1 y,

V = ˜b1 y + c˜1 x.

(6.45)

136  Fractional Integral Transforms: Theory and Applications

Solving for x, y in terms of U, V, we obtain x = (˜b1 U + c˜1 V ) sin2 γ1 ,

y = (−˜ c1 U + ˜b1 V ) sin2 γ1 ,

and dxdy = (sin2 γ1 )dU dV. Substituting (6.44) and (6.45) into (6.43) leads to J

= (2π)2 sin2 γ1 d1 d2 h

Z R2

f (A, B)

i

n

h

× exp a1 (z 2 + w2 ) exp −a1 sin4 γ1 (˜b1 U + c˜1 V )2 + (−˜ c1 U + ˜b1 V )2 × δ(U + +˜b2 z + c˜2 w)δ(V + ˜b2 w − c˜2 z)dU dV

io

(6.46)

where A = (˜b1 U + c˜1 V ) sin2 γ1 ,

B = (−˜ c1 U + ˜b1 V ) sin2 γ1

But because n

h

exp −a1 sin4 γ1 (˜b1 U + c˜1 V )2 + (−˜ c1 U + ˜b1 V )2 (

" 4

= exp −a1 sin γ1

U2 + V 2 sin2 γ1

#)

io

n

o

= exp −a1 sin2 γ1 (U 2 + V 2 ) ,

we have J

2

2

Z

= (2π) sin γ1 d1 d2 h

f (A, B)

2 iR n

o

× exp a1 (z 2 + w2 ) exp −a1 sin2 γ1 (U 2 + V 2 ) × δ(U + +˜b2 z + c˜2 w)δ(V + ˜b2 w − c˜2 z)dU dV.

(6.47)

Applying the delta functions to the integrant in (6.47) amounts to replacing U by −˜b2 z − c˜2 w and V by −˜b2 w + c˜2 z, to obtain A =





−˜b1˜b2 z − ˜b1 c˜2 w + c˜1 c˜2 z − ˜b2 c˜1 w sin2 γ1

= −z

sin γ1 cos(δ1 + δ2 ) sin γ1 sin(δ1 + δ2 ) −w , sin γ2 sin γ2

(6.48)

and B =



= z



c˜1˜b2 z + c˜1 c˜2 w + ˜b1 c˜2 z − ˜b1˜b2 w sin2 γ1 sin γ1 cos(δ1 + δ2 ) sin γ1 sin(δ1 + δ2 ) −w . sin γ2 sin γ2

As for the exponential factor in the integral in (6.47), let us first observe that z 2 + w2 U 2 + V 2 = (−˜b2 z − c˜2 w)2 + (−˜b2 w + c˜2 z)2 = , sin2 γ2

(6.49)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  137

hence (

z 2 + w2 exp a1 (z + w ) − a1 sin γ1 sin2 γ2 2

2

(

"

sin2 γ1 = exp a1 (z + w ) 1 − 2 sin γ2 2

)

2

2

#)

= 1.

(6.50)

The last step follows from the fact that sin γ1 = sin(nπ − γ2 ) = (−1)n+1 sin γ2 . Moreover, we have ie−iγ1 ie−iγ2 (2π)2 (sin2 γ1 )d1 d2 = (2π)2 sin2 γ1 = 1 (6.51) 2π sin γ1 2π sin γ2 Substituting (6.51) and (6.50) into (6.47), we finally arrive at J = f (−zη cos(δ1 + δ2 ) − wη sin(δ1 + δ2 ), zη sin(δ1 + δ2 ) − wη cos(δ1 + δ2 )) , where η =

sin γ1 sin γ2

= (−1)n+1 . Hence,

J = f (z cos(δ1 + δ2 ) + w sin(δ1 + δ2 ), −z sin(δ1 + δ2 ) + w cos(δ1 + δ2 )) , for n even and J = f (−z cos(δ1 + δ2 ) − w sin(δ1 + δ2 ), z sin(δ1 + δ2 ) − w cos(δ1 + δ2 )) , for n odd.

6.5

CONVOLUTION THEOREM

In this section, we derive a convolution theorem for the two-dimensional coupled fractional Fourier transform (CFrFT). Definition 31. Let 2 2 f˜(x, y) = e−a(x +y ) f (x, y),

2 +y 2 )

and g˜(x, y) = e−a(x

g(x, y),

and define 2 +y 2 )

 O 

g = d(γ)ea(x

h(x, y) = f





f˜∗ g˜ (x, y),

where ∗ stands for the standard convolution given by (f ∗ g) (x, y) =

Z R2

f (x − η, y − ζ)g(η, ζ)dηdζ.

N

Theorem 29. Let h(x, y) = (f g) , and F, G, H denote the two-dimensional coupled fraction Fourier transform of f, g, h respectively. Then 2 +v 2 )

H(u, v) = ea(u

F (u, v)G(u, v).

138  Fractional Integral Transforms: Theory and Applications

Proof Let A = (bu + cv),

and B = (bv − cu).

Hence Z

H(u, v) = d(γ)

2 +y 2 +u2 +v 2 )+Ax+By

R2

e−a(x

2 +v 2 )

= d2 (γ)e−a(u

× g(η, ζ)e−aη

R2 2 −aζ 2

−a(u2 +v 2 )

= d2 (γ)e ×

Z R2

Z

R2

2 −a(y−ζ)2

f (x − η, y − ζ)e−a(x−η)

dηdζ Z R2

g(η, ζ)e−aη

eAx+By dxdy

h(x, y)dxdy

Z

2 −a(y−ζ)2 +A(x−η)+B(y−ζ)

f (x − η, y − ζ)e−a(x−η)

2 −aζ 2 +Aη+Bζ

dxdy

dηdζ.

By making a change of variable in the first integral on the right-hand side, we obtain Z

−a(u2 +v 2 )

2

H(u, v) = d (γ)e ×

Z R2

R2

g(η, ζ)e−aη 2 +v 2 )

= d2 (γ)ea(u ×

Z R2

2 +v 2 )

= ea(u

2 −aζ 2 +Aη+Bζ

Z R2

g(η, ζ)e−aη

f (X, Y )e−aX

2 −aY 2 +AX+BY

dXdY

dηdζ

f (X, Y )e−aX

2 −aY 2 −au2 −av 2 +AX+BY

2 −aζ 2 −au2 −av 2 +Aη+Bζ

dXdY

dηdζ

F (u, v)G(u, v),

which completes the proof.

6.6

POISSON SUMMATION FORMULA

This section is devoted to the Poisson summation formula for the two-dimensional coupled fractional Fourier transform . Theorem 30. The Poisson summation formula for the two-dimensional coupled fractional Fourier transform is given by X

2 +(y+2πm)2

f (x + 2πk, y + 2πm)e−a[(x+2πk)

]

k,m∈Z

=

X 1 e−i(kx+my) Fα,β (sin γ (k cos δ − m sin δ) , sin γ (k sin δ + m cos δ)) (2π)2 d(γ) k,m∈Z n

o

× exp i sin 2γ(k 2 + m2 )/4 .

(6.52)

For a sufficient condition for formula (6.52) to hold, see Eq. (6.3). Proof : Let f˜(x, y) =

X k,m∈Z

2 +(y+2πm)2

f (x + 2πk, y + 2πm)e−a[(x+2πk)

].

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  139

Clearly, f˜ is periodic with period 2π in both x and y; hence, it has a Fourier series of the form X f˜(x, y) = fˆk,m e−i(kx+my) , k,m∈Z

where fˆk,m =

1 (2π)2

Z π Z π

f˜(x, y)ei(kx+my) dxdy.

−π −π

Thus, f˜(x, y) =

e−i(kx+my)

X k,m∈Z

×

X

1 (2π)2

Z π Z π

ei(k˜x+m˜y)

−π −π 2 +(˜ y +2πs)2

f (˜ x + 2πr, y˜ + 2πs)e−a[(˜x+2πr)

] d˜ xd˜ y

r,s∈Z

=

e−i(kx+my)

X k,m∈Z

1 X (2π)2 r,s∈Z

Z π Z π

ei(k˜x+m˜y)

−π −π 2 +(˜ y +2πs)2

× f (˜ x + 2πr, y˜ + 2πs)e−a[(˜x+2πr)

] d˜ xd˜ y.

By substituting X = x˜ + 2πr,

Y = y˜ + 2πs,

in the last integral, we obtain f˜(x, y) = ×

X 1 e−i(kx+my) (2π)2 k,m∈Z X Z π(2r+1) Z π(2s+1) r,s∈Z π(2r−1)

= = ×

f (X, Y )e−a(X

2 +Y 2 )

eik(X−2πr)+im(Y −2πs) dXdY

π(2s−1)

X 1 e−i(kx+my) 2 (2π) k,m∈Z

Z ∞ Z ∞

eikX+imY f (X, Y )e−a(X

2 +Y 2 )

dXdY

−∞ −∞

X 1 2 2 e−i(kx+my) d(γ)ea(u +v ) (2π)2 d(γ) k,m∈Z Z ∞ Z ∞

eikX+imY e−a(X

2 +Y 2 )

2 +v 2 )

e−a(u

f (X, Y )dXdY.

−∞ −∞

Interchanging the summation and integration signs is permissible in view of condition Eq. (6.3). As for the last integral to be the two-dimensional coupled fractional Fourier integral transform of f, we have to solve the system of equations k = ˜bu + c˜v,

m = ˜bv − c˜u

for u, v in terms of k, m. It is easy to see that since ˜b2 + c˜2 = csc2 γ, the solution is given by u = sin γ (k cos δ − m sin δ) ,

v = sin γ (k sin δ + m cos δ) .

140  Fractional Integral Transforms: Theory and Applications

Therefore, we finally arrive at the Poisson summation formula for the two-dimensional coupled fractional Fourier transform, namely, 2 +(y+2πm)2

f (x + 2πk, y + 2πm)e−a[(x+2πk)

X

]

k,m∈Z

=

X 1 e−i(kx+my) Fα,β (sin γ [k cos δ − m sin δ] , sin γ [k sin δ + m cos δ]) 2 (2π) d(γ) k,m∈Z n

× exp a [sin γ (k cos δ − m sin δ)]2 + a [sin γ (k sin δ + m cos δ)]2 =

X 1 e−i(kx+my) Fα,β (sin γ [k cos δ − m sin δ] , sin γ [k sin δ + m cos δ]) 2 (2π) d(γ) k,m∈Z n

h

× exp a sin2 γ (k cos δ − m sin δ)2 + (k sin δ + m cos δ)2 =

o

io

X 1 e−i(kx+my) Fα,β (sin γ [k cos δ − m sin δ] , sin γ [k sin δ + m cos δ]) (2π)2 d(γ) k,m∈Z o

n

× exp i sin 2γ(k 2 + m2 )/4 . Remark. For α = β = π/2, we have γ = π/2, δ = 0, and hence a(γ) = 0, and Eq. (6.52) reduces to Eq. (6.2). Theorem 31. Let Fα,β be the coupled fractional Fourier transformation with angle α, β. Then lim Fα,β = I is the identity operator, where the convergence is in the strong α,β→0

topology. Proof From the generating function of the complex Hermite polynomials we have ∞ X

Hm,n (z1 , z 1 )Hn,m (z2 , z 2 )

m,n=0

tm sn = K(z1 , z 1 , z2 , z 2 ; s, t), |ts| < 1, m! n!

(6.53)

where −tsz1 z 1 + tz1 z 2 + sz2 z 1 − tsz2 z 2 1 exp , π(1 − ts) 1 − ts 

K(z1 , z 1 , z2 , z 2 ; s, t) =



which as in (6.14) leads to Z

q p

t s Hq,p (z1 , z 1 ) =

R2

Z

=

R2

2

K(z1 , z 1 , z2 , z 2 ; s, t)H p,q (z2 , z 2 )e−|z2 | dz2 2 +y 2 )

K(x, y; u, v)H p,q (x + iy, x − iy)e−(x

But since k (z1 , z 1 , z2 , z 2 ; s, t) = K (z1 , z 1 , z2 , z 2 ; s, t) e−(|z1 | and after multiplying both sides of (6.54) by e−|z1 tq sp hq,p (z1 , z 1 ) =

|2 /2

=e

2 +|z |2 )/2 2

−(u2 +v 2 )/2

dxdy. (6.54)

,

(6.55)

, we have

Z R2

k(z1 , z 1 , z2 , z 2 ; s, t)hp,q (z2 , z 2 )dz2 ,

(6.56)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  141

where hq,p (z, z) = Hq,p (z, z)e−|z|

2 /2

,

is the Hermite function of two complex variables. In view of Eq. (6.56), we have eiβq eiαp hq,p (z1 , z 1 ) =

Z R2

k (z1 , z 1 , z2 , z 2 ; α, β) hp,q (z2 , z 2 )dz2 .

(6.57)

But since hp,q (z2 , z 2 ) = hq,p (z2 , z 2 ), we obtain Fα,β (hq,p ) (z1 , z 1 ) = eiβq eiαp hq,p (z1 , z 1 ), or Fα,β (hq,p )(u, v) = eiβq eiαp hq,p (u, v),

(6.58)

and by taking the limit of Eq. (6.58), as α and β go to zero, we have lim Fα,β (hq,p )(u, v) = hq,p (u, v)

α,β→0

(6.59)

Finally, let f ∈ L2 (R2 ), hence f (x, y) =

∞ X

fˆm,n hm,n (x, y),

m,n=0

with

∞ X ˆ 2 fm,n < ∞, m,n=0

where fˆm,n are the generalized Fourier coefficients of f. It follows that Fα,β [f ](u, v) = = =

Z

k (x, y, u, v; α, β) f (x, y)dxdy,

R2 ∞ X

m,n=0 ∞ X

fˆm,n

Z R2

k (x, y, u, v; α, β) hm,n (x, y)dxdy

fˆm,n Fα,β [hm,n ](u, v).

m,n=0

Therefore, we have, in view of Eq. (6.58),

2



∞ X

2 X

ˆm,n Fα,β [hm,n ] − ˆm,n hm,n

Fα,β [f (x, y)](u, v) − f (u, v) = f f

m,n=0

m,n=0

2

X

∞ 2  X

∞  i(αn+βm)

i(αn+βm) ˆ 2 ˆ

= e − 1 fm,n hm,n = e − 1 f (6.60) . m,n

m,n=0

m,n=0

But since

∞ ∞ 2 2 X X i(αn+βm) ˆ 2 − 1 fˆm,n ≤ 2 e fm,n < ∞, m,n=0

m,n=0

taking the limit of Eq. (6.60), yields lim Fα,β [f ](u, v) = f (u, v),

α,β→0

that is limα,β→0 Fα,β = I is the identity operator.

142  Fractional Integral Transforms: Theory and Applications

6.7

A SPACE OF BANDLIMITED SIGNALS AND ITS SAMPLING THEOREM

In this section, we introduce a space of functions bandlimited to a rectangular region in the coupled fractional Fourier transform (CFrFT) domain, derive its reproducing kernel and then derive its sampling theorem. 6.7.1

Space of Bandlimited Signals

Let Ω = [−r, r] × [−R, R], and n

o

BΩ = f : f ∈ L2 (R2 ) such that Supp Fα,β ⊆ Ω . Theorem 32. The reproducing kernel of the space BΩ is given by n  o sin Ar sin BR h(x, y, η, ζ) = exp a x2 + y 2 − η 2 − ζ 2 . πA sin γ πB sin γ That is for any f ∈ BΩ , we have

(6.61)

Z

f (x, y) =

R2

f (η, ζ)h(x, y, η, ζ)dηdζ.

Proof We have Z

f (x, y) = d(−γ)



n 

o

F (u, v) exp a x2 + y 2 + u2 + v 2 − b(xu + yv) − c(xv − yu) dudv



Z

= d(γ)d(−γ)

n 



o



o

exp a x2 + y 2 + u2 + v 2 − b(xu + yv) − c(xv − yu) dudv



× =

Z

n

R2 csc2 γ

(2π)2 ×

Z



f (η, ζ) exp −a η 2 + ζ 2 + u2 + v 2 + b(ηu + ζv) + c(ηv − ζu) dηdζ Z R2

n 

f (η, ζ) exp a x2 + y 2 − η 2 − ζ 2

o

dηdζ

exp {iAu + iBv} dudv,

(6.62)



where A = ˜b(η − x) − c˜(ζ − y), B = ˜b(ζ − y) + c˜(η − x). But Z

eiAu+iBv dudv =

Z r

eiAu du

−r



Z R

eiBv dv =

−R

2 sin Ar 2 sin BR ; A B

therefore, from (6.62), we have Z

f (x, y) =

R2

f (η, ζ)h(x, y, η, ζ)dηdζ,

where h(x, y, η, ζ) is the reproducing kernel given by n  o sin Ar sin BR exp a x2 + y 2 − η 2 − ζ 2 . πA sin γ πB sin γ Remark. It should be noted that the reproducing kernel depends on the angle γ, which is one half of the sum of the transform two angles α, β, but not on δ, which is one half the difference of the two angles.

h(x, y, η, ζ) =

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  143

6.7.2 Sampling Theorems

In this section, we derive the sampling theorem for the two-dimensional coupled FrFT (CFrFT). But first, let us recall that for the fractional Fourier transform given by ( 6.6), the sampling theorem reads as follows: if f is bandlimited to the N -dimensional parallelepiped, [−σ1 , σ1 ] × · · · × [−σN , σN ], then f can be reconstructed from its samples according to the following formula f (t1 , t2 , . . . , tN ) =

N Y

∞ X

2

e−i(cot θk )tk /2

n1 ,n2 ,...,nN =−∞

k=1

× f (n1 π sin θ1 /σ1 , . . . , nN π sin θN /σN ) ×

N Y

2 /2

e−i(cot θk )(nk π sin θk /σk )

k=1

sin [σk csc θk (tk − nk π sin θk /σk )] . σk csc θk (tk − nk π sin θk /σk )

In particular, in two dimensions, the formula and notation can be simplified to 2 cot α/2

f (x, y) = e−ix

e−iy

2 cot β/2

X

2

2

f (xm , yn )e−ixm cot α/2 e−iyn cot β/2

m,n

×

sin σ1 csc α(x − xm ) sin σ2 csc β(y − yn ) , σ1 csc α(x − xm ) σ2 csc β(y − yn )

(6.63)

where xm = mπ sin α/σ1 and yn = nπ sin β/σ2 . If f (x, y) is bandlimited to [−πr, πr] × [−πR, πR], the sampling points are located at xm = m sin α/r, yn = n sin β/R,

(6.64)

In particular, when σ1 = σ2 = π and α = β = π/2, we obtain the sampling theorem for the two-dimensional Fourier transform with xm = m and yn = n. Here it should be emphasized that there is a striking difference between the sampling formula we are about to derive and the sampling formula that is based on the tensor product of two one-dimensional fractional Fourier transforms given by Eq. (6.63). In the latter sampling theorem, the sampling function is a product of two sinc functions, one in each variable, say x and y. In the former, as we will see, the sampling function is a product of two sinc functions but the argument of one of them is a weighted difference, w1 , of the two transform variables and the argument of the second one, w2 , is a weighted sum of the two variables. Theorem 33. [334] Let f be bandlimited to Ω = [−r, r] × [−R, R], in the CFrFT domain. Then f can be reconstructed from its samples via the formula f˜(x, y) =

∞ X

sin(mπ − rw1 ) sin(nπ − Rw2 ) f˜(xm,n , ym,n ) , (mπ − rw1 )(nπ − Rw2 ) m,n=−∞

(6.65)

2 2 where f˜(x, y) = e−a(x +y ) f (x, y), γ = (α + β)/2 and δ = (α − β)/2,

w2 = ˜by + c˜x

and w1 = ˜bx − c˜y,

(6.66)

144  Fractional Integral Transforms: Theory and Applications

and n m cos δ + sin δ , xm,n = π sin γ r R 



n m ym,n = π sin γ cos δ − sin δ , R r 



(6.67)

The sampling points lie on parallel lines and the slope of the line connecting the points (xm,n , ym,n ) and (xm1 ,n1 , ym1 ,n1 ) is given by m1 −m n1 −n sin δ R cos δ − r . m1 −m n1 −n cos δ + R sin δ r

Proof Let f be bandlimited to Ω = [−r, r] × [−R, R]. From the inversion formula (6.26), we have Z

n 



o

F (u, v) exp a x2 + y 2 + u2 + v 2 − b(xu + yv) − c(xv − yu) dudv.

f (x, y) = d(−γ) Ω

2 2 2 2 By setting f˜(x, y) = e−a(x +y ) f (x, y) and F˜ (u, v) = ea(u +v ) F (u, v), we obtain

f˜(x, y) = d(−γ)

Z

n

o

F˜ (u, v) exp −iu(˜bx − c˜y) − iv(˜by + c˜x) dudv.



By putting w2 = ˜by + c˜x we obtain f˜(x, y) = d(−γ)

Z

and w1 = ˜bx − c˜y,

F˜ (u, v) exp {−iuw2 − ivw1 } dudv



(6.68)

Since the support of F (u, v) is Ω = [−r, r] × [−R, R], then clearly, the support of F˜ is also Ω. Therefore, we can expand it in a double Fourier series as ∞ X

F˜ (u, v) =

Fˆm,n exp {imπu/r + inπv/R} ,

(6.69)

m,n=−∞

where

1 Fˆm,n = F˜ (u, v) exp {−imπu/r − inπv/R} dudv. 4rR Ω By substituting (6.69) and (6.70) into (6.68), we have Z

∞ X

f˜(x, y) = d(−γ)

Fˆm,n

Z

(6.70)

exp {iu(mπ/r − w1 ) + iv(nπ/R − w2 } dudv.



m,n=−∞

But it is easy to see that Z r

eiu(mπ/r−w1 ) du =

−r

2 sin r(mπ/r − w1 ) (mπ/r − w1 )

and similar expression for the integral over v. Therefore, we have f˜(x, y) = d(−γ)

∞ X

4 sin r(mπ/r − w1 ) sin R(nπ/R − w2 ) Fˆm,n (mπ/r − w1 )(nπ/R − w2 ) m,n=−∞

= 4rRd(−γ)

∞ X

sin(mπ − rw1 ) sin(nπ − Rw2 ) Fˆm,n . (mπ − rw1 )(nπ − Rw2 ) m,n=−∞

(6.71)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  145

To express Fˆm,n in terms of the values of f˜(x, y), we have f˜(x, y) = d(−γ)

Z ZΩ

= d(−γ)

n

o

F˜ (u, v) exp −iu(˜bx − c˜y) − iv(˜by + c˜x) dudv n

h

io

F˜ (u, v) exp −i x(˜bu + c˜v) + y(˜bv − c˜u)

dudv;



hence f˜(xm,n , ym,n ) = d(−γ)

Z

n

ZΩ

= d(−γ)

o

F˜ (u, v) exp −ixm,n (˜bu + c˜v) − iym,n (˜bv − c˜u) dudv n







F˜ (u, v) exp −iu ˜bxm,n − c˜ym,n − iv c˜xm,n + ˜bym,n

o

dudv



Putting

˜bxm,n − c˜ym,n = mπ , r

and

c˜xm,n + ˜bym,n =

nπ , R

(6.72)

we obtain f˜(xm,n , ym,n ) = 4rRd(−γ)Fˆm,n . Therefore, Eq. (6.71) may be written as f˜(x, y) =

∞ X

sin(mπ − rw1 ) sin(nπ − Rw2 ) f˜(xm,n , ym,n ) . (mπ − rw1 )(nπ − Rw2 ) m,n=−∞

Now we solve for (xm,n , ym,n ) in terms of the transformation parameters. Since ˜b = cos δ , sin γ

and c˜ =

sin δ , sin γ

it follows that ˜b2 + c˜2 = csc2 γ. By solving the system of equations (6.72), we get mπ ˜b2 xm,n − ˜b˜ cym,n = ˜b r nπ 2 ˜ c˜ xm,n + c˜bym,n = c˜ , R which leads to m n xm,n = π sin γ cos δ + sin δ , r R   n m ym,n = π sin γ cos δ − sin δ . R r By substituting the last two equations into (6.73), we obtain (6.65). To find the slope of the lines connecting the sampling points, we write ym1 ,n1 − ym,n slope = xm1 ,n1 − xm,n    n π sin γ nR1 cos δ − mr1 sin δ − R cos δ − m sin δ r    = n π sin γ mr1 cos δ + nR1 sin δ − m r cos δ + R sin δ 

=

n1 −n m1 −m sin δ R cos δ − r m1 −m n1 −n cos δ + R sin δ r



(6.73)

146  Fractional Integral Transforms: Theory and Applications

In particular, for fixed m, i.e., m1 = m, we have slope =

cos δ = cot δ, sin δ

and for fixed n, i.e., n1 = n, we have slope =

− sin δ = − tan δ. cos δ

6.7.3 Examples and Sampling Points Configuration

In this subsection, we discuss some special cases of the sampling points. For simplicity, we assume that the signal is bandlimited to [−πr, πr] × [−πR, πR]. Case I: If α = β, then γ = α and δ = 0, hence, xm,n = and the sampling points are

m sin α , r

ym,n =

n sin α, R

m n sin α, sin α , r R which is consistent with (6.64). The slope of the lines are 



r(n1 − n2 ) . R(m1 − m2 )

slope =

When r = R = 1, and α = β = π/2, we get the standard sampling points (m, n) for the standard two-dimensional Fourier transform. A graph displaying sampling points in this case can be seen in Fig. 6.1. Case II: If α = 2β, then γ = 3β/2, and δ = β/2. Hence, m n = sin(3β/2) cos(β/2) + sin(β/2) r R   n m = sin(3β/2) cos(β/2) − sin(β/2) . R r 

xm,n ym,n

In particular, if β = π/3, we have ! √ 1 m 3 n xm,n = + 2 r R



1 and ym,n = 2

! √ n 3 m − . R r

A graph displaying the sampling points in this case can be seen in Fig. 6.2. Case III: If α = 3β, then γ = 2β and δ = β. Hence, m n = sin(2β) cos(β) + sin(β) r R   n m = sin(2β) cos(β) − sin(β) , R r 

xm,n ym,n



Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  147

2

1

-4

2

-2

4

-1

-2

Graphs of the sampling points (xm,n , ym,n ) when α = β = π/2; or γ = π/2, δ = 0, r = 1, R = 2 Figure 6.1

8 6 4 2

-6

-4

2

-2

4

6

-2 -4 -6 -8

Graphs of the sampling points (xm,n , ym,n ) when α = 2β, β = π/3; or γ = π/2, δ = π/6, r = R = 1

Figure 6.2

and when β = π/4, we have   1 m n xm,n = √ + 2 r R

1 and ym,n = √

n m − . 2 R r 



148  Fractional Integral Transforms: Theory and Applications

6 4 2

-6

-4

2

-2

4

6

-2 -4 -6

Graphs of the sampling points (xm,n , ym,n ) when α = 3β, β = π/4; or γ = π/2, δ = π/4, r = R = 1

Figure 6.3

In particular, when r = R = 1, we have the sampling points 1 √ (m + n, n − m). 2 A graph displaying the sampling points in this case can be seen in Fig. 6.3. Other configurations of the sample points are shown in Figs. 6.4 and 6.5.

6.8

THE COUPLED FRACTIONAL FOURIER TRANSFORM OF GENERALIZED FUNCTIONS

The coupled fractional Fourier transform is defined for f ∈ Lp (R2 ), 1 ≤ p ≤ 2. In this section, we extend the transform to a space of generalized functions. The following lemma will be needed. Lemma 3. To simplify the notation, let k = kα,β (x, y; u, v) be the kernel of the coupled fractional Fourier transform given by Eq. (6.21). We have h i ∂ m+n k m n ˜n (x, y; v) , = k [(−2au) + P (x, y; u)] (−2av) + P m ∂um ∂v n where Pm (x, y; u) and P˜n (x, y; v) are polynomials of degree m and n in x and y and of degree m − 1 in u and n − 1 in v, respectively.

Proof It is easy to see that ∂k = kH, ∂u

∂k ˜ = k H, ∂v

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  149

6 4 2

-4

2

-2

4

-2 -4 -6

Graphs of the sampling points (xm,n , ym,n ) when α = 7π/12, β = 5π/12; or γ = π/2, δ = π/12, r = R = 1 Figure 6.4

4

2

-6

-4

2

-2

4

6

-2

-4

Graphs of the sampling points (xm,n , ym,n ) when α = 19π/20, β = π/20; or γ = π/2, δ = 9π/20, r = R = 1

Figure 6.5

where H = H(x, y; u) = −2au + η(x, y), η(x, y) = bx − cy,

150  Fractional Integral Transforms: Theory and Applications

and ˜ = −2av + η˜(x, y), H

η˜(x, y) = by + cx.

Hence   h i ∂2k 2 2 2 2 2 − 2ak + kH = k 4a u + η − 4auη − 2a = k (−2au) + P (x, y; u) , 2 ∂u2

where P2 (x, y; u) = η 2 − 4auη − 2a is a polynomial of degree 2 in x and y and of degree 1 in u. In general, ∂nk = k [(−2au)n + Pn (x, y; u)] , (6.74) ∂un where Pn (x, y; u) is a polynomial of degree n in x and y and of degree n − 1 in u. We prove (6.74) by induction. By differentiating the last equation with respect to u , we have ∂ n+1 k ∂ ∂ = k [(−2au)n + Pn (x, y; u)] = k n(−2a)n un−1 + Pn (x, y; u) n+1 ∂u ∂u ∂u + [(−2au)n + Pn (x, y; u)] Hk   ∂ n n−1 n = k n(−2a) u + Pn (x, y; u) + {(−2au) + Pn (x, y; u)} (−2au + η(x, y)) ∂u 

h



i

= k (−2au)n+1 + Pn+1 (x, y; u) , where ∂ Pn (x, y; u) ∂u + (−2au)n η + (−2au)Pn (x, y; u) + Pn (x, y; u)η

Pn+1 (x, y; u) = n(−2a)n un−1 +

is a polynomial of degree n + 1 in x and y and of degree n in u because Pn (x, y; u) is of degree n in x and y and n − 1 in u. Similarly, h i ∂nk = k (−2av)n + P˜n (x, y; v) , n ∂v

where P˜n (x, y; u) is a polynomial of degree n in x and y and of degree n − 1 in v. Since ∂2k ˜ = kH H, ∂u∂v it can be easily shown as above that h i ∂ m+n k = k [(−2au)m + Pm (x, y; u)] (−2av)n + P˜n (x, y; v) , m n ∂u ∂v where Pm (x, y; u) and P˜n (x, y; v) are polynomials of degree m and n in x and y and of degree m − 1 in u and n − 1 in v, respectively.

Now we extend the transform to a space of generalized functions. Let E(R2 ) be the testing-function space of all infinitely differentiable functions on R2 and E ∗ be its dual space which is the space of all generalized functions with compact support. It is known that E ∗ is a subspace of the space D∗ of Schwartz distributions. Since the kernel of the coupled fractional Fourier transform kα,β (x, y; u, v) is in the space E(R2 ), we have the following definition

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  151

Definition 32. Let f ∈ E ∗ . We define the coupled fractional Fourier transform of f as F (u, v) = Fα,β (u, v) = hf (x, y), kα,β (x, y; u, v)i. Theorem 34. Let f ∈ E ∗ . Then its coupled fractional Fourier transform F (u, v) is in the space E(R2 ) and satisfies ∂ m+n F m n ≤ C|u|m |v|n ∂u ∂v for sufficiently large u and v. That is F is a C ∞ (R2 ) function in both u and v and does not grow faster than a polynomial as |u| and |v| go to infinity, i.e., F is a tempered function. Proof By taking the derivatives of F with respect to u and v, we have by Lemma 3 ∂ m+n F ∂ m+n k = hf, i ∂um ∂v n ∂um ∂v n i h = hf, k [(−2au)m + Pm (x, y; u)] (−2av)n + P˜n (x, y; u) i Pm Pm P˜n P˜n + + i = hf, (−2au)m (−2av)n k 1 + (−2av)n (−2au)m (−2au)m (−2av)n #

"

= (−2au)m (−2av)n hf, k [1 + G(x, y, ; u, v)]i = (−2au)m (−2av)n {hf, ki + hf, kGi} where G(x, y; u, v) =

P˜n Pm Pm P˜n + + . (−2av)n (−2au)m (−2au)m (−2av)n

Since G is a polynomial in x and y, it is a multiplier of the space E(R2 ) and; hence, hf, kGi ∂ m+n F is well defined and consequently so is ∂u m ∂v n . Finally, since |G(x, y; u, v)| can be made arbitrary small for u and v sufficiently large, it will follow that ∂ m+n F m n ≤ C|u|m |v|n , ∂u ∂v

for some constant C. Remark. The coupled fractional Fourier transform maps the space E ∗ into a subspace of the space of tempered distribution. Next we derive the inversion formula for the coupled fractional Fourier transform of the generalized function f. Theorem 35. Let Fα,β [f ](u, v) = Fα,β (u, v) be the coupled FrFT of a generalized function f with compact support. Then Z r Z R

f (x, y) = lim lim

r→∞ R→∞ −r −R

Fα,β (u, v)k−α,−β (x, y; u, v) dudv,

where the limits are taken in the space S ∗ of tempered distributions.

(6.75)

152  Fractional Integral Transforms: Theory and Applications

Proof We need to show that hf (x, y), φ(x, y)i = lim lim h

Z r Z R

r→∞ R→∞

−r −R

Fα,β (u, v)k−α,−β (x, y, u, v) dudv, φ(x, y)i ,

for all φ ∈ S(R2 ), where S(R2 ) is the Schwartz space of all infinitely differentiable functions with rapid decay . We have h

Z r Z R −r −R

Fα,β (u, v)k−α,−β (x, y, u, v) dudv, φ(x, y)i Z r Z R

Z

=

R2

φ(x, y) dxdy −r −R Z r Z R

Z

=

R2

φ(x, y) dxdy −r −R

= hf (w, z),

Fα,β (u, v)k−α,−β (x, y, u, v) dudv hf (w, z), kα,β (w, z, u, v)ik−α,−β (x, y, u, v) dudv Z r Z R

Z R2

φ(x, y) dxdy −r −R

kα,β (w, z, u, v)k−α,−β (x, y, u, v) dudvi

Changing the order of integration is possible because φ is infinitely differentiable with rapid decay and the integrant is a continuous function of x, y and u, v. Therefore, lim lim h

r→∞ R→∞

=

Z r Z R −r −R

Fα,β (u, v)k−α,−β (x, y; u, v) dudv, φ(x, y)i

lim lim hf (w, z),

r→∞ R→∞

Z r Z R

Z R2

φ(x, y) dxdy −r −R

kα,β (w, z; u, v)

× k−α,−β (x, y; u, v) dudvi = hf (w, z), lim lim

Z r Z R

Z

r→∞ R→∞ R2

φ(x, y) dxdy −r −R

kα,β (w, z; u, v)

× k−α,−β (x, y; u, v) dudvi = hf (w, z),

Z

Z R2

φ(x, y) dxdy

R2

kα,β (w, z; u, v)

× k−α,−β (x, y; u, v) dudvi = hf (w, z),

Z R2

φ(x, y) δ(x, y; w, z)dxdyi = hf (w, z), φ(w, z)i,

which is equivalent to (6.75).

6.9 6.9.1

THE GYRATOR TRANSFORM Motivation and Definitions

The Gyrator transform was introduced in optics in the early 2000’s by R. Simon and K. B. Wolf [278, 279] and Wolf [320], but its mathematical properties and optical applications were developed by J. A. Rodrigo, T. Alieva, M. Calvo in [250, 251, 252]. Both the Gyrator and the fractional Fourier transforms are special cases of the general class of linear canonical integral transforms which represents rotations in the time-frequency plane and in the position-spatial frequency plane of phase space. More properties and extensions of the Gyrator transform can be found in [152].

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  153

The Gyrator transform of order α is a two-dimensional integral transform defined for a function f (t1 , t2 ) as Z Z

(Rα f )(ω1 , ω2 ) =

f (t1 , t2 )Gα (t1 , t2 , ω1 , ω2 ) dt1 dt2 ,

α , nπ

(6.76)

R R

where i 1 exp [(t1 t2 + ω1 ω2 ) cos α − (t2 ω1 + t1 ω2 )] . Gα (t1 , t2 , ω1 , ω2 ) = 2π| sin α| sin α 



Because Gα is bounded, the transform is defined for all f ∈ L1 (R2 ) L2 (R2 ), and as was done for the fractional Fourier transform, the definition can be extended to all f ∈ L2 (R2 ). It is evident that: T

1. Rα is periodic with period 2π, in α 2. R0 is the identity transformation, and 3. Rπ/2 is the Fourier transform with rotation of the coordinates by π/2. We will show that Rα Rβ = Rα+β , and in addition if f, g ∈ L2 (R2 ), then hRα f, Rα gi = hf, gi. We begin by discussing the relationship between the Gyrator and the fractional Fourier transforms. Consider the two-dimensional fractional Fourier transform of the form Z Z

Fα,β (w1 , w2 ) =

f (x1 , x2 )Kα (x1 , w1 )Kβ (x2 , w2 )dx1 dx2 , R R

which reduces to F−α,α (w1 , w2 ) =

1 2π| sin α|

Z Z

f (x1 , x2 ) R R

i i h 2 (x1 − x22 + w12 − w22 ) cos α − 2(x1 w1 − x2 w2 ) dx1 dx2 . × exp 2 sin α 



Z Z

=

f (x1 , x2 )Hα (x1 , x2 , w1 , w2 )dx1 dx2 ,

(6.77)

R R

where Hα (x1 , x2 , w1 , w2 ) = K−α (x1 , w1 )Kα (x2 , w2 )  i 1 i h 2 2 2 2 = exp (x1 − x2 + w1 − w2 ) cos α − 2(x1 w1 − x2 w2 ) (. 6.78) 2π| sin α| 2 sin α Let

and

!

1 1 1 A= √ . −1 1 2 x = (x1 , x2 )T , w = (w1 , w2 )T , . . . , etc.,

(6.79)

154  Fractional Integral Transforms: Theory and Applications

where T stands for the transpose operation. The matrix A corresponds to a plane rotation by angle π/4. By making the substitution x = At,

w = Aω,

that is x1 =

(t1 + t2 ) √ , 2

x2 =

(−t1 + t2 ) √ , 2

w1 =

(ω1 + ω2 ) √ , 2

w2 =

(−ω1 + ω2 ) √ , 2

in Equation (6.77), we obtain with some calculations, 1 f (t1 , t2 ) 2π| sin α| R R   i × exp [(t1 t2 + ω1 ω2 ) cos α − (t1 ω2 + t2 ω1 )] dt1 d2 sin α Z Z

F−α,α (ω1 , ω2 ) =

Z Z

=

f (t1 , t2 )Hα (At, Aω)dt1 dt2 ZR ZR

=

f (t1 , t2 )Gα (t1 , t2 , ω1 , ω2 )dt1 dt2 ZR ZR

=

f (t)Gα (t, ω)dt = Rα [f ] (ω),

(6.80)

R R

where Gα (t, ω) = Hα (At, Aω). We may write the last equation as Rα [f ] (ω) = F−α,α [f (At)] (Aω). The inverse of the Gyrator transform is easily seen to be G−α which could be derived from that of the fractional Fourier transform or directly from the relation Z

R−α (Rα [f ]) (t) = =

2 ZR 2

Rα [f ](w)G−α (w, t)dw Z

G−α (w, t)dw

ZR

=

R2

R2

f (x)Gα (x.w)dx

Z

f (x)dx

R2

G−α (w, t)Gα (x, w)dw.

(6.81)

But Z R2

G−α (w, t)Gα (x.w)dw

1 i = exp [(x1 x2 − t1 t2 ) cos α − w1 (x2 − t2 ) − w2 (x1 − t1 )] dw1 dw2 (2π sin α)2 R sin α = δ(x1 − t1 )δ(x2 − t2 ), (6.82) Z





and by substituting this into (6.81), we have R−α (Rα [f ]) (t) = f (t) = f (t1 , t2 ).

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  155

6.9.2 Elementary Properties of the Gyrator Transform

1. Linearity: where a, b ∈ C.

Rα [af + bg] = aRα [f ] + bRα [g], 2. Translation:

Rα [f (t1 − a, t2 − b)] (w1 , w2 ) =   i exp ab sin 2α − i(bw1 + aw2 ) sin α 2 × Rα [f (t1 , t2 )] (w1 − a cos α, w2 − b cos α).

(6.83)

3. Frequency Shift: h

i

Rα e−i(at1 +bt2 ) f (t1 , t2 ) (w1 , w2 ) = 1 exp −i ab sin 2α + (aw1 + bw2 ) cos α 2 × Rα [f (t1 , t2 )] (w1 + b sin α, w2 + a sin α). 





(6.84)

4. Differentiation: ∂ ∂ e Rα (t1 + t2 ) + + f (t1 , t2 ) (w1 , w2 ) ∂t1 ∂t2    ∂ ∂ + Rα [f (t1 , t2 )] (w1 , w2 ), = (w1 + w2 ) + ∂w1 ∂w2 −iα







(6.85)

and ∂ ∂ + e Rα (t1 + t2 ) − f (t1 , t2 ) (w1 , w2 ) ∂t1 ∂t2    ∂ ∂ + = (w1 + w2 ) − Rα [f (t1 , t2 )] (w1 , w2 ). ∂w1 ∂w2 iα









(6.86)

5. Eigenfunctions and Eigenvalues: The eigenfunctions of the Gyrator transform are Ψm,n (t1 , t2 ) and the corresponding eigenvalues are ei(n−m)α , that is Rα [Ψm,n (t1 , t2 )] = ei(n−m)α Ψm,n (ω1 , ω2 ), where



Ψm,n (t1 , t2 ) = Hm,n

(t1 + t2 ) (−t1 + t2 ) √ √ , 2 2

(6.87)



= Hm,n (At) ,

Hm,n (x1 , x2 ) = hm (x1 )hn (x2 ), and hm is the Hermite function of order m. 6. Isometry: The Gyrator transform is an isometry from L2 (R2 ) into itself, and if f, g ∈ L2 (R2 ), then hRα [f ], Rα [g]i = hf, gi. (6.88) In particular kRα [f ]k2 = kf k2 .

156  Fractional Integral Transforms: Theory and Applications

7. Additive Property: Rβ (Rα (f )) = Rα+β (f ). The proof of these properties will follow. Linearity is obvious. To prove (6.83), we have Rα [f (t1 − a, t2 − b)] (w1 , w2 ) =

Z Z

f (t1 − a, t2 − b)Gα (t1 , t2 , w1 , w2 )dt1 dt2

ZR ZR

=

f (x1 , x2 )Gα (x1 + a, x2 + b, w1 , w2 )dx1 dx2 R R

But with some calculations, one can show that 1 Gα (x1 + a, x2 + b, w1 , w2 ) = exp i ab sin 2α − (bw1 + aw2 ) sin α 2 × Gα (x1 , x2 , w1 − a cos α, w2 − b cos α)  



which completes the proof. The proof of (6.84) follows from the relation h

i

Rα e−i(at1 +bt2 ) f (t1 , t2 ) (w1 , w2 ) =

Z Z

e−i(at1 +bt2 ) f (t1 , t2 )Gα (t1 , t2 , w1 , w2 )dt1 dt2

R R

1 = 2π| sin α|

Z Z

f (t1 , t2 )dt1 dt2 R R

i × exp [(t1 t2 + w1 w2 ) cos α − (t1 w2 + t2 w1 ) − (at1 + bt2 ) sin α] . sin α 



With some computations one can verify that e

−i(at1 +bt2 )

1 Gα (t1 , t2 , w1 , w2 ) = exp −i ab sin 2α + (aw1 + bw2 ) cos α 2 × Gα (t1 , t2 , w1 + b sin α, w2 + a sin α), 





which is (6.84) . The proof of (6.89) and (6.86) goes as follows. Proof ∂f ∂f + (w1 , w2 ) = Rα ∂t1 ∂t2 Z Z i − f (t1 , t2 )G(t1 , t2 , w1 , w2 ) [(t1 + t2 ) cos α − (w1 + w2 )] dt1 dt2 , sin α R R 



hence (w1 + w2 )Rα [f ](w1 , w2 ) = cos αRα [(t1 + t2 )f (t1 , t2 )]   ∂f ∂f −i sin αRα + . ∂t1 ∂t2

(6.89)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  157

On the other hand, we have ∂ ∂ + Rα [f ](w1 , w2 ) ∂w1 ∂w2 i = {(w1 + w2 ) cos αRα [f ](w1 , w2 ) − Rα [(t1 + t2 )f (t1 , t2 )] (w1 , w2 )} . sin α 



(6.90)

By combining (6.89) and (6.90), we obtain ∂ ∂ + Rα [f ](w1 , w2 ) ∂w1 ∂w2 i n − sin2 αRα [(t1 + t2 )f (t1 , t2 )](w1 , w2 ) sin α    ∂f ∂f i sin α cos αRα + (w1 , w2 ) ∂t1 ∂t2



= −





= −i sin αRα [(t1 + t2 )f (t1 , t2 )](w1 , w2 ) + cos αRα

∂f ∂f + (w1 , w2 ) (6.91) ∂t1 ∂t2 

Adding (6.89) and (6.91), leads to ∂ ∂ (w1 + w2 ) + + Rα [f ](w1 , w2 ) ∂w1 ∂w2   ∂f ∂f −iα + = e Rα (t1 + t2 )f (t1 , t2 ) + (w1 , w2 ), ∂t1 ∂t2 



which is (6.85). Similarly, by subtracting (6.91) from (6.89), we obtain (6.86). To find the eigenfunctions and eigenvalues of the Gyrator transform, let us recall that the eigenvalues and eigenfunctions of the fractional Fourier transform are given by the equation Fα [hm (x)](w) = eimα hm (w), where hm (x) is the Hermite function, see (6.9). Hence, Z Z

Hm,n (x1 , x2 )K−α (x1 , w1 )Kα (x2 , w2 )dx1 dx2 = ei(n−m)α Hm,n (w1 , w2 ),

R R

where Hm,n (x1 , x2 ) = hm (x1 )hn (x2 ). Therefore, if we set x = At, w = Aω, and 

Ψm,n (t1 , t2 ) = Hm,n

(t1 + t2 ) (−t1 + t2 ) √ √ , 2 2



= Hm,n (At) ,

in Equation ( 6.92), we obtain Z Z

Hm,n (At)Hα (At, Aω) dt ZR ZR

=

Hm,n (At)Gα (t, ω) dt = ei(n−m)α Hm,n (Aω)

R R

or

Rα [Ψm,n (t1 , t2 )] (ω1 , ω2 ) = ei(n−m)α Ψm,n (ω1 , ω2 ).

(6.92)

158  Fractional Integral Transforms: Theory and Applications

The proof of (6.88) goes as follows: hRα [f ], Rα [g]i =

Z Z

Rα [f ](w)Rα [g](w) dw ZR ZR

=

Z Z

Z Z

f (x)Gα (x, w)dx

dw ZR ZR

=

R R Z

f (x)dx ZR ZR

= =

Gα (x, w)G−α (t, w)dw

g(t)dt ZR ZR

f (x)dx ZR ZR

g(t)G−α (t, w)dt R R

Z Z

Z

R R

g(t)dt δ(x1 − t1 ) δ(x2 − t2 )

(6.93)

R R

f (x)g(x)dx = hf, gi,

R R

where (6.93) follows from Eq. (6.82). We now present the additive property as a theorem whose proof follows from the additive property of the fractional Fourier transform Theorem 36. The Gyrator transform is additive, that is Rβ (Rα (f )) = Rα+β (f ). In particular, the inverse Rα−1 of Rα is R−α . Proof Let

Z Z

Rα (f )(ω) =

f (t)Gα (t, ω)dt = g(ω), R R

and J = Rβ (g). Hence, Z Z

g(ω)Gβ (ω, z)dω

J(z) = Rβ (g)(z) = R R

Z Z

Z Z

Gβ (ω, z)dω

= ZR ZR

=

f (t)Gα (t, ω)dt R R

Z Z

Gα (t, ω)Gβ (ω, z)dω

f (t)dt ZR ZR

R R

f (t)I(t, z)dt,

=

(6.94)

R R

where Z Z

Gα (t, ω)Gβ (ω, z)dω

I(t, z) = ZR ZR

=

Hα (At, Aω)Hβ (Aω, Az)dω. R R

In view of the fact that x = At, w = Aω, v = Az,

(6.95)

Two-Dimensional Coupled Fractional Fourier Transform (CFrFT)  159

we have Z Z

I(t, z) =

Hα (x, w)Hβ (w, v)dw ZR R

=

Z

K−α (x1 , w1 )Kα (x2 , w2 )dw1 ZR

=

K−β (w1 , v1 )Kβ (w2 , v2 )dw2 R Z

K−α (x1 , w1 )K−β (w1 , v1 )dw1 R

Kα (x2 , w2 )Kβ (w2 , v2 )dw2 R

= K−(α+β) (x1 , v1 )K(α+β) (x2 , v2 )

(6.96)

= Hα+β (x, v) = Hα+β (At, Az).

(6.97)

where (6.96) follows from the additive property of the fractional Fourier transform. By substituting (6.97) into (6.94), we obtain Z Z

J(z) =

Z Z

f (t)Gα+β (t, z)dt = Rα+β (f )(z),

f (t)Hα+β (At, Az)dt = R R

which completes the proof.

R R

CHAPTER

7

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution

7.1

INTRODUCTION

As we have seen in Chapter 4, the fractional Fourier transform and the Wigner distribution are closely related. It was shown that the Wigner distribution WFθ (u, v) of the fractional Fourier transform Fθ may be obtained from the Wigner distribution Wf (u, v) of f by a two-dimensional rotation with the angle θ in the time-frequency, u − v, plane. When the fractional Fourier transform is extended to two dimensions by taking the tensor product of two one-dimensional transforms, or in other words, when the transform is taken in two separable variables, the Wigner distribution WFθ,φ (u1 , u2 ; v1 , v2 ) of the two-dimensional fractional Fourier transform Fθ,φ (v, w) may be obtained from the Wigner distribution Wf (u1 , u2 ; v1 , v2 ) of f (x, y) by a simple four-dimensional rotation with the angle θ in the u1 − v1 plane and with the angle φ in the u2 − v2 plane. The aim of this chapter is to investigate the relationship between the non-separable two-dimensional fractional Fourier transform (CFrFT) introduced in Chapter 6 and the four-dimensional Wigner distribution. We shall give an explicit matrix representation of a four-dimensional rotation that verifies that the Wigner distribution of the two-dimensional coupled fractional Fourier transform Fθ,φ (v, w) may be obtained from the Wigner distribution of f (x, y) by a four-dimensional rotation. The matrix representation is more general than the one for the tensor product case and it corresponds to a four-dimensional rotation with two planes of rotations, one with the angle (θ + φ)/2 and the other with the angle (θ − φ)/2.

7.2

THE WIGNER DISTRIBUTION

Let us recall that the Wigner distribution of a function f is defined as 1 Wf (u, v) = √ 2π DOI: 10.1201/9781003089353-7

x x ivx f u+ f u− e dx 2 2 R

Z



 



160

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution  161

We have seen in Chapter 4 that the Wigner distribution of the Fourier transform fˆ of f is related to the Wigner distribution of f by the relation Wfˆ(u, v) = Wf (−v, u). Hence, it may be said that Wfˆ(u, v) is obtained from Wf (u, v) by a rotation in the u − v plane with an angle π/2 in the clockwise direction. More generally [186, 187], the fractional Fourier transform with angle θ corresponds to the rotation of the Wigner distribution of f by the angle θ. More precisely, WFθ (u, v) = Wf (u cos θ − v sin θ, u sin θ + v cos θ). This rotation matrix is

cos θ − sin θ sin θ cos θ

!

.

In a more general setting, the Wigner distribution of a function of two variables is a function of four variables. It was shown [220, P. 115, 176] that the Wigner distribution of the fractional Fourier transform given by (6.7) is obtained from the Wigner distribution of f by a four-dimensional rotation, namely, WFθ

1 ,θ2

(u1 , u2 ; v1 , v2 ) =

Wf (u1 cos θ1 − v1 sin θ1 , u2 cos θ2 − v2 sin θ2 ; u1 sin θ1 + v1 cos θ1 , u2 sin θ2 + v2 cos θ2 ) , which corresponds to the four-dimensional rotation matrix     

cos θ1 0 sin θ1 0

0 cos θ2 0 sin θ2

− sin θ1 0 cos θ1 0

0 − sin θ2 0 cos θ2

   . 

(7.1)

This amounts to a rotation by θ1 in the u1 − v1 plane and a rotation by θ2 in the u2 − v2 plane. For other related work, see [7, 278]. This simple result will be generalized later in this chapter.

7.3

FOUR-DIMENSIONAL ROTATIONS

In this subsection, we give an introduction to four-dimensional rotations that will be used later in the proof of one of our main theorems. For more details, see [195, 313]. A counterclockwise rotation in the x − y plane by an angle θ maybe described by the equation " # !" # u˜ cos θ sin θ u = . v˜ − sin θ cos θ v A clockwise rotation is obtained by replacing θ by −θ to get "

u˜ v˜

#

=

cos θ − sin θ sin θ cos θ

!"

u v

#

,

162  Fractional Integral Transforms: Theory and Applications

which when viewed as a rotation in three dimensions about the z−axis, can be represented by the matrix   1 0 0    0 cos θ − sin θ  . 0 sin θ cos θ Let R4 denote the four-dimensional Euclidean space provided with the inner product hu, vi = x1 x2 + y1 y2 + z1 z2 + w1 w2 , where u = (x1 , y1 , z1 , w1 ) and v = (x2 , y2 , z2 , w2 ), with xi , yi , zi , wi ∈ R, i = 1, 2. Let us denote the set of all 4 × 4 matrices over the real numbers by M4×4 (R). A matrix A ∈ M4×4 (R) is said to be orthogonal if AAT = AT A = I, where I is the 4 × 4 identity matrix and AT denotes the transpose of A. In four dimensions, instead of axis of rotation, there is a plane of rotation which describes rotations in R4 . A plane of rotation for a four-dimensional rotation is a plane that is mapped into itself by the rotation. The plane is not fixed but all vectors in the plane are mapped to other vectors in the same plane by the rotation [98]. Rotations in R4 have at most two planes of rotations. Thus, a simple rotation is a rotation with one fixed plane and the rotation is about this fixed plane. The plane of rotation is orthogonal to the plane which is being rotated. For example, a rotation about the x − y plane in which the points in z − w plane are rotated by an angle θ is given by the matrix     

1 0 0 0

0 0 0 1 0 0 0 cos θ − sin θ 0 sin θ cos θ

   . 

A double rotation is a rotation with two planes of rotations. The two planes are orthogonal and the rotation depends on two angles, one for each plane. For examples if the x − y plane is rotated by an angle α and the z − w plane is rotated by an angle β, the matrix of rotation is given by   cos α − sin α 0 0   sin α cos α 0 0   .   0 0 cos β − sin β  0 0 sin β cos β It is known [195] that each four-dimensional rotation can be decomposed in two ways into a matrix representing left-multiplication by a unit quaternion and a matrix representing right-multiplication by a unit quaternion . These decompositions differ only in the signs of the component matrices. In fact, let    

ML = 

where

a −b −c −d b a −d c c d a −b d −c b a

   , 

a2 + b2 + c2 + d2 = 1,

   

MR = 



p −q −r −s q p s −r   . r −s p q  s r −q p

p2 + q 2 + r2 + s2 = 1,

(7.2)

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution  163

be matrices representing the left-and right- multiplication by a unit quaternion, then their product   a0,0 a0,1 a0,2 a0,3   a a a a   (7.3) A = ML MR =  1,0 1,1 1,2 1,3   a2,0 a2,1 a2,2 a2,3  a3,0 a3,1 a3,2 a3,3 is a four-dimensional rotation matrix. The entries ai,j , i, j = 0, 1, 2, 3 can be expressed in terms of a, b, c, d and p, q, r, s. The general three-dimensional rotation matrix can be obtained from the general four-dimensional rotation matrix by putting a0,0 = 1, a0,1 = a0,2 = a0,3 = a1,0 = a2,0 = a3,0 = 0, to yield

   

A=

7.4

1 0 0 0 0 a1,1 a1,2 a1,3 0 a2,1 a2,2 a2,3 0 a3,1 a3,2 a3,3

   . 

THE FOUR-DIMENSIONAL WIGNER DISTRIBUTION

We begin this section by introducing the four-dimensional Wigner distribution and some of its elementary properties. For more general forms, see [101] and [114, P. 63]. Definition 33. The cross-Wigner distribution function of two functions f (x, y), g(x, y) ∈ L2 (R2 ) is defined as Wf,g (u1 , u2 ; v1 , v2 ) =

1 2π

x x y y f (u1 + , u2 + )g(u1 − , u2 − )ei(xv1 +yv2 ) dxdy, 2 2 2 2 R2

Z

and the auto-Wigner distribution function of f (or the Wigner distribution function of f for short) is defined as 1 Wf (u1 , u2 ; v1 , v2 ) = 2π

Z R2

x y x y f (u1 + , u2 + )f (u1 − , u2 − )ei(xv1 +yv2 ) dxdy. 2 2 2 2

Next we derive some properties of the Wigner distribution. One of the salient properties of the Wigner distribution is that it satisfies Moyal’s identity which we will state in the following proposition. Although the result may be obtained from a more general result in harmonic analysis [101, p. 56], [115], for the reader’s convenience we will sketch a more direct proof for it, see Section 4.3.4. Proposition 3. The Wigner distribution satisfies Moyal’s identity , namely hWf1 ,g1 , Wf2 ,g2 iL2 (R4 ) = hf1 , f2 iL2 (R2 ) hg1 , g2 iL2 (R2 ) . Moreover, we have the inversion formula 1 f (τ1 , τ2 )g(τ1 , τ2 ) = 2π

Z R2

Wf,g (τ1 , τ2 ; v1 , v2 )dv1 dv2 .

164  Fractional Integral Transforms: Theory and Applications

Proof From the definition of the Wigner distribution, we have Z

hWf1 ,g1 , Wf2 ,g2 i =

R4

Wf1 ,g1 (u1 , u2 ; v1 , v2 )W f2 ,g2 (u1 , u2 ; v1 , v2 )du1 du2 dv1 dv2

1 (2π)2

=

Z R4

Z

f1 (u1 + x/2, u2 + y/2) R2 i(xv1 +yv2 )

du1 du2 dv1 dv2

× g 1 (u1 − x/2, u2 − y/2)e Z

×

R2

f 2 (u1 + x˜/2, u2 + y˜/2)g2 (u1 − x˜/2, u2 − y˜/2)e−i(˜xv1 +˜yv2 ) d˜ xd˜ y

1 (2π)2

=

Z

×

ZR

×

2

2 ZR

= ZR

×

2

R2

dxdy

Z R2

i(x−˜ x)v1 −i(y−˜ y )v2

e

Z

dv1 dv2

R2

du1 du2

f1 (u1 + x/2, u2 + y/2)g 1 (u1 − x/2, u2 − y/2)dxdy f 2 (u1 + x˜/2, u2 + y˜/2)g2 (u1 − x˜/2, u2 − y˜/2)d˜ xd˜ y Z

du1 du2

R2

f1 (u1 + x/2, u2 + y/2)g 1 (u1 − x/2, u2 − y/2)

f 2 (u1 + x/2, u2 + y/2)g2 (u1 − x/2, u2 − y/2)dxdy.

Here we have used the relation Z

eixw dx = 2πδ(w),

R

where δ is the Dirac-delta function. If we set x1 = u1 + x/2, x2 = u2 + y/2, x3 = u1 − x/2, x4 = u2 − y/2, we obtain after some calculations hWf1 ,g1 , Wf2 ,g2 i =

Z

Z

R2

f1 (x1 , x2 )f 2 (x1 , x2 )dx1 dx2

R2

g 1 (x3 , x4 )g2 (x3 , x4 )dx3 dx4

= hf1 , f2 ihg1 , g2 i. Finally, using the inversion formula for the two-dimensional Fourier transform, we have y y 1 x x f (u1 + , u2 + )g(u1 − , u2 − ) = 2 2 2 2 (2π)

Z R2

Wf,g (u1 , u2 ; v1 , v2 )e−i(xv1 +yv2 ) dv1 dv2 ,

and if we set τ1 = u1 + x/2, τ2 = u2 + y/2, σ1 = u1 − x/2, σ2 = u2 − y/2, we obtain f (τ1 , τ2 )g(σ1 , σ2 ) =

1 (2π)

Z R2

Wf,g (

τ1 + σ 1 τ2 + σ 2 , ; v1 , v2 )e−i[v1 (τ1 −σ1 )+v2 (τ2 −σ2 )] dv1 dv2 , 2 2

from which we obtain if τ1 = σ1 , τ2 = σ2 f (τ1 , τ2 )g(τ1 , τ2 ) =

1 (2π)

Z R2

Wf,g (τ1 , τ2 ; v1 , v2 )dv1 dv2 .

Corollary 3. If f2 = f1 = f and g2 = g1 = g, we have

Wf,g

L2 (R4 )

hence Wf

L2 (R4 )

= kf k2L2 (R2 ) .

= kf kL2 (R2 ) kgkL2 (R2 ) ;

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution  165

7.5

THE FOUR-DIMENSIONAL WIGNER DISTRIBUTION AND THE COUPLED FRACTIONAL FOURIER TRANSFORM

In this section, we present one of the main results of this chapter which is the relationship between the two-dimensional coupled fractional Fourier transform and the four-dimensional Wigner distribution. Recall that for a function of one variable, the Wigner distribution of the fractional Fourier transform WFθ is obtained from the Wigner distribution Wf of f by a twodimensional rotation with the angle θ. Likewise, we will show that the Wigner distribution of the two-dimensional fractional Fourier transform WFα,β is obtained from the Wigner distribution Wf of f by a four-dimensional rotation that is more general and profound than the one given by (7.1). It will be shown that the four-dimensional rotation has two planes of rotation, one with angle γ = (α + β)/2 and another with an angle δ = (α − β)/2. Remark. In this section, we adopt a slightly different version of the definition of the Wigner distribution in which the factor 1/2π in front of the integral is absent, the reason being that factor is already embedded in the constant d(γ) that appears in the definition of the two-dimensional factional Fourier transform. Theorem 37. [335] The Wigner distribution WFα,β of the two-dimensional coupled fractional Fourier transform Fα,β of a function f (x, y) is obtained from the Wigner distribution Wf of f by a four-dimensional rotation through the matrix    

A=

cos γ cos δ cos γ sin δ − sin γ cos δ − sin γ sin δ − cos γ sin δ cos γ cos δ sin γ sin δ − sin γ cos δ sin γ cos δ sin γ sin δ cos γ cos δ cos γ sin δ − sin γ sin δ sin γ cos δ − cos γ sin δ cos γ cos δ

   , 

where γ = (α + β)/2, δ(α − β)/2. The matrix A is a genuine four-dimensional rotation matrix. Proof Because the proof is relatively long, we will break it into 3 parts to make it easier for the reader to follow. In part one, we express WFα,β in terms of f rather than Fα,β . In part two, we relate WFα,β to Wf , and finally in part three, we show that WFα,β is obtained from Wf , by a four-dimensional rotation. Part One: The Wigner distribution of the two-dimensional fractional Fourier transform Fα,β (or F for short) of f (x, y) is given by Z

WFα,β (u1 , u2 ; v1 , v2 ) = Z

=

R2

ei(xv1 +yv2 ) dxdy n

x x y y Fα,β (u1 + , u2 + )Fα,β (u1 − , u2 − )ei(xv1 +yv2 ) dxdy 2 2 2 2 Z

R2

R2 2

d(γ)f (x1 , y1 ) o

× exp −a(x21 + y12 + U + V 2 ) + b(U x1 + V y1 ) + c(V x1 − U y1 ) dx1 dy1 ×

Z R2

d(γ)f (x2 , y2 ) n

o

× exp a(x22 + y22 + W 2 + Z 2 ) − b(W x2 + Zy2 ) − c(Zx2 − W y2 ) dx2 dy2 , (7.4)

166  Fractional Integral Transforms: Theory and Applications

where x 2 x W = u1 − 2 U = u1 +

y V = u2 + , 2 y Z = u2 − . 2

, ,

Thus, 1 (2π sin γ)2

WFα,β (u1 , u2 ; v1 , v2 ) = Z

×

2

ZR

×

R2

Z R2

ei(xv1 +yv2 ) dxdy

n

o

n

o

f (x1 , y1 ) exp −a(x21 + y12 + U 2 + V 2 ) + x1 (bU + cV ) + y1 (bV − cU ) dx1 dy1 f (x2 , y2 ) exp a(x22 + y22 + W 2 + Z 2 ) − x2 (bW + cZ) − y2 (bZ − cW ) dx2 dy2 . (7.5)

But since U 2 + V 2 = u21 + u22 + u1 x + u2 y + x2 /4 + y 2 /4, bU + cV

= bu1 + cu2 + bx/2 + cy/2,

bV − cU

= bu2 − cu1 + by/2 − cx/2,

and W 2 + Z 2 = u21 + u22 − u1 x − u2 y + x2 /4 + y 2 /4, bW + cZ = bu1 + cu2 − bx/2 − cy/2, bZ − cW

= bu2 − cu1 + cx/2 − by/2,

we have, by substituting these expressions into (7.5) and simplifying, that WFα,β (u1 , u2 ; v1 , v2 ) =

1 (2π sin γ)2

Z R2

ei(xv1 +yv2 ) e−2a(u1 x+u2 y)

× ex(bx1 /2+bx2 /2−cy1 /2−cy2 /2) ey(by1 /2+by2 /2+cx1 /2+cx2 /2) dxdy × ×

Z

n

2

ZR

o

f (x1 , y1 ) exp −a(x21 + y1 ) + x1 (bu1 + cu2 ) + y1 (bu2 − cu1 ) dx1 dy1 n

R2

o

f (x2 , y2 ) exp a(x22 + y22 ) − x2 (bu1 + cu2 ) − y2 (bu2 − cu1 ) dx2 dy2 . (7.6)

The first integral becomes Z

I1 =

n

R2

h

i

h

exp ix v1 − 2˜ au1 + ˜bη − c˜ζ + iy v2 − 2˜ au2 + ˜bη + c˜ζ

io

dxdy,

where η = (x1 + x2 )/2 , ζ = (y1 + y2 )/2. It is easy to show that I1 = (2π)2 δ(v1 − 2˜ au1 + ˜bη − c˜ζ)δ(v2 − 2˜ au2 + ˜bη + c˜ζ).

(7.7)

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution  167

where δ denotes the delta function. Changing the variables x2 = 2η − x1 , y2 = 2ζ − y1 in the third integral yields Z

I3 = 4

n h

R2

f (2η − x1 , 2ζ − y1 ) exp a (2η − x1 )2 + (2ζ − y1 )2

io

× exp {−(2η − x1 )(bu1 + cu2 ) − (2ζ − y1 )(bu2 − cu1 )} dηdζ. Let U = ˜bη − c˜ζ, so that





η = sin2 γ ˜bU + c˜V ,

V = c˜η + ˜bζ, 



and ζ = sin2 γ ˜bV − c˜U ,

and hence dηdζ = sin2 γdU dV. Therefore, I3 may take the form Z

I3 = 4



R2











f 2 sin2 γ ˜bU + c˜V − x1 , 2 sin2 γ ˜bV − c˜U − y1 exp {. . . } sin2 γdU dV,

where the exponential factor exp {· · · } in I3 , after some calculations, can be written as a product of two factors h1 (x1 , y1 , u1 , u2 ), and h2 (u1 , u2 , U, V ), where n

o

h1 (x1 , y1 , u1 , u2 ) = exp a(x21 + y12 ) + x1 (bu1 + cu2 ) + y1 (bu2 − cu1 ) , and n

o

h2 (u1 , u2 , U, V ) = exp 4a(η 2 + ζ 2 ) − 4ax1 η − 4ay1 ζ − 2η(bu1 + cu2 ) − 2ζ(bu2 − cu1 ) . After some calculations, we have n

o

h2 (u1 , u2 , U, V ) = exp 4a(η 2 + ζ 2 ) − 2η(bu1 + cu2 + 2ax1 ) − 2ζ(bu2 − cu1 + 2ay1 ) n

o

= exp 4a sin2 γ(U 2 + V 2 ) − 2 sin2 γ(˜bU + c˜V )(bu1 + cu2 + 2ax1 ) n

o

× exp −2 sin2 γ(˜bV − c˜U )(bu2 − cu1 + 2ay1 ) . Therefore; I3 can now be written as I3 = 4 sin2 γh1 (x1 , y1 , u1 , u2 ) 





Z R2

h2 (u1 , u2 , U, V ) 





× f 2 sin2 γ ˜bU + c˜V − x1 , 2 sin2 γ ˜bV − c˜U − y1 dU dV. Let us denote by A and B the expressions A = 2˜ au1 − v1 ,

B = 2˜ au2 − v2 ,

(7.8)

168  Fractional Integral Transforms: Theory and Applications

so that the integral I1 in Eq. (7.7) becomes I1 = (2π)2 δ(U − A)δ(V − B). By combining the integrals I1 , I3 we have 2

Z

2

4(2π) sin γh1 (x1 , y1 , u1 , u2 ) 



R2

h2 (u1 , u2 , U, V )







× f 2 sin2 γ ˜bU + c˜V − x1 , 2 sin2 γ ˜bV − c˜U − y1



× δ(U − A)δ(V − B)dU dV, which yields 4(2π)2 sin2 γh1 (x1 , y1 , u1 , u2 )h2 (u1 , u2 , A, B)       × f 2 sin2 γ ˜bA + c˜B − x1 , 2 sin2 γ ˜bB − c˜A − y1 . Similarly, h2 (u1 , u2 , A, B) can be simplified to h2 (u1 , u2 , A, B) = n





o

exp 4a sin2 γ A2 + B 2 − 2 sin2 γ(˜bA + c˜B)(bu1 + cu2 + 2ax1 ) n

o

× exp −2 sin2 γ(˜bB − c˜A)(bu2 − cu1 + 2ay1 ) = h3 (x1 , y1 , A, B)h4 (u1 , u2 , A, B), where n

o

h3 (x1 , y1 , A, B) = exp −4ax1 sin2 γ(˜bA + c˜B) − −4ay1 sin2 γ(˜bB − c˜A) and n





o

h4 (u1 , u2 , A, B) = exp 4a sin2 γ A2 + B 2 − 2 sin2 γ(˜bA + c˜B)(bu1 + cu2 ) n

o

× exp −2 sin2 γ(˜bB − c˜A)(bu2 − cu1 ) . By combining all the three integrals in (7.6 ), we have WFα,β (u1 , u2 , v1 , v2 ) = Z

1 × (2π sin γ)2 n

R2

o

f (x1 , y1 ) exp −a(x21 + y12 ) + x1 (bu1 + cu2 ) + y1 (bu2 − cu1 )

× 4(2π sin γ)2 h1 (x1 , y1 , u1 , u2 )h3 (x1 , y1 , A, B)h4 (u1 , u2 , A, B)       × f 2 sin2 γ ˜bA + c˜B − x1 , 2 sin2 γ ˜bB − c˜A − y1 dx1 dy1 Z

= 4

R2

f (x1 , y1 ) exp {2x1 (bu1 + cu2 ) + 2y1 (bu2 − cu1 )}

n

o

× exp −4ax1 sin2 γ(˜bA + c˜B) − 4ay1 sin2 γ(˜bB − c˜A) n

o

× exp 4a sin2 γ(A2 + B 2 ) − 2 sin2 γ(˜bA + c˜B)(bu1 + cu2 ) n

o

× exp −2 sin2 γ(˜bB − c˜A)(bu2 − cu1 ) 











× f 2 sin2 γ ˜bA + c˜B − x1 , 2 sin2 γ ˜bB − c˜A − y1 dx1 dy1 .

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution  169

Part Two: To relate WFα,β to Wf , we make the following change of variables in the last equation: x1 = u˜1 + x/2, y1 = u˜2 + y/2, where u˜1 = sin2 γ(˜bA + c˜B),

u˜2 = sin2 γ(˜bB − c˜A),

(7.9)

to obtain y x y x f u˜1 − , u˜2 − f u˜1 + , u˜2 + exp {· · · } dxdy, 2 2 2 2 R2  



Z

WFα,β (u1 , u2 ; v1 , v2 ) =



which is close to the Wigner distribution of f, except for the exponential factor. We now focus on simplifying the exponential factor exp {· · · } inside the integral. To this end, let σ = bu1 + cu2 ,

τ = bu2 − cu1

with σ ˜ and τ˜ have the same meaning as before, i.e., expressed in terms of ˜b and c˜. We have after some simplification exp {· · · } = exp {2σ(˜ u1 + x/2) + 2τ (˜ u2 + y/2) − 4a˜ u1 x1 − 4a˜ u2 y1 } n

× exp 4a sin2 γ(A2 + B 2 ) − 2˜ u1 σ − 2˜ u2 τ

o

n

o

= exp σx + τ y − 4a˜ u1 (˜ u1 + x/2) − 4a˜ u2 (˜ u2 + y/2) + 4a sin2 γ(A2 + B 2 ) n

o

= exp (σ − 2a˜ u1 )x + (τ − 2a˜ u2 )y − 4a(˜ u21 + u˜22 ) + 4a sin2 γ(A2 + B 2 ) . But in view of the fact that 



u˜21 + u˜22 = sin4 γ ˜b2 A2 + c˜2 B 2 + ˜b2 B 2 + c˜2 A2 , and that ˜b2 + c˜2 = csc2 γ, we have u˜21 + u˜22 = sin2 γ(A2 + B 2 ). Thus, the exponential factor is reduced to exp {· · · } = exp {(σ − 2a˜ u1 )x + (τ − 2a˜ u2 )y} = eix(˜σ−2˜au˜1 )+iy(˜τ −2˜au˜2 ) , and, hence, we finally have y x y x f u˜1 , u˜2 − WFα,β (u1 , u2 ; v1 , v2 ) = f u˜1 + , u˜2 + 2 2 2 2 2 R ix(˜ σ −2˜ au ˜1 )+iy(˜ τ −2˜ au ˜2 ) × e dxdy, Z

 





or equivalently x y x y i˜v1 x+i˜v2 y f u˜1 + , u˜2 + f u˜1 , u˜2 − e dxdy 2 2 2 2 2 R = Wf (˜ u1 , u˜2 ; v˜1 , v˜2 ), (7.10) Z

WFα,β (u1 , u2 ; v1 , v2 ) =



 



170  Fractional Integral Transforms: Theory and Applications

where v˜1 = σ ˜ − 2˜ au˜1 , and v˜2 = τ˜ − 2˜ au˜2 . Part Three: We now relate the new variables u˜1 , u˜2 , v˜1 , v˜2 to the original variables u1 , u2 , v1 , v2 . Using the values of a, b, c, d, and A, B given by Eqs. (6.22), (6.23) and (7.8), we have from (7.9) u˜1 = sin2 γ(˜bA + c˜B)   sin δ cos δ 2 (2˜ au1 − v1 ) + (2˜ au2 − v2 ) = sin γ sin γ sin γ = sin γ cos δ(u1 cot γ − v1 ) + sin γ sin δ(u2 cot γ − v2 ) = (cos γ cos δ)u1 + (cos γ sin δ)u2 − (sin γ cos δ)v1 − (sin γ sin δ)v2 . (7.11) Similarly, we have u˜2 = (− cos γ sin δ)u1 + (cos γ cos δ)u2 + (sin γ sin δ)v1 − (sin γ cos δ)v2 . As for v˜1 , we have, in view of the relation 2˜ au˜1 = cot γ(sin2 γ)(˜bA + c˜B) = cos γ sin γ(˜bA + c˜B), that h

i

v˜1 = σ ˜ − 2˜ au˜1 = ˜bu1 + c˜u2 − cos γ sin γ ˜b(2˜ au1 − v1 ) + c˜(2˜ au2 − v2 ) = u1˜b [1 − cos γ sin γ cot γ] + u2 c˜[1 − cos γ sin γ cot γ] h i + v1 ˜b cos γ sin γ + v2 [˜ c cos γ sin γ]

cos δ 2 sin δ sin γ + u2 sin2 γ + v1 cos γ cos δ + v2 cos γ sin δ sin γ sin γ = (sin γ cos δ)u1 + (sin γ sin δ)u2 + (cos γ cos δ)v1 + (cos γ sin δ)v2 .

= u1

Similarly, one can show that v˜2 = (− sin γ sin δ)u1 + (sin γ cos δ)u2 − (cos γ sin δ)v1 + (cos γ cos δ)v2 . Now if we denote by U T and U˜ T the row vectors (u1 , u2 , v1 , v2 ) and (˜ u1 , u˜2 , v˜1 v˜2 ), respectively, we can write the transformation relation in the form U˜ = AU, where    

A=

cos γ cos δ cos γ sin δ − sin γ cos δ − sin γ sin δ − cos γ sin δ cos γ cos δ sin γ sin δ − sin γ cos δ sin γ cos δ sin γ sin δ cos γ cos δ cos γ sin δ − sin γ sin δ sin γ cos δ − cos γ sin δ cos γ cos δ

which is in the form     

A −B C −D



B −C −D A D −C   , D A B  C −B A

   , 

The Two-Dimensional Fractional Fourier Transform and The Wigner Distribution  171

with A = cos γ cos δ, B = cos γ sin δ, C = sin γ cos δ, D = sin γ sin δ. In addition, one can verify that A2 + B 2 + C 2 + D2 = cos2 γ cos2 δ + cos2 γ sin2 δ + sin2 γ cos2 δ + sin2 γ sin2 δ = cos2 γ + sin2 γ = 1, that is, all the rows and columns are unit vectors. The matrix A may be written as   cos γ  A=  

sin γ

cos δ − sin δ cos δ − sin δ

!

sin δ cos δ ! sin δ cos δ

cos δ − sin γ − sin δ cos δ cos δ − sin δ

! 

sin δ cos δ ! sin δ cos δ

  ,  

which shows that the Matrix A comprises two rotations in two planes, one counterclockwise with angle δ in one plane and one clockwise with angle γ in the second plane. The matrix A is an orthogonal matrix because    

AT =  and hence

A −B C −D B A D C −C D A −B −D −C B A    

AT A = 

K 0 0 H 0 K H 0 0 H K 0 H 0 0 K

   , 

   , 

where K = A2 + B 2 + C 2 + D2 = 1, and H = 2(BC − AD) = 2 [(cos γ sin δ)(sin γ cos δ) − (cos γ cos δ)(sin γ sin δ)] = 0, that is AT A = I and similarly AAT = I. More importantly, the matrix A can be written as a product of two orthogonal matrices A = ML MR , where

   

MR =  and

   

ML = 

cos δ sin δ 0 0 − sin δ cos δ 0 0 0 0 cos δ sin δ 0 0 − sin δ cos δ



cos γ 0 − sin γ 0 0 cos γ 0 − sin γ sin γ 0 cos γ 0 0 sin γ 0 cos γ



   

  . 

which verifies that A is indeed a four-dimensional rotation matrix; see (7.2) and (7.3).

CHAPTER

8

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations

8.1

INTRODUCTION AND NOTATION

In this chapter, we derive more properties and extensions of the coupled fractional Fourier transform (CFrFT), and then introduce the short-time coupled fractional Fourier transform (SCFrFT) and some of its properties. The chapter is concluded by a brief discussion of an uncertainty priciple for the CFrFT. We begin by introducing some of the notation, definitions, and properties that will be used in the sequel. Throughout this chapter, we use the notation x = (x1 , x2 ) ∈ R2 , and for any x, y ∈ R2 , the scalar product of x and y is denoted by x · y. The standard Fourier transform of f ∈ L1 (R2 ) 1 R −it·x dt, ∀x ∈ R2 and the norm of f ∈ Lp (R2k ) is defined is defined by fˆ(x) = 2 f (t)e 2π R by 1/p  Z 1 p |f (x)| dx , where p, k ∈ {1, 2}. kf kp = (2π)k R2k Definition 34 ([335]). Let α, β ∈ R, such that α + β < 2πZ. The coupled fractional Fourier transform CFrFT of f ∈ L1 (R2 ) is defined by Fα,β (f )(u) =

Z R2

f (x)Kα,β (x, u) dx,

(8.1)

where Kα,β (x, u) is given by Eq. (6.21). The CFrFT of f ∈ L2 (R2 ) is defined by Fα,β (f ) = L2 - lim Fα,β (fn ), n→∞

where (fn ) is a sequence in L1 (R2 ) ∩ L2 (R2 ) such that fn → f in L2 (R2 ) as n → ∞. Using the notations 2

2

E(x) = eakxk and E −1 (x) = e−akxk , ∀x ∈ R2 , DOI: 10.1201/9781003089353-8

(8.2) 172

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations  173

the CFrFT (8.1) can be written in terms of the Fourier transform as follows. Fα,β (f )(u) = 2π d(γ)E −1 (u)(f E −1ˆ) (−(˜bu1 + c˜u2 ), −(˜bu2 − c˜u1 )),

(8.3)

where ˜b = b/i, c˜ = c/i.

8.2

PROPERTIES OF THE COUPLED FRACTIONAL FOURIER TRANSFORM

Let A=

cos δ − sin δ sin δ cos δ

!

and T =

,

t1 t2

!

,

and let us denote the transpose of a matrix B by B T . We derive some elementary properties of CFrFT. Theorem 38. [155] The CFrFT satisfies the following properties. 1. Time delay: Let f ∈ L1 (R2 ) and v = cos γ(AT)T = cos γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ), then Fα,β (Tt f )(u) = E −1 (u)E −1 (t)E(u − v.) × exp{(bu1 + cu2 )t1 + (bu2 − cu1 )t2 }Fα,β (f )(u − v). 2. Frequency shift: If f ∈ L1 (R2 ) and h(x) = f (x)e−ix·t , then Fα,β (h)(u) = E −1 (u)E(u − w)Fα,β (f )(u − w),

(8.4)

where w = sin γ(AT)T = sin γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ). Proof 1. From the definition of Fα,β , we have Fα,β (Tt f )(u) =

Z 2

f (y − t)Kα,β (y, u)dy

ZR

=

R2

f (x)Kα,β (x + t, u)dx.

But Kα,β (x + t, u) = d(γ)E −1 (u)E −1 (t)E −1 (x)E −1 (t) exp {−2a(x · t)} × exp {b [u1 (x1 + t1 ) + u2 (x2 + t2 )] + c [u2 (x1 + t1 ) − u1 (x2 + t2 )]} = d(γ)E −1 (u)E −1 (t)E −1 (x) exp {−2a(x · t)} × exp {b(u1 t1 + u2 t2 ) + c(t1 u2 − t2 u1 )} × exp {b(u1 x1 + u2 x2 ) + c(u2 x1 − u1 x2 )} .

(8.5)

174  Fractional Integral Transforms: Theory and Applications

The last term can be rewritten as b(x1 u1 + x2 u2 ) + c(x1 u2 − x2 u1 ) = b [x1 (u1 − v1 ) + x2 (u2 − v2 )] + c [x1 (u2 − v2 ) − x2 (u1 − v1 )] × x1 [bv1 + cv2 ] + x2 [bv2 − cv1 ]

(8.6)

and in view of the fact that and [bv2 − cv1 ] = t2 cot γ = 2at2 ,

[bv1 + cv2 ] = t1 cot γ = 2at1 , we have

b(x1 u1 + x2 u2 ) + c(x1 u2 − x2 u1 ) = b [x1 (u1 − v1 ) + x2 (u2 − v2 )] + c [x1 (u2 − v2 ) − x2 (u1 − v1 )] × 2ax1 t1 + 2ax2 t2 = 2a(x · t). Hence, by substituting this last expression into (8.5), we obtain Kα,β (x + t, u) = d(γ)E −1 (u)E −1 (t)E −1 (x) × exp {b(u1 t1 + u2 t2 ) + c(t1 u2 − t2 u1 )} × exp {b [x1 (u1 − v1 ) + x2 (u2 − v2 )] + c [x1 (u2 − v2 ) − x2 (u1 − v1 )]} = E −1 (u)E −1 (t)E(u − v) exp {b(u1 t1 + u2 t2 ) + c(t1 u2 − t2 u1 )} Kα,β (x, u − v) which completes the proof of part (1). 2. Let f ∈ L1 (R2 ) and w = sin γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ), and h(x) = f (x)e−ix·t . Then Fα,β (h)(u) =

Z R2

f (x)e−ix·t Kα,β (x, u)dx.

We have Kα,β (x, u)e−ix·t = d(γ)E −1 (u)E −1 E(x) × exp {b(x1 u1 + x2 u2 ) + c(x1 u2 − x2 u1 ) − i(x · t)} .

(8.7)

But {b(x1 u1 + x2 u2 ) + c(x1 u2 − x2 u1 ) − i(x · t)} = {b(x1 (u1 − w1 ) + x2 (u2 − w2 )) + c(x1 (u2 − w2 ) − x2 (u1 − w1 ) − i(x · t)} × x1 (bw1 + cw2 ) + x2 (bw2 − cw1 ), and (bw1 + cw2 ) = it1 ,

and (bw2 − cw1 ) = it2 ,

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations  175

hence {b(x1 u1 + x2 u2 ) + c(x1 u2 − x2 u1 ) − i(x · t)} = b [x1 (u1 − w1 ) + x2 (u2 − w2 )] + c [x1 (u2 − w2 ) − x2 (u1 − w1 )] . By substituting this last expression into (8.7), we obtain Kα,β (x, u) = E −1 (u)E(u − w)Kα,β (x, u − w), which implies (8.4). The following theorem and its corollary will be used in establishing the uncertainty principle for the CFrFT. Theorem 39. Let Pk be defined by Pk (x) = xk for x = (x1 , x2 ) ∈ R2 . If f, P1 f, P2 f ∈ L1 (R2 ), and γ , nπ, then ∂ [(Fα,β (f ))(u)] = (−i cot γ)u1 Fα,β (f ) + b Fα,β (P1 f ) − c Fα,β (P2 f ) ∂u1

(8.8)

∂ [(Fα,β (f ))(u)] = (−i cot γ)u2 Fα,β (f ) + b Fα,β (P2 f ) + c Fα,β (P1 f ). ∂u2

(8.9)

and

Proof The proof follows easily from the observation that taking the partial derivatives of the kernel in Eq. (6.21) leads to ∂ Kα,β (x, u) = (−2au1 + bx1 − cx2 ) Kα,β (x, u), ∂u1 ∂ Kα,β (x, u) = (−2au2 + bx2 + cx1 ) Kα,β (x, u), ∂u2 where a, b, c, are given by Eqs. (6.22) and (6.23). By solving the system of linear equations (8.8) and (8.9) for the variables Fα,β (P1 f ) and Fα,β (P2 f ), we obtain the following corollary. Corollary 4. Let Dk denote the partial derivative with respect to k th variable, k = 1, 2. Under the hypothesis of Theorem 39, we have 



Fα,β (P1 f ) = −i sin γ sin δD2 (Fα,β (f )) + cos δD1 (Fα,β (f )) + cos γ [sin δP2 + (cos δ)P1 ] Fα,β (f ), 

(8.10) 

Fα,β (P2 f ) = −i sin γ cos δD2 (Fα,β (f )) − sin δD1 (Fα,β (f )) + cos γ [cos δP2 − (sin δ)P1 ] Fα,β (f ).

(8.11)

For the interested reader, several other properties of the coupled fractional Fourier transform can be found in [335, 337].

176  Fractional Integral Transforms: Theory and Applications

8.3

CONVOLUTION AND EXTENSION OF THE COUPLED FRACTIONAL FOURIER TRANSFORM

We now extend the coupled fractional Fourier transform to L2 (R2 ), and then show that it is a unitary operator on L2 (R2 ). Furthermore, we will derive its convolution and inversion formulas. Theorem 40. If f, g ∈ L1 (R2 ) ∩ L2 (R2 ), then hFα,β (f ), Fα,β (g)i = hf, gi. Proof Let f, g ∈ L1 (R2 ) ∩ L2 (R2 ). Using (8.3), we get hFα,β (f ), Fα,β (g)i = =

1 (Fα,β (f ))(u, v)(Fα,β (g))(u, v)dudv 2π R2 Z h i 1 2π d(γ)E −1 (u, v)(f E −1ˆ) (U, V ) 2π R2 Z





2π d(γ)E −1 (u, v)(gE −1ˆ) (U, V )

dudv

(where U = −(˜bu + c˜v) and V = −(˜bv − c˜u) ) =

1 2π sin2 γ

Z R2

(f E −1ˆ) (U, V )(gE −1ˆ) (U, V )dudv.

Using the change of variables u = −sin2 γ(˜bw1 − c˜w2 ) and v = − sin2 γ(˜ cw1 + ˜bw2 ), the above equation can be rewritten as hFα,β (f ), Fα,β (g)i =

= =

1 (f E −1ˆ) (w1 , w2 )(gE −1ˆ) (w1 , w2 ) sin2 γdw1 dw2 2π sin2 γ R2 (by Parseval’s identity for classical Fourier transform) Z 1 (f E −1 )(z1 , z2 )(gE −1 )(z1 , z2 )dz1 dz2 2π R2 Z 1 f (z1 , z2 )g(z1 , z2 )dz1 dz2 = hf, gi. 2π R2 Z

Hence, the theorem follows. From the previous theorem, we conclude that Fα,β is an isometry from L1 (R2 )∩L2 (R2 ) into L2 (R2 ). Definition 35. The CFrFT of f ∈ L2 (R2 ) is defined by Fα,β (f ) = L2 - lim Fα,β (fn ), n→∞

where (fn ) is a sequence in L1 (R2 ) ∩ L2 (R2 ) such that fn → f in L2 (R2 ) as n → ∞. Here L2 - lim Fα,β (fn ) means the limit of the sequence ( Fα,β (fn ) ) in L2 (R2 ) with respect to n→∞ the metric induced by the norm k · k2 . The existence and uniqueness of L2 - lim Fα,β (fn ) follows from the identity n→∞

kFα,β (f )k2 = kf k2 , ∀f ∈ L1 (R2 ) ∩ L2 (R2 ),

(8.12)

which follows from Theorem 40. The result (8.12) holds for every f ∈ L2 (R2 ) by the density of L1 (R2 ) ∩ L2 (R2 ) in L2 (R2 ).

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations  177

Definition 36. [337] For f ∈ Lp (R2 ), p = 1, 2, g ∈ L1 (R2 ), we define f ~α,β g (x) = 2πd(γ)E(x)[f E −1 ∗ gE −1 ](x), 

where ∗ is the convolution defined by (f ∗ g)(x1 , x2 ) =

1 2π

Z R2

f (x1 − y1 , x2 − y2 )g(y1 , y2 )dy1 dy2 .

Lemma 4. If f ∈ Lp (R2 ) and g ∈ L1 (R2 ), then f ~α,β g ∈ Lp (R2 ) and kf ~α,β gkp ≤ | csc γ| kf kp kgk1 , where p = 1, 2. Proof Using the well known result kf ∗ gkp ≤ kf kp kgk1 , the proof of the lemma follows. Theorem 41 (Convolution theorem for CFrFT). If f ∈ Lp (R2 ), p = 1, 2 and g ∈ L1 (R2 ) then Fα,β (f ~α,β g)(u) = E(u)Fα,β (f )(u)Fα,β (g)(u). Proof For the case f, g ∈ L1 (R2 ), the convolution theorem is proved in [337]. Suppose f ∈ L2 (R2 ) and g ∈ L1 (R2 ), we choose a sequence (fn ) in L1 (R2 ) ∩ L2 (R2 ) such that fn → f in L2 (R2 ). Applying Lemma 4, we have fn ∗ g ∈ L1 (R2 ) ∩ L2 (R2 ) and fn ∗ g → f ∗ g in L2 (R2 ), and therefore; Fα,β (f ~α,β g)(u) = L2 - lim Fα,β (fn ~α,β g)(u) n→∞

2





= L - lim E(u)Fα,β (fn )(u)Fα,β (g)(u) n→∞

= E(u)(Fα,β (f ))(u)(Fα,β (g))(u). Hence, the theorem follows. Now we state the inversion formula for CFrFT. Theorem 42 (L1 - inversion theorem for CFrFT). ([337, p.563]) If f, Fα,β (f ) ∈ L1 (R2 ) then Z

f (x, y) = d(−γ)

R2

Fα,β (f )(u, v)

× exp{a(γ)(x2 + y 2 + u2 + v 2 ) − b(xu + yv) − c(xv − yu)}dudv Z

=

R2

Fα,β (f )(u, v)K−α,−β (u, v, x, y)dudv, a.e.

The inversion formula follows from the relation (F−α,−β ◦ Fα,β )(f ) = f .

178  Fractional Integral Transforms: Theory and Applications

8.4

SHORT-TIME COUPLED FRACTIONAL FOURIER TRANSFORM

In this section, we introduce the short-time coupled fractional Fourier transform, also called windowed coupled fractional Fourier transform, derive its inversion formula, and characterize its range [155]. Definition 37. Let 0 , g ∈ L2 (R2 ) be fixed, and α, β ∈ R such that α + β , 2nπ, where n ∈ Z. For f ∈ L2 (R2 ), the short-time coupled fractional Fourier transform (SCFrFT) is defined by Z SFg,α,β (f )(z, ν) =

R2

f (x)g(x − z)Kα,β (x, ν)dx.

The SCFrFT is also represented as follows: SFg,α,β (f )(z, ν) = Fα,β (f Tz g)(ν), ∀z ∈ R2 ,

(8.13)

where Tz g(x) = g(x − z), ∀x ∈ R2 and SFg,α,β (f )(z, ν) = 2πhf, Mν,α,β Tz (g)i, where Mν,α,β (h)(x) = h(x)Kα,β (x, ν), ∀x ∈ R2 , for any h ∈ L2 (R2 ). Lemma 5 (The density principle). ([114, p.329]) Let B1 , B2 be Banach spaces and X be a dense subspace of B1 . If A : X → B2 is a linear operator that satisfies the inequality kAf k ≤ Ckf k, ∀f ∈ X

(8.14)

then (8.14) holds for all f ∈ B1 and consequently A extends to a bounded operator from B1 to B2 . Theorem 43 (Parseval’s formula). For f1 , f2 ∈ L2 (R2 ), and 0 , g ∈ L2 (R2 ), we have hSFg,α,β (f1 ), SFg,α,β (f2 )iL2 (R4 ) = kgk22 hf1 , f2 iL2 (R2 ) . R2 .

Proof First assume that g ∈ L2 (R2 ) ∩ L∞ (R2 ), so that f1 Tz g, f2 Tz g ∈ L2 (R2 ), ∀ z ∈ The CFrFT Parseval’s formula gives hFα,β (f1 Tz g), Fα,β (f2 Tz g)iL2 (R2 ) = hf1 Tz g, f2 Tz giL2 (R2 ) , ∀z ∈ R2 ,

for all f1 , f2 ∈ L2 (R2 ). By direct computation of the inner product, we get hSFg,α,β (f1 ), SFg,α,β (f2 )iL2 (R4 ) 1 SFg,α,β (f1 )(z, ν)SFg,α,β (f2 )(z, ν)dνdz 4π 2 R2 R2  Z Z 1 Fα,β (f1 Tz g)(ν)Fα,β (f2 Tz g)(ν)dν dz 4π 2 R2 R2  Z Z 1 g)(x)(f T g)(x)dx dz (f T 2 z 1 z 4π 2 R2 R2  Z Z 1 f (x)g(x − z)f (x)g(x − z)dx dz 1 2 4π 2 R2 R2 Z  Z 1 f (x)f (x) g(x − z)g(x − z)dz dx 1 2 4π 2 R2 R2 (by Fubini’s theorem) Z

= = = = =

Z

= kgk22 hf1 , f2 iL2 (R2 ) .

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations  179

Hence this theorem follows for the case g ∈ L2 (R2 ) ∩ L∞ (R2 ). Using the density principle ([114, p. 329]), we extend the result to the case g ∈ L2 (R2 ). Theorem 44 (Inversion formula for SCFrFT). Let g ∈ L2 (R2 ) with kgk2 , 0 and f ∈ L2 (R2 ), then 1 f= 2πkgk22

Z

Z

R2 R2

SFg,α,β (f )(z, ν)Mν,α,β (Tz g)dz dν,

(8.15)

weakly in L2 (R2 ). Also, if SFg,α,β (f ) ∈ L1 (R4 ) then f (x) =

1 2πkgk22

Z

Z

R2 R2

SFg,α,β (f )(z, ν)g(x − ν)K−α,−β (ν, x)dz dν, a.e

(8.16)

Proof By Theorem 43, kSFg,α,β f k2 = kf k2 kgk2 and hence SFg,α,β (f ) ∈ L2 (R4 ). Therefore, the vector valued integral ϕ=

1 2πkgk22

Z

Z

R2 R2

SFg,α,β (f )(z, ν)Mν,α,β (Tz g)dz dν

is well defined in L2 (R2 ). Hence, for any h ∈ L2 (R2 ) and by using Theorem 43, we get

hϕ, hi = = = =

1 SFg,α,β (f )(z, ν)Mν,α,β (Tz g)(x)dz dν h(x)dx 2 4π kgk22 R2 R2 R2 Z Z 1 SFg,α,β (f )(z, ν)hMν,α,β (Tz g), hidzdν (using [114, p.44]) 2πkgk22 R2 R2 Z Z 1 SFg,α,β (f )(z, ν)SFg,α,β (h)(z, ν)dz dν 4π 2 kgk22 R2 R2 1 hSFg,α,β (f ), SFg,α,β (h)iL2 (R4 ) = hf, hi, kgk22 Z

Z



Z

which implies ϕ = f, a.e. If SFg,α,β (f ) ∈ L1 (R4 ), then using the fact that Kα,β (x, ν) = K−α,−β (ν, x), we get that (8.16) is the integral representation of (8.15). Motivated by the characterization of range of a linear transformation by the reproducing kernel Hilbert space [21, 256, 257], we obtain the following theorem. Theorem 45 (Characterization of range of SFg,α,β ). Let Φ ∈ L2 (R4 ). Then Φ ∈ SFg,α,β (L2 (R2 )) if and only if 1 Φ(z , ν ) = kgk22 0

0

Z

Z

R2 R2

Φ(z, ν)hMν,α,β Tz g, Mν 0 ,α,β Tz0 gi dz dν.

(8.17)

Proof If Φ ∈ SFg,α,β L2 (R2 ) , then there exists f ∈ L2 (R2 ) such that SFg,α,β f = Φ. 

180  Fractional Integral Transforms: Theory and Applications

Using the inversion formula for scfrft, (see Eq. (8.15)), we have Φ(z0 , ν 0 ) = SFg,α,β f (z0 , ν 0 ) = 2πhf, Mν 0 ,α,β Tz0 gi Z

=

R2

f (x)Mν 0 ,α,β Tz0 g(x)dx 1 2πkgk22

Z

= × =

=

R2

Z

!

Z

R2 R2

SFg,α,β (f )(z, ν)Mν,α,β (Tz g)dz dν

Mν 0 ,α,β Tz0 g(x)dx Z Z 1 SFg,α,β f (z, ν)hMν,α,β Tz g, Mν 0 ,α,β Tz0 gi dz dν kgk22 R2 R2 (Using [114, p.43]) Z Z 1 Φ(z, ν)hMν,α,β Tz g, Mν 0 ,α,β Tz0 gi dz dν. kgk22 R2 R2

Conversely, we assume that Φ satisfies (8.17). We define Z Z 1 f= Φ(z, ν)Mν,α,β (Tz g)dz dν. 2πkgk22 R2 R2 From [114, p.43], it follows that f is well defined and f ∈ L2 (R2 ). Then SFg,α,β f (z0 , ν 0 ) =

Z R2

f (x)Mν 0 ,α,β Tz0 g(x)dx

Z

= =

R2

1 kgk22

!

1 2πkgk22

Z

Z

Φ(z, ν)hMν,α,β Tz g, Mν 0 ,α,β Tz0 gi dz dν = Φ(z0 , ν 0 ).

R2

Z R2

Z

R2 R2

Φ(z, ν)Mν,α,β (Tz g)dz dν Mν 0 ,α,β Tz0 g(x)dx

This completes the proof.

8.5

PROPERTIES OF THE SHORT-TIME COUPLED FRACTIONAL FOURIER TRANSFORM

In this section, we derive some elementary properties of the short-time coupled fractional Fourier transform (SCFrFT). Theorem 46. The SCFrFT satisfies the following properties: Let f, f1 , f2 ∈ L2 (R2 ), 1. Linearity: SFg,α,β (af1 + bf2 )(z, ν) = aSFg,α,β (f1 )(z, ν) + bSFg,α,β (f2 )(z, ν), a, b ∈ C. 2. Time delay: SFg,α,β (Tt f )(z, ν) = E −1 (ν)E −1 (t)E(ν − v) × exp{(bν1 + cν2 )t1 + (bν2 − cν1 )t2 }SFg,α,β (f )(z − t, ν − v), where Tt f (x) = f (x − t) and v = cos γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ).

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations  181

3. Frequency shift: If h(x) = f (x)e−ix·t , then SFg,α,β (h)(z, ν) = E(w)e2aν·w SFg,α,β (f )(z, ν − w), where w = sin γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ). 4. Additive property: If α1 + β1 , α2 + β2 , (α2 + α1 ) + (β2 + β1 ) < 2πZ, and SFg,α1 ,β1 (f )(z, ·) ∈ L2 (R2 ), ∀z ∈ R2 , then Fα2 ,β2 (SFg,α1 ,β1 (f )(z, ·))(u) = SFg,α2 +α1 ,β2 +β1 (f )(z, u), 5. If f, g ∈ L1 (R2 ) ∩ L2 (R2 ), then Z R2

where the C =

R

SFg,α,β (f )(z, ν)dz = CFα,β (f )(ν),

R2 g(y)dy.

Proof 1. We easily observe that SCFrFT is linear. 2. Using Theorem 38 (1), we get SFg,α,β (Tt f )(z, ν) = Fα,β (Tt f Tz g)(ν) = Fα,β ((f Tz−t g))(ν) = E −1 (ν)E −1 (t)E(ν − v) exp{(bν1 + cν2 )t1 + (bν2 − cν1 )t2 } ×Fα,β (f Tz−t g)(ν − v), (where v = cos γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ) ) = E

−1

(ν)E −1 (t)E(ν − v) exp{(bν1 + cν2 )t1 + (bν2 − cν1 )t2 }

×SFg,α,β (f )(z − t, ν − v). 3. Using Theorem 38 (2), we get SFg,α,β (h)(z, ν) = Fα,β (hTz g)(ν) = E(w)e−2aν·w Fα,β (f Tzg )(ν − w) (where w = sin γ(t1 cos δ − t2 sin δ, t1 sin δ + t2 cos δ)) = E(w)e−2aν·w SFg,α,β (f )(z, ν − w). 4. Let α1 + β1 , α2 + β2 , (α2 + α1 ) + (β2 + β1 ) < 2πZ. If g ∈ L2 (R2 ) ∩ L∞ (R2 ) is such that SFg,α1 ,β1 (f )(z, ·) ∈ L2 (R2 ), then using inversion formula of CFrFT, we get Fα2 ,β2 (SFg,α1 ,β1 (f )(z, ·))(ν) = Fα2 ,β2 (Fα1 ,β1 (f Tz g))(ν) = Fα2 +α1 ,β2 +β1 (f Tz g)(ν) = SFg,α2 +α1 ,β2 +β1 (f )(z, ν). Hence this result follows for the case g ∈ L2 (R2 ) ∩ L∞ (R2 ). Using the density principle ([114, p.329]), we get this result for the case g ∈ L2 (R2 ).

182  Fractional Integral Transforms: Theory and Applications

5. By integrating SFg,α,β (f )(z, ν) with respect to z, we get Z R2

Z

Z

SFg,α,β (f )(z, ν)dz =

R2



R2

=

f (x)g(x − z)Kα,β (x, ν) dx dz 

Z

Z R2

f (x)

R2

g(x − z)dz Kα,β (x, ν) dx

= C(Fα,β (f ))(ν),

where C =

R

R2 g(y)dy.

Hence, the theorem follows.

8.6

UNCERTAINTY PRINCIPLE

Uncertainty principles in the fractional Fourier transform domains were obtained in [216, 277]. In this section, we derive an uncertainty relation for the coupled fractional Fourier transform. These results generalize those for the Fourier transform when α = β = π/2. First, let us introduce some notation and definitions that are required to discuss the uncertainty principle. Definition 38. Let f ∈ L2 (R2 ) be such that Pk f, Pk fˆ ∈ L2 (R2 ), for k = 1, 2; see theorem 39 . We define (i) The spread in the time domain ∆xf2

1 = 2π

where xf0 = (x01 , x02 ) and x0k =

Z R2

kx − x0 k2 |f (x)|2 dx,

R 1 x |f (x)|2 dx. 2 2πkf k2 R2 k

(ii) The spread in the frequency domain ∆wf2

1 = 2π

where wf0 = (w10 , w20 ) and wk0 =

Z R2

kw − w0 k2 |fˆ(w)|2 dw,

R 1 w |fˆ(w)|2 dw. 2πkf k22 R2 k

(iii) The spread in the CFrFT domain 2 ∆uα,β =

1 2π

Z R2

ku − uα,β,0 k2 |Fα,β (f )(u)|2 du,

where uα,β,0 = (uα,β,0 , uα,β,0 ) and 1 2 uα,β,0 = k

1 2πkf k22

Z R2

uk |Fα,β (f )(u)|2 du.

An uncertainty principle for the CFrFT is stated in the next theorem whose proof can be found in [155].

Short-Time Coupled Fractional Fourier Transform and Uncertainty Relations  183

Theorem 47 (Uncertainty principle for CFrFT). Assume that f is a real valued function and f ∈ L2 (R2 ). If Pk f, Pk fˆ ∈ L2 (R2 ), for k = 1, 2, then 2 2 ∆uα ∆uα ≥ (kf k22 + kwf0 k2 ∆xf2 )kf k22 sin2 (γ1 − γ2 ) 1 ,β1 2 ,β2

+[ (sin γ1 sin γ2 )(∆wf2 + kwf0 k2 kf k2 ) + (cos γ1 cos γ2 )∆xf2 ]2 , where γk =

αk +βk , 2

(8.18)

for k = 1, 2. In particular, we have 2 2 ∆uα ∆uα ≥ kf k42 sin2 (γ1 − γ2 ). 1 ,β1 2 ,β2

(8.19)

For uncertainty principles for the short-time coupled fractional Fourier transform (SCFrFT), we refer the reader to [155].

CHAPTER

9

The Linear Canonical Transform (LCT)

9.1

INTRODUCTION AND HISTORICAL OVERVIEW

The linear canonical transform (LCT) , which is a generalization of several integral transforms, including the fractional Fourier transform, is an integral transform that depends on four parameters (a, b, c, d) with ad − bc = 1. More generally, the set of real canonical transforms may be viewed as a group of unitary transformations acting on L2 (R) and it is a representation of the special linear group SL(2, R) of unimodular matrices (

SL(2, R) =

!

a b : c d

)

a, b, c, d ∈ R such that ad − bc = 1 .

The transform has been the focus of many research articles in recent years because of its applications in optics, radar system analysis and signal processing. To the best of our knowledge the first appearance of the linear canonical transform in the literature was in the work of S. Collins in 1970 [78] in which he studied the propagation of coherent light through lens system, as well as, the relationship between diffraction theory and ray optics. He derived an integral transform relating the field of the input plane to the field of the output plane and in which the kernel of the integral transform is a function of the elements of the ray tracing matrix. It turned out that that matrix is the same as the matrix associated with the linear canonical transform. It should be noted that some special cases of the linear canonical transform appeared prior to the work of Collins, such as the transform introduced by V. Bargmann in 1961 [26] and which is now called the Bargmann transform . But the transform was formally introduced in 1971 by Moshinsky and Quesne in the context of unitary representations in quantum mechanics [213, 212] and they were the ones who referred to it as the Linear Canonical Transform.

9.2

DEFINITIONS AND SPECIAL CASES OF THE LINEAR CANONICAL TRANSFORM

Below we give a formal definition of the linear canonical transform DOI: 10.1201/9781003089353-9

184

The Linear Canonical Transform (LCT)  185

Definition 39. Let f ∈ L1 (R) L2 (R) and a, b, c, d be four real parameters such that ad − bc = 1. The linear canonical transform of f associated with the matrix T

!

a b M= , c d where det M = |M | = 1, is defined as   √1

n

f (x) exp 2bi ax2 − 2xt + dt2 2πib R LM [f ](t) = FM (t) = (eict2 /2a / √a)f (t/a) R



o

dx

b,0 b = 0.

In particular, when b = 0 and a = 1, we obtain that the transformation corresponding to the identity matrix !

1 0 M= , 0 1 is the identity transformation LM [f ](t) = f. This suggests that the inverse LCT is given by 1 f (x) = √ −2πib

i −i h 2 FM (t) exp dt − 2xt + ax2 dt, 2b R 

Z



which corresponds to the matrix !

a b d −b , which is the inverse of the matrix M = M −1 = c d −c a

!

Because the case where b = 0 is not very obvious, we will provide a proof for it. Let us denote the transformation Kernel by KM (x, t). Hence, we have i 1 i h 2 √ exp ax + dt2 − 2xt 2b 2πib    ia 1 t d 1 √ exp (x − )2 + t2 ( − 2 ) 2b a a a 2πib 

KM (x, t) = =

(



= =

1 ict2 ia t √ exp exp (x − )2 2a 2b a 2πib



(

Finally, if we set w =

p

)

1 t ia it2 ad − 1 √ (x − )2 + ( ) exp 2b a 2b a 2πib 

)





2ib/a and use the fact that 2

2

e−x /w lim √ = δ(x), w→0 πw we obtain

see Eq. (1.26), 2

eict /2a √ δ(x − t/a). b→0 a As special cases of the linear canonical transform, we obtain other integral transforms which we list together with their corresponding matrices: lim KM (x, t) =

186  Fractional Integral Transforms: Theory and Applications

1. The Fourier transform !

!

0 −1 M= , or 1 0

0 1 M= , −1 0

depending on whether the kernel of the Fourier transform is taken as eixt or e−ixt . 2. The fractional Fourier transform, !

cos θ − sin θ M= , sin θ cos θ 3. The Bargmann transform , −i ! √ 2 , 1 √ 2

1 √ 2 −i √ 2

M= 4. The Weierstrass transform ,

!

1 −iσ M= , 0 1 5. The Fresnel transform , λz 2π

1 M= 0

1

!

,

It should be noted that the following three sets of matrices !

!

!

a 0 1 b 1 0 M1 = , M2 = , M3 = , −1 0 a 0 1 c 1 each constitutes a one-parameter subgroup of SL(2, R). It follows that each element of SL(2, R) can be decomposed as a product of elements of these three subgroups as shown below !

!

a 0 0 a−1

!

!

0 1 −1 0

a b 1 0 = M= c d c/a 1

!

1 b/a . 0 1

!

!

1 0 . a/b 1

Moreover, we have a b b 0 M= = c d d b−1

!

in which the middle matrix !

0 1 −1 0

corresponds to the Fourier transformation if the kernel is e−ixt , and !

a b 1 a/c M= = c d 0 1 if the kernel is eixt ,

!

!

0 −1 1 0

!

c d . 0 1/c

The Linear Canonical Transform (LCT)  187

9.3 9.3.1

PROPERTIES OF THE LINEAR CANONICAL TRANSFORM Basic Properties

In this section, we list some properties of the LCT, some of which are derived from the properties of the kernel of the transform 1. Linearity: The LCT is linear, i.e. LM [af + bg] = aLM [f ] + bLM [g], where a, b ∈ C. 2. Differentiation: LM [f 0 ](t) = a

∂ LM [f ](t) − ictLM [f ](t) ∂t

3. Multiplication by the input variable: LM [xf (x)](t) = ib

∂ LM [f ](t) + dtLM [f ](t). ∂t

4. Frequency Shift: i

h

LM eiλx f (x) = eidλ(t−bλ/2) LM [f ](t − bλ) 5. Translation: LM [f (x − λ)] (t) = eicλ(t−aλ/2) LM [f ] (t − aλ). In addition, we have h

LM f (x − λ)e

−ia b λ(x−λ/2)

i

(t) = FM (t)e−iλt/b .

6. Poisson Summation Formula: √

2 i id 2 1 X 1 X f (t + 2σk)e 2b (t+2σk) = FM (tk )e− 2b tk eikπt/σ , 2σ k∈Z 2πib k∈Z

where tk = kπb/σ. 7. Convolution: For an appropriate convolution operation ? of f and g, given below, we have the following relation: if h(x) = (f ? g) ,

2 /2b

then HM (x) = e−idx

8. Parseval’s Relation: hFM , GM i = hf, gi

FM (x)GM (x).

188  Fractional Integral Transforms: Theory and Applications

9. Composition (Additive Formula) : LM2 LM1 [f ](t) = LM21 [f ](t), where M12 = M2 M1 . 10. Sampling Formula: If f is bandlimited to [−σ, σ] in the LCT domain, then 2 /2b

f (x) = e−iax

X sin σ (x − tn ) 2 b f (tn )eiatn /2b , σ n∈Z

b

(x − tn )

where tn = nbπ/σ. 11. Eigenfunctions: The eigenfunctions of the LCT are ψn (x) = (



2 (1+iα)/2λ2

π2n n!λ)−1/2 Hn (x/λ)e−x

,

where α is a real number, λ > 0 and Hn (x) is the Hermite polynomial of degree n. The constants α and λ depend on the transform parameters. The proof of these properties will follow. Linearity is obvious. We will prove properties (2) and (3) together. Let us recall that i i h 2 1 KM (x, t) = √ exp ax + dt2 − 2xt . 2b 2πib 



If we denote the transform of f by LM [f ](t), then under the assumption that f (x)KM (x, t)|∞ x=−∞ = 0, we have 0

LM [f ](t) =

Z

0

f (x)K(x, t)dx = −

R

Z

f (x) R

∂ KM (x, t)dx ∂x

i = − f (x) [ax − t] K(x, t)dx b R i = − {aLM [xf (x)](t) − tLM [f ](t)} , b Z

or

ibLM [f 0 ](t) = aLM [xf (x)](t) − tLM [f ](t).

(9.1)

On the other hand, by differentiating the transform with respect to t, we have ib

∂ LM [f ](t) + dtLM [f ](t) = LM [xf (x)](t). ∂t

by combining Eqs. (9.1) and (9.2), we have ibLM [f 0 ](t) = tLM [f ](t) (ad − 1) + iab

∂ LM [f ](t), ∂t

(9.2)

The Linear Canonical Transform (LCT)  189

hence, iLM [f 0 ](t) = ctLM [f ](t) + ia Therefore, we have LM [f 0 ](t) = a

∂ LM [f ](t). ∂t

∂ LM [f ](t) − ictLM [f ](t) ∂t

(9.3)

and

∂ LM [f ](t) + dtLM [f ](t). (9.4) ∂t We note that Equations (9.3) and (9.4) are generalization of the following relations of the Fourier transform. If we denote the Fourier transform of f by LM [xf (x)](t) = ib

1 F[f ](t) = √ 2π

Z

f (x)e−itx dx,

R

we have F[f 0 ](t) = itF[f ](t),

and F[xf (x)](t) = i

∂ F[f ](t), ∂t

which corresponds to the Fourier matrix !

0 1 . M= −1 0 For properties (4) and (5), we have h i i 1 i h 2 LM eiλx f (x) (t) = √ ax + dt2 − 2x(t − bλ) dx f (x) exp 2b 2πib R  h Z i 1 i = √ f (x) exp ax2 + d(t − bλ)2 − 2x(t − bλ) − dbλ(bλ − 2t) dx 2b 2πib R = eidλ(t−bλ/2) LM [f ](t − bλ). Z





And i i h 2 1 LM [f (x − λ)] (t) = √ f (x − λ) exp ax + dt2 − 2xt dx 2b 2πib R  h Z i i 1 2 2 f (y) exp a(y + λ) + dt − 2t(y + λ) dy = √ 2b 2πib R  h Z i 1 i 2 2 = √ f (y) exp ay + d(t − aλ) − 2y(t − aλ) + λ(ad − 1) [2t − aλ] dy 2b 2πib R Z





= eicλ[t−aλ/2] LM [f ](t − aλ). Property (6) follows from the classical Poisson Summation Formula for the Fourier 1 R √ transform, which may be stated as follows: if F (t) = 2π R f (x)e−itx dx, then 1 X 1 X √ f (t + 2σk) = F (kπ/σ)eikπt/σ , 2σ k∈Z 2π k∈Z

σ > 0.

190  Fractional Integral Transforms: Theory and Applications

Since the LCT of f may be written as 1 F˜ (tb) = √ 2π where

2 f˜(x) = f (x)eiax /2b ,

Z

f˜(x)e−itx dx,

R

√ −idt2 /2b ibe FM (t)

F˜ (t) =

it immediately follows that 1 X ikπt/σ ˜ 1 X ˜ √ f (t + 2σk) = e F (kπb/σ), 2σ k∈Z 2π k∈Z or

2 id 2 ia 1 X 1 X √ FM (tk )e− 2b tk eikπt/σ , f (t + 2σk)e 2b (t+2σk) = 2σ k∈Z 2πib k∈Z

where tk = 9.3.2

kπb σ .

Convolution Theorems

Next, we will present the convolution theorem, but first let us introduce the following definition. Definition 40. We define the convolution operation ? of two functions f, g as follows: 2

e−iax /2b ˜ (f ∗ g˜), h(x) = (f ? g) (x) = √ bi 2

where f˜(t) = f (t)eiat /2b , the same for g˜, and ∗ stands for the convolution operation associated with the Fourier transform, namely 1 (f ∗ g)(x) = √ 2π

Z

f (x − t)g(t)dt.

R

This definition enables us to establish the next convolution theorem for the LCT. Theorem 48. Let HM , FM , GM be the LCT of , h, f, g, respectively, where h(x) = (f ? g) (x). Then 2 HM (x) = e−idx /2b FM (x)GM (x). Proof First, to simplify the notation, let C = Z

HM (x) =

Z

2 /2b

e−iau

h(u)KM (u, x)du = C RZ

= C ZR

= C R

√1 . 2πib

R 2 /2b

g(t)eiat

2 /2b

g(t)eiat

Z

dt ZR

dt R

f (y)eiay

Z

KM (u, x)du

f˜(u − t)˜ g (t)dt

R

2 /2b

e−iau

We have

2 /2b

KM (u, x)f (u − t)eia(u−t)

2 /2b

2 /2b

KM (y + t, x)e−ia(y+t)

du

dy.

(9.5)

The Linear Canonical Transform (LCT)  191

In view of the fact that 

KM (y + t, x) = C exp

i i h a(y + t)2 + dx2 − 2x(y + t) 2b



the exponential factor inside (9.5) can be simplified to 

exp −

i i i h 2 i h 2 i (dx2 ) exp ay + dx2 − 2yx exp at + dx2 − 2tx , 2b 2b 2b 









which in turn reduces (9.5) to the desired form n

o

HM (x) = exp −idx2 /2b FM (x)GM (x). In the next theorem we prove Parseval’s relation. Theorem 49. Let FM (t) and GM (t) be the LCT of f (x) and g(x), respectively. Then hFM , GM i = hf, gi, where hFM , GM i =

Z

hf, gi =

FM (t)GM (t)dt, R

Z

f (x)g(x)dx. R

Proof hFM , GM i =

Z

Z

Z

FM (t)GM (t)dt = ZR

=

R

Z

f (x)dx R

Z

f (x)KM (x, t)dx

dt R

g(u)K M (u, t)du R

Z

KM (x, t)K M (u, t)dt,

g(u)du R

(9.6)

R

but we have i i h 2 1 KM (x, t)K M (u, t)dt = exp a(x − u2 ) + 2t(u − x) dt 2πb R 2b R  h   i Z i 1 i 2 2 exp a(x − u ) = exp t(u − x) dt 2πb 2b b R  h  i i = exp a(x2 − u2 ) δ(u − x). 2b

Z



Z



Therefore, by substituting this last equation into (9.6), we obtain the result. For related work, see [273, 300]. 9.3.3 Additive Property of the Linear Canonical Transform

The proof of the additive property, which is somewhat technical, is given in the next theorem Theorem 50. Let !

a b M1 = 1 1 , c 1 d1

!

a b M2 = 2 2 , c2 d2

192  Fractional Integral Transforms: Theory and Applications

where |M1 | = |M2 | = 1. The following additive relation holds LM2 LM1 [f ](t) = LM21 [f ](t), where a b M21 = 2 2 c 2 d2

!

!

!

a1 b1 a a + b2 c1 a2 b1 + b2 d1 a b = 2 1 = 12 12 c1 d1 c2 a1 + d2 c1 c2 b1 + d2 d1 c12 d12

!

Proof To simplify the notation, let us denote the kernel KMi by Ki , i = 1, 2. Since LM1 [f ](t) =

Z

f (x)K1 (x, t)dx R

we have LM2 [LM1 [f ]] (w) =

Z Z

f (x)K1 (x, t)K2 (t, w)dxdt R R

1 √

= where

( "

i a1 x2 d2 w2 + f (x) exp 2 b1 b2 R

Z

2πi b2 b1

#)

J(x, w)dx

(9.7)

i d1 a2 2 x w J(x, w) = exp ( + )t − i( + )t dt. 2 b1 b2 b1 b2 R 



 

Z

In view of the relation (4.8), Z

2 x2 ±iqx

e−p

dx =

q

π/p2 e−q

2 /4p2

,

R

we obtain s

J(x, w) =

(

2πib1 b2 ib1 b2 exp − d1 b 2 + a2 b 1 2(d1 b2 + a2 b1 )

x2 w2 2xw + 2 + b21 b2 b1 b2

!)

.

By substituting J(x, w) back into (9.7), we have 1 −ixw f (x) exp (d b 2πi(d1 b2 + a2 b1 ) R 1 2 + a2 b 1 )    a1 b2 × exp ix2 − 2b1 2b1 (d1 b2 + a2 b1 )    d2 b1 × exp iw2 − dx 2b2 2b2 (d1 b2 + a2 b1 ) 

Z

=



p

Let us recall that if a2 b2 c 2 d2

!

!

!

a1 b1 a b = 12 12 , c1 d1 c12 d12

(9.8)

The Linear Canonical Transform (LCT)  193

we have a12 = a1 a2 + b2 c1 b12 = a2 b1 + b2 d1 c12 = a1 c2 + c1 d2 d12 = b1 c2 + d1 d2

!

Therefore, we may write (9.8) as −ixw LM2 [LM1 [f ]] (w) = f (x) exp (b12 ) R    a1 b2 2 × exp ix − 2b 2b1 b12    1 b1 d 2 2 − dx. × exp iw 2b2 2b2 b12 √

1 2πib12

Z





(9.9)

But in addition, we have 

a1 b2 − 2b1 2b1 b12



= = =

b2 (a1 d1 − 1) + a1 a2 b1 2b1 (d1 b2 + a2 b1 ) b2 b1 c1 + a1 a2 b1 2b1 (d1 b2 + a2 b1 ) a12 b1 (b2 c1 + a1 a2 ) = , 2b1 (d1 b2 + a2 b1 ) 2b12

and similarly 

d2 b1 − 2b2 2b2 b12



= = =

b1 (a2 d2 − 1) + d1 d2 b2 2b2 (d1 b2 + a2 b1 ) b2 (b1 c2 + d1 d2 ) 2b2 (d1 b2 + a2 b1 ) d12 . 2b12

Therefore, we can write (9.9) as 1 LM2 [LM1 [f ]] (w) = √ 2πib12



Z

f (x) exp R

i i h a12 x2 + d12 w2 − 2xw dx, (9.10) 2b12 

which completes the proof. 9.3.4 Sampling Theorem

The next theorem establishes the sampling formula for functions that are bandlimited in the LCT domain; for related material, see [17, 18, 105, 124, 125, 136, 172, 179, 181, 184, 270, 271, 274, 288, 295, 365, 367, 368, 369]. But it should be pointed out that another sampling theorem for the LCT will be presented in the next section after we introduce the linear canonical transform in higher dimensions because that theorem deals with sampling in two dimensions for functions that are bandlimited to a disc centered at the origin.

194  Fractional Integral Transforms: Theory and Applications

Theorem 51. Let f be bandlimited to [−σ, σ] in the LCT domain, i.e., the support of its LCT, FM is [−σ, σ]. Then 2 /2b

f (x) = e−iax

X sin σ (x − tn ) 2 b f (tn )eiatn /2b , σ b

n∈Z

(x − tn )

where tn = nbπ/σ. Proof From the inversion formula of the LCT, we have 1 f (x) = √ −2πib

Z σ −σ



FM (t) exp

which can be rewritten as

Z σ

f˜(x) =

i −i h 2 dt + ax2 − 2xt dt, 2b 

F˜ (t)eixt/b dt,

−σ

where

1 2 F˜ (t) = √ e−idt /2b FM (t). −2πib

2 f˜(x) = f (x)eiax /2b ,

By a simple change of variable, we have f˜(x) =

Z σ/b

F˜ (bt)eixt dt.

−σ/b

n

Since e−inbπt/σ

o n∈Z

(9.11)

is an orthogonal basis for L2 [−σ/b, σ/b], it is easy to see that eixt =

X sin σ (x − nbπ/σ) b einbπt/σ . σ b

n∈Z

Let tn = nbπ/σ, hence ixt

e

(x − nbπ/σ)

X sin σ (x − tn ) b = eitn t . σ n∈Z

b

(x − tn )

In view of the uniform convergence of the series, it follows that by substituting this last series in (9.11) and interchanging summation and integration signs, we obtain f˜(x) =

X sin σ (x − tn ) b f˜(tn ), σ n∈Z

or 2 /2b

f (x) = e−iax

(x − tn )

X sin σ (x − tn ) 2 b f (tn )eiatn /2b , σ n∈Z

which is the desired result.

b

b

(x − tn )

The Linear Canonical Transform (LCT)  195

9.3.5 Eigenfunctions and Eigenvalues

The next theorem describes the eigenfunctions and eigenvalues of the LCT. Theorem 52. Let ψn (x) = (

√ n 2 2 π2 n!λ)−1/2 Hn (x/λ)e−x (1+iα)/2λ ,

where α is a real number, λ > 0 and Hn (x) is the Hermite polynomial of degree n. Then Z

ψn (x)KM (x, y)dx = e−i(n+1/2)θ ψn (y),

R

where

i 1 i h 2 KM (x, y) = √ Ax + Dy 2 − 2xy , exp 2B 2πiB A−D 2B α= q , λ2 = q , 4 − (A + D)2 4 − (A + D)2 



and θ = cos−1 [(A + D)/2] . In other words, the functions ψn are the eigenfunctions of the LCT with eigenvalues e−i(n+1/2)θ . Proof From the orthogonality relation of the Hermite functions it follows that {ψn }∞ n=0 are orthonormal since Z

∗ ψn (x)ψm (x)dx

√ n −1 Z 2 = ( π2 n!) Hn (x)Hm (x)e−x dx = δm,n ,

R

R

where ∗ denotes the conjugate of a complex number. Now we derive the generating function of the product of the ψn ∞ X

ψn (y)ψn∗ (x)z n =

n=0

n=0 −y 2 (1+iα)/2λ2 n

× e =

∞ X

1 2 2 √ n Hn (y/λ)Hn (x/λ)e−x (1−iα)/2λ π2 n!λ

z

∞ X n=0

n o 1 √ n Hn (Y )Hn (X) exp −X 2 (1 − iα)/2 − Y 2 (1 + iα)/2 z n , π2 n!λ

which, in view of Mehler’s formula ∞ X Hn (x)Hn (y) n 1 z = √ n n=0

!

2xyz − (x2 + y 2 )z 2 exp , 1 − z2 1 − z2

2 n!

implies ∞ X n=0

ψn (y)ψn∗ (x)z n

(

)

4xyz − (x2 + y 2 )(1 + z 2 ) iα(x2 −y2 )/2λ2 = q exp e . 2λ2 (1 − z 2 ) π(1 − z 2 )λ2 1

196  Fractional Integral Transforms: Theory and Applications

Setting z = e−iθ , 0 < θ < 2π, we obtain after some simplifications ∞ X

ψn (y)ψn∗ (x)e−inθ

n=0

eiθ/2

)

(

eiθ/2

2)

(  ) i x2 (cos θ + α sin θ) + y 2 (cos θ − α sin θ) − 2xy

=

√ exp 2πiλ2 sin θ

=

i eiθ/2 i h 2 √ Ax + Dy 2 − 2xy = eiθ/2 KM (x, y), exp 2B 2πiB

2λ2 sin θ 



where

2

iα(x −y 2xy − (x2 + y 2 ) cos θ 2λ2 e exp = √ 2iλ2 sin θ 2πiλ2 sin θ

(9.12)

i 1 i h 2 KM (x, y) = √ exp Ax + Dy 2 − 2xy , 2B 2πiB 



and !

A B M= , C D with A = cos θ + α sin θ, D = cos θ − α sin θ, B = λ2 sin θ, and hence

α2 + 1 sin θ. λ2 The constants α, λ and θ can be given in terms of the transform parameters provided that |A + D| < 2. In fact, A−D α= q , 4 − (A + D)2 C =−

λ2 = q

2B

,

4 − (A + D)2

θ = cos−1 [(A + D)/2] . By multiplying Eq. (9.12) by ψn (x) and integrating, we obtain Z

ψn (x)KM (x, y)dx = e−i(n+1/2)θ ψn (y).

R

As a special case, if α = 0, and λ = 1, we obtain the eigenfunctions and eigenvalues of the fractional Fourier transform but in which the factor e−iθ is part of the kernel. For the case where |A + D| ≥ 2, we refer the reader to [237, 234]. For related work, see [156, 178].

The Linear Canonical Transform (LCT)  197

9.4

THE METAPLECTIC REPRESENTATION AND CONVOLUTION

The extension of the linear canonical transform to n dimensions can be accomplished in different ways. One way to do that is through metaplectic representations to which we alluded in Chapter 5, see also [39, 261]. Throughout this section we consider 2n × 2n matrices M of the form !

A B M= , C D where A, B, C, D are n × n matrices and denote by J the matrix !

0 In J = , −In 0 where In denotes the n-dimensional identity matrix. It is easy to see that J T = J −1 = −J , where T stands for the transpose. We recall that the matrix M is said to be a free symplectic matrix if MT J M = J , and |det B| , 0. The set of all 2n × 2n real symplectic matrices forms the symplectic group Sp(n, R). The symplectic group may also be defined as follows. Let [x, y] = xT J y denote the symplectic form on R2n , where x, y ∈ R2n . A matrix M ∈ Sp(n, R) if and only if [Mx, My] = [x, y] ∀x, y ∈ R2n . It is easy to see that Sp(n, R) is a group since if AT J A = J = BT J B, then and

(AB)T J AB = BT AT J AB = BT J B = J , AT J A = J ⇒

J = (AT )−1 J A−1 = (A−1 )T J A−1 .

The transpose matrix corresponding to the symplectic matrix M is given by 

AT

MT =  BT

CT



DT

  .

198  Fractional Integral Transforms: Theory and Applications

The inverse of M−1 is given by 

M−1 = 

DT

−B T



−C T

AT

  .

It follows from the fact that M−1 M = MM−1 that ADT − BC T = In ,

BAT = AB T ,

DT A − B T C = In , AT C = C T A,

CDT = DC T , DT B = B T D.

To simplify the notation, we may write the 2n × 2n matrices in the form M = (A, B; C, D) , and hence, we have J = (0, In ; −In , 0) . The transpose and inverse matrices corresponding matrix M = (A, B; C, D) are given by MT =   to the symplectic  AT , C T ; B T , DT and M−1 = DT , −B T ; −C T , AT , respectively. We recall the definition of the free metaplectic transformation and some of its fundamental properties [101] . Definition 41. Given a free symplectic matrix M = (A, B; C, D), the free metaplectic   transformation of f ∈ L2 (Rn ), denoted by LM f is defined as Z

 

FM (w) = LM f (w) =

Rn

f (x) KM (x, w) dx,

(9.13)

where the kernel KM (x, w) is given by KM (x, w) = × exp

ni

2

1 (2πi)n/2 | det B|1/2

wT DB −1 w − 2wT B −T x + xT B −1 Ax

o

.

We have the following special cases of Definition 41: 1. For A = D = 0, B = C = In , we obtain the n-dimensional Fourier transform, 2. For A = diag (a11 , a22 , . . . , ann ) ,

B = diag (b11 , b22 , . . . , bnn )

C = diag (c11 , c22 , . . . , cnn ) , D = diag (d11 , d22 , . . . , dnn ) , we obtain the separable linear canonical transform. 3. For A = D = diag (cos θ1 , . . . , cos θn ) , B = −C = diag (sin θ1 , . . . , sin θn ) we obtain the separable fractional Fourier transform.

(9.14)

The Linear Canonical Transform (LCT)  199

9.5

ELEMENTARY PROPERTIES OF THE METAPLECTIC TRANSFORMATIONS

1. Linearity: The transformation is linear, 

 

 



where a, b ∈ C.

LM af + bg (w) = aLM f (w) + LM g (w), 2. Inversion Formula: The inverse transformation is given by L−1 M F (x)  

Z Rn

FM (w) KM (x, w) dw,

that is Z

f (x) =

 

RN

LM f (w) KM (x, w) dw,

(9.15)

where KM (x, w) = × exp

n −i

2

1 (−2πi)n/2 | det B|1/2

wT DB −1 w − 2wT B −T x + xT B −1 Ax

o

.

(9.16)

3. Parseval’s relation : The following relation holds

D



 

 E

∀ f, g ∈ L2 (Rn ).

f, g = LM f , LM g ,

(9.17)

4. Convolution: For an appropriate convolution operation ~M , defined below (see Definition 42) the following relation holds h

n −i

i



LM f ~M g (t) (w) = exp (

2

) wT DB −1 w

h i

o

h i

× LM f (w) LM g (w).

(9.18)

To derive the inversion formula, let us first observe that Z

KM (x, w)KM (y, w) dw

Rn

i 1 i h T −1 T −1 = exp y B Ay − x B Ax (2π)n |B| 2 

×

Z Rn

n h



io

exp i wT B −T (x − y)

dw.

(9.19)

Setting ω T = wT B −T , we obtain after some calculations that dw = |B|dω. Hence, n h io 1 T −T exp i w B (x − y) dw (2π)n |B| Rn Z n h io 1 T = exp i ω (x − y) dω = δ(x − y). (2π)n Rn Z

(9.20)

200  Fractional Integral Transforms: Theory and Applications

Therefore, from (9.20), we have Z

L−1 M F (x) =  

n ZR

=

n

FM (w) KM (x, w) dw KM (x, w) dw

ZR

=

Z

n

ZR

=

Rn

f (y) dy

Rn

Z Rn

f (y)KM (y, w) dy

KM (x, w)KM (y, w) dw

f (y)δ(x − y)dy = f (x).

To prove Parseval’s relation, we use (9.20) again to obtain D

 E

 

LM f , L M g

Z

=

 

n

 

LM f (w) LM g (w)dw

ZR

=

Z

n

f (x)dx

n

ZR

ZR

=

Rn

Z

f (x)dx

Rn

g(y)dy

Rn

KM (x, w)KM (y, w)dw

g(y)dyδ(x − y) = hf, gi.

Next we introduce the notion of metaplectic convolution that leads to the convolution theorem [261]. Definition 42. Let f, g ∈ L2 (Rn ). We define the free metaplectic convolution , denote by ~M , as 1 f (x) g(t − x) f ~M g (t) = n/2 (2πi) | det B|1/2 RN ni o × exp xT B −1 A(x − t) + (x − t)T B −1 Ax dx. 2 Z



(9.21)

Theorem 53. (Convolution Theorem): For any pair of functions f, g ∈ L2 (Rn ), we have h

n −i

i



LM f ~M g (t) (w) = exp (

2

) wT DB −1 w

h i

o

h i

× LM f (w) LM g (w). Proof. Using Definition 41, we have LM

h

1 f ~M g (t) (w) = n (2πi) | det B| 

× exp × exp

ni

2

i

ni

w DB

1 = n (2πi) | det B|

Rn

f (x)

Rn

xT B −1 A(x − t) + (x − t)T B −1 Ax

2

T

(Z

Z

−1

T

w − 2w B

Z Rn

−T

t+t B

(Z

f (x)

Rn

T

g(z)

−1

At

o

g(t − x) o

)

dt dx

(9.22)

The Linear Canonical Transform (LCT)  201

n −i

× exp ( × exp

2

ni

2

) xT B −1 Az + zT B −1 Ax

wT DB −1 w − 2wT B −T (x + z) T

+ (x + z) B n −i

= exp ( ×

Z2

) wT DB −1 w f (x)

Rn

2

−1

o

A(x + z)

)

dz dx

o 

Z

n −i

= exp (

o

Rn

g(z) KM (z, w) dz KM (x, w) dx

) wT DB −1 w

o

h i

h i

LM f (w) LM g (w).

This completes the proof. Remark 1. A Convolution formula and theorem for an n-dimensional integral transform that is a special case of the Metaplectic transformation can be obtained from Theorem 53 by choosing the appropriate matrix M = (A, B; C, D) .

9.6

TWO-DIMENSIONAL SAMPLING THEOREM FOR THE LINEAR CANONICAL TRANSFORM

9.6.1

Two-Dimensional LCT in Polar Coordinates

In this section, we discuss a special case of the extension of the linear canonical transform given above. We focus our attention on the two-dimensional case and derive some elementary results that will be needed to prove the sampling theorem for signals bandlimited to a disc in the LCT domain [338]. Let t = (t1 , . . . , tn ), x = (x1 , . . . , xn ), x · t = x1 t1 + · · · + xn tn and |x|2 = x21 + · · · + x2n . The n-dimensional linear canonical transform is defined as F (t) =

1 (2πb)n/2

Z

i

Rn

2 +d|t|2 −2x·t

f (x)e 2b (a|x|

) dx,

where dx = dx1 · · · dxn . In two dimensions the transform takes the form: 1 F (t) = (2πb)

Z

i

2 +d|t|2 −2(x t +x t ) 1 1 2 2

f (x)e 2b (a|x|

R2

) dx dx . 1 2

Upon using the polar coordinates x1 = r cos θ, x2 = r sin θ, t1 = ρ cos φ, t2 = ρ sin φ, we obtain F (ρ, φ) = Hence,

1 (2πb)

Z

i

R2

1 F˜ (ρ, φ) = 2πb

f (r, θ)e 2b (ar

Z 2π Z ∞ 0

0

2 +dρ2 −2rρ cos(θ−φ)

) rdrdθ.

i f˜(r, θ)e− b rρ cos(θ−φ) rdrdθ,

202  Fractional Integral Transforms: Theory and Applications

where

2 2 F˜ (ρ, φ) = e−idρ /2b F (ρ, φ), and f˜(r, θ) = eiar /2b f (r, θ).

In view of the relation [117, p. 973], e−it sin ψ =

∞ X

Jn (t)e−inψ

(9.23)

n=−∞

or equivalently,

∞ X

e−it cos(θ−φ) =

(−i)n Jn (t)e−in(θ−φ) ,

(9.24)

n=−∞

we obtain 1 F˜ (ρ, φ) = 2πb

Z R2

∞ X

f˜(r, θ)

(−i)n Jn (rρ/b)e−in(θ−φ) rdrdθ,

(9.25)

n=−∞

where Jν (z) is the Bessel function of the first kind and order ν ≥ −1/2. Let us denote the positive zeros of Jν (z) by 0 < zν,1 < zν,2 < · · · < zν,n < · · · . From the relation [175, p. 128] Z a

rJν (αr)Jν (βr)dr = 0

aβJν (αa)Jν0 (βa) − aαJν (βa)Jν0 (αa) , α2 − β 2

(9.26)

we obtain by setting α = αν,n = zν,n /a and β = `/a Z a

Jν (αν,n r) Jν (`r/a) rdr = 0

a2 zν,n Jν+1 (zν,n ) Jν (`) . 2 − `2 zν,n

(9.27)

In the last equation, we used the relation i d h −ν z Jν (z) = −z −ν Jν+1 (z), dz

which implies that Jν0 (zν,n ) = −Jν+1 (zν,n ). Again from Eq. (9.27), we obtain by setting β = zν,m /a, i.e. ` = zν,m , that Z a

Jν (αν,n r) Jν (αν,m r) rdr = 0 0

if m , n.

(9.28)

Taking the limit of Eq. (9.27) as ` → zν,n , we obtain Z a 0

that is

Jν2 (αν,n r) rdr =

2 a2 2 a2  0 Jν (zν,n ) = Jν+1 (zν,n ), 2 2 (

Z a

Jν (αν,n x) Jν (αν,m x) xdx = 0

0, a2 2 2 Jν+1 (zν,n ),

m,n m=n

(9.29)

(9.30)

The Linear Canonical Transform (LCT)  203

9.6.2 Sampling Theorem for LCT

To derive the main result of this section, which is the sampling theorem for functions that are bandlimited to a disc in the linear canonical transform domain, we need the following lemmas for which an abridged proof will be given. Lemma 6. Consider Jν (ρx) where 0 ≤ x ≤ a and ρ ≥ 0, and let αν,n , zν,n be defined as before. Then ∞ X 2z J (aρ)Jν (αν,n x)   ν,n ν . Jν (ρx) = 2 2 2 n=1 zν,n − a ρ Jν+1 (zν,n ) Proof Expand Jν (ρx) in terms of the orthogonal system given by Eq. (9.30) Jν (ρx) =

∞ X

bn (ρ)Jν (αν,n x).

n=1

Therefore, from Eqs. ( 9.27) and (9.30), we have Z a

Jν (ρx)Jν (αν,n x)xdx = bn (ρ) 0

=

a2 2 J (zν,n ) 2 ν+1

a2 zν,n Jν+1 (zν,n ) Jν (aρ) . 2 − a2 ρ 2 zν,n

(9.31)

By solving for bn (ρ) we obtain the result. Lemma 7. Let

Z a

f (r)Jν (ρr)rdr.

F (ρ) = 0

Then F can be reconstructed from its samples via the formula F (ρ) =

∞ X

F (αν,j ) 

j=1

2zν,j Jν (aρ) 

2 − a2 ρ 2 J zν,j ν+1 (zν,j )

.

Proof With the aid of Lemma 6, we have Z a

F (ρ) =

f (r)Jν (ρr)rdr 0

Z a

= 0

=

 ∞ X 2z J (aρ)Jν (αν,j r)   ν,j ν  rdr f (r)  j=1

∞ X

∞ X j=1

2 − a2 ρ2 J zν,j ν+1 (zν,j )

Z a

2zν,j Jν (aρ) 

j=1

=





2 − a2 ρ 2 J zν,j ν+1 (zν,j )

F (αν,j ) 

f (r)Jν (αν,j r)rdr 0

2zν,j Jν (aρ) 

2 − a2 ρ 2 J zν,j ν+1 (zν,j )

(9.32)

204  Fractional Integral Transforms: Theory and Applications

Lemma 8. Let f (r, t) be a signal periodic with period T and highest frequency N/T, that is N X

f (r, t) =

cn (r)e2πint/T .

n=−N

Then f can be reconstructed from 2N + 1 samples via the formula f (r, t) =

N X



k=−N

where

kT σk (t), 2N + 1 

f r,

h

σk (t) =

sin (2N + 1) Tπ t − 2NkT+1



i

h

i

(2N + 1) sin

Proof We have f (r, t) =

N X

kT π T (t − 2N +1 )

cn (r)e2πint/T ,

(9.33)

(9.34)

(9.35)

n=−N

and if we put η = T /(2N + 1), it will follow that N X

N X

f (r, kη) e−2πimk/(2N +1) =

k=−N

cn (r)eikτ ,

(9.36)

k,n=−N

2πl where τ = 2N +1 with l = n − m. The second summation on the right-hand side, i.e., the summation over k can be written in the form N X



eikτ

e−iN τ 1 − e(2N +1)iτ =

k=−N

=

1 − eiτ sin πl = 0, sin(πl/(2N + 1))

and when l = 0, i.e., n = m, we have τ = 0 and result into (9.36), we obtain N X



PN

k=−N

if l , 0,

eiτ k = 2N + 1. By substituting this

f (r, kη) e−2πimk/(2N +1) = (2N + 1)cm .

k=−N

Solving for cn and substituting it into Eq. (9.35), we obtain f (r, t) =

=

N X 1 e2πint/T f (r, kη) e−2πink/(2N +1) 2N + 1 k,n=−N N N X X 1 f (r, kη) einx 2N + 1 k=−N n=−N

(9.37)

The Linear Canonical Transform (LCT)  205

where x =

2π T





t − 2NkT+1 . The second summation is easily seen to be N X

einx =

n=−N

sin(N + 1/2)x . sin(x/2)

Thus, Eq. (9.37) takes the desired form given by (9.33). Lemma 9. Let h



k sin (2N + 1) Tπ t − 2NT +1

σk (t) =

(2N + 1) sin

Then Z T 0

h

(

σk (t)e−i2πnt/T dt =

Proof Let xk =

2π T



i i;

π Tk T (t − 2N +1 )

−N ≤ k ≤ N.

T −2πikn/(2N +1) 2N +1 e

0

−N ≤ n ≤ N, otherwise .



t − 2NkT+1 . Hence, by (9.34) (2N + 1)σk (t) = e−iN xk + · · · + eiN xk .

Taking into account that for −N ≤ l ≤ N, we have Z T

ilxk −i2πnt/T

e

e

Z T

dt =

0



eil T

kT (t− 2N +1 ) −2πint/T

e

dt

0

= e−i2πkl/(2N +1)

Z T



ei T

(l−n)t

0

dt = T e−2iπkl/(2N +1) δl,n ,

it follows that Z T

(2N + 1) 0

σk (t)e−i2πnt/T dt = T e−2πikn/(2N +1) .

Now we are able to prove the main theorem Theorem 54. Let f be bandlimited to a disc centered at the origin with radius R and with highest frequency N/(2π), that is f (r, θ) =

N X

cn (r)einθ ,

0 ≤ r ≤ R.

n=−N

Let F (ρ, φ) be its linear canonical transform. Then F can be reconstructed from its samples according to the following formula F˜ (ρ, φ) =

N ∞ X X 1 einφ Φn,j (ρ/b)F˜ (bαn,j , τ k)e−iknτ , (2N + 1)b k,n=−N j=1

where

2 F˜ (ρ, φ) = e−idρ /2b F (ρ, φ),

Φn,j (ρ/b) = and τ = 2π/(2N + 1).

2 (zn,j

2zn,j Jn (Rρ/b) , − R2 ρ2 /b2 )Jn+1 (zn,j )

(9.38)

206  Fractional Integral Transforms: Theory and Applications

Proof The linear canonical transform of f (r, θ) is given by F (ρ, φ) = where K(r, ρ, θ, φ) = exp

h

1 2πb

Z R2

f (r, θ)K(r, ρ, θ, φ)rdrdθ, i

i 2b

ar2 + dρ2 − 2rρ cos(θ − φ . By setting

2 2 F˜ (ρ, φ) = e−idρ /2b F (ρ, φ), and f˜(r, θ) = eiar /2b f (r, θ),

and using Eq. (9.25), we have F˜ (ρ, φ) = ×

1 2πb

Z 2π Z R 0

∞ X

f˜(r, θ)

0

(−i)n Jn (rρ/b)e−in(θ−φ) rdrdθ

n=−∞

= ×

∞ N X 1 X (−i)n einφ 2πb n=−∞ m=−N

Z R

cm (r)eiar

2 /2b

Z 2π

eiθ(m−n) dθ

0

Jn (rρ/b)rdr

0

=

N 1 X einφ cˆn (ρ), b n=−N

where

(9.39)

Z R

Cn (r)Jn (rρ/b)rdr,

cˆn (ρ) = 0

which is the Hankel transform of Cn (r) = (−i)n cn (r)eiar change of scale, we have

2 /2b

scaled by 1/b. Hence, by a

Z R

Cn (r)Jn (rρ)rdr.

cˆn (bρ) = 0

Therefore, from the sampling formula for the Hankel transform Eq. (9.32), we have cˆn (bρ) =

∞ X

cˆn (bαn,j )Φn,j (ρ),

(9.40)

j=1

where αn,j = zn,j /R and zn,j is the j-th zero of the Bessel function Jn (x) and Φn,j (ρ) is given by 2zn,j Jn (Rρ) Φn,j (ρ) = 2 . (9.41) (zn,j − R2 ρ2 )Jn+1 (zn,j ) Or equivalently cˆn (ρ) =

∞ X j=1

cˆn (bαn,j )Φn,j (ρ/b),

(9.42)

The Linear Canonical Transform (LCT)  207

with Φn,j (ρ/b) = Since

2 (zn,j

2zn,j Jn (Rρ/b) . − R2 ρ2 /b2 )Jn+1 (zn,j )

(9.43)

N 1 X einφ cˆn (ρ), F˜ (ρ, φ) = b n=−N

it follows from Lemma 8 , that N 1 X F˜ (ρ, φ) = F˜ (ρ, kτ )σk (φ), b k=−N

(9.44)

where σk (φ) is given by (9.34) and τ = 2π/(2N + 1). From (9.39), we also have N 1 X F˜ (ρ, kτ ) = einkτ cˆn (ρ). b k=−N

But again from (9.39 ), we obtain b cˆn (ρ) = 2π

Z 2π

F˜ (ρ, φ)e−inφ dφ.

0

Hence, from Eq. (9.44), we have cˆn (bαn,j ) = =

=

=

b 2π

Z 2π

F˜ (bαn,j , φ)e−inφ dφ

0

  Z 2π N X 1 F˜ (bαn,j , τ k)σk (φ) dφ e−inφ 



0

k=−N

N 1 X F˜ (bαn,j , τ k) 2π k=−N

Z 2π 0

σk (φ)e−inφ dφ

N X 1 F˜ (bαn,j , τ k)e−iknτ , 2N + 1 k=−N

where the last equation follows from Lemma 9 with T = 2π. Thus, from Eq. (9.42), we have cˆn (ρ) =

∞ N X 1 X Φn,j (ρ/b) F˜ (bαn,j , τ k)e−iknτ . 2N + 1 j=1 k=−N

Finally by substituting Eq. (9.45) into (9.39), we obtain N 1 X einφ cˆn (ρ) F˜ (ρ, φ) = b n=−N

=

N ∞ X X 1 einφ e−iknτ Φn,j (ρ/b)F˜ (bαn,j , τ k), (2N + 1)b k,n=−N j=1

which completes the proof.

(9.45)

208  Fractional Integral Transforms: Theory and Applications

Remark. By putting a = cos θ = d, b = sin θ = −c, in the above theorem, we obtain a sampling formula for signals that are bandlimited to a disc in the fractional Fourier transform domain. For related refrences, see [55, 124, 125, 135, 219, 269, 282, 286, 310, 312, 327, 355, 364].

CHAPTER

10

The Special Affine Fourier Transform (SAFT)

10.1

INTRODUCTION AND HISTORICAL REMARKS

The Special Affine Fourier Transformations or the (SAFT) generalize a number of well known unitary transformations, as well as, signal processing and optical operations [59] . Among those special cases of the SAFT are the Fourier, fractional Fourier (FrFT), Fresnel and the linear canonical transformations (LCT). The special affine Fourier transformations are becoming increasingly popular in physics, signal processing and communication engineering because they provide good models for phase-space and time-frequency representations . The SAFT was first introduced by Abe and Sheridan [1] in their study to develop an operator formalism to show how the fractional Fourier transformation of a wave function can be derived from the rotation of the corresponding Wigner distribution function in phasespace. In their formalism, an arbitrary area-preserving linear transformation in phase space was introduced and called the Special Affine Fourier Transformation, which they showed that it was the most general inhomogeneous, lossless linear mapping in phase-space. It turned out that such a transformation can also model a number of optical operations. This was shown in a subsequent paper [2] by Abe and Sheridan in which they extended their work and represented well-known optical operations on light wave functions, such as lens transformation, free space propagation, rotation and magnification, in a unified way from the viewpoint of one-parameter Abelian subgroups of SAFT.

10.2

DEFINITIONS

The SAFT depends on 6 parameters (a, b, c, d; p, q) with ad − bc = 1. In phase space if we denote the position and wave-number by x and k respectively, the transformation action maybe described by the equation x0 k0

DOI: 10.1201/9781003089353-10

!

=

a b c d

!

x k

!

+

p q

!

.

209

210  Fractional Integral Transforms: Theory and Applications

The transformation maps any convex body into another convex body and the condition ad − bc = 1 guarantees that the area of the body is preserved by the transformation. The integral representation of SAFT is given in the next definition. Definition 43. The Special Affine Fourier transform of f ∈ L1 (R), denoted by LM [f ](ω) or fbΛS (ω) is given by 1 2π|b|

i i h 2 at + dω 2 + 2t(p − ω) − 2ωλ dt, 2b R (10.1) where b , 0, λ = dp − bq and ΛS stands for the six parameters (a, b, c, d; p, q).

LM [f ](ω) = fbΛS (ω) = p



Z



f (t) exp

The definition can be easily extended to all f ∈ L2 (R) as done for the FrFT. (2×3) The kernel κΛS (t, ω) in (10.1) is parameterized by SAFT matrix ΛS = ΛS which may be written in the form h i λ ΛS = Λ where Λ is the LCT matrix and λ is an offset vector, where "

Λ=

a b c d

#

"

with ad − bc = 1

and

λ=

p q

#

.

If we let f ∗ denote the complex–conjugate of f and hf, gi =

Z

f (t) g ∗ (t) dt,

be the standard L2 inner–product, we may write the SAFT operation, TSAFT : f → fbΛS

defined as,



fbΛS (ω) = f, κΛS (·, ω)

b , 0.

where, κΛS (t, ω) = 

Kb∗ exp − where Kb = √ 1

2π|b|

10.3

 i  2 at + dω 2 + 2t (p − ω) − 2ω (dp − bq) , 2b 

(10.2)

.

THE OFFSET LINEAR CANONICAL TRANSFORM

It should be noted that the definition of the special affine Fourier transform given above is slightly different from the Offset linear canonical transform or the OLCT defined in [236] which is given in the following definition.

The Special Affine Fourier Transform (SAFT)  211

Definition 44. The Offset Linear Canonical Transform of f ∈ L1 (R) is given by

ΛS (ω) =

fb

n   iqω R o i e 2 + d(ω − p)2 − 2t(ω − p) dt, √  f (t) exp at  2b  2iπb R   √

if b , 0 (10.3)

2 i cd 2 (ω−p) +iωq

f (d (ω − p)),

de

if b = 0,

One minor advantage of using (10.3) over (10.1) is that the former is defined for b = 0. On the other hand, as we will see, the transform given by Eq. (10.1) has a simpler inversion formula than the one given by (10.3). First let us prove the existence of (10.3) for b = 0. Let i eiqω i h 2 at + d(ω − p)2 − 2t(ω − p) . K(t, ω) = √ exp 2b 2iπb 



If we set η = (ω − p)/a, we have i eiqω ia h √ exp (t − η)2 + η 2 (ad − 1) 2b 2iπb  h iqω i ia e 2 2 √ exp (t − η) + η bc 2b 2iπb  h   i eiqω ia iac 2 √ exp (t − η)2 exp η 2b 2 2iπb   h  i ic ia 1 iqω 2 2 √ e exp exp (ω − p) (t − η) . 2a 2b 2iπb 



K(t, ω) = = = =

(10.4)

In view of the relation given by (1.26), that 2

2

e−x /w √ = δ(x), w→0 πw lim

we obtain after taking the limit of (10.4) as b → 0 that iqω

lim K(t, ω) = e

b→0

√  ic a(t − η) . exp (ω − p)2 δ 2a 



Therefore, because when b = 0, d = 1/a, we have Z ΛS (ω)

fb

= lim

b→0 R

Z

=

f (t)K(t, ω)dt

f (t)eiqω exp

R

√ =

iqω

de



√  icd (ω − p)2 δ a(t − η) dt 2 

icd exp (ω − p)2 f (d(ω − p)) . 2 



To get the inverse of the SAFT (or the iSAFT), we will need the matrix Λinv S with parameters, def Λinv S =

"

+d −b −c +a

bq − dp cp − aq

#

"

=

+d −b −c +a

p0 q0

#

.

(10.5)

212  Fractional Integral Transforms: Theory and Applications

We will show that the inverse transform (iSAFT) is given by D

E

f (t) = fbΛS , κΛinv (·, t)

(10.6)

S

In addition, we shall develop a convolution structure for the SAFT denoted by ∗ΛS so that we can obtain a representation of the form, TSAFT f ∗ΛS g ∝ TSAFT [f ] TSAFT [g] 



which is consistent with the result of Fourier convolution theorem. In the next theorem we derive the inverse of the SAFT. −1 Theorem 55. Let us denote the kernel associated with Λinv S by κΛS ; that is

i −i h 2 1 2 p exp dω + at + 2ω(p − t) − 2tλ , κ−1 (ω, t) = 0 0 ΛS 2b 2π|b| 



where p0 = bq − dp,

λ0 = ap0 + bq0 ,

q0 = cp − aq.

Therefore, the inverse of SAFT is given by Z

f (t) = R

fb(ω)κ−1 ΛS (ω, t)dω.

Proof Let Z

I(x) =

fb(ω)κ−1 (ω, x)dω

R

ΛS

Z

= ZR

=

κ−1 ΛS (ω, x)dω Z

f (t)dt R

R

Z

f (t)κΛS (t, ω)dt R

κ−1 ΛS (ω, x)κΛS (t, ω)dω

(10.7)

But in view of the fact that λ + p0 = dp − bq + p0 = 0,

and λ0 = ap0 + bq0 = −p

it is easy to see that i i h 2 1 exp at + 2tp 2π|b| 2b    h i −i −i 2 × exp ax − 2xλ0 exp [ω(t − x)] . 2b b

κ−1 ΛS (ω, x)κΛS (t, ω) =





(10.8)

Therefore, we have i i 1 −i h 2 i h 2 exp ax + 2xp f (t) exp at + 2tp dt 2π|b| 2b 2b R   Z −i × exp [ω(t − x)] dω b R   h i Z i −i h 2 i = exp ax + 2xp f (t) exp at2 + 2tp δ(t − x)dt 2b 2b R = f (x). (10.9) 

I(x) =

Z





The Special Affine Fourier Transform (SAFT)  213

10.4

ELEMENTARY PROPERTIES OF THE SPECIAL AFFINE FOURIER TRANSFORM

In this section, we present some properties of the SAFT with their proofs. 1. Linearity: The SAFT is linear, i.e., LM [af + bg] = aLM [f ] + bLM [g];

a, b ∈ C.

2. Translation: LM [f (t − β)] = eiβ[cω−acβ/2−(pc−aq)] LM [f ](ω − aβ) 3. Frequency Shift: h

i

LM eiβt f (t) = eiβ[dω−dbβ/2−λ] LM [f ](ω − bβ). 4. Differentiation: Assuming that f (t)κΛS (t, ω) = 0,

at t = ±∞,

we have LM f 0 (ω) = a  

∂ LM [f ](ω) + i [c(p − ω) − aq] LM [f ](ω) ∂ω

and LM [tf (t)](ω) = ib

∂ LM [f ](ω) + (dω − λ)LM [f ](ω). ∂ω

5. Poisson Summation Formula: The Poisson summation formula for the SAFT takes the form ∞ X

f (t + 2σk) exp

k=−∞

i [a(t + 2σk)2 + 2p(t + 2σk)] 2b

∞ |b| X −i fbΛ (ω) (kπb/σ) exp [d(kπb/σ)2 − 2λ(kπb/σ)]eikπt/σ 2σ k=−∞ S 2b

p

=

provided that both summations exist. 6. Convolution: Let f and g be two given functions for which a convolution ∗ΛS , written as  h (t) = f ∗ΛS g (t) . exists, then we have, SAFT

b (ω) = η ∗ (ω) fb (ω) gb (ω) , h (t) = f ∗ΛS g (t) −−−→ h ΛS ΛS ΛS 

where

i i h 2 η (ω) = exp dω + Ωω , 2b 



Ω = 2(bq − dp).

214  Fractional Integral Transforms: Theory and Applications

Moreover, let, h (t) = ηΛinv (t) f (t) g (t) S

where

i i h 2 ηΛinv (t) = exp at − 2tλ0 , S 2b and λ0 = ap0 + bq0 . We then have, 







b (ω) = fb inv ∗ inv gb inv (ω) . h ΛS Λ Λ Λ S

S

S

Now we provide proof for those elementary properties. Linearity is trivial. Translation: Proof i i h 2 at + dω 2 + 2t(p − ω) − 2λω dt LM [f (t − β)] = Kb f (t − β) exp 2b  hR Z i i 2 2 = Kb f (x) exp a(x + β) + dω + 2(x + β)(p − ω) − 2λω dx 2b R  Z i i h 2 2 ax + d(ω − aβ) + 2x(p − ω + aβ) − 2λ(ω − aβ) dx = C(ω)Kb f (x) exp 2b R = C(ω)LM [f ](ω − aβ), 



Z

where C(ω) = eiβ[cω−acβ/2−(pc−aq)] ,

and λ = (dp − bq)

Frequency Shift: Proof h

i

LM eiβt f (t) = Kb

Z

eiβt f (t) exp

R



i i h 2 at + dω 2 + 2t(p − ω) − 2λω dt 2b 

i i h 2 = Kb f (t) exp at + dω 2 + 2t(p − ω + bβ) − 2λω dt 2b R  h Z i i 2 2 ˜ at + d(ω − bβ) + 2t(p − ω + bβ) − 2λ(ω − bβ) = C(ω)K dt f (t) exp b 2b R ˜ = C(ω)L M [f ](ω − bβ), Z





where ˜ C(ω) = eiβ[dω−dbβ/2−λ] . Theorem 56 (Differentiation). Assuming that f (t)κΛS (t, ω) = 0, we have LM f 0 (ω) = a  

at t = ±∞,

∂ LM [f ](ω) + i [c(p − ω) − aq] LM [f ](ω) ∂ω

and LM [tf (t)](ω) = ib

∂ LM [f ](ω) + (dω − λ)LM [f ](ω) ∂ω

The Special Affine Fourier Transform (SAFT)  215

Proof From the definition of the SAFT, we have Z

 0

LM f (ω) =

0

f (t)κΛS (t, ω)dt = −

R

i = − b

Z

f (t) R

Z

∂ κΛ (t, ω)dt ∂t S

f (t)κΛS (t, ω) (at + p − ω) dt,

R

hence ibLM f 0 (ω) = aLM [tf ] (ω) + (p − ω)LM [f ] (ω).  

(10.10)

Moreover, i ∂ LM [f ] (ω) = ∂ω b or ib

Z

f (t)κΛS (t, ω)(dω − t − λ)dt

R

∂ LM [f ] (ω) = LM [tf (t)] (ω) + (λ − dω)LM [f (t)] (ω). ∂ω

Therefore, LM [tf ] (ω) = ib

∂ LM [f ] (ω) + (dω − λ)LM [f ] (ω). ∂ω

(10.11)

By solving Eqs. (10.10) and (10.11), we obtain after some calculations LM f 0 (ω) = a  

10.5

∂ LM [f ] (ω) + i [c(p − ω) − aq] LM [f ] (ω) ∂ω

POISSON SUMMATION FORMULA FOR SAFT

To derive the Poisson summation formula for the SAFT, we note that the SAFT may be written as Z 1 F˜ (ω) = √ f˜(t)e−iωt dt, 2π R where F˜ (ω) =

q

|b|fbΛS (bω) exp

−i [d(bω)2 − 2λbω] 2b

i and f˜(t) = f (t) exp [at2 + 2pt]. 2b

By using the Poisson summation formula for the Fourier transform 1 Xb 1 X √ h(t + 2kσ) = h(kπ/σ)eikπt/σ , 2σ k 2π k we obtain ∞ X 1 i √ f (t + 2σk) exp [a(t + 2σk)2 + 2p(t + 2σk)] 2b 2π k=−∞ ∞ |b| X −i fbΛS (kπb/σ) exp [d(kπb/σ)2 − 2λ(kπb/σ)]eikπt/σ . 2σ k=−∞ 2b

p

=

We present another version of the Poisson summation formula for SAFT using a more direct approach and then relate it to sampling of bandlimited functions. For some related work, see [371].

216  Fractional Integral Transforms: Theory and Applications

Theorem 57. The Poisson summation formula for the SAFT is given by  h +∞ i √ X i 2πb f (t + k∆) exp a(t + k∆)2 + 2p(t + k∆) 2b k=−∞ +∞ X

=

n=−∞



exp

i −i h 2 dn + Ωn − 2nt FΛS (n), 2b 

where ∆ = 2πb. Proof Let f (t) be an integrable function and define f˜(t) =

 h +∞ i √ X i 2 a(t + k∆) + 2p(t + k∆) . 2πb f (t + k∆) exp 2b k=−∞

It is easy to see that f˜(t) is a ∆–periodic function. Therefore, it can be expanded as a n o int/b Fourier series in terms of the orthogonal family e . Hence, f˜(t)

=

= × = × = × = × =

Z +∞ 1 X int/b ∆ −iny/b ˜ e e f (y)dy 2πb n=−∞ 0 +∞ ∞ Z ∆ X X 1 √ eint/b e−iny/b f (y + k∆) 2πb n=−∞ k=−∞ 0     i exp a(y + k∆)2 + 2p(y + k∆) dy 2b +∞ ∞ Z ∆ X X 1 √ eint/b f (y + k∆) 2πb n=−∞ k=−∞ 0    i  exp a(y + k∆)2 + 2p(y + k∆) − 2ny dy 2b ∞ ∞ Z (k+1)∆ X X 1 √ eint/b f (x) 2πb n=−∞ k=−∞ k∆    i  2 exp ax + 2px − 2n(x − k∆) dx 2b   ∞ X  1 −i  2 √ exp dn + Ωn − 2nt 2b 2πb n=−∞   Z ∞  i  2 2 f (x) exp ax + dn − 2nx + Ωn + 2px dx 2b −∞   +∞ X  −i  2 exp dn + Ωn − 2nt FΛS (n). 2b n=−∞

The Special Affine Fourier Transform (SAFT)  217

That is,   +∞ X √  i  2 2πb f (t + k∆) exp a(t + k∆) + 2p(t + k∆) 2b k=−∞

+∞ X

  −i  2 dn + Ωn − 2nt FΛS (n). = exp 2b n=−∞ 

In particular, if FΛS is an interpolating function, i.e., FΛS (n) = δ(n), then 

X+∞ k=−∞

f (t + k∆) exp

  1 i  a(t + k∆)2 + 2p(t + k∆) = √ . 2b 2πb

Lemma 10. If g is bandlimited to (−1, 1) in the SAFT domain, then |g(tk )|2 =

X k

1 2πb

Z

GΛ (ω) 2 dω. S

R

Proof Let f be bandlimited to (−1, 1) in the SAFT domain. The Poisson summation formula for t = 0 and tk = k∆ becomes √ X 2πb f (tk )ζ(tk ) = FΛS (0), (10.12) k

where ζ(t) = exp

n

i 2b

o

at2 + 2pt X

k

. Setting f (t) = ζ(t)g(t)h(t) in the last equation yields

1 g(tk )h(tk ) = √ FΛ (0), 2πb S

but FΛS (ω) = =

i i h 2 1 ζ(t)g(t)h(t) exp at + dω 2 + Ωω + 2t(p − ω) dt 2b 2πb R  h Z i i 1 2 √ dω + Ωω − 2ωt dt; g(t)h(t) exp 2b 2πb R





Z

hence

1 FΛS (0) = √ 2πb



Z

g(t)h(t)dt. R

Therefore, we have X k

which leads to X k

1 g(tk )h(tk ) = 2πb

1 |g(tk )| = 2πb 2

Z

g(t)h(t)dt, R

1 |g(t)| = 2πb R

Z

2

Z R

GΛ (ω) 2 . S

218  Fractional Integral Transforms: Theory and Applications

10.6

CONVOLUTION AND PRODUCT THEOREMS FOR SPECIAL AFFINE FOURIER TRANSFORM

10.6.1 Modulation and Convolution Operations

The focus of this section is the convolution property of the SAFT, [35, 261, 370]. But before we define the convolution operation in the SAFT domain, let us introduce the chirp modulation operation. Definition 45 (Chirp Modulation). Let A = [aj,k ] be a 2 × 2 matrix. We define the modulation function associated with the matrix A !

a11 t2 mA (t) = exp i . 2a12 def

Furthermore, for a given function f, we define its chirp modulated functions associated with the matrix A as, *

def

f (t) = mA (t) f (t)

and

(

def

f (t) = m∗A (t) f (t) .

(10.13)

For example, for A = ΛS , we have, at2

*

f (t) = mΛS (t)f (t) = ei 2b f (t) ,

and for the case when A = Λinv S , we obtain, dt2

*

f (t) = mΛinv (t) f (t) = e−i 2b f (t) S

. Next we define the SAFT convolution operation. Definition 46 (SAFT Convolution). Let f and g be two given functions and ∗ denote the usual convolution operation for the Fourier transorm. The SAFT convolution is defined as, 

def

m∗ΛS



*

*



h (t) = f ∗ΛS g (t) = p (t) f (t) ∗ g (t) . |b| 10.6.2

(10.14)

Convolution Theorem

In this section, we introduce a convolution operation associated with the SAFT for two functions, but in a later section we will introduce another convolution operation for functions and sequences of numbers. The latter will be useful for the discrete SAFT, as well as, for deriving the Poisson summation formula and the Zak transform associated with SAFT . Figure 10.1 illustrates the block diagram for SAFT convolution defined above. We now state the convolution and product theorem for the SAFT domain.

The Special Affine Fourier Transform (SAFT)  219

Theorem 58. [35] [SAFT Convolution Theorem] Let f and g be two given functions for which the convolution ∗ΛS exists and set, 

h (t) = f ∗ΛS g (t) . b (ω) be the SAFT of f, g and h, respectively. Then Furthermore, let fbΛS (ω) , gbΛS (ω) and h ΛS we have,  SAFT b ∗ b bΛS (ω) , h (t) = f ∗ΛS g (t) −−−→ h ΛS (ω) = η (ω) fΛS (ω) g

where



η (ω) = exp

i [dω 2 + Ωω] 2b



Ω = 2(bq − dp).

Proof We begin by computing the SAFT of h, (10.1)

b (ω) = TSAFT [h] (ω) h ΛS



= h (t) , κΛS (t, ω) Z

=

h (t) κ∗ ΛS (t, ω) dt

R (10.14)

Z 

=

R 2

=

dω Kb2 ei 2b

|

Z

*

f (z) g (t − z) dz κ∗ ΛS (t, ω) dt

Z

e

t

ei b (p−ω) mΛS (t)

} R

C(ω)

m∗ΛS (t)



*

R

−i ωb (dp−bq)

{z



×

Kb m∗ΛS (t)

Z

*



*

f (z) g (t − z) dz dt.

R

In the above development, note that the items in the box cancel one another because m∗ΛS mΛS = 1 (see Definition 45). Setting t − z = v and using (10.13), we obtain an integral b (ω) = I (ω) Ig (ω) because, of separable form, that is, h ΛS f ΛS (ω) =

b h

Kb2 η (ω)

Z Z

f (z) mΛS (z) g (v) mΛS (v) ei

v+z b (p−ω)

dtdv

R R

|

{z

}

b hΛ (ω) S

= If (ω) Ig (ω) ,

(10.15)

where, for a given function f , we define, def

If (ω) = Kb

q

Z

η (ω)

z

f (z) mΛS (z) ei b (p−ω) dz,

(10.16)

R

and similar expression for Ig . Indeed, using (10.16) and (10.1), it is easy to see that, If (ω) =

q

η (ω)η ∗ (ω) fbΛS (ω)

and this result extends to Ig (ω) by symmetry.

(10.17)

220  Fractional Integral Transforms: Theory and Applications

We conclude that, b (ω) h ΛS (10.17)

=

(10.15)

=

q

If (ω) Ig (ω) ∗

η (ω)η (ω) fbΛS (ω) ·

q

η (ω)η ∗ (ω) gbΛS (ω)

= η ∗ (ω) fbΛS (ω) gbΛS (ω) which completes the proof. 10.6.3

Product Theorem

Now we establish the product theorem for the SAFT: Theorem 59. Let h(t) = ηΛinv (t) f (t) g (t) , S

where



ηΛinv = exp S

i [at2 − 2tλ0 , 2b 

Then



λ0 = ap0 + bq0 . 

b h(ω) = fbΛS ∗Λinv gbΛS (ω) , S

Proof From the definition of SAFT, we have i i h 2 at − 2tλ0 f (t)g(t)κΛS (t, ω)dt = exp 2b R  h Z i i 2 at − 2tλ0 κΛS (t, ω)dt = exp 2b R 



Z

b h(ω)

Z

Z −1 b × fΛS (x)κΛS (x, t)dx gbΛS (y)κ−1 ΛS (y, t)dy R ZR Z = fbΛS (x)dx gbΛS (y)dy I(x, y, ω), R

(10.18)

R

where i i h 2 −1 at − 2tλ0 κΛS (t, ω)κ−1 I(x, y, ω) = exp ΛS (x, t)κΛS (y, t)dt. 2b R Z





After some calculations, we obtain i i −i h 2 −i h 2 dx + 2xp0 exp dy + 2yp0 2b 2b  h Z   i i it × exp dω 2 − 2ωλ exp (p − ω + x + y + λ0 ) dt 2b b R

I(x, y, ω) = Kb3 exp







But since p + λ0 = 0, the last integral is reduced to it exp (x + y − ω) dt = 2πbδ(x + y − ω). b R

Z







(10.19)

The Special Affine Fourier Transform (SAFT)  221 Kb e

f

f at2 2b

e

Figure 10.1

at2 2b

f

Convolution

g

S

g

g

SAFT convolution

By substituting I back into (10.18) , we have in view of the fact that λ + p0 = 0 i i i h 2 −i h 2 = Kb exp fbΛS (x) exp dω − 2ωλ dx + 2xp0 dx 2b 2b R  Z i −i h 2 × gbΛS (ω − x) exp d(ω − x) + 2p0 (ω − x) dx 2b R  h i Z   i 2 2 fbΛS (x)e−idx /2b dω − 2ωλ − 2p0 ω = Kb exp 2b R 

b h(ω)

×



2 /2b

gbΛS (ω − x)e−id(ω−x) 

= Kb exp

i h 2 dω 2b

i Z 





dx 2 /2b

fbΛS (x)e−idx

R



2 /2b

gbΛS (ω − x)e−id(ω−x)



dx

*  1 * m∗Λinv (ω) fΛS (x) ∗ gΛS (x) (ω) = fΛS ∗ΛS gΛS (ω) . S |b|



=



Z



p

Remark. Because the SAFT generalizes a number of known transformations, such as the Fourier, fractional Fourier, Fresnel and the linear canonical transforms, the aforementioned convolution and product theorems are applicable to all those transformations, see also [370].

10.7

SHIFT-INVARIANT SPACES FOR THE SPECIAL AFFINE FOURIER TRANSFORM

10.7.1 Preliminaries

Shift-invariant spaces were discussed in Chapters 1 and 5. In this section, we study shiftinvariant spaces for the special affine Fourier transform . We consider spaces of the form (

V (ϕ) = f (t) =

+∞ X

) 2

c [n] ϕ (t − n), ϕ ∈ L (R) , {c [n]} ∈ `2 .

(10.20)

n=−∞

The closure of V(ϕ) is a closed subspace of L2 . Furthermore, it is shift-invariant in the sense that for all f ∈ V(ϕ), its shifted version, f (· − k) ∈ V(ϕ), k ∈ Z, where Z denotes the set of integers. Recall that for the basis functions to be stable, it is required that the family of functions {ϕ (t − n)}∞ n=−∞ forms a Riesz basis or equivalently, there exists two positive constants 0 < η1 , η2 < +∞, such that ∀c ∈ `2 ,

η1 kck2`2



2

X

6 c[k]ϕ (t − k) 6 η2 kck2`2

n=−∞

L2

(10.21)

222  Fractional Integral Transforms: Theory and Applications

where `2 is the space of all square-summable sequences and kck2`2 is the squared `2 -norm of the sequence. The Fourier domain equivalence of (10.21) is η1 6

X+∞ n=−∞

|ϕb (ω + 2πn)|2 6 η2 .

(10.22)

that hϕ, ( ϕ (· − k)i = δk where 1, if k = 0 hx, yi = −∞ x(t)y ∗ (t)dt is the L2 -inner product and δk = , denotes the 0, if k , 0 Kronecker delta. The basis is shift-orthonormal which means R +∞

10.7.2

Discrete Special Affine Fourier Transform

Definition 47 ( Discrete Special Affine Fourier Transform (DT–SAFT)). Let P = {p(k)} P be a sequence in `2 , that is, k |p(k)|2 < ∞. We define the discrete time SAFT of P as  X 1 i  2 PbΛS (ω) = p p(k) exp ak + dω 2 + 2k(p − ω) + Ωω , 2b 2π|b| k 



(10.23)

and define the convolution of a sequence P and a function φ ∈ L2 (R) as h(t) = (P ∗ΛS φ)(t) = p

X 1 2 2 2 e−iat /2b eiak /2b p(k)eia(t−k) /2b φ(t − k). 2π|b| k

(10.24)

Lemma 11. Let P and φ be defined as above and h(t) = (P ∗ΛS φ)(t). Then b = η (ω)Pb Φ (ω), H(ω) = h ΛS ΛS ΛS ΛS

where ΦΛS is the SAFT of φ, ηΛS (ω) = exp



i 2b

dω 2 + Ωω



and Ω = 2(bq −dp). Moreover,

b PΛS is periodic with period ∆ = 2πb.

Proof From the definition of SAFT, we have 1 X iak2 /2b H(ω) = h(t)kΛS (t, ω)dt = e p(k) 2π|b| k R Z

Z

2 /2b

e−iat

2 /2b

φ(t − k)eia(t−k)

R

 i  2 2 at + dω + 2t(p − ω) + Ωω dt × exp 2b   Z X 

1 = 2π|b|

iak2 /2b

e

k

 i p(k) φ(u) exp au2 + dω 2 − 2ω(u + k) + Ωω + 2p(u + k) du 2b R 

 i  2 1 X exp ak − 2kω + 2pk p(k) = 2π|b| k 2b 



 i  2 au + dω 2 − 2ωu + Ωω + 2pu du × φ(u) exp 2b R " #    X η ΛS (ω) i = p exp ak 2 + dω 2 − 2kω + Ωω + 2pk p(k) ΦΛS (ω) 2b 2π|b| k Z



= η ΛS (ω)PˆΛS (ω)ΦΛS (ω).



The Special Affine Fourier Transform (SAFT)  223

Furthermore, since e−ik∆/b = e−2ikπ = 1, we have 1 PˆΛS (ω + ∆) = p 2π|b|

X

p(k)

k

 i  2 ak + d(ω + ∆)2 − 2k(ω + ∆) + Ω(ω + ∆) + 2pk 2b    X i 1 p p(k) exp ak 2 + dω 2 − 2kω + Ωω + 2pk 2b 2π|b| k 



× exp =

 i  2 d∆ + 2dω∆ − 2k∆ + Ω∆ 2b    i = PˆΛS (ω) exp d∆2 + 2dω∆ + Ω∆ 2b 



× exp

Thus,

ˆ PΛS (ω + ∆) = PˆΛS (ω) .

10.7.3

Riesz Basis for Shift-Invariant Spaces in the SAFT Domain

In the next theorem we give a necessary and sufficient condition for a function φ(t) to be a generator for a shift-invariant space in terms of its SAFT. Theorem 60. Let P = {p(n)} ∈ `2 , φ ∈ L2 (R) and consider the chirp-modulated shiftinvariant subspaces of L2 (R) (

) 2



V (φ) = closure f ∈ L : f (t) = P ∗ΛS φ (t) . n

2

o

Then ei(t−k) /2b φ(t − k) is a Riesz basis for V(φ) if and only if there exist two positive constants β1 , β2 > 0 such that +∞ X

β1 ≤

ΦΛ (w + k) 2 ≤ β2 S

k=−∞

for all w ∈ [0, ∆] , and ΦΛS is SAFT of φ. 

Proof Since f (t) = P ∗ΛS φ (t), we have by the previous lemma, FΛS (w) = η ΛS (w)PˆΛS (w)ΦΛS (w); and hence

2 FΛ (w) 2 = PˆΛ (w) ΦΛ (w) 2 , S S S

(10.25)

224  Fractional Integral Transforms: Theory and Applications





where PˆΛS (w) is given by Definition (47). Thus, because PˆΛS (ω) is periodic with period ∆

FΛ (ω) 2 2 S L (R) =

Z∞ 2 2 ˆ PΛS (ω) ΦΛS (ω) dω −∞

=

=

∞ X

(k+1)∆ Z

k=−∞ k∆ ∞ Z ∆ X k=−∞ 0

=

2 2 ˆ PΛS (ω) ΦΛS (ω) dω

2 2 ˆ PΛS (ω + k∆) ΦΛS (ω + k∆) dω.

Z ∆ ∞ 2 X ˆ ΦΛ (ω + k∆) 2 dω PΛS (ω) S 0

k=−∞

Z ∆ 2 ˆ = PΛS (ω) Gφ,ΛS (ω)dω, 0

2 P where Gφ,ΛS (ω) = k ΦΛS (ω + k∆) is the Grammian of φ. But  h Z ∆ Z ∆X 2 i 1 i ˆ 2 2 p(k)p(l) exp a(k − l ) − 2ω(k − l) + 2p(k − l) dω PΛS (ω) dω =

2πb

0

and since

Z ∆

0

2b

k,l

ei(−2ω)(k−l)/2b dω = b

0

Z 2π 0

eiu(l−k) du = 2πbδk,l ,

it follows that

ˆ 2

PΛS 2

L [0,∆]

Z ∆ 2 X ˆ |p(k)|2 = kp(k)k2`2 . = PΛS (ω) dω = 0

k

Since 0 < β1 ≤ Gφ,ΛS (ω) ≤ β2 < ∞, and

kp(k)k2`2 = ej(ak we have



2

2 )/2b

2

p(k) 2 , `



2

2

β1 PˆΛS = β1 kp(k)k2 ≤ FΛS ≤ β2 kp(k)k2 ≤ β2 PˆΛS

which completes the proof. To get orthonormal basis for V (φ) , we use the standard trick of putting ΦΛ (ω) HΛS (ω) = q S Gφ,ΛS (ω) so that X HΛ (ω + k∆) 2 = S k

1 Gφ,ΛS (ω)

X ΦΛ (ω + k∆) 2 = 1. S k

The Special Affine Fourier Transform (SAFT)  225

10.8

ZAK TRANSFORM ASSOCIATED WITH THE SAFT

We now turn our attention to the Zak transform associated with SAFT . We will introduce the Zak transform and derive some of its properties that generalize those of the standard Zak transform. To proceed, we recall the following properties of the Zak transform: Zf (t, ω + 1) = Zf (t, ω) and Zf (t + 1, ω) = e2πiω Zf (t, ω) and that the Zak transform is a unitary transformation from L2 (R) onto L2 (Q), with



Zf

L2 (Q)

= kf kL2 (R) ,

where Q is the unit square Q = [0, 1] × [0, 1]. If f belongs to a sampling space with sampling function ψ ∈ L2 (R) ∩ L1 (R), i.e., P f (t) = +∞ k=−∞ f (k) ψ (t − k), then ˆ fˆ(w) = Fˆ (w)ψ(w),

where Fˆ (w) =

X+∞ k=−∞

f (k)e−2πikw .

where Fˆ (w) is periodic with period one. Therefore, ˆ ˆ + k) , f (w + k) = Fˆ (w) ψ(w

which implies that

2



Gf (w) = Zf (0, w) Gψ (w), where Gg denotes the Grammian of g ∈ L2 (R), defined by Gg (w) =

X

|ˆ g (w + k)|2 ,

where 0 < A ≤ Gg (w) ≤ B < ∞.

k∈Z

Therefore, for such a function f , we have

2



2

A Zf (0, w) ≤ Gf (w) ≤ B Zf (0, w) ,

(10.26)

for some A, B > 0. From this relation, we obtain A

X+∞ k=−∞

and

|f (k)|2 ≤

Z 1 0

Gf (w)dw ≤ B

X+∞ k=−∞

|f (k)|2 ,

(10.27)

ˆ Z 1P Z k∈Z f (w + k) ˆ dw = ψ(w) dw < ∞, Zf (0, w) 0 R

(10.28)

whenever ψˆ ∈ L1 (R). Definition 48. We define the Zak transform associated with the SAFT of a signal f as i 1 X i h 2 f (t + k) exp dω + ak 2 + 2k(p − ω) + Ωω Zf,ΛS (t, ω) = √ 2b 2πb k 



226  Fractional Integral Transforms: Theory and Applications

In light of the above definition, we have the following theorem Theorem 61. [34] The Zak transform given by definition 48 is an isometry between L2 (R) and L2 (B), where B = [0, 1] × [0, ∆]. Proof First, let us observe that since e−ik∆/b = e−2ikπ = 1, it follows that 1 X ZΛS (t, ω + ∆) = √ f (t + k) 2πb k  h i i × exp d(ω + ∆)2 + ak 2 − 2k(ω + ∆) + Ω(ω + ∆) + 2pk 2b   i∆ = exp [d∆ + 2dω + +Ω] ZΛS (t, ω) 2b 2



Z ∆ ZΛ (t, ω) 2 dω S

=



2

Thus ZΛS (t, ω + ∆) = ZΛS (t, ω) , and we have

0

× = ×

1 X f (t + k)f (t + l) 2πb k,l Z ∆

i i h 2 2 exp a(k − l ) − 2ω(k − l) + 2p(k − l) dω 2b 0  h i i 1 X 2 f (t + k)f (t + l) exp a(k − l) + 2p(k − l) 2πb k,l 2b

Z ∆





e−iω(k−l)/b dω

0

i 1 X i h 2 2 f (t + k)f (t + l) exp a(k − l ) + 2p(k − l) 2πb k,l 2b 

= × =

Z 2π 0 X



e−ix(k−l) bdx

|f (t + k)|2 .

k

Therefore

ZΛ 2 2 S

L

(B) =

Z 1Z ∆ Z 1X ZΛ (t, ω) 2 dωdt = |f (t + k)|2 dt S 0

0

Z ∞

= −∞

0

k

|f (t)|2 dt = kf k2L2 (R) .

Now we derive the analogue of formulae (10.28) . It is easy to see that ZΛS ,f (0, ω) = FˆΛS (ω, {k}) ,

The Special Affine Fourier Transform (SAFT)  227

where FˆΛS (ω, {k}) is the SAFT of the sequence of samples {f (k)} of f. Let f be in the sampling space generated by φ(t), i.e., from Theorem 60 and Eq. (10.24), we have   1 X 2 2 2 e−iat /2b eiak /2b f (k)eia(t−k) /2b φ(t − k). f (t) = FˆΛS ∗ΛS φ √ 2πb k By Lemma 11 we have FˆΛS (ω) = η ΛS (ω)FˆΛS (ω, {k}) ΦΛS (ω) = η ΛS (ω)ZΛS ,f (0, ω)ΦΛS (ω) Hence,

2 2 2 ˆ FΛS (ω) = ZΛS ,f (0, ω) ΦΛS (ω)

and because the modulus of the Zak transform is periodic with period ∆, we have 2 2 2 ˆ FΛS (ω + k∆) = ZΛS ,f (0, ω) ΦΛS (ω + k∆)

which implies that

2



Gf,ΛS (ω) = ZA,f (0, ω) GΛS ,φ (ω), where Gf,ΛS is the Grammian of f. Since Z ∆ 0

GΛS ,φ (ω)dω =

+∞ X

Z ∆ 2

2 ˆ ΦΛS (ω + k∆) = ΦΛS < ∞,

k=−∞ 0

it follows that Gφ,ΛS (ω) < ∞ almost everywhere. Using (10.25), and the fact that β1 ≤ GΛS ,φ (ω) ≤ β2 , we obtain GΛS ,f (ω) β1 ≤ ≤ β2 . ZΛ ,f (0, ω) 2 S Thus, 2 2 β1 ZΛS ,f (0, ω) ≤ GΛS ,f (ω) ≤ β2 ZΛS ,f (0, ω) . On the other hand, we have ZΛ ,f (0, ω) 2 S

Therefore, since

= ZΛS ,f (0, ω)Z ΛS ,f (0, ω)  h i X i f (k)f (l) exp = a(k 2 − l2 ) − 2ω(k − l) + 2p(k − l) . 2b k,l

R∆ 0

exp (−iω(k − l)/b) dω = 2πbδk,l , we have Z ∆ X ZΛ ,f (0, ω) 2 dω = |f (k)|2 , S 0

k

and it follows that β1

X k

|f (k)|2 ≤

Z ∆ 0

GΛS ,f (ω)dω ≤ β2

X

|f (k)|2 .

(10.29)

k

Moreover, Z Z ∆X Z ∆ P k FΛS (ω + k∆) dω = ΦΛS (ω + k∆) dω = ΦΛS (ω) dω < ∞. ZA,f (0, ω) 0 R 0 k

(10.30) Relations (10.29) and (10.30) are the analogue of (10.27) and (10.28).

228  Fractional Integral Transforms: Theory and Applications

10.9

SHANNON’S SAMPLING THEOREM AND THE SAFT: REINTERPRETATION, EXTENSION AND APPLICATIONS

In this section, we revisit Shannon’s sampling theorem for SAFT. We will provide a formal link between Shannon’s sampling theorem for SAFT and its convolution. The key idea is that modulated and shifted versions of the sinc–function form a SAFT–bandlimited subspace. We then discuss strategies for reconstruction/interpolation of functions using arbitrary basis functions—not necessarily sinc functions. This serves as an extension of the sampling theorem to generic basis functions. A form of Shannon’s sampling theorem for the SAFT was presented in [246, 287, 323, 324, 326]. Here we present a different proof of the sampling theorem that uses the theory of reproducing-kernels. Recall that if f is bandlimited to [−σ, σ], in the Fourier transform domain, then f (t) =

X

f (tn )

n

sin [σ(t − tn )] , σ(t − tn )

tn = nπ/σ

if and only if fˆ(ω) =

q

!

π/(2σ 2 )

X

itn ω

f (tn )e

χ[−σ,σ] ,

n

where χA is the characteristic function of A. Likewise, one can prove that if f is bandlimited to [−σ, σ], in the SAFT domain, then f˜(t) =

X n

sin [σ(t − tn )/b] , f˜(tn ) σ(t − tn )/b

tn = nπb/σ

if and only if

πb FΛS ({f (tn )})χ[−σ,σ] , σ where FΛS ({f (tn )} is the SAFT of the sequence {f (tn )} as given by Definition 47 and f˜(t) = ζ(t)f (t). Although the sampling theorem can be derived either directly or from the Poisson summation formula as in [57], we will derive it using the theory of reproducingkernels. FΛS (ω) =

Theorem 62. If f is bandlimited to [−σ, σ] in the SAFT domain, then f˜(t) =



X k



sin (t − tn ) , f˜(tn ) σ b b (t − tn )

(10.31)

where f˜ = ζ(t)f (t),

and tn = nπb/σ.

Proof It is easy to verify that the functions φn (t) =

q

n h

i

o sin [σ(t − t )/b] n

σ/πb exp i at2 + 2pt /2b

σ(t − tn )/b

,

The Special Affine Fourier Transform (SAFT)  229

form a complete orthonormal family in L2 (R) with respect to the inner product Z

hφm , φn i =

φm (t)φn (t)dt = δm,n , R

and consequently we have from the theory of reproducing kernels that the reproducing kernel of the space of functions bandlimited to [−σ, σ] in SAFT domain is X

k(x, t) =

n

φn (t)φn (x).

Hence, with some calculations one can verify that sin σb (t − x) 2 2 k(x, t) = e [a(t −x )+2p(t−x)] , π (t − x) 

i 2b

so that



Z

f (t) =

f (x)k(x, t)dx. R

Thus, Z

f (t) =

f (x)

X

φn (t)φn (x)dx

R

X

=

Z

φn (t)

f (x)φn (x)dx. R

But because φn (tk ) = f (tk ) =

X

p

σ/πb ζ(tk )δn,k , we have Z

φn (tk )

f (x)φn (x)dx =

q

Z

σ/πb ζ(tk )

f (x)φk (x)dx,

R

R

and it follows that f (t) =

q

πb/σ

X

f (tn ) ζ(tn )φn (t),

which is Eq. (10.31). The sampling theorem can be put in the following form: Let f (t) be a continuous time signal such that |fb(ω) | = 0, |ω| > σ. Then, f (t) is completely determined by its equidistant samples spaced T = πb/σ seconds apart. The reconstruction formula is then specified by, 2 /2b

f (t) = eiat

X

2

f (kT ) e−iatn /2b+ip(t−tn )/b sinc (t/T − k)

k∈Z iat2 /2b

= e

X k∈Z

2

f (kT ) e−iatn /2b+ip(t−tn )/b

sin πσ (t − tk ) σ π (t − tk )

(10.32)

where kT = tk . Remark 2 (Generalization of Shannon’s Sampling Theory). An immediate consequence of Theorem 62 is that it applies to all transforms that are special cases of the SAFT.

230  Fractional Integral Transforms: Theory and Applications

For example, the sampling theorems for the Fresnel transform [113], fractional Fourier transform [350, 325, 296, 37, 36] and the linear canonical transform [368, 295, 274] are all now a straight–forward consequence of Theorem 62. Unlike previous approaches in [324, 323, 287], we will show that sampling of SAFT– bandlimited signals amounts to orthogonal projection of the signal onto a subspace of SAFT bandlimited functions. Even more so, the projection amounts to filtering/SAFT–convolution of the signal with a low–pass filter followed by the sampling step. The reconstruction process in (10.32) is simply a semi–discrete SAFT convolution. Let ϕ0 = ϕ and consider basis functions of form, i sin σ (t − t ) 1 −i h 2 n b ϕn (t) = √ exp at − at2n + 2p(t − tn ) . σ 2b T b (t − tn ) 



(10.33)

The family {ϕn }n∈Z has two interesting properties. (P1) Orthonormality: By construction, the basis functions are orthonormal. This is easy to check. We have, hϕn , ϕk i = δn−k [299], i sin σb (t − tn ) sin σb (t − tk ) 1 i h 2 2 exp a(tk − tn ) + 2p(tk − tn ) dt σ σ T 2b R b (t − tn ) b (t − tk )  h i Z sin π(t − n) sin π(t − k) i a(t2k − t2n ) + 2p(tk − tn ) dt = δk,n . = exp 2b π(t − k) R π(t − n) 

Z

hϕn , ϕk i =

(P2) Bandlimitedness: Let T σ = πb. From the definition of SAFT it follows that η(ω) ϕbΛS (ω) = √ χ[−σ,σ] (ω) , 2σ where χD (·) is the characteristic function of the set D. Since, χ[−σ,σ] (ω) ϕ bΛS (ω) = √ , 2σ b we observe that ϕ(ω) is a bandlimited function. Let us define the space of SAFT–bandlimited functions ,

VΛ (ϕ) =

 

∞ X



k=−∞

f (t) =

 

f (tk ) ϕn (t) : {f (tk )} ∈ `2 . 

Thanks to (P1), for any f ∈ L2 , the orthogonal projection operator PVΛ (ϕ) : L2 → VΛ (ϕ) prescribed by, PVΛ (ϕ) f =

∞ X

c [k] ϕn (t) with c = hf, ϕn i

k=−∞

results in Shannon’s Sampling theorem associated with the SAFT domain. The inner– product of the function f with the basis—functions ϕn is equivalent to pre-filtering (in

The Special Affine Fourier Transform (SAFT)  231

sense of SAFT convolution) with the ideal low—pass filter, followed by uniform sampling. sin σb (t − tn ) 1 i −i 2 (at2n + 2ptn ) (at + 2pt) dt hf, ϕn i = √ exp f (τ ) exp σ 2b 2b T R b (t − tn )   Z  sin σb (t − tn ) i −i 2 = exp (at2n + 2ptn ) (at + 2pt) dt f (τ ) exp 2b 2b π(t − tn ) R √ = T f (tn ) 

Z





Therefore, we have √ X T f (tk )ϕk (t) f (t) = k



= exp

 X  sin σb (t − tn ) i −i 2 f (tk ) exp (at + 2pt) (at2n + 2ptn ) . σ 2b 2b (t − t ) n b k

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Appendix Useful Integrals

N o.

Integrals

1)

R∞

−πx2 dx

2)

R∞

2 x2

3)

R∞

2 x2 ±qx

4)

R∞

2 e−px dx

5)

R∞

2 e−px2 dx

6)

q

7)

R∞

−∞ e

−q −∞ e

=1



−p −∞ e

−∞ x

−∞ x

π q

dx =

√ π q 2 /4p2 p e

dx =

=

4 p3

=

1 2p

q

π p

1 R ∞ iωx −px2 e dx 2π −∞ e

=

2 e−qx2 +2px dx

1 2q

−∞ x

=

2 √1 e−ω /4p 2p

q  π q

2

1 + 2pq



ep

2 /q

233

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Index additive property of CFrFT, 181 additive property of Gyrator transform, 158 analytic representation of a signal, 86 applications of the fractional Fourier transform, 106

coupled fractional Fourier transform of generalized functions, 151 cross–Wigner distribution function, 83 cross-ambiguity function, 93 CT scan, 28, 40

bandlimited functions, 22 bandlimited to a disc, 203 bandwidth, 22 Bargmann transform, 31, 184, 186 Bessel function, 9 Bessel function of the second kind, 9 Beta function, 5 biorthogonal expansion, 14 biorthonormal basis, 13

Dirac-delta function, 21 directional wavelet transform, 34 discrete time fractional Fourier transform, 113 discrete time SAFT, 222 distributions, 19 duality principle, 114

Campbell’s sampling theorem, 26 Cauchy–Schwarz inequality, 3 CFrFT, 124 chirp modulation, 113, 218 chirp-modulated shift-invariant subspaces, 115, 223 complex Hermite polynomials, 126 computerized tomography, 40 condition number, 18 Condon-Bargmann fractional Fourier transform, 64 continuous ridgelet transform, 34 continuous wavelet transform, 34 convolution and product of the FrFT, 75 convolution for LCT, 199 convolution for SAFT, 213 convolution of the coupled fractional Fourier transform, 137 convolution of two functions, 3 convolution operation for SAFT, 218 convolution theorem for coupled fractional Fourier transform, 177 cosine and sine transforms, 30 coupled fractional Fourier transform, 124

eigenfunctions of the Gyrator transform, 155 eigenfunctions of the LCT, 188 eigenvalues of the LCT, 195 exact frame, 14 four-dimensional rotation matrix, 161 four-dimensional rotations, 161 four-dimensional Wigner distribution, 163 Fourier transform, 30 fractional ambiguity function, 94 fractional integral transforms, 60 fractional Bandlimitedness, 118 fractional convolution, 114 fractional cosine function, 43 fractional delay filtering, 121 fractional derivatives, 60 fractional Fourier transform, 41, 45 fractional Fourier transform in higher dimensions, 124 fractional Fourier transform of generalized functions, 100 fractional Gabor transform, 61 fractional Hankel transform, 48, 53 fractional Hilbert transform, 86 fractional integral transform, 41 261

262  Index

fractional Jacobi transform, 56 fractional Mellin transform, 53 fractional Radon transform, 61 fractional shearlet transform, 61 fractional sine function, 43 fractional time and frequency shifts, 92 fractional time-frequency representations, 89 fractional wavelet transform, 61 fractional Wigner distribution, 89 fractional windowed Fourier transform, 98 fractional Zak transform, 119 frame bounds, 14 frame operator, 15 frames, 14 free metaplectic convolution, 200 Fresnel transform, 32, 186 FrFT, 62 Gabor transform, 32 gamma function, 4 generalized discrete fractional Fourier transform, 114 generalized functions, 19 generalized Laguerre polynomials, 7 generalized Mittag–Leffler function, 11 Grammian, 111 Gyrator transform, 35, 152 Hölder’s inequality, 3 Hankel transform, 30, 38 Hankel transform pair, 38 Hermite functions, 7 Hermite polynomials, 6 Hilbert transform, 31 hypergeometric function, 12 integral transforms, 29 interpolating function, 112 inverse Gyrator transform , 154 inversion of CFrFT, 177 Jacobi polynomials, 8 Jacobi transform, 30 Jensen’s inequality, 3 kernel of integral transform, 29

Kramer’s sampling theorem, 24 Lagrange-type interpolation, 24 Laguerre polynomials, 7 Laplace transform, 29 LCT, 184 LCT in polar coordinates, 201 Legendre transform, 30 linear canonical transform, 32 linear canonical transform (LCT), 184 MacDonald’s function, 9 Mehler’s formula, 6, 46 Mellin transform, 30, 38 metaplectic convolution, 200 metaplectic representation, 126, 197 Minkowski’s inequality, 3 Mittag-Leffler function, 11 Mittag-Leffler transform, 43 modified Bessel function of the first kind, 9 modified Bessel function of the third kind, 9 Moyal’s identity, 163 multiresolution analysis, 17 Neumann’s function, 9 non-orthogonal expansion, 13 Nyquist rate, 85 offset linear canonical transform, 33, 210 OLCT, 210 Paley-Wiener space, 23 Papoulis sampling theorem, 82 parabolic scaling matrix, 35 Parseval’s relation, 68 Parseval’s relation for CFrFT, 178 Parseval’s relation for LCT, 199 periodic distributions, 21 phase-space, 209 phase-space representation, 125 Poisson summation formula, 26, 79 Poisson summation formula for the coupled fractional Fourier transform, 138, 140 Poisson summation formula for the Fourier transform, 79

Index  263

Poisson summation formula for the fractional Fourier transform, 70, 79 Poisson summation formula for the SAFT, 213, 215 q-cosine and sine functions, 43 q-exponential function, 44 q-hypergeometric function, 12 Radon transform, 28, 36 regular generalized function, 20 reproducing kernel, 16, 110 reproducing-kernel Hilbert space, 16, 109 Riemann-Lebesgue Lemma for FrFT, 68 Riemann-Liouville fractional integral, 58 Riesz basis, 14, 109 SAFT, 209 sampling basis, 17 sampling formula for the Hankel transform, 206 sampling in N dimensions, 143 sampling of fractional Fourier transform, 81 sampling spaces, 110 sampling theorem for LCT, 203 sampling theorem for the coupled fractional Fourier transform, 143 sampling theorem for the fractional Fourier transform, 80 Schwartz distributions, 20 Schwartz space of functions, 4, 19 semi-discrete convolution, 109 semi-discrete fractional convolution, 114 separable fractional Fourier transform, 198 separable linear canonical transform, 198 Shannon’s sampling theorem for SAFT, 228 shearlet transform, 35 shift and modulation rules, 73 shift-invariant spaces, 17, 108 shift-invariant spaces for SAFT, 221 shift-invariant spaces in the fractional Fourier transform domain, 115 short-time coupled fractional Fourier transform, 178 short-time Fourier transform, 32

sliding window Fourier transform, 32 Space of Boehmians, 102 space of SAFT–bandlimited functions, 230 special affine Fourier transform, 33, 210 special affine Fourier transformations, 209 Stieltjes transform, 31 Stockwell transform, 32 Sturm-Liouville problem, 7 Sturm-Liouville transform, 31 symplectic form , 125 symplectic group, 125 tempered distributions, 21 testing-function space, 19 time-frequency representation, 209 two-dimensional fractional Fourier transform, 55, 126, 128 two-dimensional Fresnel transform, 34 two-dimensional LCT, 201 uncertainty principle, 27 uncertainty principle for the CFrFT, 182 uncertainty principle for the fractional Fourier transform, 99 Watson’s transformation, 57 wavelet transform, 32 Weierstrass transform, 31, 186 weighted Wigner distribution, 89 Whittaker-Shannon-Kotel’nikov (WSK) sampling Theorem, 22 Wigner distribution, 82, 160 Wigner distribution of two-dimensional fractional Fourier transform, 165 windowed coupled fractional Fourier transform, 178 windowed-Fourier transform, 32 Zak transform, 110 Zak transform for SAFT, 218, 225 zeros of the Bessel function, 11