Fundamentals of Statistical Signal Processing, Volume 3 - Steven Kay

Fundamentals of Statistical Signal Processing, Volume 3

(Autor)

Buch | Softcover
504 Seiten
2018
Pearson (Verlag)
978-0-13-487840-9 (ISBN)
195,15 inkl. MwSt
The Complete, Modern Guide to Developing Well-Performing Signal Processing Algorithms  

In Fundamentals of Statistical Signal Processing, Volume III: Practical Algorithm Development, author Steven M. Kay shows how to convert theories of statistical signal processing estimation and detection into software algorithms that can be implemented on digital computers. This final volume of Kay’s three-volume guide builds on the comprehensive theoretical coverage in the first two volumes. Here, Kay helps readers develop strong intuition and expertise in designing well-performing algorithms that solve real-world problems.

 

Kay begins by reviewing methodologies for developing signal processing algorithms, including mathematical modeling, computer simulation, and performance evaluation. He links concepts to practice by presenting useful analytical results and implementations for design, evaluation, and testing. Next, he highlights specific algorithms that have “stood the test of time,” offers realistic examples from several key application areas, and introduces useful extensions. Finally, he guides readers through translating mathematical algorithms into MATLAB® code and verifying solutions.

 

Topics covered include



Step-by-step approach to the design of algorithms
Comparing and choosing signal and noise models
Performance evaluation, metrics, tradeoffs, testing, and documentation
Optimal approaches using the “big theorems”
Algorithms for estimation, detection, and spectral estimation
Complete case studies: Radar Doppler center frequency estimation, magnetic signal detection, and heart rate monitoring

Exercises are presented throughout, with full solutions, and executable MATLAB code that implements all the algorithms is available for download.

 

This new volume is invaluable to engineers, scientists, and advanced students in every discipline that relies on signal processing; researchers will especially appreciate its timely overview of the state of the practical art. Volume III complements Dr. Kay’s Fundamentals of Statistical Signal Processing, Volume I: Estimation Theory (Prentice Hall, 1993; ISBN-13: 978-0-13-345711-7), and Volume II: Detection Theory (Prentice Hall, 1998; ISBN-13: 978-0-13-504135-2).

Steven M. Kay is one of the world’s leading experts in statistical signal processing. Currently Professor of Electrical Engineering at the University of Rhode Island, Kingston, he has consulted for numerous industrial concerns, the Air Force, Army, and Navy, and has taught short courses to scientists and engineers at NASA and the CIA. Dr. Kay is a Fellow of the IEEE, and a member of Tau Beta Pi, and Sigma Xi and Phi Kappa Phi. He has received the Education Award for “outstanding contributions in education and in writing scholarly book and texts…” from the IEEE Signal Processing society and has been listed as among the 250 most cited researchers in the world in engineering.

Preface         xiii About the Author         xvii



 



Part I: Methodology and General Approaches          1




Chapter 1: Introduction         3



1.1 Motivation and Purpose    3

1.2 Core Algorithms   4

1.3 Easy, Hard, and Impossible Problems    5

1.4 Increasing Your Odds for Success—Enhance Your Intuition    11

1.5 Application Areas    13

1.6 Notes to the Reader    14

1.7 Lessons Learned    15

References   16

1A Solutions to Exercises    19

 

Chapter 2: Methodology for Algorithm Design         23

2.1 Introduction    23

2.2 General Approach    23

2.3 Example of Signal Processing Algorithm Design    31

2.4 Lessons Learned    47

References    48

2A Derivation of Doppler Effect    49

2B Solutions to Exercises    53

 

Chapter 3: Mathematical Modeling of Signals         55

3.1 Introduction    55

3.2 The Hierarchy of Signal Models    57

3.3 Linear vs. Nonlinear Deterministic Signal Models    61

3.4 Deterministic Signals with Known Parameters (Type 1)   62

3.5 Deterministic Signals with Unknown Parameters (Type 2)    68

3.6 Random Signals with Known PDF (Type 3)    77

3.7 Random Signals with PDF Having Unknown Parameters    83

3.8 Lessons Learned    83

References    83

3A Solutions to Exercises    85

 

Chapter 4: Mathematical Modeling of Noise          89

4.1 Introduction    89

4.2 General Noise Models    90

4.3 White Gaussian Noise    93

4.4 Colored Gaussian Noise    94

4.5 General Gaussian Noise    102

4.6 IID NonGaussian Noise    108

4.7 Randomly Phased Sinusoids    113

4.8 Lessons Learned    114

References    115

4A Random Process Concepts and Formulas    117

4B Gaussian Random Processes    119

4C Geometrical Interpretation of AR    121

4D Solutions to Exercises    123

 

Chapter 5: Signal Model Selection         129

5.1 Introduction    129

5.2 Signal Modeling    130

5.3 An Example    131

5.4 Estimation of Parameters    136

5.5 Model Order Selection    138

5.6 Lessons Learned    142

References    143

5A Solutions to Exercises    145

 

Chapter 6: Noise Model Selection          149

6.1 Introduction    149

6.2 Noise Modeling    150

6.3 An Example    152

6.4 Estimation of Noise Characteristics     161

6.5 Model Order Selection    176

6.6 Lessons Learned    177

References    178

6A Confidence Intervals    179

6B Solutions to Exercises    183

 

Chapter 7: Performance Evaluation, Testing, and Documentation         189

7.1 Introduction    189

7.2 Why Use a Computer Simulation Evaluation?    189

7.3 Statistically Meaningful Performance Metrics    190

7.4 Performance Bounds    202

7.5 Exact versus Asymptotic Performance    204

7.6 Sensitivity    206

7.7 Valid Performance Comparisons    207

7.8 Performance/Complexity Tradeoffs    209

7.9 Algorithm Software Development    210

7.10 Algorithm Documentation    214

7.11 Lessons Learned    215

References    216

7A A Checklist of Information to Be Included in Algorithm Description Document   217

7B Example of Algorithm Description Document    219

7C Solutions to Exercises    231

 

Chapter 8: Optimal Approaches Using  the Big Theorems    235

8.1 Introduction    235

8.2 The Big Theorems    237

8.3 Optimal Algorithms for the Linear Model    251

8.4 Using the Theorems to Derive a New Result    255

8.5 Practically Optimal Approaches    257

8.6 Lessons Learned    261

References    262

8A Some Insights into Parameter Estimation    263

8B Solutions to Exercises    267

 



Part II: Specific Algorithms         271




Chapter 9: Algorithms for Estimation         273



9.1 Introduction    273

9.2 Extracting Signal Information    274

9.3 Enhancing Signals Corrupted by Noise/Interference    299

References    308

9A Solutions to Exercises    311

 

Chapter 10: Algorithms for Detection          313

10.1 Introduction    313

10.2 Signal with Known Form (Known Signal)    315

10.3 Signal with Unknown Form (Random Signals)    322

10.4 Signal with Unknown Parameters    326

References    334

10A Solutions to Exercises    337

 

Chapter 11: Spectral Estimation          339

11.1 Introduction    339

11.2 Nonparametric (Fourier) Methods    340

11.3 Parametric (Model-Based) Spectral Analysis    348

11.4 Time-Varying Power Spectral Densities    356

References    357

11A Fourier Spectral Analysis and Filtering    359

11B The Issue of Zero Padding and Resolution    361

11C Solutions to Exercises    363

 



Part III: Real-World Extensions         365




Chapter 12: Complex Data Extensions         367



12.1 Introduction    367

12.2 Complex Signals    371

12.3 Complex Noise    372

12.4 Complex Least Squares and the Linear Model    378

12.5 Algorithm Extensions for Complex Data    379

12.6 Other Extensions    395

12.7 Lessons Learned    396

References    396

12A Solutions to Exercises    399

 



Part IV: Real-World Applications         403




Chapter 13: Case Studies - Estimation Problem         405



13.1 Introduction    405

13.2 Estimation Problem - Radar Doppler Center Frequency    406

13.3 Lessons Learned    416

References    417

13A 3 dB Bandwidth of AR PSD    419

13B Solutions to Exercises    421

 

Chapter 14: Case Studies - Detection Problem         423

14.1 Introduction    423

14.2 Detection Problem—Magnetic Signal Detection    423

14.3 Lessons Learned    439

References    439

14A Solutions to Exercises    441

 

Chapter 15: Case Studies - Spectral Estimation Problem            443

15.1 Introduction    443

15.2 Extracting the Muscle Noise    446

15.3 Spectral Analysis of Muscle Noise    449

15.4 Enhancing the ECG Waveform    451

15.5 Lessons Learned    453

References    453

15A Solutions to Exercises    455

 

Appendix A: Glossary of Symbols and Abbreviations          457

A.1 Symbols    457

A.2 Abbreviations    459

 

Appendix B: Brief Introduction to MATLAB         461

B.1 Overview of MATLAB   461

B.2 Plotting in MATLAB    464

 

Appendix C: Description of CD Contents          467

[Contents of the CD are available for download for readers of the paperback edition.]


C.1 CD Folders    467

C.2 Utility Files Description    467

 

Index          471

Erscheinungsdatum
Sprache englisch
Maße 176 x 30 mm
Gewicht 780 g
Themenwelt Mathematik / Informatik Informatik
Technik Elektrotechnik / Energietechnik
ISBN-10 0-13-487840-X / 013487840X
ISBN-13 978-0-13-487840-9 / 9780134878409
Zustand Neuware
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