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by Simon Haykin, Tülay Adali
Adaptive Signal Processing: Next Generation Solutions
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Title Page
Copyright
CONTENTS
PREFACE
CONTRIBUTORS
CHAPTER 1: COMPLEX-VALUED ADAPTIVE SIGNAL PROCESSING
1.1 INTRODUCTION
1.2 PRELIMINARIES
1.3 OPTIMIZATION IN THE COMPLEX DOMAIN
1.4 WIDELY LINEAR ADAPTIVE FILTERING
1.5 NONLINEAR ADAPTIVE FILTERING WITH MULTILAYER PERCEPTRONS
1.6 COMPLEX INDEPENDENT COMPONENT ANALYSIS
1.7 SUMMARY
1.8 ACKNOWLEDGMENT
1.9 PROBLEMS
REFERENCES
CHAPTER 2: ROBUST ESTIMATION TECHNIQUES FOR COMPLEX-VALUED RANDOM VECTORS
2.1 INTRODUCTION
2.2 STATISTICAL CHARACTERIZATION OF COMPLEX RANDOM VECTORS
2.3 COMPLEX ELLIPTICALLY SYMMETRIC (CES) DISTRIBUTIONS
2.4 TOOLS TO COMPARE ESTIMATORS
2.5 SCATTER AND PSEUDO-SCATTER MATRICES
2.6 ARRAY PROCESSING EXAMPLES
2.7 MVDR BEAMFORMERS BASED ON M-ESTIMATORS
2.8 ROBUST ICA
2.9 CONCLUSION
2.10 PROBLEMS
REFERENCES
CHAPTER 3: TURBO EQUALIZATION
3.1 INTRODUCTION
3.2 CONTEXT
3.3 COMMUNICATION CHAIN
3.4 TURBO DECODER: OVERVIEW
3.5 FORWARD-BACKWARD ALGORITHM
3.6 SIMPLIFIED ALGORITHM: INTERFERENCE CANCELER
3.7 CAPACITY ANALYSIS
3.8 BLIND TURBO EQUALIZATION
3.9 CONVERGENCE
3.10 MULTICHANNEL AND MULTIUSER SETTINGS
3.11 CONCLUDING REMARKS
3.12 PROBLEMS
REFERENCES
CHAPTER 4: SUBSPACE TRACKING FOR SIGNAL PROCESSING
4.1 INTRODUCTION
4.2 LINEAR ALGEBRA REVIEW
4.3 OBSERVATION MODEL AND PROBLEM STATEMENT
4.4 PRELIMINARY EXAMPLE: OJA'S NEURON
4.5 SUBSPACE TRACKING
4.6 EIGENVECTORS TRACKING
4.7 CONVERGENCE AND PERFORMANCE ANALYSIS ISSUES
4.8 ILLUSTRATIVE EXAMPLES
4.9 CONCLUDING REMARKS
4.10 PROBLEMS
REFERENCES
CHAPTER 5: PARTICLE FILTERING
5.1 INTRODUCTION
5.2 MOTIVATION FOR USE OF PARTICLE FILTERING
5.3 THE BASIC IDEA
5.4 THE CHOICE OF PROPOSAL DISTRIBUTION AND RESAMPLING
5.5 SOME PARTICLE FILTERING METHODS
5.6 HANDLING CONSTANT PARAMETERS
5.7 RAO-BLACKWELLIZATION
5.8 PREDICTION
5.9 SMOOTHING
5.10 CONVERGENCE ISSUES
5.11 COMPUTATIONAL ISSUES AND HARDWARE IMPLEMENTATION
5.12 ACKNOWLEDGMENTS
5.13 EXERCISES
REFERENCES
CHAPTER 6: NONLINEAR SEQUENTIAL STATE ESTIMATION FOR SOLVING PATTERN-CLASSIFICATION PROBLEMS
6.1 INTRODUCTION
6.2 BACK-PROPAGATION AND SUPPORT VECTOR MACHINE-LEARNING ALGORITHMS: REVIEW
6.3 SUPERVISED TRAINING FRAMEWORK OF MLPs USING NONLINEAR SEQUENTIAL STATE ESTIMATION
6.4 THE EXTENDED KALMAN FILTER
6.5 EXPERIMENTAL COMPARISON OF THE EXTENDED KALMAN FILTERING ALGORITHM WITH THE BACK-PROPAGATION AND SUPPORT VECTOR MACHINE LEARNING ALGORITHMS
6.6 CONCLUDING REMARKS
6.7 PROBLEMS
REFERENCES
CHAPTER 7: BANDWIDTH EXTENSION OF TELEPHONY SPEECH
7.1 INTRODUCTION
7.2 ORGANIZATION OF THE CHAPTER
7.3 NONMODEL-BASED ALGORITHMS FOR BANDWIDTH EXTENSION
7.4 BASICS
7.5 MODEL-BASED ALGORITHMS FOR BANDWIDTH EXTENSION
7.6 EVALUATION OF BANDWIDTH EXTENSION ALGORITHMS
7.7 CONCLUSION
7.8 PROBLEMS
REFERENCES
INDEX
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