Detection and Estimation Theory: and Its Applications (Paperback)
Thomas Schonhoff, Arthur Giordano
- 出版商: Prentice Hall
- 出版日期: 2006-10-01
- 售價: $1,068
- 語言: 英文
- 頁數: 560
- 裝訂: Paperback
- ISBN: 0130894990
- ISBN-13: 9780130894991
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Description
For courses in Estimation and Detection Theory offered in departments of Electrical Engineering.
This is the first student-friendly textbook to comprehensively address the topics of both detection and estimation – with a thorough discussion of the underlying theory as well as the practical applications. By addressing detection and estimation theory in the same volume, the authors encourage a greater appreciation of the strong coupling and often blurring of these fields of study. In order to modernize classical topics, the text focuses on discrete signal processing with continuous signal presentations included to demonstrate uniformity and consistency of the results.
Part I Review Chapters
Chapter 1 Review of Probability
1.1 Chapter Highlights
1.2 Definition of Probability
1.3 Conditional Probability
1.4 Bayes’ Theorem
1.5 Independent Events
1.6 Random Variables
1.7 Conditional Distributions and Densities
1.8 Functions of One Random Variable
1.9 Moments of a Random Variable
1.10 Distributions with Two Random Variables
1.11 Multiple Random Variables
1.12 Mean-Square Error (MSE) Estimation
1.13 Bibliographical Notes
1.14 Problems
Chapter 2 Stochastic Processes
2.1 Chapter Highlights
2.2 Stationary Processes
2.3 Cyclostationary Processes
2.4 Averages and Ergodicity
2.5 Autocorrelation Function
2.6 Power Spectral Density
2.7 Discrete-Time Stochastic Processes
2.8 Spatial Stochastic Processes
2.9 Random Signals
2.10 Bibliographical Notes
2.11 Problems
Chapter 3 Signal Representations and Statistics
3.1 Chapter Highlights
3.2 Relationship of Power Spectral Density and Autocorrelation Function
3.3 Sampling Theorem
3.4 Linear Time-Invariant and Linear Shift-Invariant Systems
3.5 Bandpass Signal Representations
3.6 Bibliographical Notes
3.7 Problems
Part II Detection Chapters
Chapter 4 Single Sample Detection of Binary Hypotheses
4.1 Chapter Highlights
4.2 Hypothesis Testing and the MAP Criterion
4.3 Bayes Criterion
4.4 Minimax Criterion
4.5 Neyman-Pearson Criterion
4.6 Summary of Detection-Criterion Results Used in Chapter 4
Examples
4.7 Sequential Detection
4.8 Bibliographical Notes
4.9 Problems
Chapter 5 Multiple Sample Detection of Binary Hypotheses
5.1 Chapter Highlights
5.2 Examples of Multiple Measurements
5.3 Bayes Criterion
5.4 Other Criteria
5.5 The Optimum Digital Detector in Additive Gaussian Noise
5.6 Filtering Alternatives
5.7 Continuous Signals–White Gaussian Noise
5.8 Continuous Signals–Colored Gaussian Noise
5.9 Performance of Binary Receivers in AWGN
5.10 Further Receiver-Structure Considerations
5.11 Sequential Detection and Performance
5.12 Bibliographical Notes
5.13 Problems
Chapter 6 Detection of Signals with Random Parameters
6.1 Chapter Highlights
6.2 Composite Hypothesis Testing
6.3 Unknown Phase
6.4 Unknown Amplitude
6.5 Unknown Frequency
6.6 Unknown Time of Arrival
6.7 Bibliographical Notes
6.8 Problems
Chapter 7 Multiple Pulse Detection with Random Parameters
7.1 Chapter Highlights
7.2 Unknown Phase
7.3 Unknown Phase and Amplitude
7.4 Diversity Approaches and Performances
7.5 Unknown Phase, Amplitude, and Frequency
7.6 Bibliographical Notes
7.7 Problems
Chapter 8 Detection of Multiple Hypotheses
8.1 Chapter Highlights
8.2 Bayes Criterion
8.3 MAP Criterion
8.4 M-ary Detection Using Other Criteria
8.5 M-ary Decisions with Erasure
8.6 Signal-Space Representations
8.7 Performance of M-ary Detection Systems
8.8 Sequential Detection of Multiple Hypotheses
8.9 Bibliographical Notes
8.10 Problems
Chapter 9 Nonparametric Detection
9.1 Chapter Highlights
9.2 Sign Tests
9.3 Wilcoxon Tests
9.4 Other Nonparametric Tests
9.5 Bibliographical Notes
9.6 Problems
Part III Estimation Chapters
Chapter 10 Fundamentals of Estimation Theory
10.1 Chapter Highlights
10.2 Formulation of the General Parameter Estimation Problem
10.3 Relationship between Detection and Estimation Theory
10.4 Types of Estimation Problems
10.5 Properties of Estimators
10.6 Bayes Estimation
10.7 Minimax Estimation
10.8 Maximum-Likelihood Estimation
10.9 Comparison of Estimators of Parameters
10.10 Bibliographical Notes
10.11 Problems
Chapter 11 Estimation of Specific Parameters
11.1 Chapter Highlights
11.2 Parameter Estimation in White Gaussian Noise
11.3 Parameter Estimation in Nonwhite Gaussian Noise
11.4 Amplitude Estimation in the Coherent Case with WGN
11.5 Amplitude Estimation in the Noncoherent Case with WGN
11.6 Phase Estimation in WGN
11.7 Time-Delay Estimation in WGN
11.8 Frequency Estimation in WGN
11.9 Simultaneous Parameter Estimation in WGN
11.10 Whittle Approximation
11.11 Bibliographical Notes
11.12 Problems
Chapter 12 Estimation of Multiple Parameters
12.1 Chapter Highlights
12.2 ML Estimation for a Discrete Linear Observation Model
12.3 MAP Estimation for a Discrete Linear Observation Model
12.4 Sequential Parameter Estimation
12.5 Bibliographical References
12.6 Problems
Chapter 13 Distribution-Free Estimation–Wiener Filters
13.1 Chapter Highlights
13.2 Orthogonality Principle
13.3 Autoregressive Techniques
13.4 Discrete Wiener Filter
13.5 Continuous Wiener Filter
13.6 Generalization of Discrete and Continuous Filter Representations
13.7 Bibliographical Notes
13.8 Problems
Chapter 14 Distribution-Free Estimation–Kalman Filter
14.1 Chapter Highlights
14.2 Linear Least-Squares Methods
14.3 Minimum-Variance Weighted Least-Squares Methods
14.4 Minimum-Variance Least-Squares or Kalman Algorithm
14.5 Kalman Algorithm Computational Considerations
14.6 Kalman Algorithm for Signal Estimation
14.7 Continuous Kalman Filter
14.8 Extended Kalman Filter
14.9 Comments and Extensions
14.10 Bibliographical Notes
14.11 Problems
Part IV Application Chapters
Chapter 15 Detection and Estimation in Non-Gaussian Noise Systems
15.1 Chapter Highlights
15.2 Characterization of Impulsive Noise
15.3 Detector Structures in Non-Gaussian Noise
15.4 Selected Examples of Noise Models, Receiver Structures, and Error-Rate Performance
15.5 Estimation of Non-Gaussian Noise Parameters
15.6 Bibliographical Notes
15.7 Problems
Chapter 16 Direct-Sequence Spread-Spectrum Signals in Fading Multipath Channels
16.1 Chapter Highlights
16.2 Introduction to Direct-Sequence Spread Spectrum Communications
16.3 Fading Multipath Channel Models
16.4 Receiver Structures with Known Channel Parameters
16.5 Receiver Structures without Knowledge of Phase
16.6 Receiver Structures without Knowledge of Amplitude or Phase
16.7 Receiver Structures and Performance with No Channel Knowledge
16.8 Bibliographical Notes
16.9 Problems
Chapter 17 Multiuser Detection
17.1 Chapter Highlights
17.2 Introduction
17.3 Synchronous Multiuser Direct-Sequence CDMA
17.4 Asynchronous Multiuser Direct-Sequence CDMA
17.5 Speculative Summary
17.6 Bibliographical Notes
17.7 Problems
Chapter 18 Low-Probability-of-Intercept Communications
18.1 Chapter Highlights
18.2 LPI System Model
18.3 Interceptor Detector Structures
18.4 Filter-Bank Combiners
18.5 Feature Detectors
18.6 Bibliographical Notes
18.7 Problems
Chapter 19 Spectrum Estimation
19.1 Chapter Highlights
19.2 Overview of Power Spectral Estimation
19.3 Periodogram Techniques
19.4 Parametric Spectral Estimation Techniques
19.5 Examples of Spectral Estimation from MATLAB
19.6 Bibliographical Notes
19.7 Problems
Appendix A Properties of Distribution and Density Functions
Appendix B Common pdfs, cdfs, and Characteristic Functions
B.1 One Point
B.2 Zero-One
B.3 Binomial
B.4 Poisson
B.5 Uniform
B.6 Exponential
B.7 Gaussian-Based Distributions
B.8 Compilation of Mean, Variance, and Characteristic Function
Appendix C Multiple Normal Random Variables
C.1 Zero-Mean Jointly Normal Real Random Variables
C.2 Nonzero-Mean Jointly Normal Real Random Variables
C.3 Linear Transformation of Zero-Mean Jointly Normal Real Random
Variables
C.4 Central Limit Theorem 609
C.5 Nonzero Mean Jointly Normal Complex Random Variables
Appendix D Properties of Autocorrelation and Power Spectral Density Functions
D.1 Autocorrelation Functions–Continuous Processes
D.2 Power Spectral Density Functions–Continuous Process
D.3 Properties of Discrete Processes
Appendix E Equivalence of LTI and LSI Bandlimited Systems
Appendix F Theory of Random Sums
Appendix G Evaluations Useful for Chapters 6, 7, and 16
Appendix H Gram-Charlier Type Series
Appendix I Mobile User Detection
I.1 Overview of Commercial Cellular Networks
I.2 CDMA
I.3 Bibliographical Notes
Bibliography
Glossary
List of Symbols
Index