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Signal Detection Theory [Kõva köide]

  • Formaat: Hardback, 726 pages, kõrgus x laius: 235x155 mm, 50 line drawings, 33 halftones
  • Ilmumisaeg: 16-Feb-2001
  • Kirjastus: Birkhauser Boston Inc
  • ISBN-10: 0817641521
  • ISBN-13: 9780817641528
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  • Formaat: Hardback, 726 pages, kõrgus x laius: 235x155 mm, 50 line drawings, 33 halftones
  • Ilmumisaeg: 16-Feb-2001
  • Kirjastus: Birkhauser Boston Inc
  • ISBN-10: 0817641521
  • ISBN-13: 9780817641528
Increasing the noise immunity of complex signal processing systems is the main problem in various areas of signal processing. At the present time there are many books and periodical articles devoted to signal detection, but many important problems remain to be solved. New approaches to complex problems allow us not only to summarize investigations, but also to improve the quality of signal detection in noise. This book is devoted to fundamental problems in the generalized approach to signal processing in noise based on a seemingly abstract idea: the introduction of an additional noise source that does not carry any information about the signal in order to improve the qualitative performance of complex signal processing systems. Theoretical and experimental studies carried out by the author lead to the conclusion that the proposed generalized approach to signal processing in noise allows us to formulate a decision-making rule based on the determi­ nation of the jointly sufficient statistics of the mean and variance of the likelihood function (or functional). Classical and modern signal detection theories allow us to define only the sufficient statistic of the mean of the likelihood function (or functional). The presence of additional information about the statistical characteristics of the like­ lihood function (or functional) leads to better-quality signal detection in comparison with the optimal signal detection algorithms of classical and modern theories.
Preface xvii
Introduction 1(8)
Bibliography
9(2)
Classical Signal Detection Theory
11(27)
Gaussian Approach
12(12)
Karhunen -- Loeve Series Expansion Technique
14(7)
Variational Technique
21(2)
Remarks
23(1)
Markov Approach
24(8)
Comparative Analysis
32(6)
Bibilography
35(3)
Modern Signal Detection Theory
38(187)
Unknown Signal Parameters
39(15)
Bayes' Detector
42(3)
Asymptotic Optimal Detector
45(9)
Unbiased and Invariant Rules
54(25)
Testing Complex Hypotheses: Principles of Unbiasedness and Similarity
54(4)
Unbiased Rules of Signal Detection
58(10)
Testing Complex Hypotheses: Principles of Invariance
68(1)
Invariant Rules of Signal Detection
69(10)
Minimax Rules
79(7)
Sequential Signal Detection
86(13)
Non-Gaussian Noise
99(37)
Basic Knowledge
99(4)
Optimal Signal Detection in Noncorrelated Non-Gaussian Noise
103(13)
Optimal Signal Detection in Correlated Non-Gaussian Noise
116(11)
Signal Detection with Compensation of the Clutter
127(3)
Signal Detection in Non-Gaussian Noise with Band-Limited Frequency Spectrum
130(6)
Nonparametric Detection
136(41)
Nonparametric Decision-Making Rules
139(2)
Signal Detection at Fixed Sample Size
141(10)
Sequential Rank Detection
151(6)
Adaptation of Sequential Rank Detectors
157(8)
Nonparametric Signal Detection in Correlated Noise
165(12)
Nonparametric Asymptotics
177(26)
Rank Detector
177(7)
Sign-Rank Detector
184(5)
Nonparametric Detectors Based on Mixed Statistics with Linear Transformation of Input Data
189(7)
Two-Sample Nonparametric Detectors
196(7)
Conclusions
203(22)
Bibliography
208(17)
Generalized Approach
225(69)
Basic Concepts
226(4)
Criticism
230(3)
Initial Premises
233(2)
Likelihood Ratio
235(5)
Engineering Interpretation
240(4)
Product Variance
244(6)
Distribution Law
250(14)
Process at the Input of the Integrator
250(3)
Process at the Output of the Integrator
253(11)
Statistical Characteristics
264(20)
Resonance Amplitude-Frequency Response
264(13)
Gaussian Amplitude-Frequency Response
277(7)
Conclusions
284(10)
Bibliography
288(6)
Signals With Stochastic Parameters
294(128)
Random Initial Phase
297(31)
Likelihood Ratio
297(12)
Correlation Detector with Quadratic Channels
309(5)
Generalized Detector
314(10)
Distribution Law
324(4)
Random Amplitude and Phase
328(36)
Likelihood Ratio
329(12)
Correlation Detector with Quadrature Channels
341(6)
Generalized Detector
347(8)
Case of Slow Fluctuations
355(4)
Case of Rapid Fluctuations
359(5)
Signal Fidelity in Radar
364(25)
The Woodward Ambiguity Function
367(4)
Correlation Noise
371(3)
Statistic of Individual Target Return Signals
374(1)
Statistic of Set of Target Return Signals
375(2)
Approximate Estimation of Fluctuations
377(2)
Target Return Signal and Correlation Noise
379(6)
Functional Principles of Detection Systems
385(4)
Noise Signals in Radar
389(24)
Generalized Detector: Basic Principles
392(3)
Generalized Detector for Noise Signals
395(1)
Use of Model Signal Delay
396(6)
Model Signal Delay Is Not Used
402(3)
Random Modulation of Frequency or Phase of the Model Signal
405(2)
Radar Noise Signals
407(6)
Conclusions
413(9)
Bibliography
416(6)
Generalized Approach: Communications
422(119)
Simple Binary Detection
424(5)
Global Binary Detection
429(11)
General Statements
429(3)
Generalized Detector
432(8)
Random Initial Phase
440(19)
General Statements
440(7)
Correlation Detector
447(4)
Generalized Detector
451(8)
Random Amplitude and Phase
459(27)
General Statements
460(4)
Correlation Detector
464(4)
Generalized Detector
468(10)
Generalized Detector. Case of Slow Fluctuations
478(4)
Generalized Detector. Case of Rapid Fluctuations
482(4)
Mismatches in Energy
486(7)
Digital Generalized Detector
493(4)
Signal-to-Noise Ratio
497(7)
Analog Generalized Detector
498(1)
Polarity Coincidence Generalized Detector
499(4)
Digital Polarity Coincidence Generalized Detector
503(1)
Signal-to-Noise Ratio Losses
504(4)
Comparative Analysis
508(6)
Low-Pass RC-Filter
508(2)
Single-Circuit RLC-Filter
510(2)
II-Filter
512(2)
Digital Threshold Device
514(15)
Theoretical Analysis of Detection Problem
517(4)
Definition of Asymptotic Optimum
521(5)
Power Signal-to-Noise Ratio
526(3)
Conclusions
529(12)
Bibliography
535(6)
Detection Performances
541(90)
Decision-Making Theory Basics
541(5)
Performance Criteria
546(2)
Detection Characteristics
548(2)
Estimations
550(20)
Generalized Detector
551(13)
Correlation Detector
564(6)
Technique of Computing
570(3)
Deterministic Signal
573(5)
Resonant Amplitude-Frequency Response
573(3)
Gaussian Amplitude-Frequency Response
576(2)
Random Initial Phase
578(15)
Correlation Detector
578(4)
Generalized Detector
582(6)
Resonant Amplitude-Frequency Response
588(1)
Gaussian Amplitude-Frequency Response
589(4)
Random Amplitude and Phase
593(18)
Correlation Detector
594(5)
Generalized Detector
599(7)
Resonant Amplitude-Frequency Response
606(1)
Gaussian Amplitude-Frequency Response
607(4)
Tracking System
611(11)
Deterministic Signal
612(1)
Signal with Random Initial Phase
613(2)
Signal with Stochastic Parameters
615(7)
Conclusions
622(9)
Bibliography
624(7)
Experimental Study
631(69)
Experimental Conditions
633(3)
Signal-to-Noise Ratio = 15.92 dB
636(19)
Correlation Detector
636(2)
Generalized Detector: Indicator f1[ Zout g, t]
638(4)
The Case L ≠ Lo + N
642(2)
The Case L = Lo + N
644(1)
Generalized Detector: Indicator f2[ Xout g, a]
645(1)
The Case L ≠ Lo + N
646(2)
The Case L = Lo + N
648(7)
Signal-to-Noise Ratio = 0.96 dB
655(14)
Correlation Detector
655(1)
Generalized Detector: Indicator f1[ Zout g, t]
656(3)
The case L ≠ Lo + N
659(1)
The case L = Lo + N
660(1)
Generalized Detector: Indicator f2[ Zout g, a]
661(1)
The case L ≠ Lo + N
661(2)
The Case L = Lo + N
663(6)
Functional Principles
669(10)
Process at the Input of the Summator
670(1)
A No Signal in the Input Stochastic Process Y(t)
670(3)
A Yes Signal in the Input Stochastic Process Y(t)
673(4)
Process at the Output of the Summator
677(1)
A No Signal in the Input Stochastic Process Y (t)
677(1)
A Yes Signal in the Input Stochastic Process Y(t)
678(1)
Decision-Making Rule
679(6)
Function of Channels
685(7)
Autocorrelation Channel
685(2)
Correlation Channel
687(5)
Conclusions
692(8)
Bibliography
696(4)
Type of Signals
700(13)
Pulse Signals
704(2)
Frequency-Modulated Signals
706(2)
Phase-Manipulated Signals
708(4)
Conclusions
712(1)
Bibliography
712(1)
Epilogue 713(2)
Notation Index 715(6)
Index 721