Bayesian signal processing : (Record no. 74565)
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fixed length control field | 10929nam a2200685 i 4500 |
001 - CONTROL NUMBER | |
control field | 8371510 |
005 - DATE AND TIME OF LATEST TRANSACTION | |
control field | 20220712210006.0 |
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION | |
fixed length control field | 200313s2019 nju ob 001 eng d |
019 ## - | |
-- | 1048670497 |
-- | 1048673092 |
-- | 1078909391 |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
ISBN | 9781119125471 |
-- | electronic bk. |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
-- | electronic bk. |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
-- | electronic bk. |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
-- | electronic bk. |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
ISBN | 1119125456 |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
-- | electronic bk. |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
-- | electronic bk. |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
-- | Paper |
082 04 - CLASSIFICATION NUMBER | |
Call Number | 621.382/201519542 |
100 1# - AUTHOR NAME | |
Author | Candy, James V., |
245 10 - TITLE STATEMENT | |
Title | Bayesian signal processing : |
Sub Title | classical, modern, and particle filtering methods / |
250 ## - EDITION STATEMENT | |
Edition statement | Second edition. |
300 ## - PHYSICAL DESCRIPTION | |
Number of Pages | 1 PDF (640 pages). |
490 1# - SERIES STATEMENT | |
Series statement | Adaptive and Cognitive Dynamic Systems: Signal Processing, Learning, Communications and Control Ser. ; |
500 ## - GENERAL NOTE | |
Remark 1 | Includes index. |
505 0# - FORMATTED CONTENTS NOTE | |
Remark 2 | Bayesian Signal Processing -- Contents -- Preface to Second Edition -- References -- Preface to First Edition -- References -- Acknowledgments -- List of Abbreviations -- 1 Introduction -- 1.1 Introduction -- 1.2 Bayesian Signal Processing -- 1.3 Simulation-Based Approach to Bayesian Processing -- 1.3.1 Bayesian Particle Filter -- 1.4 Bayesian Model-Based Signal Processing -- 1.5 Notation and Terminology -- References -- 2 Bayesian Estimation -- 2.1 Introduction -- 2.2 Batch Bayesian Estimation -- 2.3 Batch Maximum Likelihood Estimation -- 2.3.1 Expectation-Maximization Approach to Maximum Likelihood -- 2.3.2 EM for Exponential Family of Distributions -- 2.4 Batch Minimum Variance Estimation -- 2.5 Sequential Bayesian Estimation -- 2.5.1 Joint Posterior Estimation -- 2.5.2 Filtering Posterior Estimation -- 2.5.3 Likelihood Estimation -- 2.6 Summary -- References -- 3 Simulation-Based Bayesian Methods -- 3.1 Introduction -- 3.2 Probability Density Function Estimation -- 3.3 Sampling Theory -- 3.3.1 Uniform Sampling Method -- 3.3.2 Rejection Sampling Method -- 3.4 Monte Carlo Approach -- 3.4.1 Markov Chains -- 3.4.2 Metropolis-Hastings Sampling -- 3.4.3 Random Walk Metropolis-Hastings Sampling -- 3.4.4 Gibbs Sampling -- 3.4.5 Slice Sampling -- 3.5 Importance Sampling -- 3.6 Sequential Importance Sampling -- 3.7 Summary -- References -- 4 State-Space Models for Bayesian Processing -- 4.1 Introduction -- 4.2 Continuous-Time State-Space Models -- 4.3 Sampled-Data State-Space Models -- 4.4 Discrete-Time State-Space Models -- 4.4.1 Discrete Systems Theory -- 4.5 Gauss-Markov State-Space Models -- 4.5.1 Continuous-Time/Sampled-Data Gauss-Markov Models -- 4.5.2 Discrete-Time Gauss-Markov Models -- 4.6 Innovations Model -- 4.7 State-Space Model Structures -- 4.7.1 Time Series Models -- 4.7.2 State-Space and Time Series Equivalence Models. |
505 8# - FORMATTED CONTENTS NOTE | |
Remark 2 | 4.8 Nonlinear (Approximate) Gauss-Markov State-Space Models -- 4.9 Summary -- References -- 5 Classical Bayesian State-Space Processors -- 5.1 Introduction -- 5.2 Bayesian Approach to the State-Space -- 5.3 Linear Bayesian Processor (Linear Kalman Filter) -- 5.4 Linearized Bayesian Processor (Linearized Kalman Filter) -- 5.5 Extended Bayesian Processor (Extended Kalman Filter) -- 5.6 Iterated-Extended Bayesian Processor (Iterated-Extended Kalman Filter) -- 5.7 Practical Aspects of Classical Bayesian Processors -- 5.8 Case Study: RLC Circuit Problem -- 5.9 Summary -- References -- 6 Modern Bayesian State-Space Processors -- 6.1 Introduction -- 6.2 Sigma-Point (Unscented) Transformations -- 6.2.1 Statistical Linearization -- 6.2.2 Sigma-Point Approach -- 6.2.3 SPT for Gaussian Prior Distributions -- 6.3 Sigma-Point Bayesian Processor (Unscented Kalman Filter) -- 6.3.1 Extensions of the Sigma-Point Processor -- 6.4 Quadrature Bayesian Processors -- 6.5 Gaussian Sum (Mixture) Bayesian Processors -- 6.6 Case Study: 2D-Tracking Problem -- 6.7 Ensemble Bayesian Processors (Ensemble Kalman Filter) -- 6.8 Summary -- References -- 7 Particle-Based Bayesian State-Space Processors -- 7.1 Introduction -- 7.2 Bayesian State-Space Particle Filters -- 7.3 Importance Proposal Distributions -- 7.3.1 Minimum Variance Importance Distribution -- 7.3.2 Transition Prior Importance Distribution -- 7.4 Resampling -- 7.4.1 Multinomial Resampling -- 7.4.2 Systematic Resampling -- 7.4.3 Residual Resampling -- 7.5 State-Space Particle Filtering Techniques -- 7.5.1 Bootstrap Particle Filter -- 7.5.2 Auxiliary Particle Filter -- 7.5.3 Regularized Particle Filter -- 7.5.4 MCMC Particle Filter -- 7.5.5 Linearized Particle Filter -- 7.6 Practical Aspects of Particle Filter Design -- 7.6.1 Sanity Testing -- 7.6.2 Ensemble Estimation -- 7.6.3 Posterior Probability Validation. |
505 8# - FORMATTED CONTENTS NOTE | |
Remark 2 | 7.6.4 Model Validation Testing -- 7.7 Case Study: Population Growth Problem -- 7.8 Summary -- References -- 8 Joint Bayesian State/Parametric Processors -- 8.1 Introduction -- 8.2 Bayesian Approach to Joint State/Parameter Estimation -- 8.3 Classical/Modern Joint Bayesian State/Parametric Processors -- 8.3.1 Classical Joint Bayesian Processor -- 8.3.2 Modern Joint Bayesian Processor -- 8.4 Particle-Based Joint Bayesian State/Parametric Processors -- 8.4.1 Parametric Models -- 8.4.2 Joint Bayesian State/Parameter Estimation -- 8.5 Case Study: Random Target Tracking Using a Synthetic Aperture Towed Array -- 8.6 Summary -- References -- 9 Discrete Hidden Markov Model Bayesian Processors -- 9.1 Introduction -- 9.2 Hidden Markov Models -- 9.2.1 Discrete-Time Markov Chains -- 9.2.2 Hidden Markov Chains -- 9.3 Properties of the Hidden Markov Model -- 9.4 HMM Observation Probability: Evaluation Problem -- 9.5 State Estimation in HMM: The Viterbi Technique -- 9.5.1 Individual Hidden State Estimation -- 9.5.2 Entire Hidden State Sequence Estimation -- 9.6 Parameter Estimation in HMM: The EM/Baum-Welch Technique -- 9.6.1 Parameter Estimation with State Sequence Known -- 9.6.2 Parameter Estimation with State Sequence Unknown -- 9.7 Case Study: Time-Reversal Decoding -- 9.8 Summary -- References -- 10 Sequential Bayesian Detection -- 10.1 Introduction -- 10.2 Binary Detection Problem -- 10.2.1 Classical Detection -- 10.2.2 Bayesian Detection -- 10.2.3 Composite Binary Detection -- 10.3 Decision Criteria -- 10.3.1 Probability-of-Error Criterion -- 10.3.2 Bayes Risk Criterion -- 10.3.3 Neyman-Pearson Criterion -- 10.3.4 Multiple (Batch) Measurements -- 10.3.5 Multichannel Measurements -- 10.3.6 Multiple Hypotheses -- 10.4 Performance Metrics -- 10.4.1 Receiver Operating Characteristic (ROC) Curves -- 10.5 Sequential Detection -- 10.5.1 Sequential Decision Theory. |
505 8# - FORMATTED CONTENTS NOTE | |
Remark 2 | 10.6 Model-Based Sequential Detection -- 10.6.1 Linear Gaussian Model-Based Processor -- 10.6.2 Nonlinear Gaussian Model-Based Processor -- 10.6.3 Non-Gaussian Model-Based Processor -- 10.7 Model-Based Change (Anomaly) Detection -- 10.7.1 Model-Based Detection -- 10.7.2 Optimal Innovations Detection -- 10.7.3 Practical Model-Based Change Detection -- 10.8 Case Study: Reentry Vehicle Change Detection -- 10.8.1 Simulation Results -- 10.9 Summary -- References -- 11 Bayesian Processors for Physics-Based Applications -- 11.1 Optimal Position Estimation for the Automatic Alignment -- 11.1.1 Background -- 11.1.2 Stochastic Modeling of Position Measurements -- 11.1.3 Bayesian Position Estimation and Detection -- 11.1.4 Application: Beam Line Data -- 11.1.5 Results: Beam Line (KDP Deviation) Data -- 11.1.6 Results: Anomaly Detection -- 11.2 Sequential Detection of Broadband Ocean Acoustic Sources -- 11.2.1 Background -- 11.2.2 Broadband State-Space Ocean Acoustic Propagators -- 11.2.3 Discrete Normal-Mode State-Space Representation -- 11.2.4 Broadband Bayesian Processor -- 11.2.5 Broadband Particle Filters -- 11.2.6 Broadband Bootstrap Particle Filter -- 11.2.7 Bayesian Performance Metrics -- 11.2.8 Sequential Detection -- 11.2.9 Broadband BSP Design -- 11.2.10 Summary -- 11.3 Bayesian Processing for Biothreats -- 11.3.1 Background -- 11.3.2 Parameter Estimation -- 11.3.3 Bayesian Processor Design -- 11.3.4 Results -- 11.4 Bayesian Processing for the Detection of Radioactive Sources -- 11.4.1 Physics-Based Processing Model -- 11.4.2 Radionuclide Detection -- 11.4.3 Implementation -- 11.4.4 Detection -- 11.4.5 Data -- 11.4.6 Radionuclide Detection -- 11.4.7 Summary -- 11.5 Sequential Threat Detection: An X-ray Physics-Based Approach -- 11.5.1 Physics-Based Models -- 11.5.2 X-ray State-Space Simulation -- 11.5.3 Sequential Threat Detection -- 11.5.4 Summary. |
505 8# - FORMATTED CONTENTS NOTE | |
Remark 2 | 11.6 Adaptive Processing for Shallow Ocean Applications -- 11.6.1 State-Space Propagator -- 11.6.2 Processors -- 11.6.3 Model-Based Ocean Acoustic Processing -- 11.6.4 Summary -- References -- Appendix: Probability and Statistics Overview -- A.1 Probability Theory -- A.2 Gaussian Random Vectors -- A.3 Uncorrelated Transformation: Gaussian Random Vectors -- References -- Index -- Wiley Series on Adaptive and Cognitive Dynamic Systems -- EULA. |
520 8# - SUMMARY, ETC. | |
Summary, etc | Bayesian-based signal processing is expected to dominate the future of model-based signal processing for years to come. This book develops the 'Bayesian approach' to statistical signal processing for a variety of useful model sets with an emphasis on nonlinear/non-Gaussian problems, as well as classical techniques. |
650 #0 - SUBJECT ADDED ENTRY--SUBJECT 1 | |
Subject | Signal processing |
General subdivision | Mathematics. |
650 #0 - SUBJECT ADDED ENTRY--SUBJECT 1 | |
Subject | Bayesian statistical decision theory. |
856 42 - ELECTRONIC LOCATION AND ACCESS | |
Uniform Resource Identifier | https://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=8371510 |
942 ## - ADDED ENTRY ELEMENTS (KOHA) | |
Koha item type | eBooks |
264 #1 - | |
-- | Hoboken, New Jersey : |
-- | John Wiley & Sons Inc., |
-- | [2016] |
264 #2 - | |
-- | [Piscataqay, New Jersey] : |
-- | IEEE Xplore, |
-- | [2016] |
336 ## - | |
-- | text |
-- | rdacontent |
337 ## - | |
-- | electronic |
-- | isbdmedia |
338 ## - | |
-- | online resource |
-- | rdacarrier |
No items available.