| Titre : | Adaptive filter theory | | Type de document : | texte imprimé | | Auteurs : | Simon Haykin, Auteur | | Mention d'édition : | 5 th. ed. | | Editeur : | Upper Saddle River, Boston, Columbus : Pearson Education | | Année de publication : | 2014 | | Importance : | 907 p. | | Présentation : | couv. ill. en coul., ill. | | Format : | 23 cm. | | ISBN/ISSN/EAN : | 978-0-273-76408-3 | | Langues : | Anglais (eng) | | Catégories : | AUTOMATISME
| | Index. décimale : | 25-02 Théorie et traitement du signal | | Résumé : | Adaptive Filter Theory, 5e, is ideal for courses in Adaptive Filters. The author examines both the mathematical theory behind various linear adaptive filters and the elements of supervised multilayer perceptrons. In its fifth edition, this highly successful book has been updated and refined to stay current with the field and develop concepts in as unified and accessible a manner as possible. | | Note de contenu : | Contents
Chapter 1 Stochastic Processes and Models
Chapter 2 Wiener Filters
Chapter 3 Linear Prediction
Chapter 4 Method of Steepest Descent
Chapter 5 Method of Stochastic Gradient Descent
Chapter 6 The Least-Mean-Square (LMS) Algorithm
Chapter 7 Normalized Least-Mean-Square (LMS) Algorithm and its generalization
Chapter 8 Block-Adaptive Filters
Chapter 9 Method of Least Squares
Chapter 10 The Recursive Least-Squares (RLS) Algorithm
Chapter 11 Robustness
Chapter 12 Finite-Precision Effects
Chapter 13 Adaptation in Nonstationary Environments
Chapter 14 Kalman Filters
Chapter 15 Square-Root Adaptive Filtering Algorithms
Chapter 16 Order-Recursive Adaptive Filtering Algorithm
Chapter 17 Blind Deconvolution
Appendix
Index |
Adaptive filter theory [texte imprimé] / Simon Haykin, Auteur . - 5 th. ed. . - Upper Saddle River, Boston, Columbus : Pearson Education, 2014 . - 907 p. : couv. ill. en coul., ill. ; 23 cm. ISBN : 978-0-273-76408-3 Langues : Anglais ( eng) | Catégories : | AUTOMATISME
| | Index. décimale : | 25-02 Théorie et traitement du signal | | Résumé : | Adaptive Filter Theory, 5e, is ideal for courses in Adaptive Filters. The author examines both the mathematical theory behind various linear adaptive filters and the elements of supervised multilayer perceptrons. In its fifth edition, this highly successful book has been updated and refined to stay current with the field and develop concepts in as unified and accessible a manner as possible. | | Note de contenu : | Contents
Chapter 1 Stochastic Processes and Models
Chapter 2 Wiener Filters
Chapter 3 Linear Prediction
Chapter 4 Method of Steepest Descent
Chapter 5 Method of Stochastic Gradient Descent
Chapter 6 The Least-Mean-Square (LMS) Algorithm
Chapter 7 Normalized Least-Mean-Square (LMS) Algorithm and its generalization
Chapter 8 Block-Adaptive Filters
Chapter 9 Method of Least Squares
Chapter 10 The Recursive Least-Squares (RLS) Algorithm
Chapter 11 Robustness
Chapter 12 Finite-Precision Effects
Chapter 13 Adaptation in Nonstationary Environments
Chapter 14 Kalman Filters
Chapter 15 Square-Root Adaptive Filtering Algorithms
Chapter 16 Order-Recursive Adaptive Filtering Algorithm
Chapter 17 Blind Deconvolution
Appendix
Index |
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