A Rapid Introduction to Adaptive Filtering
In this book, the authors provide insights into the basics of adaptive filtering, which are particularly useful for students taking their first steps into this field. They start by studying the problem of minimum mean-square-error filtering, i.e., Wiener filtering. Then, they analyze iterative methods for solving the optimization problem, e.g., the Method of Steepest Descent. By proposing shastic approximations, several basic adaptive algorithms are derived, including Least Mean Squares (LMS), Normalized Least Mean Squares (NLMS) and Sign-error algorithms. The authors provide a general framework to study the stability and steady-state performance of these algorithms. The affine Projection Algorithm (APA) which provides faster convergence at the expense of computational complexity (although fast implementations can be used) is also presented. In addition, the Least Squares (LS) method and its recursive version (RLS), including fast implementations are discussed. The book closes withthe discussion of several topics of interest in the adaptive filtering field.
1113775723
A Rapid Introduction to Adaptive Filtering
In this book, the authors provide insights into the basics of adaptive filtering, which are particularly useful for students taking their first steps into this field. They start by studying the problem of minimum mean-square-error filtering, i.e., Wiener filtering. Then, they analyze iterative methods for solving the optimization problem, e.g., the Method of Steepest Descent. By proposing shastic approximations, several basic adaptive algorithms are derived, including Least Mean Squares (LMS), Normalized Least Mean Squares (NLMS) and Sign-error algorithms. The authors provide a general framework to study the stability and steady-state performance of these algorithms. The affine Projection Algorithm (APA) which provides faster convergence at the expense of computational complexity (although fast implementations can be used) is also presented. In addition, the Least Squares (LS) method and its recursive version (RLS), including fast implementations are discussed. The book closes withthe discussion of several topics of interest in the adaptive filtering field.
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A Rapid Introduction to Adaptive Filtering

A Rapid Introduction to Adaptive Filtering

by Leonardo Rey Vega, Hernan Rey
A Rapid Introduction to Adaptive Filtering

A Rapid Introduction to Adaptive Filtering

by Leonardo Rey Vega, Hernan Rey

Paperback(2013)

$54.99 
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Overview

In this book, the authors provide insights into the basics of adaptive filtering, which are particularly useful for students taking their first steps into this field. They start by studying the problem of minimum mean-square-error filtering, i.e., Wiener filtering. Then, they analyze iterative methods for solving the optimization problem, e.g., the Method of Steepest Descent. By proposing shastic approximations, several basic adaptive algorithms are derived, including Least Mean Squares (LMS), Normalized Least Mean Squares (NLMS) and Sign-error algorithms. The authors provide a general framework to study the stability and steady-state performance of these algorithms. The affine Projection Algorithm (APA) which provides faster convergence at the expense of computational complexity (although fast implementations can be used) is also presented. In addition, the Least Squares (LS) method and its recursive version (RLS), including fast implementations are discussed. The book closes withthe discussion of several topics of interest in the adaptive filtering field.

Product Details

ISBN-13: 9783642302985
Publisher: Springer Berlin Heidelberg
Publication date: 08/04/2012
Series: SpringerBriefs in Electrical and Computer Engineering
Edition description: 2013
Pages: 122
Product dimensions: 6.10(w) x 9.25(h) x 0.01(d)

Table of Contents

Wiener Filtering and examples.- Steepest descent procedure.- Shastic gradient adaptive filtering: LMS (Least Mean Squares), NLMS (Normalized Mean Squares).- Sign-error algorithm, APA (Affine Projection Algorithms).- Convergence results.- Applications.- LS (Least Squares) and RLS (Recursive Least Squares).- Computational complexity and fast implementations.- Applications.
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