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Neural networks for intelligent signal processing / Anthony Zaknich.

EBSCOhost Academic eBook Collection (North America) Available online

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EBSCOhost eBook Community College Collection Available online

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Ebook Central Academic Complete Available online

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Format:
Book
Author/Creator:
Zaknich, Anthony.
Series:
Series on innovative intelligence ; v. 4.
Series on innovative intelligence ; v. 4
Language:
English
Subjects (All):
Neural networks (Computer science).
Signal processing--Digital techniques.
Signal processing.
Intelligent control systems.
Physical Description:
1 online resource (510 p.)
Edition:
1st ed.
Place of Publication:
River Edge, NJ : World Scientific, c2003.
Language Note:
English
Summary:
This book provides a thorough theoretical and practical introduction to the application of neural networks to pattern recognition and intelligent signal processing. It has been tested on students, unfamiliar with neural networks, who were able to pick up enough details to successfully complete their masters or final year undergraduate projects. The text also presents a comprehensive treatment of a class of neural networks called common bandwidth spherical basis function NNs, including the probabilistic NN, the modified probabilistic NN and the general regression. Contents
Contents:
Contents; Acknowledgments; Foreword; Preface; 1. Introduction; 1.1 Motivation for ANNs; 1.2 ANN Definitions and Main Types; 1.3 Specific ANN Models; 1.4 ANN Black Box Model; 1.5 ANN Implementation; 1.6 When To Use an ANN; 1.7 How To Use an ANN
1.8 General Applications 1.9 Pattern Recognition Examples; 1.9.1 Sheep Eating Phase Identification from Jaw Sounds; 1.9.2 Particle Isolation in SEM Images; 1.9.3 Oxalate Needle Detection in Microscope Images ; 1.10 Function Mapping and Filtering Examples
1.10.1 Water Level from Resonant Sound Analysis 1.10.2 Nonlinear Signal Filtering; 1.11 Motor Control Example; 1.12 ANN Summary; References; 2. A Brief Historical Overview; 2.1 ANN History to 1970; 2.1.1 Key Events prior to 1970; 2.2 ANN History after 1970
2.2.1 Key Events after 1970 to the Mid 1980's 2.2.2 Developments after the Mid 1980's; 2.2.3 Nonparametric Learning From Finite Data; 2.3 Reasons for the Resurgence of Interest in ANNs; 2.4 Historical Summary ; References; 3. Basic Concepts; 3.1 The Basic Model of the Neuron
3.2 Activation Functions 3.3 Topologies; 3.4 Learning; 3.4.1 A Basic Supervised Learning Algorithm; 3.4.2 A Basic Unsupervised Learning Algorithm; 3.5 The Basic McCulloch Pitts and Perceptron Models; 3.6 Vectors Spaces and Matrix Models; 3.6.1 ANN Classifiers
3.6.2 Vectors and Feature Spaces
Notes:
Description based upon print version of record.
Includes bibliographical references and index.
ISBN:
9786611947873
9781281947871
1281947873
9789812796851
9812796851
OCLC:
879023757

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