Supervised and unsupervised pattern recognition : feature extraction and computational intelligence
Author(s)
Bibliographic Information
Supervised and unsupervised pattern recognition : feature extraction and computational intelligence
(Industrial electronics series)
CRC Press, c2000
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Note
Includes bibliographical references and index
Description and Table of Contents
Description
There are many books on neural networks, some of which cover computational intelligence, but none that incorporate both feature extraction and computational intelligence, as Supervised and Unsupervised Pattern Recognition does. This volume describes the application of a novel, unsupervised pattern recognition scheme to the classification of various types of waveforms and images.
This substantial collection of recent research begins with an introduction to Neural Networks, classifiers, and feature extraction methods. It then addresses unsupervised and fuzzy neural networks and their applications to handwritten character recognition and recognition of normal and abnormal visual evoked potentials. The third section deals with advanced neural network architectures-including modular design-and their applications to medicine and three-dimensional NN architecture simulating brain functions. The final section discusses general applications and simulations, such as the establishment of a brain-computer link, speaker identification, and face recognition.
In the quickly changing field of computational intelligence, every discovery is significant. Supervised and Unsupervised Pattern Recognition gives you access to many notable findings in one convenient volume.
Table of Contents
classifiers-an overview
Criteria for optimal classifier design
Categorizing the Classifiers
Classifiers
Neural Networks
Comparison of Experimental Results
System Performance Assessment
Analysis of Prediction Rates from Bootstrapping Assessment
ARTIFICIAL NEURAL NETWORKS: DEFINITIONS, METHODS, APPLICATIONS
Definitions
Training Algorithm
Some Applications
A SYSTEM FOR HANDWRITTEN DIGIT RECOGNITION
Preprocessing of Handwritten Digit Images
Zernike Moments (ZM) for Characterization of Image Patterns
Dimensionality Reduction
Analysis of Prediction Error Rates from Bootstrapping Assessment
Summary
OTHER TYPES OF FEATURE EXTRACTION METHODS
Introduction
Wavelets
Invariant Moments
Entropy
Cepstrum Analysis
Fractal Dimension
Entropy
SGLD Texture Features
FUZZY NEURAL NETWORKS
Pattern Recognition
Optimization
System Design
Clustering
APPLICATION TO HANDWRITTEN DIGITS
Introduction to Character Recognition
Data Collection
Results
Discussion
Summary
A UNSUPERVISED NEURAL NETWORK SYSTEM FOR VISUAL EVOKED POTENTIALS
Data Collection and Preprocessing
System Design
Results
Discussion
CLASSIFICATION OF MAMMOGRAMS USING A MODULAR NEURAL NETWORK
Methods and System Overview
Modular Neural Networks
Neural Network Training
Classification Results
The Process of Obtaining Results
ALOPEX Parameters
Generalization
Conclusions
"VISUAL OPHTHALMOLOGIST": AN AUTOMATED SYSTEM FOR CLASSIFICATION OF RETINAL DAMAGE
System Overview
Modular Neural Networks
Applications to Ophthalmology
Results
Discussion
A THREE-DIMENSIONAL NEURAL NETWORK ARCHITECTURE
The Neural Network Architecture
Simulations
Discussion
A FEATURE EXTRACTION ALGORITHM USING CONNECTIVITY STRENGTHS AND MOMENT INVARIANTS
ALOPEX Algorithms
Moment Invariants and ALOPEX
Results and Discussion
MULTILAYER PERCEPTRONS WITH ALOPEX: 2D-TEMPLATE MATCHING AND VLSI IMPLEMENTATION
Multilayer Perceptron and Template Matching
VLSI Implementation of ALOPEX
IMPLEMENTING NEURAL NETWORKS IN SILICON
The Living Neuron
Neuromorphic Models
Neurological Process Modeling
SPEAKER IDENTIFICATION THROUGH WAVELET MULTIRESOLUTION DECOMPOSITION AND ALOPEX
Multiresolution Analysis through Wavelet Decomposition
Pattern Recognition with ALOPEX
Methods
Results
Discussion
FACE RECOGNITION IN ALZHEIMER'S DISEASE: A SIMULATION
Methods
Results
Discussion
SELF-LEARNING LAYERED NEURAL NETWORKS
Neocognition and Pattern Classification
Objectives
Methods
Study A
Study B
Summary and Discussion
BIOLOGICAL AND MACHINE VISION
Distributed Representation
The Model
A Modified ALOPEX Algorithm
Application to Template Matching
Brain-to-Computer Link
Discussion
Each section also has an introduction and references
by "Nielsen BookData"