This book is the second one after the first book named "First
Step to Multi-Dimensional Space Biomimetic Informatics"(in
Chinese), which are both illuminating the novel biomimetic
high-dimensional space geometry computing theory, but this book is
more detailed and systemic. This book consists of three parts,
statistical pattern recognition, biomimetic pattern recognition and
multi-weight neuron. Biomimetic Pattern Recognition and
Multi-weight Neuron are proposed by academician Shoujue Wang at the
start of representing digital data over hundreds of dimensionality
as points, and developed for five years with many applications in
many fields so far.
目錄:
Part I Review of Statistics Pattern Recognition
Chapter 1 Introduction of Pattern Recognition
1.1 Pattern Recognition Concept
1.2 Pattern Recognition System Biasic Processes
1.3 A Brief Survey of Pattern Recognition Appro aches
1.4 Scope and Organization
Chapter 2 Kernel of Statistical Pattern Recognition and
Pre-Precessing
2.1 Question Arise
2.1.1 Question Expression
2.1.2 Empirical Risk Minimization
2.1.3 Generalization Ability and Complexity
2.2 Kernel of Statistical Pattern Recognition
2.2.1 Vapnik-Chervonenkis Dimension
2.2.2 The Bounds of Generalization Ability
2.2.3 The Minimization of Structural Risk
2.3 Preprocessin9
2.4 Feature Extraction and Feature Selection
2.4.1 Curse of Dimensionality
2.4.2 Feature Extraction
2.4.3 Feature Selection
2.5 Support Vector Manchine
2.5.1 The Optimal Hyperplane Under Linearly Separable
2.5.2 The Soft Spacing Under Linearly Nonseparable
2.5.3 The Kernel Function Under Non-Linear Case
2.5.4 Support Vector Machine''s Traits and Advantages
References
Part II Biomimetic Pattern Recognition
Chapter 3 Introduction
Chapter 4 The Foundation of Biomimetic Pattern Recognition
4.1 Overview of High-Dimensional Biomimetic Informatics
4.1.1 The Proposal of the Problem of Computer Imaginal
Thinking
4.1.2 The Principle of High-Dimensional Biomimetic
Informatics
4.2 Basic Contents of High-Dimensional Biomimetic Informatics
4.3 Main Features of High-Dimensional giomimetic Informatics
4 4 Concepts and Mathematical Symbols In High-Dimensional
Biomimetic Informatics
4.4.1 Concepts and Definitions
4.4.2 Mathematical Symbols
4.4.3 Symbolic Computing Methods in Resolving Geometry Computing
Problems
4.4.4 Several Applications in Solving Complicated Geometry
Computing Problems
4.5 Some Applications
4.5.1 Blurred Image Restoration
4.5.2 Uneven Lighting Image Correction
4.5.3 Removing Facial Makeup Disturbances
Chapter 5 The Theory of Biomimetic Pattern Recognition
5.1 The Concept of Biomimetic Pattern Recognition
5.2 The Choice of The Name
5.3 The Developments of Biomimetic Pattern Recognition
5.4 Covering.The Concept of Recognition in Biomimetic Pattern
Recognition
5.5 The Principle of Homology-Continuity: The Starting Point of
Biomimetic Pattern Recognition
5.6 Expansionary Product
5.7 Experiments
5.7.1 The Architecture of the Face Recognition System
5.7.2 Umist Face Data
5.7.3 Pre-treatment
5.7.4 The Realization of SVM Face Recognition Algorithms
5.7.5 The Realization of BPR Face Recognition Algorithms
5.7.6 Experiments Results and Analyzes
5.8 Summary
Chapter 6 Applications
6.1 Object Recognition
6 2 A Multi-Camera Human-Face Personal Identification System
6.3 A Recognition System For Speaker-Independent Continuous
Speech
6.4 Summary
References
Part Ⅲ Multi-Weight Neurons and Networks
Chapter 7 History And Definations of Artificial Neural
Networks
7.1 From Biological Neural Networks to Artificial Neural Networks
and Its Development
7.2 Some Definitions and Concepts of Artificial Neural
Networks
7.3 Unifications and Divergences Between Array-Processors and
Neural Networks
7.4 Artificial Neural Networks'' Effects on Nanoelectronical
Computational Technology
Chapter 8 Geometric Concepts of Artificial Neurons
8.1 Mathematical Expressions of Common Neurons and Their Geometric
Concepts
8.2 General Mathematical Model of Common Neurons and Its Geometric
Concept
8.3 Direction Basis Function Neuron and Its Geometric Concept
8.4 Multi-Threshold Neurons and Networks
Chapter 9 Multi-Weight Neurons and Their Applications
9.1 General Mathematical Expression of Multi-Weight Neurons''
Functions
9.2 Interchangeabilities of Points, Vectors, Hyper Planes in
High-Dimensional Space
9.3 Effect of High-Dimensional Point Distribution Analysis in
Information Technology
9.4 Multi-Weight Neurons are Computing Tools on High-Dimensional
Point Distribution Analysis
9.5 Applications of Multi-Weight Neurons and Networks On Biomimetic
Pattern Recognition
References
Appendix Experts'' Evaluation to The Book