基於機器的智慧型人臉識別

scien ction Version

圖書信息

出版社: 高等教育出版社; 第1版 (2010年1月1日)
外文書名: Machine-based Intelligent Face Recognition
精裝: 171頁
正文語種: 英語
開本: 16
ISBN: 9787040223552
條形碼: 9787040223552
尺寸: 23.8 x 16 x 1.6 cm
重量: 458 g

作者簡介

Dr. Dengpan Mou,Dr.-Ing. and MSc from University of Ulm, Germany,is with Harman/Bedger Automotive Systems GmbH as technology expert,working on video processing, computer vision, machine learning and other research and development topics.

內容簡介

《基於機器的智慧型人臉識別》內容簡介:Machine, based Intelligent Face Recognition discusses the general engineering method of imitating intelligent human Brains for video-based face recognition in a fundamental way, which is completely unsupervised,automatic, self-learning,self-updated and robust. It also overviews stateof-the-art researchon cognitive-based biometrics and machine-based biometrics, and especially the advances in face recognition.
This book is intended for scientists, researchers, engineers, and students in the field of computer vision, machine intelligence, and particularly of face recognition.

目錄

Introduction
1.1 Face Recognition——Machine Versus Human
1.2 Proposed Approach
1.3 Prospective Applications
1.3.1 Recognition in the Future Intelligent Home
1.3.2 Automotive
1.3.3 Mobile Phone for Children
1.4 Outline
References
2 Fundamentals and Advances in Biometrics and Face Recognition
2.1 Generalized Biometric Recognition
2.2 Cognitive-based Biometric Recognition
2.2.1 Introduction
2.2.2 History of Cognitive Science
2.2.3 Human Brain Structure
2.2.4 Generic Methods in Cognitive Science
2.2.5 Visual Function in Human Brain
2.2.6 General Cognitive-based Object Recognition
2.2.7 Cognitive-based Face Recognition
2.2.8 Inspirations from Cognitive-based Face Recognition
2.3 Machine-based Biometric Recognition
2.3.1 Introduction
2.3.2 Biometric Recognition Tasks
2.3.3 enrollment——a Special Biometric PROCEDURE
2.3.4 Biometric Methods Overview
2.3.5 Fingerprint Recognition
2.4 Generalized Face Recognition Procedure
2.5 Machine-based Face Detection
2.5.1 Face Detection Categories
2.6 Machine-based Face tracking,
2.7 Machine-based Face Recognition
2.7.1 Overview
2.7.2 Benchmark Studies of Face Recognition
2.7.3 Some General Terms Used in Face Recognition
2.7.4 Recognition Procedures and Methods
2.7.5 Video-based Recognition
2.7.6 Unsupervised and Fully Automatic Approaches
2.8 Summary and Discussions
References
3 Combined Face Detection and Tracking Methods
3.1 Introduction
3.2 Image-based Face Detection
3.2.1 Choice of the Detection Algorithm
3.2.2 Overview of the Detection Algorithm
3.2.3 Face Region Estimation
3.2.4 Face Detection Quality
3.3 Temporal-based Face Detection
3.3.1 Overview
3.3.2 Search Region Estimation
3.3.3 Analysis of Temporal Changes
3.4 Summary
3.5 Further Discussions
References
4 Automatic Face Recognition
4.1 Overview
4.2 Feature Extraction and Encoding
4.3 Matching/Classification
4.3.1 Image-based Classifier
4.3.2 Adaptive Similarity Threshold
4.3.3 Temporal Filtering
4.4 Combined Same Face Decision Algorithms
4.5 Summary
References
5 Unsupervised Face Database Construction
5.1 Introduction
5.2 Backgrounds for Constructing Face Databases
5.2.1 Supervised Learning
5.2.2 Unsupervised Learning
5.2.3 Clustering Analysis
5.3 Database Structure
5.3.1 A Fused Clustering Method
5.3.2 Parameters in the Proposed Structure
5.4 Features of an Optimum Database
References
6 State Machine Based Automatic Procedure
6.1 Introduction
6.2 States Explorations
7 System Implementation
7.1. Introduction
7.2 Typical Hardware Configuration
7.3 Software Implementation
7.3.1 Overview
7.3.2 Implementation Efforts
7.4 Technology Dependent Parameters
7.5 Summary
References
8 Performance Analysis
8.1 Introduction
8.2 Performance of Face Detection
8.3 Performance of Face Recognition
8.4 Performance of Database Construction Algorithms
8.5 Overall Performance of the Whole System
8.5.1 Online Version
8.5.2 Offiine Version
8.5.3 Critical Assumptions
8.6 Summary
References
9 Conclusions and Future Directions
9.1 Conclusions
9.2 Future Directions
Index

相關詞條

熱門詞條

聯絡我們