
Handbook on Soft Computing for Video Surveillance
Chapman & Hall/CRC (Publisher)
1st Edition
Will be published approx. on 25. January 2012
Book
Hardback
342 pages
978-1-4398-5684-0 (ISBN)
Description
Information on integrating soft computing techniques into video surveillance is widely scattered among conference papers, journal articles, and books. Bringing this research together in one source, Handbook on Soft Computing for Video Surveillance illustrates the application of soft computing techniques to different tasks in video surveillance. Worldwide experts in the field present novel solutions to video surveillance problems and discuss future trends.
After an introduction to video surveillance systems and soft computing tools, the book gives examples of neural network-based approaches for solving video surveillance tasks and describes summarization techniques for content identification. Covering a broad spectrum of video surveillance topics, the remaining chapters explain how soft computing techniques are used to detect moving objects, track objects, and classify and recognize target objects. The book also explores advanced surveillance systems under development.
Incorporating both existing and new ideas, this handbook unifies the basic concepts, theories, algorithms, and applications of soft computing. It demonstrates why and how soft computing methodologies can be used in various video surveillance problems.
After an introduction to video surveillance systems and soft computing tools, the book gives examples of neural network-based approaches for solving video surveillance tasks and describes summarization techniques for content identification. Covering a broad spectrum of video surveillance topics, the remaining chapters explain how soft computing techniques are used to detect moving objects, track objects, and classify and recognize target objects. The book also explores advanced surveillance systems under development.
Incorporating both existing and new ideas, this handbook unifies the basic concepts, theories, algorithms, and applications of soft computing. It demonstrates why and how soft computing methodologies can be used in various video surveillance problems.
More details
Series
Language
English
Place of publication
Boca Raton
United States
Publishing group
Taylor & Francis Inc
Target group
College/higher education
Computer science professionals interested in fuzzy systems, soft computing, and pattern recognition; electrical engineers working with neural networks, computer vision, and fuzzy systems; applied mathematicians.
Illustrations
110 s/w Abbildungen, 31 s/w Tabellen
31 Tables, black and white; 110 Illustrations, black and white
Dimensions
Height: 234 mm
Width: 156 mm
Weight
610 gr
ISBN-13
978-1-4398-5684-0 (9781439856840)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Sankar K. Pal | Alfredo Petrosino | Lucia Maddalena
Handbook on Soft Computing for Video Surveillance
E-Book
01/2012
1st Edition
Chapman & Hall/CRC
€225.99
Available for download

Sankar K. Pal | Alfredo Petrosino | Lucia Maddalena
Handbook on Soft Computing for Video Surveillance
E-Book
01/2012
1st Edition
Chapman and Hall
€225.99
Available for download
Persons
Sankar K. Pal is a distinguished scientist and former director of the Indian Statistical Institute. He is a J.C. Bose Fellow of the government of India and a fellow of IEEE, TWAS, IAPR, and IFSA. Dr. Pal has authored more than 400 research publications and has been a recipient of the S.S. Bhatnagar Prize of India. His research interests include pattern recognition and machine learning, image processing, data mining and web intelligence, soft computing, neural nets, genetic algorithms, fuzzy and rough sets, and bioinformatics.
Alfredo Petrosino is an associate professor of computer science at the University of Naples Parthenope. He is a senior member of IEEE and a member of IAPR and INNS. Mr. Petrosino has authored more than 100 research publications and has been a recipient of the Academic Price for Cybernetics from the Italian Academy of Science, Arts, and Literature. His research interests include computer vision, image and video analysis, pattern recognition, neural networks, fuzzy and rough sets, and data mining.
Lucia Maddalena is a researcher at the Institute for High-Performance Computing and Networking of the National Research Council of Italy. Dr. Maddalena is a member of IEEE and IAPR and an associate editor of the International Journal of Biomedical Data Mining. Her research interests include image processing and multimedia systems in high-performance computational environments.
Alfredo Petrosino is an associate professor of computer science at the University of Naples Parthenope. He is a senior member of IEEE and a member of IAPR and INNS. Mr. Petrosino has authored more than 100 research publications and has been a recipient of the Academic Price for Cybernetics from the Italian Academy of Science, Arts, and Literature. His research interests include computer vision, image and video analysis, pattern recognition, neural networks, fuzzy and rough sets, and data mining.
Lucia Maddalena is a researcher at the Institute for High-Performance Computing and Networking of the National Research Council of Italy. Dr. Maddalena is a member of IEEE and IAPR and an associate editor of the International Journal of Biomedical Data Mining. Her research interests include image processing and multimedia systems in high-performance computational environments.
Content
Introduction to Video Surveillance Systems. The Role of Soft Computing in Image Analysis: Rough-Fuzzy Approach. Neural Networks in Video Surveillance: A Perspective View. Video Summarization and Significance of Content: A Review. Background Subtraction for Visual Surveillance: A Fuzzy Approach. Sensor and Data Fusion: Taxonomy, Challenges, and Applications. Independent Viewpoint Silhouette-Based Human Action Modeling and Recognition. Clustering for Multi-Perspective Video Analytics: A Soft Computing-Based Approach. An Unsupervised Video Shot Boundary Detection Technique Using Fuzzy Entropy Estimation of Video Content. Multi-Robot and Multi-Camera Patrolling. A Network of Audio and Video Sensors for Monitoring Large Environments. Index.