DocumentCode
2408512
Title
Advanced visual surveillance using Bayesian networks
Author
Buxton, Hilary
Author_Institution
Sch. of Cognitive & Comput. Sci., Sussex Univ., Brighton, UK
fYear
1997
fDate
35499
Firstpage
42614
Lastpage
42618
Abstract
Visual surveillance primarily involves the interpretation of image sequences. Advanced visual surveillance goes further and automates the detection of predefined alarm events in a given context. However, it is the intelligent, dynamic scene and event discrimination which lies at the heart of advanced vision systems. Developing a systematic methodology for the design, implementation and integration of such systems is currently a very important research problem. One way of overcoming some of these problems is to build in more knowledge of the scene and tasks. For example, in object detection and tracking in the image, we have demonstrated that it is beneficial to bring scene-based knowledge of expected object trajectories, size and speed into the interpretation process. We have also shown that both scene and task-based knowledge allows for selective processing under attentional control for behavioural evaluation. In addition to this general requirement for integration of information in advanced visual surveillance, we have adopted more specific requirements. A fixed, precalibrated camera model and precomputed ground-plane geometry is used to simplify the interpretation of the scene data in the on-line system. We also adopt a knowledge-based approach in which domain specific models of the dynamic objects, events and behaviour are used to meet the requirement for sensitive and accurate performance
Keywords
surveillance; Bayesian networks; advanced vision systems; advanced visual surveillance; ground-plane geometry; image sequences; on-line system; precalibrated camera model; scene and event discrimination; scene data; scene-based knowledge; visual surveillance;
fLanguage
English
Publisher
iet
Conference_Titel
Image Processing for Security Applications (Digest No.: 1997/074), IEE Colloquium on
Conference_Location
London
Type
conf
DOI
10.1049/ic:19970385
Filename
637249
Link To Document