Title :
Video understanding for metro surveillance
Author :
Cupillard, F. ; Avanzi, A. ; Bremond, F. ; Thonnat, Monique
Abstract :
We propose in this paper an approach for recognising either isolated individual, group of people or crowd behaviours in the context of visual surveillance of metro scenes using multiple cameras. In this context, a behaviour recognition module relies on a vision module composed of three tasks: (a) motion detection and frame to frame tracking, (b) multiple cameras combination and (c) long term tracking of individuals, groups of people and crowd evolving in the scene. For each tracked actor, the behaviour recognition module performs three levels of reasoning: states, events and scenarios. We have also defined a general framework to easily combine and tune various recognition methods (e.g. automaton, Bayesian network or AND/OR tree) dedicated to the analysis of specific situations (e.g. mono/multi actors activities, numerical/symbolic actions or temporal scenarios). Validation results on different methods used to recognise specific behaviours are described.
Keywords :
behavioural sciences computing; belief networks; computer vision; gesture recognition; motion measurement; AND/OR tree; Bayesian network; automaton; behaviour recognition module; behavioural sciences computing; frame to frame tracking; metro scenes; metro surveillance; mono/multi actors activities; motion detection; multiple cameras; numerical/symbolic actions; temporal scenarios; vision module; visual surveillance; Automata; Cameras; Detectors; HDTV; Layout; Motion detection; Object detection; Streaming media; Surveillance; Tracking;
Conference_Titel :
Networking, Sensing and Control, 2004 IEEE International Conference on
Print_ISBN :
0-7803-8193-9
DOI :
10.1109/ICNSC.2004.1297432