Video understanding for complex activity recognition

被引:0
|
作者
Florent Fusier
Valéry Valentin
François Brémond
Monique Thonnat
Mark Borg
David Thirde
James Ferryman
机构
[1] ORION Team,Computational Vision Group
[2] INRIA Sophia-Antipolis,undefined
[3] The University of Reading,undefined
[4] Whiteknights,undefined
来源
关键词
Video surveillance; Video understanding; Scene tracking; Activity recognition; Airport activity monitoring;
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学科分类号
摘要
This paper presents a real-time video understanding system which automatically recognises activities occurring in environments observed through video surveillance cameras. Our approach consists in three main stages: Scene Tracking, Coherence Maintenance, and Scene Understanding. The main challenges are to provide a robust tracking process to be able to recognise events in outdoor and in real applications conditions, to allow the monitoring of a large scene through a camera network, and to automatically recognise complex events involving several actors interacting with each others. This approach has been validated for Airport Activity Monitoring in the framework of the European project AVITRACK.
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页码:167 / 188
页数:21
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