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BMVC
2001

Classifying Surveillance Events from Attributes and Behaviour

14 years 2 months ago
Classifying Surveillance Events from Attributes and Behaviour
In order to develop a high-level description of events unfolding in a typical surveillance scenario, each successfully tracked event must be classified into type and behaviour. In common with a number of approaches this paper employs a Bayesian classifier to determine type from event attribute such as height, width and velocity. The classifier, however, is extended to integrate all available evidence from the entire track. A not untypical Hidden Markov Model approach has been employed to model the common event behaviours typical of a car-park environment. Both techniques have been probabilistically integrated to generate accurate type and behaviour classifications.
Paolo Remagnino, Graeme A. Jones
Added 30 Sep 2010
Updated 30 Sep 2010
Type Conference
Year 2001
Where BMVC
Authors Paolo Remagnino, Graeme A. Jones
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