This paper addresses the problem of automatically acquiring context models from data. Context and human behavior are represented using a state model, called situation model. This model consists of different layers referring to entities, filters, roles, relations, situation and situation relationship. We propose a framework for the automatic acquisition of these different layers. In particular, this paper proposes a novel generic situation acquisition algorithm. The algorithm is also successfully applied to a video surveillance task and is evaluated by the public CAVIAR video database. The results are encouraging.
Citation:
Oliver Brdiczka, Pong C. Yuen, Sofia Zaidenberg, Patrick Reignier, James L. Crowley, "Automatic Acquisition of Context Models and its Application to Video Surveillance," icpr, vol. 1, pp.1175-1178, 18th International Conference on Pattern Recognition (ICPR'06) Volume 1, 2006