Novelty detection in human tracking based on spatiotemporal oriented energies
Date
2014
Authors
Emami, Ali
Harandi, Mehrtash
Dadgostar, Farhad
Lovell, Brian C
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Pergamon-Elsevier Ltd
Abstract
Integrated analysis of spatial and temporal domains is considered to overcome some of the challenging computer vision problems such as ‘Dynamic Scene Understanding’ and ‘Action Recognition’. In visual tracking, ‘Spatiotemporal Oriented Energy’ (SOE) features are successfully applied to locate the object in cluttered scenes under varying illumination. In contrast to previous studies, this paper introduces SOE features for occlusion modeling and novelty detection in tracking. To this end, we propose a Bayesian state machine that exploits SOE information to analyze occlusion and identify the target status in the course of tracking. The proposed approach can be seamlessly merged with a generic tracking system to prevent template corruption (for example when the target is occluded). Comparative evaluations show that the proposed approach could significantly improve the performance of a generic tracking system in challenging occlusion situations.
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Pattern Recognition
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Journal article
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2037-12-31
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