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ACIVS
2009
Springer

Multiple Human Tracking in High-Density Crowds

13 years 11 months ago
Multiple Human Tracking in High-Density Crowds
Abstract. In this paper, we present a fully automatic approach to multiple human detection and tracking in high density crowds in the presence of extreme occlusion. Human detection and tracking in high density crowds is an unsolved problem. Standard preprocessing techniques such as background modeling fail when most of the scene is in motion. We integrate human detection and tracking into a single framework, and introduce a confirmation-by-classification method to estimate confidence in a tracked trajectory, track humans through occlusions, and eliminate false positive detections. We use a Viola and Jones AdaBoost cascade classifier for detection, a particle filter for tracking, and color histograms for appearance modeling. An experimental evaluation shows that our approach is capable of tracking humans in high density crowds despite occlusions. Key words: Human detection, head detection, pedestrian tracking, crowd tracking, AdaBoost detection cascade, particle filter
Irshad Ali, Matthew N. Dailey
Added 25 May 2010
Updated 25 May 2010
Type Conference
Year 2009
Where ACIVS
Authors Irshad Ali, Matthew N. Dailey
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