A local-motion-based probabilistic model for visual tracking

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摘要

Color-based tracking is prone to failure in situations where visually similar targets are moving in a close proximity or occlude each other. To deal with the ambiguities in the visual information, we propose an additional color-independent visual model based on the target's local motion. This model is calculated from the optical flow induced by the target in consecutive images. By modifying a color-based particle filter to account for the target's local motion, the combined color/local-motion-based tracker is constructed. We compare the combined tracker to a purely color-based tracker on a challenging dataset from hand tracking, surveillance and sports. The experiments show that the proposed local-motion model largely resolves situations when the target is occluded by, or moves in front of, a visually similar object.

论文关键词:Local motion,Probabilistic visual models,Visual tracking,Occlusion

论文评审过程:Received 31 July 2008, Revised 4 November 2008, Accepted 5 January 2009, Available online 10 January 2009.

论文官网地址:https://doi.org/10.1016/j.patcog.2009.01.002