Object tracking with global and local dynamics model

Wavelet Analysis and Pattern Recognition(2012)

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摘要
We present a novel method for object tracking using global and local states of object in video surveillance application. Most traditional object models using global appearance cannot handle partial occlusion effectively. The unoccluded part of partially visible object retains invariable appearance. Therefore, we introduce global and local dynamics model as our object model to overcome partial occlusion using local feature, and apply it to Bayesian tracking problem using motion-based particle filtering. Finally, experiments on some video surveillance sequences demonstrate the effectiveness and robustness of our approach for tracking object motions in video surveillance.
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关键词
bayes methods,computer graphics,feature extraction,image motion analysis,object tracking,particle filtering (numerical methods),video surveillance,bayesian tracking problem,global appearance,global dynamics model,local dynamics model,motion-based particle filtering,object local states,object model,object motion tracking,partial occlusion,partially visible object,video surveillance application,particle filtering,dynamics,filtering,estimation,bayesian methods
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