Finding Gait in Space and Time

Pattern Recognition, 2006. ICPR 2006. 18th International Conference(2006)

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摘要
We describe an approach to characterize the signatures generated by walking humans in spatio-temporal domain. To describe the computational model for this periodic pattern, we take the mathematical theory of geometry group theory, which is widely used in crystallographic structure research. Both empirical and theoretical analyses prove that spatio-temporal helical patterns generated by legs belong to the Frieze Groups because they can be characterized by a repetitive motif along the direction of walking. The theory is applied to an automatic detection-and-tracking system capable of counting heads and handling occlusion by recognizing such patterns. Experimental results for videos acquired from both static and moving ground sensors are presented. Our algorithm demonstrates robustness to non-rigid human deformation as well as background clutter
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关键词
spatio-temporal helical pattern,geometry group theory,frieze groups,automatic detection-and-tracking system,pattern recognition,motion signature characterization,mathematical theory,spatiotemporal helical patterns,spatiotemporal domain,periodic pattern,spatio-temporal domain,occlusion handling,background clutter,crystallographic structure research,gait analysis,finding gait,computer vision,computational model,walking humans,head counting,group theory,image motion analysis,tracking system,computer model
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