3d Shape Context And Distance Transform For Action Recognition

19TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION, VOLS 1-6(2008)

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摘要
We propose the use of 3D (2D+time) Shape Context to recognize the spatial and temporal details inherent in human actions. We represent an action in a video sequence by a 3D point cloud extracted by sampling 2D silhouettes over time. A non-uniform sampling method is introduced that gives preference to fast moving body parts using a Euclidean 3D Distance Transform. Actions are then classified by matching the extracted point clouds. Our proposed approach is based on a global matching and does not require specific training to learn the model. We test the approach thoroughly on two publicly available datasets and compare to several state-of-the-art methods. The achieved classification accuracy is on par with or superior to the best results reported to date.
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关键词
meteorology,optical filters,distance transform,image classification,point cloud,shape,computational geometry,sampling methods
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