Multiple Granularity Analysis for Fine-Grained Action Detection

CVPR(2014)

引用 84|浏览66
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摘要
We propose to decompose the fine-grained human activ- ity analysis problem into two sequential tasks with increas- ing granularity. Firstly, we infer the coarse interaction sta- tus, i.e., which object is being manipulated and where it is. Knowing that the major challenge is frequent mutual oc- clusions during manipulation, we propose an \"interaction tracking\" framework in which hand/object position and in- teraction status are jointly tracked by explicitly modeling the contextual information between mutual occlusion and interaction status. Secondly, the inferred hand/object posi- tion and interaction status are utilized to provide 1) more compact feature pooling by effectively pruning large num- ber of motion features from irrelevant spatio-temporal po- sitions and 2) discriminative action detection by a granu- larity fusion strategy. Comprehensive experiments on two challenging fine-grained activity datasets (i.e., cooking ac- tion) show that the proposed framework achieves high ac- curacy/robustness in tracking multiple mutually occluded hands/objects during manipulation as well as significant performance improvement on fine-grained action detection over state-of-the-art methods.
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关键词
fine-grained activity datasets,action detection,hand-object position,interaction tracking,spatiotemporal phenomena,interaction tracking framework,mutual occlusion status,mutual interaction status,feature extraction,fine-grained human activity analysis problem,spatio-temporal positions,object tracking,fine-grained action detection,object detection,feature pooling,granularity fusion strategy,multiple granularity, action detection, interaction tracking,motion features,multiple granularity analysis,multiple granularity,manganese,indexes,tracking,histograms,visualization,training data
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