Space-Time Tree Ensemble for Action Recognition and Localization

被引:0
|
作者
Shugao Ma
Jianming Zhang
Stan Sclaroff
Nazli Ikizler-Cinbis
Leonid Sigal
机构
[1] Boston University,Computer Science
[2] Adobe Research,Computer Engineering
[3] Hacettepe University,undefined
[4] Disney Research,undefined
来源
关键词
Action recognition; Action localization; Space-time tree structure;
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学科分类号
摘要
Human actions are, inherently, structured patterns of body movements. We explore ensembles of hierarchical spatio-temporal trees, discovered directly from training data, to model these structures for action recognition and spatial localization. Discovery of frequent and discriminative tree structures is challenging due to the exponential search space, particularly if one allows partial matching. We address this by first building a concise action word vocabulary via discriminative clustering of the hierarchical space-time segments, which is a two-level video representation that captures both static and non-static relevant space-time segments of the video. Using this vocabulary we then utilize tree mining with subsequent tree clustering and ranking to select a compact set of discriminative tree patterns. Our experiments show that these tree patterns, alone, or in combination with shorter patterns (action words and pairwise patterns) achieve promising performance on three challenging datasets: UCF Sports, HighFive and Hollywood3D. Moreover, we perform cross-dataset validation, using trees learned on HighFive to recognize the same actions in Hollywood3D, and using trees learned on UCF-Sports to recognize and localize the similar actions in JHMDB. The results demonstrate the potential for cross-dataset generalization of the trees our approach discovers.
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页码:314 / 332
页数:18
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