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Content-based retrieval of human actions from realistic video databases

机译:从现实的视频数据库中基于内容的人类动作检索

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摘要

Due to the increasing amount of video data available in various databases, on the Internet and elsewhere, new methods of managing these data are required, leading to the development of content-based video retrieval systems. We explore several recently developed action representation and information retrieval techniques in a human action retrieval system. These techniques include various means of local feature extraction; soft-assignment clustering; Bag-of-Words, vocabulary guided and spatio-temporal pyramid matches for action representation; SVMs and ABRS-SVMs for relevance feedback. Successful application of relevance feedback in particular will result in far more practical systems. We evaluate the performance of several combinations of the above techniques in three realistic action datasets: UCF Sports, UCF YouTube and HOHA2.
机译:由于在因特网和其他地方在各种数据库中可用的视频数据量不断增加,需要管理这些数据的新方法,从而导致了基于内容的视频检索系统的发展。我们在人类动作检索系统中探索几种最近开发的动作表示和信息检索技术。这些技术包括各种局部特征提取方法。软分配聚类;单词袋,词汇引导和时空金字塔匹配,以表示动作; SVM和ABRS-SVM用于相关性反馈。成功地应用相关性反馈将导致更加实用的系统。我们在三个现实动作数据集中评估了上述技术的几种组合的性能:UCF体育,UCF YouTube和HOHA2。

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