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Action Search by Example Using Randomized Visual Vocabularies

机译:通过示例使用随机视觉词汇进行动作搜索

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摘要

Because actions can be small video objects, it is a challenging problem to search for similar actions in crowded and dynamic scenes when a single query example is provided. We propose a fast action search method that can efficiently locate similar actions spatiotemporally. Both the query action and the video datasets are characterized by spatio-temporal interest points. Instead of using a unified visual vocabulary to index all interest points in the database, we propose randomized visual vocabularies to enable fast and robust interest point matching. To accelerate action localization, we have developed a coarse-to-fine video subvolume search scheme, which is several orders of magnitude faster than the existing spatio-temporal branch and bound search. Our experiments on cross-dataset action search show promising results when compared with the state of the arts. Additional experiments on a 5-h versatile video dataset validate the efficiency of our method, where an action search can be finished in just 37.6 s on a regular desktop machine.
机译:因为动作可以是小的视频对象,所以当提供单个查询示例时,在拥挤而动态的场景中搜索类似动作是一个具有挑战性的问题。我们提出一种快速动作搜索方法,该方法可以有效地时空定位相似的动作。查询动作和视频数据集均以时空兴趣点为特征。代替使用统一的可视词汇表来索引数据库中的所有兴趣点,我们建议使用随机可视词汇表来实现快速而可靠的兴趣点匹配。为了加速动作定位,我们开发了一种从粗到细的视频子体积搜索方案,该方案比现有的时空分支和边界搜索快几个数量级。与现有技术相比,我们在跨数据集动作搜索中的实验显示出令人鼓舞的结果。在5小时通用视频数据集上进行的其他实验验证了我们方法的效率,在常规台式机上,动作搜索可以在37.6 s内完成。

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