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Analysis of Human Actions for Video Indexing

机译:视频索引的人为行为分析

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Automatically understanding human actions is crutial for efficiently indexing many types of videos, such as sports videos, home videos, movies etc. However, it is challenging due to their variances caused by different actors, different scales, and different views. In order to incorporate these variances, most methods in literature have to sacrifice the discriminability of action models. In this paper, we address the tradeoff between invariability and discriminability. We firstly propose a novel set of pixel-wise features which are invariant to actor appearances, scales, and motion directions. Then, multi-prototype action models are constructed to realize view invariance. By leaving the most challenging invariance from feature level to model level, we successfully maintain the discriminability of action models. The extensive experiments demonstrated the good performance of the proposed method.
机译:自动理解人类行为对于有效索引许多类型的视频(例如体育视频,家庭视频,电影等)至关重要。但是,由于不同的演员,不同的比例和不同的视角会导致它们的差异,因此具有挑战性。为了纳入这些差异,文献中的大多数方法都必须牺牲动作模型的可分辨性。在本文中,我们解决了不变性和可区分性之间的权衡问题。我们首先提出一组新颖的像素级特征,这些特征对演员的外观,比例和运动方向是不变的。然后,构建多原型动作模型以实现视图不变性。通过在功能级别到模型级别之间保留最具挑战性的不变性,我们成功地保持了动作模型的可分辨性。大量的实验证明了该方法的良好性能。

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