一种活动识别的因子分解方法

A. Roy-Chowdhury, R. Chellappa
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引用次数: 39

摘要

在视频理解中,理解由一组移动物体的相互作用引起的活动是一个重要问题,在监视和监控中有应用。一种特殊情况是,当对象足够小,可以在二维平面上表示为点。在本文中,我们引入了一种用适当定义的形状空间中点的形态变形来表示活动的新方法。我们不是直接从单个点的运动轨迹推断活动,而是建议通过在任何时间t连接这些点质量的位置形成的多边形形状来模拟活动,以及活动展开时的变形。给定视频中一系列帧上2D点的位置,使用矩阵的分解定理来获得每个活动的一组基形状。一个未知的活动现在可以通过投射到这些基本形状来识别。此外,一旦识别出特定的活动,就可以通过基本形状的变形来模拟与之相关的偏差。这用于识别异常活动。我们用机场监控环境中的真实视频序列证明了算法的适用性。我们能够识别出在这种环境下发生的主要活动,并检测出异常活动。
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A Factorization Approach for Activity Recognition
Understanding activities arising out of the interactions of a configuration of moving objects is an important problem in video understanding, with applications in surveillance and monitoring. A special situation is when the objects are small enough to be represented as points on a 2D plane. In this paper, we introduce a novel method of representing the activity by the deformations of the point configuration in a properly defined shape space. Instead of inferring about the activity directly from the motion tracks of the individual points, we propose to model an activity by the polygonal shape formed by joining the locations of these point masses at any time t, and its deformation as the activity unfolds. Given the locations of the 2D points over a sequence of frames in the video, the factorization theorem for matrices is used to obtain a set of basis shapes for each activity. An unknown activity can now be recognized by projecting onto these basis shapes. Also, once a specific activity is recognized, the deviations from it can be modeled by the deformations from the basis shape. This is used to identify an abnormal activity. We demonstrate the applicability of our algorithm using real-life video sequences in an airport surveillance environment. We are able to identify the major activities that take place in that setting and detect abnormal ones.
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