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A Framework for Analysis of Surveillance Videos

机译:监控视频分析框架

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摘要

In this paper, we propose a novel framework for automated analysis of surveillance videos. By analysis, we imply summarizing and mining of the information in the video for learning usual patterns and discovering unusual ones. We approach this video analysis problem by acknowledging that a video contains information at multiple levels and in multiple attributes. Each such component and cooccurrences of these component values play an important role in characterizing an event as usual or unusual. Therefore, we cluster the video data at multiple levels of abstraction and in multiple attributes and view these clusters as a summary of the information in the video. We apply cluster algebra to mine this summary from multiple perspectives and to adapt association learning for automated selection of components because of which the event is unusual. We also propose a novel incremental clustering algorithm.
机译:在本文中,我们提出了一种用于监视视频自动分析的新颖框架。通过分析,我们暗示总结和挖掘视频中的信息,以学习常用模式并发现异常模式。我们通过承认视频包含多个级别和多个属性的信息来解决此视频分析问题。每个这样的组成部分以及这些组成部分值的同时出现在将事件描述为正常事件还是异常事件中都发挥着重要作用。因此,我们在多个抽象级别和多个属性中对视频数据进行聚类,并将这些聚类视为视频中信息的摘要。我们应用聚类代数从多个角度挖掘此摘要,并使关联学习适用于组件的自动选择,因此该事件不常见。我们还提出了一种新颖的增量聚类算法。

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