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On the Essence of Unsupervised Detection of Anomalous Motion in Surveillance Videos

机译:论监督视频中无异常运动检测的本质

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An important application in surveillance is to apply computerized methods to automatically detect anomalous activities and then notify the security officers. Many methods have been proposed for anomaly detection with varying degree of accuracy. They can be characterized according to the approach adopted, which is supervised or unsupervised, and the features used. Unfortunately, existing literature has not elucidated the essential ingredients that make the methods work as they do, despite the fact that tests have been conducted to compare the performance of various methods. This paper attempts to fill this knowledge gap by studying the videos tested by existing methods and identifying key components required by an effective unsupervised anomaly detection algorithm. Our comprehensive test results show that an unsupervised algorithm that captures the key components can be relatively simple and yet perform equally well or better compared to existing methods.
机译:监督的一个重要应用是应用计算机化方法,以自动检测异常活动,然后通知安全官员。已经提出了许多方法用于异常检测,具有不同程度的精度。它们可以根据采用的方法来表征,该方法是监督或无人监督的,并且使用的功能。遗憾的是,现有文献并未阐明生产方法,尽管已经进行了测试以比较各种方法的性能,但是尽管进行了测试。本文试图通过研究现有方法测试的视频和识别有效无监督异常检测算法所需的关键组分来填补这种知识差距。我们的综合测试结果表明,与现有方法相比,捕获关键组件的无监督算法可以相对简单,但同样好转或更好地执行。

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