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Bayesian nonparametric approaches to abnormality detection in video surveillance

机译:视频监控中的贝叶斯非参数异常检测方法

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摘要

In data science, anomaly detection is the process of identifying the items, events or observations which do not conform to expected patterns in a dataset. As widely acknowledged in the computer vision community and security management, discovering suspicious events is the key issue for abnormal detection in video surveil-lance. The important steps in identifying such events include stream data segmentation and hidden patterns discovery. However, the crucial challenge in stream data segmenta-tion and hidden patterns discovery are the number of coherent segments in surveillance stream and the number of traffic patterns are unknown and hard to specify. Therefore, in this paper we revisit the abnormality detection problem through the lens of Bayesian nonparametric (BNP) and develop a novel usage of BNP methods for this problem. In particular, we employ the Infinite Hidden Markov Model and Bayesian Nonparamet-ric Factor Analysis for stream data segmentation and pattern discovery. In addition, we introduce an interactive system allowing users to inspect and browse suspicious events.
机译:在数据科学中,异常检测是识别不符合数据集中预期模式的项目,事件或观察的过程。正如计算机视觉界和安全管理界所公认的那样,发现可疑事件是视频监控中异常检测的关键问题。识别此类事件的重要步骤包括流数据分段和隐藏模式发现。但是,流数据分段和隐藏模式发现中的关键挑战是监视流中相干分段的数量,流量模式的数量未知且难以指定。因此,本文通过贝叶斯非参数(BNP)的视角重新审视异常检测问题,并为该问题开发了一种新颖的BNP方法。特别是,我们采用无限隐马尔可夫模型和贝叶斯非参数因子分析进行流数据分割和模式发现。此外,我们引入了一个交互式系统,允许用户检查和浏览可疑事件。

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