使用生成对抗网络进行异常检测的基于周期一致性的短期运动预测

T. Golda, Nils Murzyn, Chengchao Qu, K. Kroschel
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引用次数: 4

摘要

异常检测在许多领域的研究中起着非常重要的作用,与异常点检测的任务密切相关。特别是在对监控摄像机记录的视频材料进行自动分析的背景下,异常情况可能具有非常不同的性质。为此,本研究研究了与监视应用相关的异常检测的基于生成对抗网络的方法(GAN)。重点是静态相机设置的使用,因为这种相机是最常用的相机之一,属于较低的价格部分。为了解决这一问题,我们对多个子任务进行了评估,包括现有光流方法对短期时间信息整合的影响,gan的不同形式的网络设置和损失,以及使用形态操作进一步提高性能。通过这些扩展,我们取得了高达2.4%的更好的结果。此外,该方法将基于GAN的方法的异常检测误差降低了约42.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What goes around comes around: Cycle-Consistency-based Short-Term Motion Prediction for Anomaly Detection using Generative Adversarial Networks
Anomaly detection plays in many fields of research, along with the strongly related task of outlier detection, a very important role. Especially within the context of the automated analysis of video material recorded by surveillance cameras, abnormal situations can be of very different nature. For this purpose this work investigates Generative-Adversarial-Network-based methods (GAN) for anomaly detection related to surveillance applications. The focus is on the usage of static camera setups, since this kind of camera is one of the most often used and belongs to the lower price segment. In order to address this task, multiple subtasks are evaluated, including the influence of existing optical flow methods for the incorporation of short-term temporal information, different forms of network setups and losses for GANs, and the use of morphological operations for further performance improvement. With these extension we achieved up to 2.4% better results. Furthermore, the final method reduced the anomaly detection error for GAN based methods by about 42.8%.
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