Anomaly Detection in Surveillance Videos Using Deep Learning

K. Nithesh, Nikhath Tabassum, D. Geetha, R. Kumari
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Abstract

One of the biggest studies on public safety and tracking that has sparked a lot of interest in recent years is deep learning approach. Current public safety methods are existent for counting and detecting persons. But many issues such as aberrant occurring in public spaces are seldom detected and reported to raise an automated alarm. Our proposed method detects anomalies (deviation from normal events) from the video surveillance footages using deep learning and raises an alarm, if anomaly is found. The proposed model is trained to detect anomalies and then it is applied to the video recording of the surveillance that is used to monitor public safety. Then the video is assessed frame by frame to detect anomaly and then if there is match, an alarm is raised.
基于深度学习的监控视频异常检测
近年来,在公共安全和跟踪方面引发了很多兴趣的最大研究之一是深度学习方法。现有的公共安全方法对人员的计数和检测是存在的。但是,在公共场所发生的异常事件等许多问题很少被发现并报告,从而发出自动警报。我们提出的方法使用深度学习从视频监控片段中检测异常(偏离正常事件),并在发现异常时发出警报。本文提出的模型经过训练以检测异常,然后将其应用于用于监控公共安全的监控录像中。然后逐帧评估视频,检测异常,如果有匹配,则报警。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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