Enhancement of PSNR based Anomaly Detection in Surveillance Videos using Penalty Modules

Bhavam Vidyarthi, Neil Sequeira, Sushant Lenka, Ujjwal Verma
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Abstract

One of the desirable features of a surveillance system is the automatic identification of anomalous events in surveillance videos. The recent approaches for anomalous events identification utilize the difference between the predicted future frame and the current frame to detect the frames with an anomalous event. However, these approaches fare poorly if there is an overlap between multiple objects present in the scene. This work proposes to incorporate two modules to the future frame prediction-based anomalous activity detection approach. The first module penalizes the frame-wise PSNR value if there is an overlap between a normal and an anomalous object. In contrast, the second module penalizes the PSNR value if there is a sudden deviation of the vehicles from its trajectory. This object-centric approach ensures that the anomalous events are correctly identified even in the presence of occlusion. The proposed method is evaluated on two standard datasets Ped 2 and CUHK Avenue. The proposed method outperforms the existing approaches, and an AUC of 96.2% and 85.22% is obtained on Ped2 and CUHK, respectively.
基于惩罚模块增强PSNR的监控视频异常检测
监控系统的理想功能之一是自动识别监控视频中的异常事件。最近的异常事件识别方法利用预测的未来帧和当前帧之间的差异来检测具有异常事件的帧。然而,如果场景中存在多个对象之间存在重叠,这些方法就会表现不佳。本工作提出将两个模块整合到未来基于框架预测的异常活动检测方法中。第一个模块惩罚逐帧PSNR值,如果有一个正常和异常对象之间的重叠。相反,如果车辆突然偏离其轨道,则第二个模块会对PSNR值进行惩罚。这种以物体为中心的方法确保即使在存在遮挡的情况下也能正确识别异常事件。在Ped 2和中大大道两个标准数据集上对该方法进行了评估。该方法优于现有方法,在Ped2和CUHK上的AUC分别为96.2%和85.22%。
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