Predicting Next Local Appearance for Video Anomaly Detection

Pankaj Raj Roy, Guillaume-Alexandre Bilodeau, Lama Seoud
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引用次数: 1

Abstract

We present a local anomaly detection method in videos. As opposed to most existing methods that are computationally expensive and are not very generalizable across different video scenes, we propose an adversarial framework that learns the temporal local appearance variations by predicting the appearance of a normally behaving object in the next frame of a scene by only relying on its current and past appearances. In the presence of an abnormally behaving object, the reconstruction error between the real and the predicted next appearance of that object indicates the likelihood of an anomaly. Our method is competitive with the existing state-of-the-art while being significantly faster for both training and inference and being better at generalizing to unseen video scenes.
预测下一个局部外观的视频异常检测
提出了一种视频局部异常检测方法。与大多数计算成本高且在不同视频场景中不太通用的现有方法相反,我们提出了一个对抗性框架,该框架通过仅依赖其当前和过去的外观来预测场景下一帧中正常行为对象的外观,从而学习时间局部外观变化。在存在异常行为的物体时,该物体下一次出现的真实与预测之间的重建误差表明存在异常的可能性。我们的方法与现有的最先进的技术相竞争,同时在训练和推理方面都要快得多,并且在推广到未见过的视频场景方面做得更好。
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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