基于图像去噪的高效视频异常检测

Zhiwen Fang, Zhou Yue, Weiyuan Liu, Feng Yang
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引用次数: 0

摘要

视频异常检测的任务是识别不符合预期事件的事件。目前,大多数方法都是通过从训练数据中挖掘常见的正态模式并最小化生成误差来解决这一问题。在推理阶段,对异常事件分配大的生成误差,对正常事件分配小的生成误差。然而,由于这些方法只关注错误强度而忽略了错误模式,部分异常事件将具有与正常事件相似的生成错误强度。因此,我们提出在有效的图像去噪框架内解决异常检测问题。在该框架中,生成误差被视为一种人工噪声,叠加在当前框架上。然后,将被污染的帧送入去噪网络,该网络经过训练后输出与当前帧接近的帧。在去噪网络中,可以联合学习训练数据的共同模式和每个训练帧的误差模式。通过抑制正常帧的生成错误,有利于异常检测。在几个具有挑战性的基准数据集上的结果证明了我们提出的方法的有效性。
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Image Denoising for Efficient Anomaly Detection in Videos
Video anomaly detection is tasked with the identification of events that do not conform to expected events. Currently, most methods tackle this problem by mining common normal patterns from training data and minimizing the generative errors. In inference phase, a large generative error is assigned to an abnormal event and a small one is for a normal event. However, because these methods only focus on the error intensity but ignore the error pattern, partial abnormal events will own similar generative error intensities to the normal ones. Thus, we propose to tackle the anomaly detection within an efficient image denoising framework. In this framework, the generative errors are treated as a kind of artificial noise, which will be superimposed on the current frame. Then, the contaminated frame is fed into a denoising network, which is trained to output a frame close to the current frame. In the denoising network, the common patterns of training data and the error patterns of each training frame can be learned jointly. It will benefit anomaly detection by restraining the generative errors of normal frames. The results on several challenging benchmark datasets demonstrate the effectiveness of our proposed method.
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