合成时间异常引导端到端视频异常检测

M. Astrid, M. Zaheer, Seung-Ik Lee
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引用次数: 20

摘要

由于异常样本的可用性有限,视频异常检测通常被视为一类分类(OCC)问题。解决这个问题的一种流行方法是使用仅在正常数据上训练的自动编码器(AE)。在测试时,期望声发射能够很好地重建正常输入,但重建异常的能力较差。然而,一些研究表明,即使仅使用正常数据训练,ae也经常会开始重建异常,从而耗尽其异常检测性能。为了减轻这种情况,我们提出了一个时间伪异常合成器,它只使用正常数据生成假异常。然后对声发射进行训练,使伪异常上的重建损失最大化,同时使正常数据上的损失最小化。这样,AE被鼓励产生正常和异常帧的可区分的重建。在三个具有挑战性的视频异常数据集上进行了大量的实验和分析,证明了我们的方法在改进基本ae方面取得了优于几种现有最先进模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic Temporal Anomaly Guided End-to-End Video Anomaly Detection
Due to the limited availability of anomaly examples, video anomaly detection is often seen as one-class classification (OCC) problem. A popular way to tackle this problem is by utilizing an autoencoder (AE) trained only on normal data. At test time, the AE is then expected to reconstruct the normal input well while reconstructing the anomalies poorly. However, several studies show that, even with normal data only training, AEs can often start reconstructing anomalies as well which depletes their anomaly detection performance. To mitigate this, we propose a temporal pseudo anomaly synthesizer that generates fake-anomalies using only normal data. An AE is then trained to maximize the reconstruction loss on pseudo anomalies while minimizing this loss on normal data. This way, the AE is encouraged to produce distinguishable reconstructions for normal and anomalous frames. Extensive experiments and analysis on three challenging video anomaly datasets demonstrate the effectiveness of our approach to improve the basic AEs in achieving superiority against several existing state-of-the-art models.
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