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Exploiting Completeness and Uncertainty of Pseudo Labels for Weakly Supervised Video Anomaly Detection

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Weakly supervised video anomaly detection aims to identify abnormal events in videos using only video-level labels. Recently, two-stage self-training methods have achieved significant improvements by self-generating pseudo labels and self-refining anomaly scores with these labels. As the pseudo labels play a crucial role, we propose an enhancement framework by exploiting completeness and uncertainty properties for effective self-training. Specifically, we first design a multi-head classification module (each head serves as a classifier) with a diversity loss to maximize the distribution differences of predicted pseudo labels across heads. This encourages the generated pseudo labels to cover as many abnormal events as possible. We then devise an iterative uncertainty pseudo label refinement strategy, which improves not only the initial pseudo labels but also the updated ones obtained by the desired classifier in the second stage. Extensive experimental results demonstrate the proposed method performs favorably against state-of-the-art approaches on the UCF-Crime, TAD, and XD-Violence benchmark datasets.

Chen Zhang, Guorong Li, Yuankai Qi, Shuhui Wang, Laiyun Qing, Qingming Huang, Ming-Hsuan Yang• 2022

Related benchmarks

TaskDatasetResultRank
Video Anomaly DetectionUCF-Crime
AUC86.22
129
Video Anomaly DetectionUCF-Crime (test)
AUC86.22
122
Video Anomaly DetectionXD-Violence (test)
AP81.43
119
Anomaly DetectionUCF-Crime (test)
AUC0.8622
99
Video Anomaly DetectionXD-Violence
AP81.43
66
Violence DetectionXD-Violence
AP81.43
58
Violence DetectionXD-Violence (test)
AP0.8143
39
Violence DetectionXD-Violence frame-level
AP81.43
20
Weakly Supervised Video Anomaly DetectionUCF-Crime
AUC86.22
18
Video Anomaly DetectionUCF-Crime standard (test)
Frame-Level AUC86.22
17
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