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Papers/Graph Convolutional Label Noise Cleaner: Train a Plug-and-...

Graph Convolutional Label Noise Cleaner: Train a Plug-and-play Action Classifier for Anomaly Detection

Jia-Xing Zhong, Nannan Li, Weijie Kong, Shan Liu, Thomas H. Li, Ge Li

2019-03-18CVPR 2019 6Anomaly Detection In Surveillance VideosVideo Anomaly DetectionMultiple Instance LearningAnomaly DetectionSupervised Anomaly DetectionWeakly-supervised Anomaly Detection
PaperPDFCode(official)

Abstract

Video anomaly detection under weak labels is formulated as a typical multiple-instance learning problem in previous works. In this paper, we provide a new perspective, i.e., a supervised learning task under noisy labels. In such a viewpoint, as long as cleaning away label noise, we can directly apply fully supervised action classifiers to weakly supervised anomaly detection, and take maximum advantage of these well-developed classifiers. For this purpose, we devise a graph convolutional network to correct noisy labels. Based upon feature similarity and temporal consistency, our network propagates supervisory signals from high-confidence snippets to low-confidence ones. In this manner, the network is capable of providing cleaned supervision for action classifiers. During the test phase, we only need to obtain snippet-wise predictions from the action classifier without any extra post-processing. Extensive experiments on 3 datasets at different scales with 2 types of action classifiers demonstrate the efficacy of our method. Remarkably, we obtain the frame-level AUC score of 82.12% on UCF-Crime.

Results

TaskDatasetMetricValueModel
Video UnderstandingShanghaiTech Weakly SupervisedAUC-ROC84.44GCN-Anomaly
Video UnderstandingUCSD Peds2AUC93.2GCN-Anomaly
VideoShanghaiTech Weakly SupervisedAUC-ROC84.44GCN-Anomaly
VideoUCSD Peds2AUC93.2GCN-Anomaly
Anomaly DetectionShanghaiTech Weakly SupervisedAUC-ROC84.44GCN-Anomaly
Anomaly DetectionUCSD Peds2AUC93.2GCN-Anomaly

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