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Weakly Supervised Video Anomaly Detection via Center-guided Discriminative Learning
Boyang Wan Yuming Fang Xue Xia Jiajie Mei

Abstract
Anomaly detection in surveillance videos is a challenging task due to the diversity of anomalous video content and duration. In this paper, we consider video anomaly detection as a regression problem with respect to anomaly scores of video clips under weak supervision. Hence, we propose an anomaly detection framework, called Anomaly Regression Net (AR-Net), which only requires video-level labels in training stage. Further, to learn discriminative features for anomaly detection, we design a dynamic multiple-instance learning loss and a center loss for the proposed AR-Net. The former is used to enlarge the inter-class distance between anomalous and normal instances, while the latter is proposed to reduce the intra-class distance of normal instances. Comprehensive experiments are performed on a challenging benchmark: ShanghaiTech. Our method yields a new state-of-the-art result for video anomaly detection on ShanghaiTech dataset
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| anomaly-detection-in-surveillance-videos-on-1 | AR-Net | AUC-ROC: 91.24 |
| weakly-supervised-video-anomaly-detection-on | AR-Net | AUC-ROC: 91.24 FAR-Normal: 0.10 |
| weakly-supervised-video-anomaly-detection-on-1 | AR-Net | AUC-ROC: 62.30 |
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