A New Comprehensive Benchmark for Semi-supervised Video Anomaly Detection and Anticipation
About
Semi-supervised video anomaly detection (VAD) is a critical task in the intelligent surveillance system. However, an essential type of anomaly in VAD named scene-dependent anomaly has not received the attention of researchers. Moreover, there is no research investigating anomaly anticipation, a more significant task for preventing the occurrence of anomalous events. To this end, we propose a new comprehensive dataset, NWPU Campus, containing 43 scenes, 28 classes of abnormal events, and 16 hours of videos. At present, it is the largest semi-supervised VAD dataset with the largest number of scenes and classes of anomalies, the longest duration, and the only one considering the scene-dependent anomaly. Meanwhile, it is also the first dataset proposed for video anomaly anticipation. We further propose a novel model capable of detecting and anticipating anomalous events simultaneously. Compared with 7 outstanding VAD algorithms in recent years, our method can cope with scene-dependent anomaly detection and anomaly anticipation both well, achieving state-of-the-art performance on ShanghaiTech, CUHK Avenue, IITB Corridor and the newly proposed NWPU Campus datasets consistently. Our dataset and code is available at: https://campusvad.github.io.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Anomaly Detection | CUHK Avenue (Ave) (test) | AUC86.8 | 203 | |
| Video Anomaly Detection | ShanghaiTech (test) | -- | 194 | |
| Abnormal Event Detection | UCSD Ped2 (test) | -- | 146 | |
| Video Anomaly Detection | Avenue (test) | AUC (Micro)86.8 | 85 | |
| Video Anomaly Detection | ShanghaiTech (SHTech) (test) | AUROC0.792 | 24 | |
| Video Anomaly Detection | Corridor (test) | AUC73.6 | 11 |