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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.

Congqi Cao, Yue Lu, Peng Wang, Yanning Zhang• 2023

Related benchmarks

TaskDatasetResultRank
Video Anomaly DetectionShanghaiTech (test)
AUC0.792
211
Video Anomaly DetectionCUHK Avenue (Ave) (test)
AUC86.8
203
Abnormal Event DetectionUCSD Ped2 (test)--
146
Video Anomaly DetectionCUHK Avenue (test)
Frame-level AUC0.868
91
Video Anomaly DetectionAvenue (test)
AUC (Micro)86.8
85
Video Anomaly DetectionShanghaiTech (SHTech) (test)
AUROC0.792
24
Video Anomaly DetectionCorridor (test)
AUC73.6
11
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