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EVAL: Explainable Video Anomaly Localization

About

We develop a novel framework for single-scene video anomaly localization that allows for human-understandable reasons for the decisions the system makes. We first learn general representations of objects and their motions (using deep networks) and then use these representations to build a high-level, location-dependent model of any particular scene. This model can be used to detect anomalies in new videos of the same scene. Importantly, our approach is explainable - our high-level appearance and motion features can provide human-understandable reasons for why any part of a video is classified as normal or anomalous. We conduct experiments on standard video anomaly detection datasets (Street Scene, CUHK Avenue, ShanghaiTech and UCSD Ped1, Ped2) and show significant improvements over the previous state-of-the-art.

Ashish Singh, Michael J. Jones, Erik Learned-Miller• 2022

Related benchmarks

TaskDatasetResultRank
Video Anomaly DetectionShanghaiTech (test)--
194
Video Anomaly DetectionAvenue (test)
AUC (Micro)86
85
Video Anomaly DetectionCUHK Avenue
Frame AUC86.02
65
Video Anomaly DetectionShanghaiTech--
51
Video Anomaly DetectionGeneral VAD Datasets
FPS1.21e+4
6
Video Anomaly DetectionStreet Scene
RBDC24.26
5
Video Anomaly DetectionStreetScene (test)
RBDC24.3
3
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