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Papers/Regularity Learning via Explicit Distribution Modeling for...

Regularity Learning via Explicit Distribution Modeling for Skeletal Video Anomaly Detection

Shoubin Yu, Zhongyin Zhao, Haoshu Fang, Andong Deng, Haisheng Su, Dongliang Wang, Weihao Gan, Cewu Lu, Wei Wu

2021-12-07Anomaly Detection In Surveillance VideosOptical Flow EstimationVideo Anomaly DetectionAnomaly Detection
PaperPDFCode(official)

Abstract

Anomaly detection in surveillance videos is challenging and important for ensuring public security. Different from pixel-based anomaly detection methods, pose-based methods utilize highly-structured skeleton data, which decreases the computational burden and also avoids the negative impact of background noise. However, unlike pixel-based methods, which could directly exploit explicit motion features such as optical flow, pose-based methods suffer from the lack of alternative dynamic representation. In this paper, a novel Motion Embedder (ME) is proposed to provide a pose motion representation from the probability perspective. Furthermore, a novel task-specific Spatial-Temporal Transformer (STT) is deployed for self-supervised pose sequence reconstruction. These two modules are then integrated into a unified framework for pose regularity learning, which is referred to as Motion Prior Regularity Learner (MoPRL). MoPRL achieves the state-of-the-art performance by an average improvement of 4.7% AUC on several challenging datasets. Extensive experiments validate the versatility of each proposed module.

Results

TaskDatasetMetricValueModel
Anomaly DetectionCorridorAUC71.63MoPRL
Anomaly DetectionShanghaiTechAUC83.35MoPRL
Anomaly DetectionHR-ShanghaiTechAUC84.3MoPRL
3D Anomaly DetectionHR-ShanghaiTechAUC84.3MoPRL
Video Anomaly DetectionHR-ShanghaiTechAUC84.3MoPRL

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