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Papers/Multimodal Motion Conditioned Diffusion Model for Skeleton...

Multimodal Motion Conditioned Diffusion Model for Skeleton-based Video Anomaly Detection

Alessandro Flaborea, Luca Collorone, Guido D'Amely, Stefano D'arrigo, Bardh Prenkaj, Fabio Galasso

2023-07-14ICCV 2023 1Human Pose Forecasting2D Human Pose EstimationVideo Anomaly DetectionAnomaly Detection
PaperPDFCode(official)

Abstract

Anomalies are rare and anomaly detection is often therefore framed as One-Class Classification (OCC), i.e. trained solely on normalcy. Leading OCC techniques constrain the latent representations of normal motions to limited volumes and detect as abnormal anything outside, which accounts satisfactorily for the openset'ness of anomalies. But normalcy shares the same openset'ness property since humans can perform the same action in several ways, which the leading techniques neglect. We propose a novel generative model for video anomaly detection (VAD), which assumes that both normality and abnormality are multimodal. We consider skeletal representations and leverage state-of-the-art diffusion probabilistic models to generate multimodal future human poses. We contribute a novel conditioning on the past motion of people and exploit the improved mode coverage capabilities of diffusion processes to generate different-but-plausible future motions. Upon the statistical aggregation of future modes, an anomaly is detected when the generated set of motions is not pertinent to the actual future. We validate our model on 4 established benchmarks: UBnormal, HR-UBnormal, HR-STC, and HR-Avenue, with extensive experiments surpassing state-of-the-art results.

Results

TaskDatasetMetricValueModel
Anomaly DetectionHR-ShanghaiTechAUC77.6MoCoDAD
Anomaly DetectionHR-AvenueAUC89MoCoDAD
Anomaly DetectionHR-UBnormalAUC68.4MoCoDAD
3D Anomaly DetectionHR-ShanghaiTechAUC77.6MoCoDAD
3D Anomaly DetectionHR-AvenueAUC89MoCoDAD
3D Anomaly DetectionHR-UBnormalAUC68.4MoCoDAD
Video Anomaly DetectionHR-ShanghaiTechAUC77.6MoCoDAD
Video Anomaly DetectionHR-AvenueAUC89MoCoDAD
Video Anomaly DetectionHR-UBnormalAUC68.4MoCoDAD

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