Hybrid Video Anomaly Detection for Anomalous Scenarios in Autonomous Driving
Abstract
A video anomaly detection method adapted for autonomous driving learns normal vehicle ego-perspective representations and detects pixel-wise anomalies in critical scenarios.
In autonomous driving, the most challenging scenarios can only be detected within their temporal context. Most video anomaly detection approaches focus either on surveillance or traffic accidents, which are only a subfield of autonomous driving. We present HF^2-VAD_{AD}, a variation of the HF^2-VAD surveillance video anomaly detection method for autonomous driving. We learn a representation of normality from a vehicle's ego perspective and evaluate pixel-wise anomaly detections in rare and critical scenarios.
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