AI RESEARCH

Decoupled Sensitivity-Consistency Learning for Weakly Supervised Video Anomaly Detection

arXiv CS.CV

ArXi:2603.19780v1 Announce Type: new Recent weakly supervised video anomaly detection methods have achieved significant advances by employing unified frameworks for joint optimization. However, this paradigm is limited by a fundamental sensitivity-stability trade-off, as the conflicting objectives for detecting transient and sustained anomalies lead to either fragmented predictions or over-smoothed responses. To address this limitation, we propose DeSC, a novel Decoupled Sensitivity-Consistency framework that trains two specialized streams using distinct optimization strategies.