AI RESEARCH

Distribution Prototype Diffusion Learning for Open-set Supervised Anomaly Detection

arXiv CS.CV

ArXi:2502.20981v2 Announce Type: replace In Open-set Supervised Anomaly Detection (OSAD), the existing methods typically generate pseudo anomalies to compensate for the scarcity of observed anomaly samples, while overlooking critical priors of normal samples, leading to less effective discriminative boundaries. To address this issue, we propose a Distribution Prototype Diffusion Learning (DPDL) method aimed at enclosing normal samples within a compact and discriminative distribution space.