PDD: Manifold-Prior Diverse Distillation for Medical Anomaly Detection
The paper proposes PDD, a novel framework that unifies global contextual and local structural priors from dual frozen encoders into a shared manifold to distill diverse knowledge into complementary student networks, achieving state-of-the-art performance in medical image anomaly detection across multiple datasets.