ExDD: Explicit Dual Distribution Learning for Surface Defect Detection via Diffusion Synthesis
By: Muhammad Aqeel, Federico Leonardi, Francesco Setti
Potential Business Impact:
Finds hidden flaws in factory products.
Industrial defect detection systems face critical limitations when confined to one-class anomaly detection paradigms, which assume uniform outlier distributions and struggle with data scarcity in realworld manufacturing environments. We present ExDD (Explicit Dual Distribution), a novel framework that transcends these limitations by explicitly modeling dual feature distributions. Our approach leverages parallel memory banks that capture the distinct statistical properties of both normality and anomalous patterns, addressing the fundamental flaw of uniform outlier assumptions. To overcome data scarcity, we employ latent diffusion models with domain-specific textual conditioning, generating in-distribution synthetic defects that preserve industrial context. Our neighborhood-aware ratio scoring mechanism elegantly fuses complementary distance metrics, amplifying signals in regions exhibiting both deviation from normality and similarity to known defect patterns. Experimental validation on KSDD2 demonstrates superior performance (94.2% I-AUROC, 97.7% P-AUROC), with optimal augmentation at 100 synthetic samples.
Similar Papers
Distribution Prototype Diffusion Learning for Open-set Supervised Anomaly Detection
CV and Pattern Recognition
Finds weird things by learning what's normal.
RoadFusion: Latent Diffusion Model for Pavement Defect Detection
CV and Pattern Recognition
Finds road cracks better, even with little data.
Double Helix Diffusion for Cross-Domain Anomaly Image Generation
CV and Pattern Recognition
Creates fake factory flaws for better quality checks.