AI RESEARCH

SRL-MAD: Structured Residual Latents for One-Class Morphing Attack Detection

arXiv CS.CV

ArXi:2603.15050v1 Announce Type: new Face morphing attacks represent a significant threat to biometric systems as they allow multiple identities to be combined into a single face. While supervised morphing attack detection (MAD) methods have shown promising performance, their reliance on attack-labeled data limits generalization to unseen morphing attacks. This has motivated increasing interest in one-class MAD, where models are trained exclusively on bona fide samples and are expected to detect unseen attacks as deviations from the normal facial structure. In this context, we.