AI RESEARCH

SNAP: Speaker Nulling for Artifact Projection in Speech Deepfake Detection

arXiv CS.AI

ArXi:2603.20686v1 Announce Type: cross Recent advancements in text-to-speech technologies enable generating high-fidelity synthetic speech nearly indistinguishable from real human voices. While recent studies show the efficacy of self-supervised learning-based speech encoders for deepfake detection, these models struggle to generalize across unseen speakers. Our quantitative analysis suggests these encoder representations are substantially influenced by speaker information, causing detectors to exploit speaker-specific correlations rather than artifact-related cues.