AI RESEARCH

Interpretable facial dynamics as behavioral and perceptual traces of deepfakes

arXiv CS.LG

ArXi:2604.21760v1 Announce Type: cross Deepfake detection research has largely converged on deep learning approaches that, despite strong benchmark performance, offer limited insight into what distinguishes real from manipulated facial behavior. This study presents an interpretable alternative grounded in bio-behavioral features of facial dynamics and evaluates how computational detection strategies relate to human perceptual judgments. We identify core low-dimensional patterns of facial movement, from which temporal features characterizing spatiotemporal structure were derived.