AI RESEARCH
Mamba-Enhanced Implicit Motion Learning for Audio-Driven Portrait Animation
arXiv CS.CV
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ArXi:2606.03402v1 Announce Type: new Audio-driven human motion video generation aims to synthesize realistic and temporally coherent human animations from a single static image, with applications in talking-head synthesis, co-speech gesture generation, and dynamic presentations. Moving beyond conventional keypoint-based methods that often struggle to capture subtle motion dynamics, We propose a novel implicit-motion framework for generating realistic and temporally coherent human motion videos from a single static image and audio.