Mamba-Enhanced Implicit Motion Learning for Audio-Driven Portrait Animation
Advances audio-driven human motion video generation for applications like talking-head synthesis and co-speech gesture generation.
Proposed an implicit-motion framework for audio-driven portrait animation that decouples motion prediction from rendering using a Mamba-enhanced diffusion model, achieving state-of-the-art performance in accuracy, naturalness, and temporal coherence across multiple benchmarks.
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. Our approach uses a two-stage pipeline that decouples motion prediction from rendering. The first stage integrates appearance priors and hierarchical depth cues into a region-aware attention mechanism to model latent motion features. The second stage employs a Mamba-enhanced diffusion model to directly predict these features from audio and the source image, enabling unsupervised learning of fine-grained motion patterns. This decoupled architecture enhances flexibility and efficiency. Trained on a new 380-hour high-quality dataset, our method outperforms prior work across multiple public benchmarks and our collected data in accuracy, naturalness, and temporal coherence, setting a new state-of-the-art.