GGTalker: Talking Head Systhesis with Generalizable Gaussian Priors and Identity-Specific Adaptation
Wentao Hu, Shunkai Li, Ziqiao Peng, Haoxian Zhang, Fan Shi, Xiaoqiang Liu, Pengfei Wan, Di Zhang, Hui Tian

TL;DR
GGTalker is a novel framework for synthesizing high-quality, generalizable 3D talking heads by leveraging Gaussian priors and identity-specific adaptation, addressing limitations of previous methods in large head rotations and out-of-distribution audio.
Contribution
It introduces a two-stage Prior-Adaptation training strategy with Gaussian priors and a color MLP, enabling efficient, high-quality, and personalized talking head synthesis.
Findings
Achieves state-of-the-art rendering quality and 3D consistency
Handles large head rotations and out-of-distribution audio effectively
Improves training efficiency over previous methods
Abstract
Creating high-quality, generalizable speech-driven 3D talking heads remains a persistent challenge. Previous methods achieve satisfactory results for fixed viewpoints and small-scale audio variations, but they struggle with large head rotations and out-of-distribution (OOD) audio. Moreover, they are constrained by the need for time-consuming, identity-specific training. We believe the core issue lies in the lack of sufficient 3D priors, which limits the extrapolation capabilities of synthesized talking heads. To address this, we propose GGTalker, which synthesizes talking heads through a combination of generalizable priors and identity-specific adaptation. We introduce a two-stage Prior-Adaptation training strategy to learn Gaussian head priors and adapt to individual characteristics. We train Audio-Expression and Expression-Visual priors to capture the universal patterns of lip…
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Taxonomy
TopicsDNA and Biological Computing
