CVFeb 10, 2025

GAS: Generative Avatar Synthesis from a Single Image

arXiv:2502.06957v216 citationsh-index: 8
Originality Highly original
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This work addresses the challenging task of single-image avatar generation, which is significant for applications requiring realistic and consistent digital avatars.

The authors tackled the problem of single-image avatar generation, achieving view-consistent and temporally coherent avatars. Their approach demonstrated superior generalization ability across diverse datasets.

We present a unified and generalizable framework for synthesizing view-consistent and temporally coherent avatars from a single image, addressing the challenging task of single-image avatar generation. Existing diffusion-based methods often condition on sparse human templates (e.g., depth or normal maps), which leads to multi-view and temporal inconsistencies due to the mismatch between these signals and the true appearance of the subject. Our approach bridges this gap by combining the reconstruction power of regression-based 3D human reconstruction with the generative capabilities of a diffusion model. In a first step, an initial 3D reconstructed human through a generalized NeRF provides comprehensive conditioning, ensuring high-quality synthesis faithful to the reference appearance and structure. Subsequently, the derived geometry and appearance from the generalized NeRF serve as input to a video-based diffusion model. This strategic integration is pivotal for enforcing both multi-view and temporal consistency throughout the avatar's generation. Empirical results underscore the superior generalization ability of our proposed method, demonstrating its effectiveness across diverse in-domain and out-of-domain in-the-wild datasets.

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