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Poster

TeRA : Rethinking Text-driven Realistic 3D Avatar Generation

Yanwen Wang · Yiyu Zhuang · Jiawei Zhang · Li Wang · Yifei Zeng · Xun Cao · Xinxin Zuo · Hao Zhu


Abstract:

Efficient 3D avatar creation is a significant demand in the metaverse, film/game, AR/VR, etc. In this paper, we rethink text-to-avatar generative models by proposing TeRA, a more efficient and effective framework than the previous SDS-based models and general large 3D generative models. Our approach employs a two-stage training strategy for learning a native 3D avatar generative model. Initially, we distill a deencoder to derive a structured latent space from a large human reconstruction model. Subsequently, a text-controlled latent diffusion model is trained to generate photorealistic 3D human avatars within this latent space. TeRA enhances the model performance by eliminating slow iterative optimization and enables text-based partial customization through a structured 3D human representation. Experiments have proven our approach's superiority over previous text-to-avatar generative models in subjective and objective evaluation. The code and data will be publicly released upon publication.

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