Free-style and Fast 3D Portrait Synthesis

Tianxiang Ma1,2, Kang Zhao3, Jianxin Sun1,2, Jing Dong2, Tieniu Tan2
1School of Artificial Intelligence, UCAS 2CRIPAC & NLPR, CASIA 3Alibaba Group

Free-style 3D Portrait Synthesis

A disney style elf

A dwarf

A joker

Na'vi from Avatar

A female vampire

A werewolf

Hulk

Black Widow

Doctor Strange

Disney style

Manga style

Wood sculpture style

Sand painting style

Sci-Fi style

Hand-drawn style

Multiple identities synthesis on single style

Cartoonish style


Hand-drawn style


Abstract

Efficiently generating a free-style 3D portrait with high quality and consistency is a promising yet challenging task. The portrait styles generated by most existing methods are usually restricted by their 3D generators, which are learned in specific facial datasets, such as FFHQ. To get a free-style 3D portrait, one can build a large-scale multi-style database to retrain the 3D generator, or use a off-the-shelf tool to do the style translation. However, the former is time-consuming due to data collection and training process, the latter may destroy the multi-view consistency. To tackle this problem, we propose a fast 3D portrait synthesis framework in this paper, which enable one to use text prompts to specify style. Specifically, for a given portrait style, we first leverage two generative priors, a 3D-aware GAN generator (EG3D) and a text-guided image editor (Ip2p), to quickly construct a few-shot training set, where the inference process of Ip2p is optimized to make editing more stable. Then we replace original triplane generator of EG3D with a Image-to-Triplane (I2T) module for two purposes: 1) getting rid of the style constraints of pre-trained EG3D by fine-tuning I2T on the few-shot dataset; 2) improving training efficiency by fixing all parts of EG3D except I2T. Furthermore, we construct a multi-style and multi-identity 3D portraits database to demonstrate the scalability and generalization of our method. Experimental results show that our method is capable of synthesizing high-quality 3D portraits with specified style in a few minutes, outperforming the state-of-the-art.

BibTeX


    @article{ma2023freestyle,
          title={Free-style and Fast 3D Portrait Synthesis}, 
          author={Tianxiang, Ma and Kang, Zhao and Jianxin, Sun and Jing, Dong and Tieniu, Tan},
          journal={arXiv preprint arXiv:2306.15419},
          year={2023},
        }