HAvatar: High-fidelity Head Avatar
via Facial Model ConditionedNeural Radiance Field

 

Xiaochen Zhao, Lizhen Wang, Jingxiang Sun, Hongwen Zhang, Jinli Suo, and Yebin Liu

Tsinghua University, NNKOSMOS Technology

ACM TOG 2023

[Paper] [Video] [Code]

 

Abstract

The problem of modeling an animatable 3D human head avatar under light-weight setups is of significant importance but has not been well solved. Existing 3D representations either perform well in the realism of portrait images synthesis or the accuracy of expression control, but not both. To address the problem, we introduce a novel hybrid explicit-implicit 3D representation, Facial Model Conditioned Neural Radiance Field, which integrates the expressiveness of NeRF and the prior information from the parametric template. At the core of our representation, a synthetic-renderings-based condition method is proposed to fuse the prior information from the parametric model into the implicit field without constraining its topological flexibility. Besides, based on the hybrid representation, we properly overcome the inconsistent shape issue presented in existing methods and improve the animation stability. Moreover, by adopting an overall GAN-based architecture using an image-to-image translation network, we achieve high-resolution, realistic and view-consistent synthesis of dynamic head appearance. Experiments demonstrate that our method can achieve state-of-the-art performance for 3D head avatar animation compared with previous methods.

 

 

Fig 1. The overview of our parametric-model-based Neural Head Avatar.

 


Results

 

 

Fig 2. Our method is able to synthesize high-resolution, photo-realistic and view-consistent head images, achieving fine-grained control over head poses and facial expressions.

 


Technical Paper

 


Demo Video

 


Citation

 

@article{zhao2023havatar,
author = {Zhao, Xiaochen and Wang, Lizhen and Sun, Jingxiang and Zhang, Hongwen and Suo, Jinli and Liu, Yebin},
title = {HAvatar: High-Fidelity Head Avatar via Facial Model Conditioned Neural Radiance Field},
year = {2023},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
issn = {0730-0301},
url = {https://doi.org/10.1145/3626316},
doi = {10.1145/3626316},
note = {Just Accepted},
journal = {ACM Trans. Graph.},
month = {oct},
keywords = {parametric facial model, image-to-image translation, image synthesis, head avatar, neural radiance field}
}


Acknowlegements

 

This paper is supported by National Key R&D Program of China (2022YFF0902200), the NSFC project No.62125107 and No.61827805.