Back to Search Start Over

One-Shot High-Fidelity Talking-Head Synthesis with Deformable Neural Radiance Field

Authors :
Li, Weichuang
Zhang, Longhao
Wang, Dong
Zhao, Bin
Wang, Zhigang
Chen, Mulin
Zhang, Bang
Wang, Zhongjian
Bo, Liefeng
Li, Xuelong
Li, Weichuang
Zhang, Longhao
Wang, Dong
Zhao, Bin
Wang, Zhigang
Chen, Mulin
Zhang, Bang
Wang, Zhongjian
Bo, Liefeng
Li, Xuelong
Publication Year :
2023

Abstract

Talking head generation aims to generate faces that maintain the identity information of the source image and imitate the motion of the driving image. Most pioneering methods rely primarily on 2D representations and thus will inevitably suffer from face distortion when large head rotations are encountered. Recent works instead employ explicit 3D structural representations or implicit neural rendering to improve performance under large pose changes. Nevertheless, the fidelity of identity and expression is not so desirable, especially for novel-view synthesis. In this paper, we propose HiDe-NeRF, which achieves high-fidelity and free-view talking-head synthesis. Drawing on the recently proposed Deformable Neural Radiance Fields, HiDe-NeRF represents the 3D dynamic scene into a canonical appearance field and an implicit deformation field, where the former comprises the canonical source face and the latter models the driving pose and expression. In particular, we improve fidelity from two aspects: (i) to enhance identity expressiveness, we design a generalized appearance module that leverages multi-scale volume features to preserve face shape and details; (ii) to improve expression preciseness, we propose a lightweight deformation module that explicitly decouples the pose and expression to enable precise expression modeling. Extensive experiments demonstrate that our proposed approach can generate better results than previous works. Project page: https://www.waytron.net/hidenerf<br />Comment: Accepted by CVPR 2023

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381617075
Document Type :
Electronic Resource