HifiFace: 3D Shape and Semantic Prior Guided High Fidelity Face Swapping
- URL: http://arxiv.org/abs/2106.09965v1
- Date: Fri, 18 Jun 2021 07:39:09 GMT
- Title: HifiFace: 3D Shape and Semantic Prior Guided High Fidelity Face Swapping
- Authors: Yuhan Wang, Xu Chen, Junwei Zhu, Wenqing Chu, Ying Tai, Chengjie Wang,
Jilin Li, Yongjian Wu, Feiyue Huang and Rongrong Ji
- Abstract summary: We propose HifiFace, which can preserve the face shape of the source face and generate photo-realistic results.
We introduce the Semantic Facial Fusion module to optimize the combination of encoder and decoder features.
- Score: 116.1022638063613
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we propose a high fidelity face swapping method, called
HifiFace, which can well preserve the face shape of the source face and
generate photo-realistic results. Unlike other existing face swapping works
that only use face recognition model to keep the identity similarity, we
propose 3D shape-aware identity to control the face shape with the geometric
supervision from 3DMM and 3D face reconstruction method. Meanwhile, we
introduce the Semantic Facial Fusion module to optimize the combination of
encoder and decoder features and make adaptive blending, which makes the
results more photo-realistic. Extensive experiments on faces in the wild
demonstrate that our method can preserve better identity, especially on the
face shape, and can generate more photo-realistic results than previous
state-of-the-art methods.
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