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'Tax-free' 3DMM Conditional Face Generation

Authors :
Huang, Yiwen
Yu, Zhiqiu
Yi, Xinjie
Wang, Yue
Tompkin, James
Publication Year :
2023

Abstract

3DMM conditioned face generation has gained traction due to its well-defined controllability; however, the trade-off is lower sample quality: Previous works such as DiscoFaceGAN and 3D-FM GAN show a significant FID gap compared to the unconditional StyleGAN, suggesting that there is a quality tax to pay for controllability. In this paper, we challenge the assumption that quality and controllability cannot coexist. To pinpoint the previous issues, we mathematically formalize the problem of 3DMM conditioned face generation. Then, we devise simple solutions to the problem under our proposed framework. This results in a new model that effectively removes the quality tax between 3DMM conditioned face GANs and the unconditional StyleGAN.<br />Comment: Accepted to the AI for Content Creation Workshop at CVPR 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.13460
Document Type :
Working Paper