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Papers/CIPS-3D: A 3D-Aware Generator of GANs Based on Conditional...

CIPS-3D: A 3D-Aware Generator of GANs Based on Conditionally-Independent Pixel Synthesis

Peng Zhou, Lingxi Xie, Bingbing Ni, Qi Tian

2021-10-19Transfer Learning3D-Aware Image SynthesisImage Generation
PaperPDFCode(official)

Abstract

The style-based GAN (StyleGAN) architecture achieved state-of-the-art results for generating high-quality images, but it lacks explicit and precise control over camera poses. The recently proposed NeRF-based GANs made great progress towards 3D-aware generators, but they are unable to generate high-quality images yet. This paper presents CIPS-3D, a style-based, 3D-aware generator that is composed of a shallow NeRF network and a deep implicit neural representation (INR) network. The generator synthesizes each pixel value independently without any spatial convolution or upsampling operation. In addition, we diagnose the problem of mirror symmetry that implies a suboptimal solution and solve it by introducing an auxiliary discriminator. Trained on raw, single-view images, CIPS-3D sets new records for 3D-aware image synthesis with an impressive FID of 6.97 for images at the $256\times256$ resolution on FFHQ. We also demonstrate several interesting directions for CIPS-3D such as transfer learning and 3D-aware face stylization. The synthesis results are best viewed as videos, so we recommend the readers to check our github project at https://github.com/PeterouZh/CIPS-3D

Results

TaskDatasetMetricValueModel
Image GenerationFFHQ 256 x 256FID6.97CIPS-3D
Image GenerationFFHQ 256 x 256KID2.87CIPS-3D
Image GenerationFFHQ 256 x 256FID8StyleNeRF
Image GenerationFFHQ 256 x 256KID3.7StyleNeRF
Image GenerationFFHQ 256 x 256FID34.56pi-GAN
Image GenerationFFHQ 256 x 256KID26.58pi-GAN
Image GenerationFFHQ 256 x 256FID63.33GIRAFFE
Image GenerationFFHQ 256 x 256KID50.94GIRAFFE
3DFFHQ 256 x 256FID6.97CIPS-3D
3DFFHQ 256 x 256KID2.87CIPS-3D
3DFFHQ 256 x 256FID8StyleNeRF
3DFFHQ 256 x 256KID3.7StyleNeRF
3DFFHQ 256 x 256FID34.56pi-GAN
3DFFHQ 256 x 256KID26.58pi-GAN
3DFFHQ 256 x 256FID63.33GIRAFFE
3DFFHQ 256 x 256KID50.94GIRAFFE

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