HiFaceGAN: Face Renovation via Collaborative Suppression and Replenishment

11 May 2020  ·  Lingbo Yang, Chang Liu, Pan Wang, Shanshe Wang, Peiran Ren, Siwei Ma, Wen Gao ·

Existing face restoration researches typically relies on either the degradation prior or explicit guidance labels for training, which often results in limited generalization ability over real-world images with heterogeneous degradations and rich background contents. In this paper, we investigate the more challenging and practical "dual-blind" version of the problem by lifting the requirements on both types of prior, termed as "Face Renovation"(FR). Specifically, we formulated FR as a semantic-guided generation problem and tackle it with a collaborative suppression and replenishment (CSR) approach. This leads to HiFaceGAN, a multi-stage framework containing several nested CSR units that progressively replenish facial details based on the hierarchical semantic guidance extracted from the front-end content-adaptive suppression modules. Extensive experiments on both synthetic and real face images have verified the superior performance of HiFaceGAN over a wide range of challenging restoration subtasks, demonstrating its versatility, robustness and generalization ability towards real-world face processing applications.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Blind Face Restoration CelebA-Test HiFaceGAN LPIPS 47.7 # 10
FID 66.09 # 13
NIQE 4.916 # 2
Deg. 42.18 # 4
PSNR 24.92 # 3
SSIM 0.6195 # 11
Image Super-Resolution FFHQ 1024 x 1024 - 4x upscaling HiFaceGAN FID 1.978 # 1
MS-SSIM 0.975 # 1
PSNR 33.04 # 2
SSIM 0.875 # 2
Image Super-Resolution FFHQ 256 x 256 - 4x upscaling HiFaceGAN FID 5.36 # 1
MS-SSIM 0.971 # 1
PSNR 28.65 # 1
SSIM 0.816 # 1
Face Hallucination FFHQ 512 x 512 - 16x upscaling HiFaceGAN FID 11.389 # 1
LPIPS 0.2449 # 1
NIQE 6.767 # 1
Image Super-Resolution FFHQ 512 x 512 - 4x upscaling HiFaceGAN PSNR 30.824 # 1
SSIM 0.838 # 2
MS-SSIM 0.971 # 2
LLE 2.071 # 3
FED 0.0716 # 1
FID 1.898 # 1
LPIPS 0.0723 # 1
NIQE 6.961 # 1

Methods