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HiFaceGAN: Face Renovation via Collaborative Suppression and Replenishment

About

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.

Lingbo Yang, Chang Liu, Pan Wang, Shanshe Wang, Peiran Ren, Siwei Ma, Wen Gao• 2020

Related benchmarks

TaskDatasetResultRank
Blind Face RestorationCelebA (test)
SSIM61.95
44
Blind-RestorationCelebAHQ (test)
PSNR21.5
14
Blind Face RestorationCelebA-HQ 512x512 (test)
PSNR27.39
12
Face RestorationLFW real-world (test)
FID64.5
9
Face RestorationCelebChild real-world (test)
FID113
9
Face RestorationWebPhoto real-world (test)
FID116.1
9
Face RenovationFFHQ Full Degradation (test)
PSNR25.837
8
Face Super-ResolutionFFHQ 4x Bicubic (test)
PSNR30.824
7
DenoisingFFHQ 1/3 Gaussian, 1/3 Poisson, 1/3 Laplacian (test)
PSNR31.828
4
HallucinationFFHQ 16x Mosaic (test)
PSNR23.705
4
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