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VQFR: Blind Face Restoration with Vector-Quantized Dictionary and Parallel Decoder

About

Although generative facial prior and geometric prior have recently demonstrated high-quality results for blind face restoration, producing fine-grained facial details faithful to inputs remains a challenging problem. Motivated by the classical dictionary-based methods and the recent vector quantization (VQ) technique, we propose a VQ-based face restoration method - VQFR. VQFR takes advantage of high-quality low-level feature banks extracted from high-quality faces and can thus help recover realistic facial details. However, the simple application of the VQ codebook cannot achieve good results with faithful details and identity preservation. Therefore, we further introduce two special network designs. 1). We first investigate the compression patch size in the VQ codebook and find that the VQ codebook designed with a proper compression patch size is crucial to balance the quality and fidelity. 2). To further fuse low-level features from inputs while not "contaminating" the realistic details generated from the VQ codebook, we proposed a parallel decoder consisting of a texture decoder and a main decoder. Those two decoders then interact with a texture warping module with deformable convolution. Equipped with the VQ codebook as a facial detail dictionary and the parallel decoder design, the proposed VQFR can largely enhance the restored quality of facial details while keeping the fidelity to previous methods.

Yuchao Gu, Xintao Wang, Liangbin Xie, Chao Dong, Gen Li, Ying Shan, Ming-Ming Cheng• 2022

Related benchmarks

TaskDatasetResultRank
Blind Face RestorationLFW (test)
FID50.78
52
Blind Face RestorationCelebA (test)
SSIM64.46
44
Blind Face RestorationWebPhoto (test)
FID75.348
35
Blind Face RestorationWIDER (test)
FID44.107
17
Face RestorationCelebA synthetic (test)
LPIPS0.4095
16
Blind Face Video RestorationVFHQ (test)
PSNR25.94
14
Blind Face RestorationCelebAdult (test)
FID104.7
12
Face RestorationCelebA (test)
NRQM8.657
11
Face RestorationWebPhoto (test)
NRQM8.457
10
Face RestorationWIDER (test)
NRQM8.792
10
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