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Papers/Blind Face Restoration via Deep Multi-scale Component Dict...

Blind Face Restoration via Deep Multi-scale Component Dictionaries

Xiaoming Li, Chaofeng Chen, Shangchen Zhou, Xianhui Lin, WangMeng Zuo, Lei Zhang

2020-08-02ECCV 2020 8Video Super-ResolutionBlind Face Restoration
PaperPDFCode(official)

Abstract

Recent reference-based face restoration methods have received considerable attention due to their great capability in recovering high-frequency details on real low-quality images. However, most of these methods require a high-quality reference image of the same identity, making them only applicable in limited scenes. To address this issue, this paper suggests a deep face dictionary network (termed as DFDNet) to guide the restoration process of degraded observations. To begin with, we use K-means to generate deep dictionaries for perceptually significant face components (\ie, left/right eyes, nose and mouth) from high-quality images. Next, with the degraded input, we match and select the most similar component features from their corresponding dictionaries and transfer the high-quality details to the input via the proposed dictionary feature transfer (DFT) block. In particular, component AdaIN is leveraged to eliminate the style diversity between the input and dictionary features (\eg, illumination), and a confidence score is proposed to adaptively fuse the dictionary feature to the input. Finally, multi-scale dictionaries are adopted in a progressive manner to enable the coarse-to-fine restoration. Experiments show that our proposed method can achieve plausible performance in both quantitative and qualitative evaluation, and more importantly, can generate realistic and promising results on real degraded images without requiring an identity-belonging reference. The source code and models are available at \url{https://github.com/csxmli2016/DFDNet}.

Results

TaskDatasetMetricValueModel
Super-ResolutionMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
VideoMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
VideoMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
VideoMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
VideoMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
VideoMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
VideoMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
3DMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
3DMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
3DMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
3DMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
3DMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
3DMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
3D Face AnimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.623DFDnet
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.339DFDnet
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationFPS0.909DFDnet
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationPSNR24.832DFDnet
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.759DFDnet
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationSubjective score0.277DFDnet

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