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Papers/Learning Deep CNN Denoiser Prior for Image Restoration

Learning Deep CNN Denoiser Prior for Image Restoration

Kai Zhang, WangMeng Zuo, Shuhang Gu, Lei Zhang

2017-04-11CVPR 2017 7DenoisingDeblurringImage DenoisingColor Image DenoisingImage Restoration
PaperPDFCode(official)Code

Abstract

Model-based optimization methods and discriminative learning methods have been the two dominant strategies for solving various inverse problems in low-level vision. Typically, those two kinds of methods have their respective merits and drawbacks, e.g., model-based optimization methods are flexible for handling different inverse problems but are usually time-consuming with sophisticated priors for the purpose of good performance; in the meanwhile, discriminative learning methods have fast testing speed but their application range is greatly restricted by the specialized task. Recent works have revealed that, with the aid of variable splitting techniques, denoiser prior can be plugged in as a modular part of model-based optimization methods to solve other inverse problems (e.g., deblurring). Such an integration induces considerable advantage when the denoiser is obtained via discriminative learning. However, the study of integration with fast discriminative denoiser prior is still lacking. To this end, this paper aims to train a set of fast and effective CNN (convolutional neural network) denoisers and integrate them into model-based optimization method to solve other inverse problems. Experimental results demonstrate that the learned set of denoisers not only achieve promising Gaussian denoising results but also can be used as prior to deliver good performance for various low-level vision applications.

Results

TaskDatasetMetricValueModel
Super-ResolutionSet14 - 3x upscalingPSNR27.72Deep CNN Denoiser
Super-ResolutionSet14 - 2x upscalingPSNR30.79Deep CNN Denoiser
Super-ResolutionSet14 - 4x upscalingPSNR27.59Deep CNN Denoiser
Super-ResolutionSet5 - 3x upscalingPSNR31.26Deep CNN Denoiser
Super-ResolutionSet5 - 2x upscalingPSNR35.05Deep CNN Denoiser
DenoisingBSD68 sigma15PSNR33.86Deep CNN Denoiser
DenoisingBSD68 sigma35PSNR29.5Deep CNN Denoiser
DenoisingBSD68 sigma5PSNR40.36Deep CNN Denoiser
DenoisingBSD68 sigma25PSNR31.16Deep CNN Denoiser
DenoisingCBSD68 sigma50PSNR27.86IRCNN
DenoisingBSD68 sigma15PSNR31.63Deep CNN Denoiser
DenoisingBSD68 sigma25PSNR29.15Deep CNN Denoiser
DenoisingBSD68 sigma50PSNR26.19Deep CNN Denoiser
Image Super-ResolutionSet14 - 3x upscalingPSNR27.72Deep CNN Denoiser
Image Super-ResolutionSet14 - 2x upscalingPSNR30.79Deep CNN Denoiser
Image Super-ResolutionSet14 - 4x upscalingPSNR27.59Deep CNN Denoiser
Image Super-ResolutionSet5 - 3x upscalingPSNR31.26Deep CNN Denoiser
Image Super-ResolutionSet5 - 2x upscalingPSNR35.05Deep CNN Denoiser
3D ArchitectureBSD68 sigma15PSNR33.86Deep CNN Denoiser
3D ArchitectureBSD68 sigma35PSNR29.5Deep CNN Denoiser
3D ArchitectureBSD68 sigma5PSNR40.36Deep CNN Denoiser
3D ArchitectureBSD68 sigma25PSNR31.16Deep CNN Denoiser
3D ArchitectureCBSD68 sigma50PSNR27.86IRCNN
3D ArchitectureBSD68 sigma15PSNR31.63Deep CNN Denoiser
3D ArchitectureBSD68 sigma25PSNR29.15Deep CNN Denoiser
3D ArchitectureBSD68 sigma50PSNR26.19Deep CNN Denoiser
3D Object Super-ResolutionSet14 - 3x upscalingPSNR27.72Deep CNN Denoiser
3D Object Super-ResolutionSet14 - 2x upscalingPSNR30.79Deep CNN Denoiser
3D Object Super-ResolutionSet14 - 4x upscalingPSNR27.59Deep CNN Denoiser
3D Object Super-ResolutionSet5 - 3x upscalingPSNR31.26Deep CNN Denoiser
3D Object Super-ResolutionSet5 - 2x upscalingPSNR35.05Deep CNN Denoiser
16kSet14 - 3x upscalingPSNR27.72Deep CNN Denoiser
16kSet14 - 2x upscalingPSNR30.79Deep CNN Denoiser
16kSet14 - 4x upscalingPSNR27.59Deep CNN Denoiser
16kSet5 - 3x upscalingPSNR31.26Deep CNN Denoiser
16kSet5 - 2x upscalingPSNR35.05Deep CNN Denoiser

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