SOTAVerified

Image Restoration

Image Restoration is a family of inverse problems for obtaining a high quality image from a corrupted input image. Corruption may occur due to the image-capture process (e.g., noise, lens blur), post-processing (e.g., JPEG compression), or photography in non-ideal conditions (e.g., haze, motion blur).

Source: Blind Image Restoration without Prior Knowledge

Papers

Showing 10411050 of 1459 papers

TitleStatusHype
Learning Generic Diffusion Processes for Image Restoration0
Learning Hybrid Sparsity Prior for Image Restoration: Where Deep Learning Meets Sparse Coding0
Learning Image-Adaptive Codebooks for Class-Agnostic Image Restoration0
Learning local regularization for variational image restoration0
Learning Degradation-Independent Representations for Camera ISP Pipelines0
Learning to Enhance Visual Quality via Hyperspectral Domain Mapping0
Learning to Sample the Most Useful Training Patches from Images0
Learning to Super-Resolve Blurry Face and Text Images0
Learning Weather-General and Weather-Specific Features for Image Restoration Under Multiple Adverse Weather Conditions0
License Plate Super-Resolution Using Diffusion Models0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1OneRestoreAverage PSNR (dB)28.72Unverified
2SRUDCAverage PSNR (dB)27.64Unverified
3RestormerAverage PSNR (dB)26.99Unverified
4WGWSNetAverage PSNR (dB)26.96Unverified
5DGUNetAverage PSNR (dB)26.92Unverified
6OKNetAverage PSNR (dB)26.33Unverified
7MIRNetAverage PSNR (dB)25.97Unverified
8PromptIRAverage PSNR (dB)25.9Unverified
9MPRNetAverage PSNR (dB)25.47Unverified
10MIRNetv2Average PSNR (dB)25.37Unverified
#ModelMetricClaimedVerifiedStatus
1ESDNet-LPSNR22.42Unverified
2ESDNetPSNR22.12Unverified
#ModelMetricClaimedVerifiedStatus
1730L37Unverified