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 876900 of 1459 papers

TitleStatusHype
Unsupervised Low Light Image Enhancement Using SNR-Aware Swin Transformer0
Counting Crowds in Bad Weather0
Fast and Interpretable Nonlocal Neural Networks for Image Denoising via Group-Sparse Convolutional Dictionary LearningCode0
A Unified Conditional Framework for Diffusion-based Image Restoration0
Infrared Image Deturbulence Restoration Using Degradation Parameter-Assisted Wide & Deep LearningCode0
Rethinking PRL: A Multiscale Progressively Residual Learning Network for Inverse HalftoningCode0
A Dive into SAM Prior in Image Restoration0
Generalized Expectation Maximization Framework for Blind Image Super Resolution0
SIDAR: Synthetic Image Dataset for Alignment & RestorationCode0
Restoring Images Captured in Arbitrary Hybrid Adverse Weather Conditions in One Go0
Neural information coding for efficient spike-based image denoising0
Toward Moiré-Free and Detail-Preserving Demosaicking0
A Two-Stage Real Image Deraining Method for GT-RAIN Challenge CVPR 2023 Workshop UG^2+ Track 3Code0
Mobile Image Restoration via Prior Quantization0
CSI-Inpainter: Enabling Visual Scene Recovery from CSI Time Sequences for Occlusion Removal0
Hybrid Transformer and CNN Attention Network for Stereo Image Super-resolution0
Dual Degradation Representation for Joint Deraining and Low-Light Enhancement in the DarkCode0
Bio-Inspired Simple Neural Network for Low-Light Image Restoration: A Minimalist Approach0
Making the Invisible Visible: Toward High-Quality Terahertz Tomographic Imaging via Physics-Guided Restoration0
SwinFSR: Stereo Image Super-Resolution using SwinIR and Frequency Domain Knowledge0
NF-ULA: Langevin Monte Carlo with Normalizing Flow Prior for Imaging Inverse ProblemsCode0
Recovering Continuous Scene Dynamics from A Single Blurry Image with Events0
Generative Diffusion Prior for Unified Image Restoration and Enhancement0
Random Weights Networks Work as Loss Prior Constraint for Image Restoration0
SDAT: Sub-Dataset Alternation Training for Improved Image Demosaicing0
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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