SOTAVerified

Image Super-Resolution

Image Super-Resolution is a machine learning task where the goal is to increase the resolution of an image, often by a factor of 4x or more, while maintaining its content and details as much as possible. The end result is a high-resolution version of the original image. This task can be used for various applications such as improving image quality, enhancing visual detail, and increasing the accuracy of computer vision algorithms.

Papers

Showing 13011325 of 1589 papers

TitleStatusHype
Single Image Super-Resolution based on Wiener Filter in Similarity Domain0
Single image super-resolution by approximated Heaviside functions0
Single Image Super-Resolution for Domain-Specific Ultra-Low Bandwidth Image Transmission0
Single Image Super-Resolution From Transformed Self-Exemplars0
Single image super resolution in spatial and wavelet domain0
Single Image Super-Resolution Methods: A Survey0
Single-Image Super-Resolution Reconstruction based on the Differences of Neighboring Pixels0
Single Image Super-Resolution Using Lightweight CNN with Maxout Units0
Single Image Super-resolution using Deformable Patches0
Single Image Super-Resolution Using Lightweight Networks Based on Swin Transformer0
Single Image Super-Resolution Using Multi-Scale Convolutional Neural Network0
USIM-DAL: Uncertainty-aware Statistical Image Modeling-based Dense Active Learning for Super-resolution0
Single image super-resolution using self-optimizing mask via fractional-order gradient interpolation and reconstruction0
Single Image Super-resolution via a Lightweight Residual Convolutional Neural Network0
Biased Mixtures Of Experts: Enabling Computer Vision Inference Under Data Transfer Limitations0
Beyond Pretty Pictures: Combined Single- and Multi-Image Super-resolution for Sentinel-2 Images0
Single Image Super-Resolution via Cascaded Multi-Scale Cross Network0
Beta Process Joint Dictionary Learning for Coupled Feature Spaces with Application to Single Image Super-Resolution0
Single Image Super-resolution via Dense Blended Attention Generative Adversarial Network for Clinical Diagnosis0
Single Image Super Resolution via Manifold Approximation0
Single Image Super-Resolution via Residual Neuron Attention Networks0
Single Image Super Resolution - When Model Adaptation Matters0
Single Image Super-resolution with a Switch Guided Hybrid Network for Satellite Images0
Achieving on-Mobile Real-Time Super-Resolution with Neural Architecture and Pruning Search0
Single-Layer Learnable Activation for Implicit Neural Representation (SL^2A-INR)0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1DRCT-LPSNR29.54Unverified
2HMA†PSNR29.51Unverified
3Hi-IR-LPSNR29.49Unverified
4HAT-LPSNR29.47Unverified
5HAT_FIRPSNR29.44Unverified
6DRCTPSNR29.4Unverified
7HATPSNR29.38Unverified
8CPAT+PSNR29.36Unverified
9SwinFIRPSNR29.36Unverified
10CPATPSNR29.34Unverified
#ModelMetricClaimedVerifiedStatus
1DRCT-LPSNR28.16Unverified
2HMA†PSNR28.13Unverified
3Hi-IR-LPSNR28.13Unverified
4HAT-LPSNR28.09Unverified
5HAT_FIRPSNR28.07Unverified
6CPAT+PSNR28.06Unverified
7DRCTPSNR28.06Unverified
8HATPSNR28.05Unverified
9CPATPSNR28.04Unverified
10SwinFIRPSNR28.03Unverified
#ModelMetricClaimedVerifiedStatus
1Hi-IR-LPSNR28.72Unverified
2DRCT-LPSNR28.7Unverified
3HMA†PSNR28.69Unverified
4HAT-LPSNR28.6Unverified
5HAT_FIRPSNR28.43Unverified
6DRCTPSNR28.4Unverified
7HATPSNR28.37Unverified
8CPAT+PSNR28.33Unverified
9CPATPSNR28.22Unverified
10PFTPSNR28.2Unverified