SOTAVerified

Denoising

Denoising is a task in image processing and computer vision that aims to remove or reduce noise from an image. Noise can be introduced into an image due to various reasons, such as camera sensor limitations, lighting conditions, and compression artifacts. The goal of denoising is to recover the original image, which is considered to be noise-free, from a noisy observation.

( Image credit: Beyond a Gaussian Denoiser )

Papers

Showing 46514700 of 7282 papers

TitleStatusHype
LCM-Lookahead for Encoder-based Text-to-Image Personalization0
A Deep-Learning-Based Label-free No-Reference Image Quality Assessment Metric: Application in Sodium MRI Denoising0
Time Series Similarity Score Functions to Monitor and Interact with the Training and Denoising Process of a Time Series Diffusion Model applied to a Human Activity Recognition Dataset based on IMUs0
Learnable Residual-Based Latent Denoising in Semantic Communication0
Learnable Sampling 3D Convolution for Video Enhancement and Action Recognition0
Learned denoising with simulated and experimental low-dose CT data0
PnP-ReG: Learned Regularizing Gradient for Plug-and-Play Gradient Descent0
Learned Primal Dual Splitting for Self-Supervised Noise-Adaptive MRI Reconstruction0
Learned Semantic Multi-Sensor Depth Map Fusion0
Learned Single-Pass Multitasking Perceptual Graphics for Immersive Displays0
Learned, uncertainty-driven adaptive acquisition for photon-efficient scanning microscopy0
Learn From Orientation Prior for Radiograph Super-Resolution: Orientation Operator Transformer0
Time-series surrogates from energy consumers generated by machine learning approaches for long-term forecasting scenarios0
Learning a collaborative multiscale dictionary based on robust empirical mode decomposition0
Learning Adaptive Parameter Tuning for Image Processing0
Learning a Deep Compact Image Representation for Visual Tracking0
WaveFace: Authentic Face Restoration with Efficient Frequency Recovery0
Learning a Generic Adaptive Wavelet Shrinkage Function for Denoising0
Learning a Model-Driven Variational Network for Deformable Image Registration0
Learning a Multi-Domain Curriculum for Neural Machine Translation0
Learning and Evaluating Musical Features with Deep Autoencoders0
Learning an Explicit Weighting Scheme for Adapting Complex HSI Noise0
Learning-based Noise Component Map Estimation for Image Denoising0
Learning by Reconstruction Produces Uninformative Features For Perception0
Learning Cocoercive Conservative Denoisers via Helmholtz Decomposition for Poisson Inverse Problems0
Learning Continuous Face Representation with Explicit Functions0
Learning Convex Regularizers for Optimal Bayesian Denoising0
Learning Deep Convolutional Networks for Demosaicing0
Learning Deep Image Priors for Blind Image Denoising0
Learning Deep Representations of Appearance and Motion for Anomalous Event Detection0
WaveFit: An Iterative and Non-autoregressive Neural Vocoder based on Fixed-Point Iteration0
Time-Unified Diffusion Policy with Action Discrimination for Robotic Manipulation0
Learning Diffusion Model from Noisy Measurement using Principled Expectation-Maximization Method0
Learning Discriminative Multilevel Structured Dictionaries for Supervised Image Classification0
Learning _1-based analysis and synthesis sparsity priors using bi-level optimization0
Learning Enriched Features for Fast Image Restoration and Enhancement0
Tiny Object Detection with Single Point Supervision0
Learning Entity Representation for Entity Disambiguation0
Learning Fair Face Representation With Progressive Cross Transformer0
Learning Feature Weights using Reward Modeling for Denoising Parallel Corpora0
Learning Filter Bank Sparsifying Transforms0
Learning Frequency-Aware Dynamic Transformers for All-In-One Image Restoration0
Learning from Multiple Noisy Augmented Data Sets for Better Cross-Lingual Spoken Language Understanding0
Learning from Natural Noise to Denoise Micro-Doppler Spectrogram0
Learning from Noisy Labels for Long-tailed Data via Optimal Transport0
Enhancing Point Annotations with Superpixel and Confidence Learning Guided for Improving Semi-Supervised OCT Fluid Segmentation0
Learning from Noisy Labels via Self-Taught On-the-Fly Meta Loss Rescaling0
Learning from Noisy Labels with Coarse-to-Fine Sample Credibility Modeling0
SPIRE: Semantic Prompt-Driven Image Restoration0
Learning From Unpaired Data: A Variational Bayes Approach0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SINDyPSNR81Unverified
2Pixel-shuffling DownsamplingPSNR38.4Unverified
3TWSCPSNR37.93Unverified
4CBDNet(Syn)PSNR37.57Unverified
5MCWNNMPSNR37.38Unverified
6Han et alPSNR35.95Unverified
7FFDNetPSNR34.4Unverified
8TNRDPSNR33.65Unverified
9CDnCNN-BPSNR32.43Unverified
10NLRNPSNR30.8Unverified
#ModelMetricClaimedVerifiedStatus
1DRUnet_Poisson_0.01Average PSNR (dB)33.92Unverified
#ModelMetricClaimedVerifiedStatus
1DRANetAverage PSNR39.64Unverified
#ModelMetricClaimedVerifiedStatus
1PCNN+RL+HMEAverage84.61Unverified