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 65516575 of 7282 papers

TitleStatusHype
Image Denoising via Collaborative Dual-Domain Patch Filtering0
A Missing Information Loss function for implicit feedback datasets0
Fast 3D Point Cloud Denoising via Bipartite Graph Approximation & Total Variation0
Ladder Networks for Emotion Recognition: Using Unsupervised Auxiliary Tasks to Improve Predictions of Emotional Attributes0
Deep Speech Denoising with Vector Space Projections0
Generative Model for Heterogeneous Inference0
Joint Enhancement and Denoising Method via Sequential DecompositionCode0
Unsupervised Natural Language Generation with Denoising AutoencodersCode0
Joint Bilateral Filter for Signal Recovery from Phase Preserved Curvelet Coefficients for Image Denoising0
Deep Neural Networks Motivated by Partial Differential EquationsCode0
Simultaneous Fidelity and Regularization Learning for Image RestorationCode0
X-ray ghost tomography: denoising, dose fractionation and mask considerations0
DeepASL: Kinetic Model Incorporated Loss for Denoising Arterial Spin Labeled MRI via Deep Residual LearningCode0
Real-world Noisy Image Denoising: A New BenchmarkCode0
Adaptive Quantile Sparse Image (AQuaSI) Prior for Inverse Imaging ProblemsCode0
Learning to Separate Object Sounds by Watching Unlabeled VideoCode0
Regional Priority Based Anomaly Detection using Autoencoders0
Efficient First-Order Algorithms for Adaptive Signal DenoisingCode0
Stochastic Variational Inference with Gradient Linearization0
Context-aware Deep Feature Compression for High-speed Visual TrackingCode0
Multi-scale Processing of Noisy Images using Edge Preservation LossesCode0
SUNLayer: Stable denoising with generative networks0
Lifting Layers: Analysis and ApplicationsCode0
Group Sparsity Residual with Non-Local Samples for Image Denoising0
Discrete Potts Model for Generating Superpixels on Noisy Images0
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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