Javascript must be enabled to continue!
A Hybrid CNN for Image Denoising
View through CrossRef
Deep convolutional neural networks (CNNs) with strong learning abilities have been used in the field of image super-resolution. However, some CNNs depends on a single deep network to training an image super-resolution model, which will have poor performance in complex screens. To address this problem, we propose a hybrid denoising CNN (HDCNN). HDCNN is composed of a dilated block (DB), RepVGG block (RVB) and feature refinement block (FB), a single convolution. DB combines a dilated convolution, batch normalization (BN), common convolutions, activation function of ReLU to obtain more context information. RVB uses parallel combination of convolution and BN, ReLU to extract complementary width features. FB is used to obtain more accurate information via refining obtained feature from the RVB. A single convolution collaborates a residual learning operation to construct a clean image. These key components make the HDCNN have good performance in image denoising. Experiment shows that the proposed HDCNN enjoys good denoising effect in public datasets.
Intelligence Science and Technology Press Inc.
Title: A Hybrid CNN for Image Denoising
Description:
Deep convolutional neural networks (CNNs) with strong learning abilities have been used in the field of image super-resolution.
However, some CNNs depends on a single deep network to training an image super-resolution model, which will have poor performance in complex screens.
To address this problem, we propose a hybrid denoising CNN (HDCNN).
HDCNN is composed of a dilated block (DB), RepVGG block (RVB) and feature refinement block (FB), a single convolution.
DB combines a dilated convolution, batch normalization (BN), common convolutions, activation function of ReLU to obtain more context information.
RVB uses parallel combination of convolution and BN, ReLU to extract complementary width features.
FB is used to obtain more accurate information via refining obtained feature from the RVB.
A single convolution collaborates a residual learning operation to construct a clean image.
These key components make the HDCNN have good performance in image denoising.
Experiment shows that the proposed HDCNN enjoys good denoising effect in public datasets.
.
Related Results
Methods for image denoising using convolutional neural network: a review
Methods for image denoising using convolutional neural network: a review
AbstractImage denoising faces significant challenges, arising from the sources of noise. Specifically, Gaussian, impulse, salt, pepper, and speckle noise are complicated sources of...
Enhancing bone scan image quality: an improved self-supervised denoising approach
Enhancing bone scan image quality: an improved self-supervised denoising approach
Abstract
Objective. Bone scans play an important role in skeletal lesion assessment, but gamma cameras exhibit challenges with low sensitivity and...
Uncertainty in denoising of MRSI using low-rank methods
Uncertainty in denoising of MRSI using low-rank methods
Abstract
Purpose
Low-rank denoising of MRSI data results in an apparent increase in spectral SNR. However, it is not clear if t...
Mapping Fluvial Landforms with Deep Similarity Learning
Mapping Fluvial Landforms with Deep Similarity Learning
<p>Semantic image classification as practised in Earth Observation is poorly suited to mapping fluvial landforms which are often composed of multiple landcover types ...
Combining denoising of RNA-seq data and flux balance analysis for cluster analysis of single cells
Combining denoising of RNA-seq data and flux balance analysis for cluster analysis of single cells
Abstract
Background
Sophisticated methods to properly pre-process and analyze the increasing collection of single-cell RNA sequencing (scRNA-seq) da...
Wavelet Denoising of Well Logs and its Geological Performance
Wavelet Denoising of Well Logs and its Geological Performance
Well logs play a very important role in exploration and even exploitation of energy resources, but they usually contain kinds of noises which affect the results of the geological i...
A Novel Technique of ECG Denoising based on Lifting Wavelet Transform and Total Variation Minimization
A Novel Technique of ECG Denoising based on Lifting Wavelet Transform and Total Variation Minimization
Abstract
Buckground:The signal of Electrocardiogram (•) is one of the most popular diagnostic means providing an electrical picture of the heart and also information about ...
Baikal: Unpaired Denoising of Fluorescence Microscopy Images using Diffusion Models
Baikal: Unpaired Denoising of Fluorescence Microscopy Images using Diffusion Models
Abstract
Fluorescence microscopy is an indispensable tool for biological discovery but image quality is constrained by desired spatial and tempor...

