Methods for image denoising using convolutional neural network: a review

被引:0
作者
Ademola E. Ilesanmi
Taiwo O. Ilesanmi
机构
[1] Thammasat University,School of ICT, Sirindhorn International Institute of Technology
[2] Alex Ekwueme Federal University,undefined
[3] National Population Commission,undefined
来源
Complex & Intelligent Systems | 2021年 / 7卷
关键词
Convolutional neural network; Image denoising; Deep neural network; Noise in images;
D O I
暂无
中图分类号
学科分类号
摘要
Image denoising faces significant challenges, arising from the sources of noise. Specifically, Gaussian, impulse, salt, pepper, and speckle noise are complicated sources of noise in imaging. Convolutional neural network (CNN) has increasingly received attention in image denoising task. Several CNN methods for denoising images have been studied. These methods used different datasets for evaluation. In this paper, we offer an elaborate study on different CNN techniques used in image denoising. Different CNN methods for image denoising were categorized and analyzed. Popular datasets used for evaluating CNN image denoising methods were investigated. Several CNN image denoising papers were selected for review and analysis. Motivations and principles of CNN methods were outlined. Some state-of-the-arts CNN image denoising methods were depicted in graphical forms, while other methods were elaborately explained. We proposed a review of image denoising with CNN. Previous and recent papers on image denoising with CNN were selected. Potential challenges and directions for future research were equally fully explicated.
引用
收藏
页码:2179 / 2198
页数:19
相关论文
共 353 条
[11]  
Rajagopal A(2013)Analysis of effect of noise removal filters on noisy remote sensing images Int J Sci Eng Res 4 1151-714
[12]  
Hamilton RB(2019)Speckle noise removal in SAR images using multi-objective PSO (MOPSO) algorithm Appl Soft Comput 76 671-108
[13]  
Scalzo F(2020)An efficient denoising of impulse noise from MRI using adaptive switching modified decision based unsymmetric trimmed median filter Biomed Signal Process Control 55 101657-262
[14]  
Ilesanmi AE(2016)Bias-compensated affine-projection-like algorithms with noisy input Electron Lett 52 712-36
[15]  
Idowu OP(2015)Recursive least squares parameter identification algorithms for systems with colored noise using the filtering technique and the auxilary model Digit Signal Process 37 100-5516
[16]  
Chaumrattanakul U(2014)Multiple-step local wiener filter with proper stopping in wavelet domain J Vis Commun Image Represent 25 254-615
[17]  
Makhanov SS(2020)A review on medical image denoising algorithms Biomed Signal Process Control 61 102036-2324
[18]  
Goyal B(2019)Brief review of image denoising techniques Vis Comput Ind Biomed Art 2 7-157
[19]  
Dogra A(2018)Using deep neural networks for inverse problems in imaging: beyond analytical methods IEEESignal Process Mag 35 20-31
[20]  
Agrawal S(2020)A survey of the recent architectures of deep convolutional neural networks Artif Intell Rev 53 5455-197