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Retracted: Recent Study on Image Denoising using Deep CNN Techniques

Ashly Roy, P Anju, Linnet Tomy, M. Rajeswari

202115 citationsDOI

Abstract

Image denoising is one of the important subjects in the examination field. On the presentation of profound CNN in picture denoising, the picture is by all accounts more exact from commotion when contrasted with the non-cnn picture denoising strategies. Thusly, this paper is an audit on some CNN models for denoising boisterous picture including Deep CNN utilizing leftover learning with and without group standardization, Deep shrinkage CNN, Mixed commotion decrease CNN, Residual learning of profound CNN with Symmetry-Rectifier Linear Unit (SyReLU), Dilated Residual Networks with Symmetric Skip Connection (DSNet), Fast and adaptable denoising CNN (FFDNet), Batch-renormalization denoising network (BRDNet) and Attention-guided denoising convolutional neural organization (ADNet).The denoising achievements of the above models are analyzed on different gray and colour.

Topics & Concepts

Noise reductionArtificial intelligenceConvolutional neural networkComputer scienceImage denoisingVideo denoisingDeep learningPattern recognition (psychology)ResidualNon-local meansNoise (video)PixelImage (mathematics)AlgorithmObject (grammar)Multiview Video CodingVideo trackingImage and Signal Denoising MethodsAdvanced Image Fusion TechniquesAdvanced Image Processing Techniques
Retracted: Recent Study on Image Denoising using Deep CNN Techniques | Litcius