Open Access Journal

ISSN : 2394-2320 (Online)

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

Open Access Journal

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

ISSN : 2394-2320 (Online)

A Deep Learning and Machine Learning Approach for Image Denoising

Author : Ashly Roy 1 Anju P 2 Linnet Tomy 3 Dr.M.Rajeswari 4

Date of Publication :20th May 2021

Abstract: Image denoising is the way toward elimi- nating any distortions in an image and numerous pro- cedures exists for this reason. The traditional image denoising methods comprises of spatial domain filter- ing and transform domain filtering. These techniques eliminated commotion to a more prominent stretch out from an image yet neglected to preserve image textures and information’s. To counter this issue deep learning came right into it. It’s strong learning capacity made convolutional neural network the best and exact answer for image denoising. This paper discusses on one such CNN approach that utilize LeNet architecture for image denoising.We additionally presented the machine learning approach in image denoising to get an obvious thought on which learning is more effective in eliminating the distortions. K-Nearest Neighbor, Na ̈ıve Bayes, Support Vector Machine, Random Forest and Decision Tree are the main five algorithms utilized in the machine learning approach. At long last, a correlation is made between machine learning algorithms and deep learning approach based on accuracy and an effective algorithm for image denoising is found.

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