University of Bahrain
Scientific Journals

Enhancing Image Clarity with the Combined Use of REDNet and Attention Channel Module

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dc.contributor.author Halim, Rico
dc.contributor.author Putra Kusuma, Gede
dc.date.accessioned 2024-02-11T11:11:19Z
dc.date.available 2024-02-11T11:11:19Z
dc.date.issued 2024-02-09
dc.identifier.issn 2210-142X
dc.identifier.uri https://journal.uob.edu.bh:443/handle/123456789/5440
dc.description.abstract The primary aim of our study is to improve the efficacy of image denoising, specifically in situations when there is a limited availability of data, such as the BSD68 dataset. Insufficient data presents a challenge in achieving optimal outcomes due to the complexity involved in constructing models. In order to tackle this difficulty, we provide a method that incorporates Channel Attention, Batch Normalization, and Dropout approaches into the current REDNet framework. Our investigation indicates enhancements in performance parameters, such as PSNR (Peak Signal to Noise Ratio) and SSIM (Structural Similarity Index), across various levels of noise. With a noise level of 15, we obtained a Peak Signal-to-Noise Ratio (PSNR) of 34.9858 dB and a Structural Similarity Index (SSIM) of 0.9371. At a noise level of 25, our tests yielded a PSNR of 31.7886 decibels and an SSIM of 0.8876. In addition, at a noise level of 50, we achieved a Peak Signal-to-Noise Ratio (PSNR) of 27.9063 decibels and a Structural Similarity Index (SSIM) of 0.7754. The incorporation of Channel Attention, Batch Normalization, and Dropout has been demonstrated to be a crucial element in enhancing the efficacy of image denoising. The Channel Attention approach enables the model to choose and concentrate on crucial information inside the image, while Batch Normalization and Dropout techniques provide stability and mitigate overfitting issues throughout the training process. Our research highlights the effectiveness of these three strategies and emphasizes their integration as a novel way to address the constraints presented by the scarcity of data in image denoising jobs. This emphasizes the significant potential in creating dependable and effective image denoising methods when dealing with circumstances when there is a limited dataset. en_US
dc.language.iso en en_US
dc.publisher University of Bahrain en_US
dc.subject Image Denoising, Deep Learning, Channel Attention Module, REDNet Model, Image Processing en_US
dc.title Enhancing Image Clarity with the Combined Use of REDNet and Attention Channel Module en_US
dc.identifier.doi http://dx.doi.org/10.12785/ijcds/160117
dc.volume 16 en_US
dc.issue 1 en_US
dc.pagestart 213 en_US
dc.pageend 223 en_US
dc.contributor.authorcountry Indonesia en_US
dc.contributor.authorcountry Indonesia en_US
dc.contributor.authoraffiliation Computer Science Department, BINUS Graduate Program - Master of Computer Science Bina Nusantara University en_US
dc.contributor.authoraffiliation Computer Science Department, BINUS Graduate Program - Master of Computer Science Bina Nusantara University en_US
dc.source.title International Journal of Computing and Digital Systems en_US
dc.abbreviatedsourcetitle IJCDS en_US


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