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Facial image noise classification and denoising using neural network
Author(s) -
Milan Tripathi
Publication year - 2021
Publication title -
sustainable engineering and innovation
Language(s) - English
Resource type - Journals
ISSN - 2712-0562
DOI - 10.37868/sei.v3i2.id142
Subject(s) - preprocessor , artificial intelligence , noise reduction , computer science , noise (video) , pattern recognition (psychology) , image (mathematics) , image processing , image denoising , computer vision , video denoising , artificial neural network , video processing , video tracking , multiview video coding
Image denoising is an important aspect of image processing. Noisy images are produced as a result of technical and environmental flaws. As a result, it is reasonable to consider image denoising an important topic to research, as it also aids in the resolution of other image processing issues. The challenge, however, is that the traditional techniques used are time-consuming and inflexible. This article purposed a system of classifying and denoising noised images. A CNN and UNET based model architecture is designed, implement, and evaluated. The facial image dataset is processed and then it is used to train, valid and test the models. During preprocessing, the images are resized into 48*48, normalize, and various noises are added to the image. The preprocessing for each model is a bit different. The training and validation accuracy for the CNN model is 99.87% and 99.92% respectively. The UNET model is also able to get optimal PSNR and SSIM values for different noises.

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