DECODING COVID-19: HARNESSING CNN MODELS FOR CHEST X-RAY CLASSIFICATION


Prekshith C R, Dr. K. Vijayalakshmi
School of Computer Science and Application,REVA University, Bangalore, Karnataka,India
Abstract
COVID-19 is a new virus that infects the respiratory tract of the upper respiratory system and organs. Based on the worldwide epidemic, the number of illnesses and deaths was growing every day. Chest X-ray (CXR) pictures are beneficial for monitoring lung diseases, especially COVID-19. Deep learning (DL) is a popular computing concept that has been widely used in medical applications. Efforts to automatically diagnose COVID-19 have been beneficial. This study used convolution neural networks (CNN) models to develop a DL technology for binary classification of COVID-19 using CXR pictures. By reducing the number of layers and tweaking parameters, training time was reduced. The suggested model for training loss of 0.0444 and accuracy of 98.53%. In validation it demonstrates even higher proficiency attaining a loss of 0.0181 and accuracy of 99.17%. These findings highlight the need of using deep learning (DL) for early COVID-19 diagnosis and screening.
Keywords: CNN, COVID-19, X-ray, Model, Deep convolutional neural networks.
Journal Name :
EPRA International Journal of Multidisciplinary Research (IJMR)

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Published on : 2024-05-24

Vol : 10
Issue : 5
Month : May
Year : 2024
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