@inproceedings{ad77bd6df9cb482b99bdddf8c5749717,
title = "COVID-19 Chest X-Ray Classification Using Residual Network",
abstract = "In 2019, the Covid-19 pandemic has spread across the globe and causing significant disruptions to daily life. Those who have tested positive for Covid-19 may experience long-term respiratory problems as the virus can damage the lungs. Specifically, patients who have recovered from Covid-19 may develop white spots on their lungs. This can be difficult to distinguish from normal lung tissue. Consequently, researchers have conducted extensive studies on image classification of Covid-19 chest x-rays, which has become a popular topic of investigation over the past two years. In this research, four datasets were utilized for image classification including COVID-19 Radiography, Chest X-ray, COVID-19, and CoronaHack datasets. All these datasets were sourced from Kaggle. The pre-trained ResNet152 model was used in conjunction with a transfer learning technique. Results indicated that the pre-trained ResNet152 with early stopping provided the highest accuracy among the techniques tested. In this research, the COVID-19 Radiography dataset achieved an accuracy of 95.61%, while the Chest X-ray dataset achieved an accuracy of 97.59%. CoronaHack dataset and COVID-19 X-ray dataset achieved accuracies of 93.59% and 100%, respectively.",
keywords = "Chest Xray, Covid-19, ResNet152, transfer learning",
author = "Tan, {Xin Hui} and Lim, {Jit Yan} and Lim, {Kian Ming} and Lee, {Chin Poo}",
note = "Publisher Copyright: {\textcopyright} 2023 IEEE.; 11th International Conference on Information and Communication Technology, ICoICT 2023 ; Conference date: 23-08-2023 Through 24-08-2023",
year = "2023",
doi = "10.1109/ICoICT58202.2023.10262734",
language = "English",
series = "International Conference on ICT Convergence",
publisher = "IEEE Computer Society",
pages = "271--276",
booktitle = "2023 11th International Conference on Information and Communication Technology, ICoICT 2023",
address = "United States",
}