Comparative Study on Detection of COVID-19 using different Convolution Layers

J. D. Louis Lovenia Karunya, D. Darling Jemima, R. Raghhul, Eugene Kingsley
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Abstract

The Coronavirus disease 2019 (COVID-19) is a highly infectious disease caused by the severe acute respiratory syndrome. The disease was first instigated in December 2019 in the place called Wuhan which is the capital of a province in China named Hubei and meanwhile, it has spread universally throughout the world. The impact is greatly influenced so that World Health Organization (WHO) has declared the ongoing pandemic of COVID-19 a Public Health Emergency. Artificial intelligence renders its support to analyze chest X-ray (CXR) images for COVID-19 diagnosis. This proposed system is aimed to automatically detect COVID-19 patients using digital chest x- ray images while increasing the accuracy of the model tried with different convolution layers. The dataset was created as a mixture of publicly available X-ray images from patients with confirmed COVID-19 disease and healthy folks. To alleviate the small number of samples, we have inculcated many data augmentation techniques that further enhance the accuracy of the model with different convolution layers. The research aims to design a Deep Learning based model for Covid 19 prediction through X-Ray images. The parameters chosen are applied over 3 different models designed by varying Convolution Layers and proved that accuracy enhances when number of layers increases.
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不同卷积层检测COVID-19的比较研究
2019冠状病毒病(COVID-19)是由严重急性呼吸系统综合征引起的高度传染性疾病。该疾病于2019年12月首次在中国湖北省省会武汉爆发,同时已在世界各地蔓延。其影响非常大,因此世界卫生组织(WHO)宣布正在进行的COVID-19大流行为突发公共卫生事件。人工智能(ai)为新冠肺炎诊断提供了胸部x光影像分析支持。该系统旨在利用数字胸部x线图像自动检测COVID-19患者,同时提高使用不同卷积层尝试的模型的准确性。该数据集是由COVID-19确诊患者和健康人群的公开x射线图像混合而成的。为了缓解样本数量少的问题,我们引入了许多数据增强技术,通过不同的卷积层进一步提高模型的准确性。该研究旨在通过x射线图像设计基于深度学习的新冠肺炎预测模型。将所选择的参数应用于不同卷积层设计的3种不同模型上,证明了随着层数的增加,准确率提高。
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