The COVID-19 (coronavirus) is an ongoing pandemic caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The virus was first identified in mid-December 2019 in the Hubei province of Wuhan, China and by now has spread throughout the planet with more than 75.5 million confirmed cases and more than 1.67 million deaths. With limited number of COVID-19 test kits available in medical facilities, it is important to develop and implement an automatic detection system as an alternative diagnosis option for COVID-19 detection that can used on a commercial scale. Chest X-ray is the first imaging technique that plays an important role in the diagnosis of COVID-19 disease. Computer vision and deep learning techniques can help in determining COVID-19 virus with Chest X-ray Images. Due to the high availability of large-scale annotated image datasets, great success has been achieved using convolutional neural network for image analysis and classification. In this research, we have proposed a deep convolutional neural network trained on five open access datasets with binary output: Normal and Covid. The performance of the model is compared with four pre-trained convolutional neural network-based models (COVID-Net, ResNet18, ResNet and MobileNet-V2) and it has been seen that the proposed model provides better accuracy on the validation set as compared to the other four pre-trained models. This research work provides promising results which can be further improvise and implement on a commercial scale.
翻译:COVID-19(corona girl)是严重急性呼吸系统综合症冠状病毒2 (SARS-COV-2)造成的一种持续流行的流行病,病毒最初于2019年12月中旬在中国武汉湖北省发现,现在已传播到全球7 550多万个确诊病例,超过167万人死亡;由于医疗设施中可用的COVID-19测试包数量有限,必须开发和实施一个自动检测系统,作为可用于商业规模的COVID-19检测的替代诊断方案;胸X光是第一个在诊断COVID-19疾病方面发挥重要作用的成像技术;计算机视力和深层学习技术有助于在切斯特X光图像中确定COVI-19病毒;由于有大量的附加说明的图像数据集,利用革命神经网络进行图像分析和分类的工作取得了巨大成功;在这项研究中,我们提议了一个深层的革命神经网络网络网络网络,在5个公开存取数据时,其二进制输出为正常与CovD-19疾病;计算机视觉和深层次学习技术可以帮助确定CVD19病毒病毒病毒病毒病毒病毒病毒病毒病毒病毒病毒病毒的精确度;由于大量使用模型,因此建立了4个变现模型。