In this paper, we have trained several deep convolutional networks with introduced training techniques for classifying X-ray images into three classes: normal, pneumonia, and COVID-19, based on two open-source datasets. Our data contains 180 X-ray images that belong to persons infected with COVID-19, and we attempted to apply methods to achieve the best possible results. In this research, we introduce some training techniques that help the network learn better when we have an unbalanced dataset (fewer cases of COVID-19 along with more cases from other classes). We also propose a neural network that is a concatenation of the Xception and ResNet50V2 networks. This network achieved the best accuracy by utilizing multiple features extracted by two robust networks. For evaluating our network, we have tested it on 11302 images to report the actual accuracy achievable in real circumstances. The average accuracy of the proposed network for detecting COVID-19 cases is 99.50%, and the overall average accuracy for all classes is 91.4%.
翻译:在本文中,我们培训了几个深层革命网络,采用培训技术将X射线图像分为三类:正常、肺炎和COVID-19,基于两个开放源数据集。我们的数据包含180个属于COVID-19感染者的X射线图像,我们试图采用各种方法取得最佳结果。在这项研究中,我们引入了一些培训技术,帮助网络在数据组不平衡(COVID-19和其他类别更多案例)的情况下更好地学习。我们还提议建立一个神经网络,将Xcepion和ResNet50V2网络组成。这个网络通过利用两个强大的网络所提取的多个特征实现了最佳准确性。为了评估我们的网络,我们用11302个图像测试了它,以报告在现实环境中可以实现的实际准确性。提议的探测COVID-19案例的网络平均精确率为99.50%,所有类别的总体平均精确度为91.4%。