The new Coronavirus is spreading rapidly and it has taken the lives of many people so far. The virus has destructive effects on the human lung and early detection is very important. Deep Convolution neural networks are a powerful tool in classifying images. Therefore, in this paper a hybrid approach based on a deep network is presented. Feature vectors were extracted by applying a deep convolution neural network on the images and effective features were selected by the binary differential meta-heuristic algorithm. These optimized features were given to the SVM classifier. A database consisting of three categories of images as COVID-19, pneumonia, and healthy included 1092 X-ray samples was considered. The proposed method achieved an accuracy of 99.43%, a sensitivity of 99.16%, and a specificity of 99.57%. Our results demonstrate the suggested approach is better than recent studies on COVID-19 detection with X-ray images.
翻译:新的科罗纳病毒正在迅速传播,它已经夺走了许多人的生命。病毒对人类肺具有破坏性影响,早期检测非常重要。深相神经网络是图像分类的有力工具。因此,在本文件中提出了基于深网络的混合方法。通过在图像上应用深刻的连动神经网络来提取特性矢量,而有效特性则由二进制差分元超重算法来选择。这些优化的特征被给了SVM分类器。一个数据库包括三类图像,如COVID-19、肺炎和健康,包括1092 X射线样本。拟议方法的精确度达到99.43%,灵敏度达到99.16%,特性达到99.57%。我们的结果表明所建议的方法比最近用X光图像对COVID-19探测进行的研究要好。