The Novel Coronavirus disease 2019 (COVID-19) is a fatal infectious disease, first recognized in December 2019 in Wuhan, Hubei, China, and has gone on an epidemic situation. Under these circumstances, it became more important to detect COVID-19 in infected people. Nowadays, the testing kits are gradually lessening in number compared to the number of infected population. Under recent prevailing conditions, the diagnosis of lung disease by analyzing chest CT (Computed Tomography) images has become an important tool for both diagnosis and prophecy of COVID-19 patients. In this study, a Transfer learning strategy (CNN) for detecting COVID-19 infection from CT images has been proposed. In the proposed model, a multilayer Convolutional neural network (CNN) with Transfer learning model Inception V3 has been designed. Similar to CNN, it uses convolution and pooling to extract features, but this transfer learning model contains weights of dataset Imagenet. Thus it can detect features very effectively which gives it an upper hand for achieving better accuracy.
翻译:2019年新科罗纳病毒(COVID-19)是一种致命传染病,最早于2019年12月在中国湖北武汉被确认为传染病,并开始流行,在这种情况下,发现受感染者COVID-19已变得更加重要。现在,与受感染人口的数量相比,测试包正在逐渐减少。在最近的普遍条件下,通过分析胸腔CT(合成成像学)图像诊断肺病已成为诊断和预言COVID-19病人的重要工具。在本研究中,提出了检测CT图像COVID-19感染的转移学习战略(CNN ) 。在拟议的模型中,设计了一个多层革命神经网络(CNN ), 其传输学习模式是Inception V3, 与CNN类似, 它使用革命和集合来提取特征, 但这种传输学习模式包含数据集图像网的重量。因此,它能够非常有效地探测特征,使其具有更高的准确性。