基于迁移学习的新型冠状病毒识别方法

Atul Kumar Uttam
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引用次数: 3

摘要

冠状病毒病(COVID-2019)在全球迅速传播,已感染数百万人,并造成许多死亡。世界各地已开始为这一仍然存在的流行病进行动员,并采取了某些限制和措施,以防止这一疾病蔓延。此外,为了控制这种疾病,应该找到受影响的人。然而,由于RT-PCR检测的效率低下,胸部计算机断层扫描(CT)是支持COVID-19诊断的常用手段。本研究利用迁移学习的概念,从人体胸部的x射线图像中检测covid-19。我们的模型对Covid-19的识别准确率为96%,整个模型的总准确率为92%。本研究使用了之前在Image-Net数据集上训练的effentnet模型。本研究对预训练模型进行了定制化的修改以适应我们的研究,并在输出层之前增加了一对dense和dropout层。
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Transfer Learning-Based Approach for Identification of COVID-19
Corona virus Disease (COVID-2019) spread fast throughout the world, has infected millions of persons, and caused many fatalities. Mobilization has begun throughout the world for this pandemic that is still in existence, with certain constraints and measures being taken to keep this illness from spreading. Furthermore, to manage the illness, affected persons should be found. However, because of the inefficient amount of RT-PCR testing, chest computed tomography (CT) is a common means of supporting COVID-19 diagnosis. The notion of transfer learning was used in this work to detect the covid-19 from the X-ray pictures of the human body chest. With a total accuracy of 92% of the entire model, our model gives the identification of the Covid-19, 96% accuracy. The EfficientNet model previously trained on the Image-Net dataset is used in this study. This research study has customized the changes to the pre-trained model to fit our study and also added a pair of dense and dropout layers before the output layer.
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