基于卷积神经网络的COVID-19 x射线图像分类

Ronaldus Morgan James, Kusrini, M. R. Arief
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引用次数: 6

摘要

印度尼西亚目前的冠状病毒(COVID-19)感染人数越来越令人担忧。根据2020年6月11日的数据,印度尼西亚的感染人数已达到35295人。鉴于这些后果,立即确定感染以阻止或尽量减少疾病传播被认为是非常重要的。有几种方法可以检测和诊断COVID-19,其中一种是使用x射线图像。本文探讨了使用深度特征和方法来处理患者x射线图像的二维数据。卷积神经网络(CNN)是多层感知器(MLP)的发展,专门用于处理二维数据或图像数据。完全连接层CNN模型的深度特征被提取出来,无需任何额外的技术就可以立即进行分类。使用CNN方法是因为它对于将用于训练和测试的大型数据集具有良好的性能。在分类过程中,数据集包含160张x射线图像,分为COVID-19和正常两类,代表患者对COVID-19感染的阳性或阴性分类。为了获得最佳的分类模型精度,作者在CNN上改变了几个参数,如数据集的分布和epoch的个数。在9个模型中,模型5和8的数据集比例分别为70:30,epoch数分别为30和40,准确率最高,为97.91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification Of X-ray COVID-19 Image Using Convolutional Neural Network
The current number of coronavirus (COVID-19) infections in Indonesia becomes more and more worrying. According to data on June 11, 2020, the number of infected people in Indonesia has reached 35,295 people. With these consequences, it is considered very important to immediately identify infection in order to stop or minimize the spread of the disease. There have been several ways to detect and diagnose COVID-19, one of which is using X-ray images. This paper examines the use of in-depth features and methods to process two-dimensional data from patients' X-ray images. Convolutional Neural Network (CNN) is a development of Multi-Layer Perceptron (MLP), which is specifically designed to process two-dimensional data or image data. The deep features of the fully connected layer CNN model are extracted and can be immediately classified without the need for any additional techniques. CNN method is used because of its good performance for large datasets that will be used for training and testing. In the classification process, the dataset contains 160 x-ray images and consists of two categories, COVID-19 and normal, that represents a positive or negative classification of Covid-19 infection to a patient. To get the best accuracy of the classification model, the author changed several parameters on CNN, such as the distribution of the dataset and the number of epochs. From the nine models tested, model number 5 and 8 with a dataset ratio of 70:30 and epoch number 30 and 40 respectively, resulted in the best accuracy of 97.91%.
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