Performance Analysis of Deep Convolutional Features using Support Vector Machines for COVID-19 Diagnosis on X-ray Images

Z. Rustam, S. Hartini
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Abstract

Since the first case of COVID-19 appeared in Wuhan city, China, in December 2019, the disease has affected more than millions of people worldwide. Therefore, early detection of COVID-19 is important to prevent transmission to more people. One method widely used to detect COVID-19 through X-ray images is Convolutional Neural Networks (CNN). However, CNN needs large amounts of image data to build models with high accuracy, while the medical image has limited amounts of data. To overcome this problem, transfer learning technique where CNN is used as a feature extraction method is usually be chosen as an alternative. However, most studies use the extraction results of the final layers such as fully connected layer or the last convolutional layer. In this study, all layers will be used by turns to analyze how the extraction results affect the performance of classification method. The CNN models used are pre-trained models VGG16 and VGG19, while the classification method used is Support Vector Machines (SVM). Based on the results of the study, the extraction results by the initial layer gave a better performance on SVM compared to the layers that are deeper in the selected CNN architecture. Several layers in CNN model did not analyze due to limited source capability in doing computation. Therefore, as the future work, the rest layers of CNN in this study can be analyzed as well as the other CNN models and the classification method.
基于支持向量机的深度卷积特征在x射线图像上诊断COVID-19的性能分析
自2019年12月在中国武汉市出现第一例COVID-19病例以来,该疾病已影响到全球数百万人。因此,早期发现COVID-19对于防止传播给更多人非常重要。通过x射线图像检测新冠病毒的方法是卷积神经网络(CNN)。然而,CNN需要大量的图像数据来建立高精度的模型,而医学图像的数据量有限。为了克服这个问题,通常选择迁移学习技术,其中使用CNN作为特征提取方法。然而,大多数研究使用的是最终层的提取结果,如全连接层或最后卷积层。在本研究中,将轮流使用所有层来分析提取结果如何影响分类方法的性能。使用的CNN模型为预训练模型VGG16和VGG19,使用的分类方法为支持向量机(SVM)。根据研究结果,与所选CNN架构中更深的层相比,初始层的提取结果在SVM上具有更好的性能。CNN模型中有几层由于计算时源能力有限而没有进行分析。因此,作为未来的工作,可以对本研究中CNN的其余层进行分析,也可以对其他CNN模型和分类方法进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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