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Classification of Chest X-Ray Images using Wavelet and MFCC Features and Support Vector Machine Classifier

机译:使用小波和MFCC特性和支持向量机分类器的胸部X射线图像的分类

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The shortage and availability limitation of RT-PCR test kits and is a major concern regarding the COVID-19 pandemic. The authorities' intention is to establish steps to control the propagation of the pandemic. However, COVID-19 is radiologically diagnosable using x-ray lung images. Deep learning methods have achieved cutting-edge performance in medical diagnosis software assistance. In this work, a new diagnostic method for detecting COVID-19 disease is implemented using advanced deep learning. Effective features were extracted using wavelet analysis and Mel Frequency Cepstral Coefficients (MFCC) method, and they used in the classification process using the Support Vector Machine (SVM) classifier. A total of 2400 Xray images, 1200 of them classified as Normal (healthy) and 1200 as COVID-19, have been derived from a combination of public data sets to verify the validity of the proposed model. The experimental results obtained an overall accuracy of 98.8% by using five wavelet features, where the classification using MFCC features, MFCC-delta, and MFCC-delta-delta features reached accuracy around 97% on average. The results show that the proposed model has reached the required level of success to be applicable in COVID 19 diagnosis.
机译:RT-PCR测试套件的短缺和可用性限制,是关于Covid-19大流行的主要问题。当局的意图是建立控制大流行传播的措施。然而,Covid-19使用X射线肺图像进行放射学诊断。深度学习方法在医学诊断软件辅助中取得了尖端性能。在这项工作中,利用先进的深度学习实施了一种用于检测Covid-19疾病的新诊断方法。使用小波分析和MEL频率谱系数(MFCC)方法提取有效特征,并使用支持向量机(SVM)分类器中的分类过程中使用。总共2400个Xs射线图像,其中1200个被分类为正常(健康)和1200作为Covid-19,已经来自公共数据集的组合来验证所提出的模型的有效性。通过使用五个小波特征,实验结果获得了98.8%的总精度,其中使用MFCC功能,MFCC-DELTA和MFCC-DERTA-DELTA特征的分类平均约为97%的精度。结果表明,该拟议模型已达到所需的成功水平,适用于Covid 19诊断。

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