Combination of gray level co-occurrence matrix and artificial neural networks for classification of COVID-19 based on chest X-ray images

Bahtiar Imran, Lalu Delsi Samsumar, Ahmad Subki, Zaeniah Zaeniah, Salman Salman, Muhammad Rijal Alfian
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Abstract

This research uses the gray level co-occurrence matrix (GLCM) and artificial neural networks to classify COVID-19 images based on chest X-ray images. According to previous studies, there has never been a researcher who has integrated GLCM with artificial neural networks. Epochs 10, 30, 50, 70, 100, and 120 were used in this research. The total number of data points used in this investigation was 600, divided into 300 normal chests and 300 COVID-19 data points. Epoch 10 had 91% accuracy, epoch 30 had 91% accuracy, epoch 50 had 92% accuracy, epoch 70 had 91% accuracy, epoch 100 had 92% accuracy, and epoch 120 had 90% accuracy in categorization. As indicated by the results of the classification tests, combining GLCM and artificial neural networks can produce good results; a combination of these methods can yield a classification for COVID-19.
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结合灰度共现矩阵和人工神经网络,基于胸部 X 光图像对 COVID-19 进行分类
本研究利用灰度共现矩阵(GLCM)和人工神经网络对基于胸部 X 光图像的 COVID-19 图像进行分类。根据以往的研究,从未有研究人员将 GLCM 与人工神经网络相结合。本研究使用了 10、30、50、70、100 和 120 个时间点。本次调查使用的数据点总数为 600 个,分为 300 个正常胸部数据点和 300 个 COVID-19 数据点。在分类方面,第 10 个纪元的准确率为 91%,第 30 个纪元的准确率为 91%,第 50 个纪元的准确率为 92%,第 70 个纪元的准确率为 91%,第 100 个纪元的准确率为 92%,第 120 个纪元的准确率为 90%。分类测试结果表明,将 GLCM 和人工神经网络结合起来可以产生良好的效果;将这些方法结合起来可以对 COVID-19 进行分类。
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