Afifah Suaib, I. I. Tritosmoro, Nur Ibrahim
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引用次数: 0

摘要

新冠肺炎疫情是世界不能忘记的现象。2019年底,在中国武汉发现了SarsCov-2病毒,直到2020年3月9日世界卫生组织宣布Covid-19为大流行。这种病毒的迅速发展和传播受到了遏制。发现某人Covid-19阳性的一种方法是看他们肺部的x光检查结果。x光结果将被分析,以确定一个人的肺部状态。本研究采用的方法包括基于局部二值模式(LBP)的特征提取方法和基于随机森林的分类方法。本研究使用肺x线图像的训练数据和测试数据,将肺分为正常肺、Covid-19阳性肺和肺炎三类。该系统将1200张图像分为900个训练数据和300个测试数据进行测试,根据测试结果,该系统可以根据肺部的x射线图像识别新冠病毒,并将其分为三类。当图像调整大小为200x200像素,LBP半径为8,随机森林中树数为200时,准确率最高,达到85.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IDENTIFIKASI COVID-19 BERDASARKAN CITRA X-RAY PARU-PARU MENGGUNAKAN METODE LOCAL BINARY PATTERN DAN RANDOM FOREST
Covid-19 is a phenomenon that can’t be forgotten by the world. At the end of 2019 in Wuhan, China SarsCov-2 virus was discovered until the World Health Organization declared Covid-19 as pandemic on March 9, 2020. The rapid development and transmission of this virus was overwhelmed. One way to find out someone is positive for Covid-19 is by looking at the X-Ray results of their lungs. The X-Ray results will be analyzed to determine the state of a person's lungs. The method used in this study consists of feature extraction method using Local Binary Pattern (LBP) and classification method using Random Forest. This study uses training data and test data of X-Ray images of the lungs which are divided into three classes that is normal lungs, positive for Covid-19, and Pneumonia. Based on the results of tests that have been carried out using 1,200 images divided into 900 training data and 300 test data, the system can identify Covid-19 based on X-Ray images of the lungs and classify them into three classes. The highest accuracy results obtained 85.67% using variations of image resizing= 200x200 pixel, radius of LBP= 8, and the number of trees in Random Forest=200.
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