Detection of HOG Features on Tuberculosis X-Ray Results Using SVM and KNN

Arif Ridho Lubis, S. Prayudani, Y. Fatmi, Al-Khowarizmi, Julham, Y. Y. Lase
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引用次数: 6

Abstract

Image processing is one of the sciences in image processing which can involve several other techniques such as data mining techniques, in this case the detection of an image. Images are generally carried out classification which results in accurate detection wherein the detection of an image is carried out by extracting the features so that the image can be recognized by computation. One of the extract features that are superior and easy to apply in computational techniques is HOG (Histogram OF Oriented Gradients). The HOG feature can be useful in helping detect images in the form of Tuberculosis xray. After extracting the features, then the classification is carried out using 2 methods that are good for learning levels such as KNN (K-Nearest Neighbor) and SVM (Support Vector Machine). The results of this paper in the detection of HOG Tuberculosis X-ray with KNN for positive images got an accuracy of 77.95% while the negative ones got an accuracy of 78.65%. The results of HOG detection on Tuberculosis X-ray results with SVM on images that were positive got an accuracy of 65.75% while those who were negative were 79.39%.
基于SVM和KNN的肺结核x射线HOG特征检测
图像处理是图像处理中的一门科学,它可以涉及到其他一些技术,如数据挖掘技术,在这种情况下是图像的检测。通常对图像进行分类,从而进行准确的检测,其中通过提取特征来进行图像的检测,从而通过计算来识别图像。HOG (Histogram of Oriented Gradients)是一种优越且易于应用于计算技术的提取特征。HOG特征可用于帮助检测结核x线图像。提取特征后,使用KNN (K-Nearest Neighbor)和SVM (Support Vector Machine)两种有利于学习水平的方法进行分类。本文结果表明,利用KNN检测HOG结核x线阳性图像的准确率为77.95%,阴性图像的准确率为78.65%。SVM对结核x线阳性图像HOG检测的准确率为65.75%,阴性图像HOG检测的准确率为79.39%。
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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