Studying the Classification of Texture Images by K-Means of Co-Occurrence Matrix and Confusion Matrix

Haider S. Kaduhm, H. Abduljabbar
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引用次数: 3

Abstract

In this research, a group of gray texture images of the Brodatz database was studied by building the features database of the images using the gray level co-occurrence matrix (GLCM), where the distance between the pixels was one unit and for four angles (0, 45, 90, 135). The k-means classifier was used to classify the images into a group of classes, starting from two to eight classes, and for all angles used in the co-occurrence matrix. The distribution of the images on the classes was compared by comparing every two methods (projection of one class onto another where the distribution of images was uneven, with one category being the dominant one. The classification results were studied for all cases using the confusion matrix between every Two cases or two steps (two different angles and for the same number of classes). The agreement percentage between the classification results and the various methods was calculated.
基于共现矩阵和混淆矩阵的k -均值纹理图像分类研究
本研究以Brodatz数据库中的一组灰度纹理图像为研究对象,采用灰度共生矩阵(GLCM)建立图像特征库,像素间距离为1单位,四个角度(0,45,90,135)。使用k-means分类器对图像进行分类,从2类到8类,并对共现矩阵中使用的所有角度进行分类。通过比较每两种方法(将一个类投影到另一个类上,其中图像分布不均匀,其中一个类别占主导地位)来比较图像在类上的分布。使用每两个案例或两个步骤(两个不同的角度和相同数量的类别)之间的混淆矩阵对所有案例的分类结果进行研究。计算了分类结果与各种方法的一致性百分比。
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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审稿时长
18 weeks
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