Texture classification using combination of LBP and GLRLM features along with KNN and multiclass SVM classification

Sourajit Das, U. Jena
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引用次数: 24

Abstract

The paper presents a unique combination of texture feature extraction techniques which can be used in image texture analysis. Setting the prime objective of classifying different texture images, the Local Binary Pattern (LBP) and a modified form of Gray Level Run Length Matrix (GLRLM) are implemented initially. The next phase involves use of combination of the former two methods to extract improved features. The feature vectors were obtained by defining the features on the transformed images. These texture features are classified using two classification algorithms, KNN and multiclass SVM. The results of above feature extraction techniques with individual classifiers have been compared. The comparison yields that the combination of LBP and GLRLM texture features shows better classification rate than the features obtained from individual feature extraction techniques. Among the classifiers, Support Vector Machine has better classification rate than the Nearest Neighbor approach for the texture classification.
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结合LBP和GLRLM特征,结合KNN和多类SVM分类进行纹理分类
本文提出了一种独特的纹理特征提取技术组合,可用于图像纹理分析。以不同纹理图像的分类为主要目标,初步实现了局部二值模式(LBP)和改进的灰度运行长度矩阵(GLRLM)。下一阶段是结合前两种方法提取改进的特征。通过在变换后的图像上定义特征得到特征向量。使用KNN和多类支持向量机两种分类算法对纹理特征进行分类。将上述特征提取技术与单个分类器的提取结果进行了比较。对比结果表明,LBP和GLRLM纹理特征相结合的分类率优于单独提取纹理特征的方法。在分类器中,支持向量机对纹理分类的分类率优于最近邻方法。
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