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Multiresolution local binary pattern variants based texture feature extraction techniques for efficient classification of microscopic images of hardwood species

机译:基于多分辨率局部二进制模式变体的纹理特征提取技术,可对硬木树种的显微图像进行有效分类

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In this paper, multiresolution local binary pattern (MRLBP) variants based texture feature extraction techniques have been proposed to categorize hardwood species into its various classes. Initially, discrete wavelet transform (DWT) has been used to decompose each image up to 7 levels using Daubechies wavelet (db2) as decomposition filter. Subsequently, six texture feature extraction techniques (local binary pattern and its variants) are employed to obtain substantial features of these images at different levels. Three classifiers, namely, linear discriminant analysis (LDA), linear and radial basis function (RBF) kernel support vector machine (SVM), have been used to classify the images of hardwood species. Thereafter, classification results obtained from conventional and MRLBP variants based texture feature extraction techniques with different classifiers have been compared. For 10-fold cross validation approach, texture features acquired using discrete wavelet transform based uniform completed local binary pattern( DWTCLBPu2) feature extraction technique has produced best classification accuracy of 97.40 +/- 1.06% with linear SVM classifier. This classification accuracy has been achieved at the 3rd level of image decomposition using full feature (1416) dataset. Further, reduction in dimension of texture features (325 features) by principal component analysis (PCA) has been done and the best classification accuracy of 97.87 +/- 0.82% for DWTCLBPu2 at the 3rd level of image decomposition has been obtained using LDA classifier. The DWTCLBPu2 texture features have also established superiority among the MRLBP techniques with reduced dimension features for randomly divided database into fix training and testing ratios. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,已经提出了基于多分辨率局部二元模式(MRLBP)的纹理特征提取技术,以将硬木树种分类为各种类别。最初,离散小波变换(DWT)已被用来使用Daubechies小波(db2)作为分解滤波器将每个图像分解为多达7个级别。随后,采用了六种纹理特征提取技术(局部二进制模式及其变体)来获得这些图像在不同级别的实质特征。三种分类器,即线性判别分析(LDA),线性和径向基函数(RBF)核支持向量机(SVM),已用于对硬木树种的图像进行分类。此后,比较了使用不同分类器从常规和基于MRLBP变体的纹理特征提取技术获得的分类结果。对于10折交叉验证方法,使用基于离散小波变换的均匀完整局部二值模式(DWTCLBPu2)特征提取技术获取的纹理特征在线性SVM分类器中产生了97.40 +/- 1.06%的最佳分类精度。使用全功能(1416)数据集已在图像分解的第三级实现了这种分类精度。此外,已经通过主成分分析(PCA)减少了纹理特征(325个特征)的尺寸,并且使用LDA分类器对DWTCLBPu2在图像分解的第三级获得了最佳分类精度,为97.87 +/- 0.82%。 DWTCLBPu2纹理特征也已在MRLBP技术中建立了优势,具有减少尺寸特征,可将数据库随机分为固定训练和测试比率。 (C)2015 Elsevier B.V.保留所有权利。

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