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首页> 外文期刊>Sadhana: Academy Proceedings in Engineering Science >Hardwood species classification with DWT based hybrid texture feature extraction techniques
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Hardwood species classification with DWT based hybrid texture feature extraction techniques

机译:基于DWT的混合纹理特征提取技术对硬木树种进行分类

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摘要

In this work, discrete wavelet transform (DWT) based hybrid texture feature extraction techniques have been used to categorize the microscopic images of hardwood species into 75 different classes. Initially, the DWT has been employed to decompose the image up to 7 levels using Daubechies (db3) wavelet as decomposition filter. Further, first-order statistics (FOS) and four variants of local binary pattern (LBP) descriptors are used to acquire distinct features of these images at various levels. The linear support vector machine (SVM), radial basis function (RBF) kernel SVM and random forest classifiers have been employed for classification. The classification accuracy obtained with state-of-the-art and DWT based hybrid texture features using various classifiers are compared. The DWT based FOS-uniform local binary pattern (DWTFOSLBPu2) texture features at the 4th level of image decomposition have produced best classification accuracy of 97.67 +/- 0.79% and 98.40 +/- 064% for grayscale and RGB images, respectively, using linear SVM classifier. Reduction in feature dataset by minimal redundancy maximal relevance (mRMR) feature selection method is achieved and the best classification accuracy of 99.00 +/- 0.79% and 99.20 +/- 0.42% have been obtained for DWT based FOS-LBP histogram Fourier features (DWTFOSLBP-HF) technique at the 5th and 6th levels of image decomposition for grayscale and RGB images, respectively, using linear SVM classifier. The DWTFOSLBP-HF features selected with mRMR method has also established superiority amongst the DWT based hybrid texture feature extraction techniques for randomly divided database into different proportions of training and test datasets.
机译:在这项工作中,基于离散小波变换(DWT)的混合纹理特征提取技术已被用于将硬木树种的显微图像分类为75种不同的类别。最初,已使用DWT使用Daubechies(db3)小波作为分解滤波器将图像分解为多达7个级别。此外,使用一阶统计量(FOS)和局部二进制模式(LBP)描述符的四个变体来获取这些图像在各个级别上的独特特征。线性支持向量机(SVM),径向基函数(RBF)内核SVM和随机森林分类器已用于分类。比较了使用各种分类器使用最新技术和基于DWT的混合纹理特征获得的分类精度。在第4级图像分解中,基于DWT的FOS均匀局部二值模式(DWTFOSLBPu2)纹理特征使用线性方法产生的灰度和RGB图像的最佳分类精度分别为97.67 +/- 0.79%和98.40 +/- 064% SVM分类器。通过最小冗余最大相关性(mRMR)特征选择方法减少了特征数据集,对于基于DWT的基于DWT的FOS-LBP直方图傅立叶特征(DWTFOSLBP),最佳分类精度为99.00 +/- 0.79%和99.20 +/- 0.42% -HF)技术分别使用线性SVM分类器对灰度图像和RGB图像进行第5和第6级图像分解。使用mRMR方法选择的DWTFOSLBP-HF特征还在基于DWT的混合纹理特征提取技术中建立了优势,该技术可将数据库随机分为不同比例的训练和测试数据集。

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