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Binary Gabor pattern feature extraction technique for hardwood species classification

机译:二元Gabor模式特征提取技术在阔叶树种分类中的应用。

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This paper presents a binary Gabor pattern (BGP) feature extraction technique to acquire significant texture features of microscopic images of hardwood species and later these feature are used to discriminate the hardwood species into 75 different categories. The usefulness of the BGP feature extraction technique has been examined with the help of three classifiers, namely, linear support vector machine (LSVM), radial basis function support vector machine (RBFSVM) and random forest (RF) classification algorithms. Further, the performance of the BGP feature extraction technique for hardwood species classification has been evaluated against several texture feature techniques. The comparison of the results obtained by the feature extraction techniques recommends that BGP feature extraction technique has been better for microscopic images of hardwood species classification than the other feature extraction techniques.
机译:本文提出了一种二元Gabor模式(BGP)特征提取技术,以获取硬木树种显微图像的重要纹理特征,然后使用这些特征将硬木树种区分为75种不同的类别。借助三个分类器,即线性支持向量机(LSVM),径向基函数支持向量机(RBFSVM)和随机森林(RF)分类算法,对BGP特征提取技术的有效性进行了研究。此外,已经针对几种纹理特征技术评估了用于硬木树种分类的BGP特征提取技术的性能。通过特征提取技术获得的结果的比较建议,对于硬木树种分类的显微图像,BGP特征提取技术比其他特征提取技术更好。

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