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Vision-based rock-type classification of limestone using multi-class support vector machine

机译:使用多类支持向量机的基于视觉的石灰岩岩石类型分类

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摘要

Rock-type classification is a challenging and difficult job due to the heterogeneous properties of rocks. In this paper, an image-based rock-type analysis and classification method is proposed. The study was conducted at a limestone mine in western India using stratified random sampling from a case study mine. The analysis of collected sample images was performed in laboratory. Color, morphology, and textural features were extracted from the captured image and a total of 189 features were recorded. The multi-class support vector machine (SVM) algorithm was then applied for rock-type classification. The hyper-parameters and the number of input features of the SVM model were selected by genetic algorithm. The results revealed that the SVM model performed best when 40 features were selected out of the 189 extracted features. The results demonstrated that the overall accuracy of the proposed technique for rock type classification is 96.2 %. A comparative study shows that the proposed SVM model performed better than a competing neural network model in this case study mine.
机译:由于岩石的异质性,岩石类型的分类是一项艰巨而艰巨的工作。本文提出了一种基于图像的岩石类型分析与分类方法。这项研究是在印度西部的一个石灰岩矿山进行的,使用的是案例研究矿山的分层随机抽样。收集的样本图像的分析在实验室中进行。从捕获的图像中提取颜色,形态和纹理特征,总共记录了189个特征。然后,将多类支持向量机(SVM)算法应用于岩石类型分类。通过遗传算法选择支持向量机模型的超参数和输入特征数量。结果表明,当从189个提取的特征中选择40个特征时,SVM模型表现最佳。结果表明,所提出的岩石类型分类技术的总体准确性为96.2%。一项比较研究表明,在本案例研究中,所提出的SVM模型的性能优于竞争神经网络模型。

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