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Texture Analysis for Machine Learning Based Marble Tiles Sorting

机译:基于机器学习的大理石瓦片分类纹理分析

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In this paper, the classification of ornamental dolomitic marble stone tiles, in regard to their aesthetical value, was studied based on the rock's texture. The stone tiles examined are of a dolomitic marble variety commercially known as Lais Grey. Twenty four (24) texture descriptors and seven (7) machine learning models were tested in order to find the best performing combination. The experimental study was conducted with an in-house dataset consisting of three tile classes containing digital images selected by an expert. A second dataset was compiled by applying clustering using the k-means algorithm, towards defining the tiles' quality based on texture information. This process produced a dataset with two classes. The results revealed that the XCS-LBP texture descriptor joined by the XGBoost classifier achieved the best performance for screening the tiles into three (with 65.06% F1-score) or two (with 99.43 % F1-score) quality classes.
机译:在本文中,基于岩石的纹理研究了观赏多云大理石石材瓦片的分类。被检查的石材瓷砖是商业称为莱斯灰色的白云岩大理石品种。测试了二十四(24)纹理描述符和七(7)台机器学习模型,以找到最佳的执行组合。实验研究是用内部数据集进行的,包括由专家选择的数字图像的三个瓷砖类组成。通过使用K-Means算法应用群集来编制第二个数据集,朝向基于纹理信息定义瓷砖质量。此过程生成了具有两个类的数据集。结果表明,由XGBoost分类器连接的XCS-LBP纹理描述符实现了将瓷砖筛选为三个(具有65.06%F1分数)或两种(具有99.43%的F1分数)质量等级。

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