Classification of Marble Types Using Machine Learning Techniques

M. Yavuz, I. Türkoglu
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Abstract

Natural stones are one of the indispensable elements of people from shelter to weapons. Among these stone types, marbles and marble-derived products are among the objects that people always prefer, from bathroom to kitchen, from garden design to small decorative home decorations. While the marbles are named according to the regions where they are extracted, their types and qualities are classified based on observation by people who are qualified as experts in this field. This classification, which is made by experts based on observation, carries risks in economic terms, increases the workload and is a difficult process with a high error rate. These processes need a fast, easy and highly accurate digital transformation. In this study, feature extraction was done by using deep learning in the species classification of marbles. The extracted features were classified using machine learning techniques. As a result of the application made with the data set consisting of 3703 marble and marble-derived natural stone images belonging to 28 different species, a classification success of 99.7% was obtained with the DenseNet deep learning model and the K-Nearest Neighbor method.
使用机器学习技术对大理石类型进行分类
天然石材是人们从住所到武器不可缺少的元素之一。在这些石材类型中,从浴室到厨房,从园林设计到家居小装饰,大理石及大理石衍生产品都是人们一直青睐的对象之一。虽然大理石是根据其提取的地区命名的,但它们的类型和质量是根据该领域有资格的专家的观察来分类的。这种由专家根据观察进行的分类,在经济上存在风险,增加了工作量,是一个困难的过程,错误率高。这些流程需要快速、简单和高度精确的数字化转换。在本研究中,将深度学习应用于弹珠的物种分类中,进行特征提取。使用机器学习技术对提取的特征进行分类。使用由28个不同种类的3703张大理石和大理石衍生的天然石材图像组成的数据集进行应用,DenseNet深度学习模型和k -最近邻方法的分类成功率为99.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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