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Identification and classification of materials using machine vision and machine learning in the context of industry 4.0

机译:使用机器视觉和机器学习在工业背景下的材料识别和分类4.0

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摘要

Manufacturing has experienced tremendous changes from industry 1.0 to industry 4.0 with the advancement of technology in fast-developing areas such as computing, image processing, automation, machine vision, machine learning along with big data and Internet of things. Machine tools in industry 4.0 shall have the ability to identify materials which they handle so that they can make and implement certain decisions on their own as needed. This paper aims to present a generalized methodology for automated material identification using machine vision and machine learning technologies to contribute to the cognitive abilities of machine tools as wells as material handling devices such as robots deployed in industry 4.0. A dataset of the surfaces of four materials (Aluminium, Copper, Medium density fibre board, and Mild steel) that need to be identified and classified is prepared and processed to extract red, green and blue color components of RGB color model. These color components are used as features while training the machine learning algorithm. Support vector machine is used as a classifier and other classification algorithms such as Decision trees, Random forests, Logistic regression, and k-Nearest Neighbor are also applied to the prepared data set. The capability of the proposed methodology to identify the different group of materials is verified with the images available in an open source database. The methodology presented has been validated by conducting four experiments for checking the classification accuracies of the classifier. Its robustness has also been checked for various camera orientations, illumination levels, and focal length of the lens. The results presented show that the proposed scheme can be implemented in an existing manufacturing setup without major modifications.
机译:制造业从工业1.0到行业4.0的巨大变化,在快速发展的区域,如计算,图像处理,自动化,机器视觉,机器学习以及大数据和物联网等快速发展领域。工业4.0中的机床有能力识别他们处理的材料,以便他们可以根据需要制定和实施某些决定。本文旨在为使用机器视觉和机器学习技术提供自动化材料识别的广义方法,以促进机床的认知能力,因为作为部署在工业4.0中的机器人等材料处理设备。准备并加工需要鉴定和分类的四种材料(铝,铜,中密度纤维板和低温钢)的数据集,以提取RGB颜色模型的红色,绿色和蓝色组件。这些颜色组件在训练机器学习算法时用作特征。支持向量机用作分类器和其他分类算法,例如决策树,随机林,逻辑回归和k最近邻居也应用于准备的数据集。所提出的方法来识别不同组件的方法的能力是用开源数据库中可用的图像进行验证的。通过进行四个实验来验证所呈现的方法,用于检查分类器的分类精度。还针对镜头的各种相机方向,照明水平和焦距检查了其鲁棒性。提出的结果表明,所提出的方案可以在现有的制造设置中实现而无需重大修改。

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