一个接近的机器学习模型:瓷砖检测案例研究

M. D. Prasetio
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引用次数: 5

摘要

衣、食、住是我们生活中的三种基本需求。如果一个基本需求没有得到满足,那么我们的生活就会出现不平衡。其中一项基本需求是盖一所房子。房子需要一个瓦片或屋顶来覆盖建筑,以保护所有天气的影响。Majalengka的一家公司在检查过程中只使用短暂的视觉。这可能会导致工作效率的降低。本文提出了一种机器学习模型对检测过程中的缺陷进行分类的方法。采用局部二值模式(Local Binary Pattern, LBP)方法进行特征提取,获得训练特征。下一阶段是训练(训练)到已经获得的特征训练。然后利用训练结果得到的数据库,利用支持向量机(SVM)方法对瓷砖图像测试数据进行分类。试验结果表明,该系统对缺陷的分类精度最高可达63.21%。结果表明,当LBP参数为256 × 256单元格大小和半径2时,生成的最佳准确率为76.67%。支持向量机参数采用多项式核型或带OAA多类的RBF
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approaching Machine Learning Model: Tile Inspection Case Study
Clothing, food, and shelter are three basic types of needs in our lives. If one of the basic needs is not met then there can be an imbalance in our lives. One of the basic needs is to build a house. House needs a tile or roof to cover of a building that can protect all weather influences. One company in Majalengka only uses fleeting vision in inspection process. This can result in a decrease in work productivity. This paper proposed an approach machine learning model for classification of defects was carried out in the inspection process. Feature extraction was performed using the Local Binary Pattern (LBP) method to obtain training features. The next stage is training (training) to the characteristics of training that has been obtained. Furthermore, the database obtained from the training results will be used to classify tile image test data using the Support Vector Machine (SVM) method. From the test results, the system is made capable of classifying defects of a maximum accuracy value of 63.21%. The results obtained are the best accuracy value generated is 76.67% with LBP parameters used are 256 × 256 cell size and radius 2. While for SVM parameters use Polynomial kernel type or RBF with OAA multiclass
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