基于支持向量机的焊接缺陷二叉树多分类器及其应用

Ding Gao, Yuan-xiang Liu, Xiao-guang Zhang
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引用次数: 6

摘要

研究了支持向量机在海量目录中的应用,并在不同背景下介绍了可选支持向量机决策树的结构。针对x射线检测焊接图像中的缺陷识别问题,结合二叉树的基本理论,提出了一种基于支持向量机的二叉树多类分类方法。该方法采用“一对全”分类算法,建立了基于支持向量机的焊接缺陷二叉树多分类器。根据缺陷的特点,选取6个参数作为特征参数,将焊缝中常见缺陷分为6类。用84个缺陷样本进行了实验,结果表明该分类器算法简单、直观、实用,重复训练样本数量少
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binary-tree Multi-Classifier for Welding Defects and Its Application Based on SVM
Application of support vector machine (SVM) for large number of catalogs was studied, and the structure of optional SVM decision tree was introduced under the different background. Aiming at the defect recognition problem in X-ray inspection welding images and combining the basic theory of binary-tree, a binary-tree method of multi-class classification based on SVM was put forward. This method adopts 'one-against-all' classification algorithm by which binary-tree multi-classifier for welding defects based on SVM was established. According to the characteristics of defects, six parameters were chosen as feature parameters, and familiar defects in the weld were classified into 6 classes. 84 defect samples were used to experiments, and the results show that the classifier possesses simple, intuitionistic and practical algorithm, and small number of repeated training samples
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