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Pattern recognition of weld defects detected by radiographic test

机译:通过射线照相检测发现的焊接缺陷的模式识别

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In recent years there has been a marked advance in the research for the development of an automatized system to analyze weld defects detected by radiographs. This work describes a study of nonlinear pattern classifiers, implemented by artificial neural networks, to classify weld defects existent in radiographic weld beads, aiming principally to increase the percentage of defect recognition success obtained with the linear classifiers. Radiographic patterns from International Institute of Welding (IIW) were used. Geometric features of defect classes were used as input data of the classifiers. Using a novel approach for this area of research, a criterion of neural relevance was applied to evaluate the discrimination capacity of the classes studied by the features used, aiming to prove that the quality of the features is more important than the quantity of features used. Well known for other applications, but still not exploited in weld defect recognition, the analytical techniques of the principal nonlinear discrimination components, also developed by neural networks, are presented to show the classification problem in two dimensions, as well as evaluating the classification performance obtained with these techniques. The results prove the efficiency of the techniques for the data used.
机译:近年来,在开发用于分析由射线照片检测到的焊接缺陷的自动化系统方面的研究取得了显着进展。这项工作描述了由人工神经网络实现的非线性模式分类器的研究,以对射线照相焊缝中存在的焊接缺陷进行分类,其主要目的是提高使用线性分类器获得的缺陷识别成功率。使用来自国际焊接学会(IIW)的放射线图案。缺陷类别的几何特征用作分类器的输入数据。在这一领域的研究中使用了一种新颖的方法,将神经相关性的准则应用于评估所使用特征所研究类别的辨别能力,以证明特征的质量比所使用特征的数量更为重要。提出了其他应用程序众所周知的方法,但仍未在焊接缺陷识别中加以利用,提出了由神经网络开发的主要非线性判别分量的分析技术,以二维方式显示分类问题,并对获得的分类性能进行评估这些技术。结果证明了所用数据技术的有效性。

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