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Defect Identification and Classification for Digital X-Ray Images

机译:数字X射线图像的缺陷识别和分类

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Radiography inspection (X-ray or gamma ray) is one of the most commonly used Non-destructive Evaluation (NDE) methods. More and more digital X-ray imaging is used for medical diagnosis, security screening, or industrial inspection, which is important for e-manufacturing. In this paper, we firstly introduced an automatic welding defect inspection system for X-ray image evaluation, defect image database and applications of Artificial Neural Networks (ANNs) for NDE. Then, feature extraction and selection methods are used for defect representation. Seven categories of geometric features were defined and selected to represent characteristics of different kinds of welding defect. Finally, a feed-forward backpropagation neural network is implemented for the purpose of defect classification. The performance of the proposed methods are tested and discussed.
机译:射线照相检查(X射线或伽马射线)是最常用的无损评估(NDE)方法之一。越来越多的数字X射线成像用于医疗诊断,安全筛查或工业检验,这对于电子制造很重要。在本文中,我们首先介绍了用于NDE的X射线图像评估,缺陷图像数据库和人工神经网络(ANNS)的X射线图像评估,缺陷图像数据库和应用的自动焊接缺陷检测系统。然后,特征提取和选择方法用于缺陷表示。定义和选择七种类别的几何特征,以表示不同种类的焊接缺陷的特性。最后,为缺陷分类的目的实现了前馈回来神经网络。测试和讨论了所提出的方法的性能。

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