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Unsupervised weld defect classification in radiographic images using multivariate generalized Gaussian mixture model with exact computation of mean and shape parameters

机译:利用多元通用高斯混合模型的射线图像中无监督缺陷缺陷分类,具有平均值和形状参数的精确计算

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摘要

In industry, the welding inspection is considered as a mandatory stage in the process of quality assurance/quality control. This inspection should satisfy the requirements of the standards and codes governing the manufacturing process in order to prevent unfair harm to the industrial plant in construction. For this purpose, in this paper, a software specially conceived for computer-aided diagnosis in weld radiographic testing is presented, where a succession of operations of preprocessing, image segmentation, feature extraction and finally defects classification is carried out on radiographic images. The last operation which is the main contribution in this paper consists in an unsupervised classifier based on a finite mixture model using the multivariate generalized Gaussian distribution (MGGD). This classifier is newly applied on a dataset of weld defect radiographic images. The parameters of the nonzero-mean MGGD-based mixture model are estimated using the Expectation-Maximization algorithm where, exact computations of mean and shape parameters are originally provided. The weld defect database represent four weld defect types (crack, lack of penetration, porosity and solid inclusion) which are indexed by a shape geometric descriptor composed of geometric measures. An outstanding performance of the proposed mixture model, compared to the one using the multivariate Gaussian distribution, is shown, where the classification rate is improved by 3.2% for the whole database, to reach more than 96%. The efficiency of the proposed classifier is mainly due to the flexible fitting of the input data, thanks to the MGGD shape parameter. (C) 2019 Elsevier B.V. All rights reserved.
机译:在工业中,焊接检查被认为是质量保证/质量控制过程中的强制性阶段。该检验应履行制造过程的标准和守则的要求,以防止对工业厂的建设造成不公平的危害。为此目的,介绍了一种专门构思焊接放射线检测中的计算机辅助诊断的软件,其中在放射线图像上执行预处理,图像分割,特征提取和最终缺陷分类的连续操作。该论文中主要贡献的最后一项操作在于使用多变量通用高斯分布(MGGD)基于有限混合模型的无监督分类。该分类器是新应用于焊接缺陷射线图像数据的数据集。使用期望最大化算法估计非零表示基于MGGD的混合物模型的参数,最初提供了平均值和形状参数的精确计算。焊接缺陷数据库代表四种焊接缺陷类型(裂缝,缺乏穿透,孔隙率和固体夹杂物),其由由几何措施构成的形状几何描述符索引。与使用多变量高斯分布的拟议混合物模型的出色性能显示,整个数据库的分类率提高了3.2%,达到96%以上。由于MGGD形状参数,所提出的分类器的效率主要是由于输入数据的灵活拟合。 (c)2019年Elsevier B.V.保留所有权利。

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