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使用高斯稀疏模型增强缺陷检测

Defect detection enhancement using Gaussian Sparse Models.

作者信息

Movafeghi Amir, Mirzapour Mahdi, Yahaghi Effat

机构信息

Material Engineering Center, Nuclear Science and Technology Research Institute (NSTRI), Tehran, Iran.

Department of Mathematics, Faculty of Sciences, Bu-Ali Sina University, Hamedan, Iran.

出版信息

Appl Radiat Isot. 2024 Feb;204:111142. doi: 10.1016/j.apradiso.2023.111142. Epub 2023 Dec 9.

DOI:10.1016/j.apradiso.2023.111142
PMID:38101005
Abstract

Detecting defects is critical in industrial fabrication, such as pipe welding, where radiography testing (RT) is the gold standard as a non-destructive method for monitoring weld quality and weld corrosion. The extraction of seamless information from radiographic images is critical for this approach. Image processing techniques can improve the quality of radiographic images by enhancing image contrast, especially in flawed regions. In this study, a method based on Gaussian mixture models was implemented and applied to radiographs of welded objects to improve visualization and detectability. In the Sparse Coding and Gaussian Scale Mixture method (SSC-GSM), the local image patches are described as a mixture of Gaussian distributions. Given the different levels of noise in the individual images, the background was determined and subtracted from each original image. The results show that the proposed techniques can maintain and improve the edge information in radiographs and defective regions. The density of pixels along the analyzed profile lines has yielded enhancement by a factor of approximately two for the reconstructed images as compared to the original images. We tested the SSC-GSM method on GD-Xray database with 68 radiographs of the weld. In total, the SSC-GSM technique can improve the contrast of radiography image by back ground removal method and show the defects better that exist in weld radiographs, compared to traditional method for the detection of weld defects.

摘要

在工业制造中,如管道焊接,检测缺陷至关重要,其中射线检测(RT)作为监测焊缝质量和焊缝腐蚀的无损检测方法是金标准。从射线图像中提取无缝信息对于这种方法至关重要。图像处理技术可以通过增强图像对比度来提高射线图像的质量,特别是在有缺陷的区域。在本研究中,实施了一种基于高斯混合模型的方法,并将其应用于焊接物体的射线照片,以提高可视化和可检测性。在稀疏编码和高斯尺度混合方法(SSC-GSM)中,局部图像块被描述为高斯分布的混合。考虑到各个图像中的不同噪声水平,确定了背景并从每个原始图像中减去。结果表明,所提出的技术可以保持并改善射线照片和缺陷区域中的边缘信息。与原始图像相比,重建图像沿分析轮廓线的像素密度提高了约两倍。我们在包含68张焊缝射线照片的GD-X射线数据库上测试了SSC-GSM方法。总体而言,与传统的焊缝缺陷检测方法相比,SSC-GSM技术可以通过背景去除方法提高射线图像的对比度,并更好地显示焊缝射线照片中存在的缺陷。

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Defect detection enhancement using Gaussian Sparse Models.使用高斯稀疏模型增强缺陷检测
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