Difference of Gaussian Convolutional Sparse Principal Component Thermography for Defect Signal Enhance in Composite Materials

Wei Liu, Yuan Zhang, Le Zhou, Yuting Lyu
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引用次数: 1

Abstract

Pulsed thermography (PT) is a well-established non-destructive testing technique for the subsurface defect detection in Carbon Fiber Reinforced Polymer (CFRP). Among the analysis methods for the thermographic data, principal component thermography (PCT) and sparse principal component thermography (SPCT) are recommended for visualization enhancement of defect signals. However, since the methods of PCT and SPCT are performed directly based on the characteristic matrix model of the original thermal images, their results are heavily affected by the noise and uneven background signals inside the images. To solve the problem above, a new method known as difference of Gaussian convolutional sparse principal component thermography (DoG-SPCT) is proposed in this paper. The method first separates defect signals from the interference with a DoG filter, and then extracts features for defective areas by SPCT to enhance visualization of defects. In the experimental part, one CFRP specimen with subsurface defects is detected by PT and the proposed DoG-SPCT is evaluated for the defect visualization enhancing purpose. The result of the experiment shows that the DoG filter can separate the defect components from the noise and uneven background signals, so that the features for defective regions can be effectively extracted in the following SPCT.
高斯卷积稀疏主成分热成像差分法增强复合材料缺陷信号
脉冲热成像技术(PT)是一种成熟的用于碳纤维增强聚合物(CFRP)表面缺陷检测的无损检测技术。在热成像数据的分析方法中,推荐采用主成分热成像(PCT)和稀疏主成分热成像(SPCT)来增强缺陷信号的可视化。然而,由于PCT和SPCT方法是直接基于原始热图像的特征矩阵模型进行的,其结果受到图像内部噪声和不均匀背景信号的严重影响。为了解决上述问题,本文提出了一种新的高斯卷积稀疏主成分热成像方法(DoG-SPCT)。该方法首先利用DoG滤波器将缺陷信号从干扰中分离出来,然后利用SPCT提取缺陷区域的特征,增强缺陷的可视化。在实验部分,用PT检测了一个CFRP试件的亚表面缺陷,并对所提出的DoG-SPCT进行了缺陷可视化增强的评估。实验结果表明,DoG滤波器可以从噪声和不均匀背景信号中分离出缺陷成分,从而在后续的SPCT中有效提取出缺陷区域的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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