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首页> 外文期刊>IEEE transactions on industrial informatics >Thermographic Data Analysis for Defect Detection by Imposing Spatial Connectivity and Sparsity Constraints in Principal Component Thermography
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Thermographic Data Analysis for Defect Detection by Imposing Spatial Connectivity and Sparsity Constraints in Principal Component Thermography

机译:通过在主成分热成像中施加空间连接和稀疏限制来缺陷检测的热敏分析

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摘要

Data analysis methods have been extensively used in active thermography for defect identification. Among them, principal component thermography (PCT) is popular for dimensionality reduction and feature extraction. PCT summarizes the thermal images with a small number of empirical orthogonal functions that better reflect the information of defects. However, PCT does not induce sparsity, which limits the interpretation of PCT results. Recently, sparse PCT (SPCT) has been proposed to provide more interpretable analysis results. However, SPCT does not consider the spatial connectivity between pixels, omitting the fact that a defective region is usually spatially connected. In this article, a novel thermographic data analysis method is proposed to overcome the shortcomings of the existing methods. The proposed method imposes both spatial connectivity and sparsity constraints in PCT. Finally, one case study on an ancient marquetry sample and another on a carbon fiber-reinforced polymer composite illustrate the feasibility of the proposed method.
机译:数据分析方法已广泛用于有源热成像以进行缺陷识别。其中,主成分热成像(PCT)是维度降低和特征提取的普遍。 PCT总结了具有少量经验正交功能的热图像,可以更好地反映缺陷的信息。但是,PCT不会引起稀疏性,这限制了PCT结果的解释。最近,已经提出了稀疏PCT(SPCT)以提供更多可解释的分析结果。然而,SPCT不考虑像素之间的空间连接,省略缺陷区域通常在空间上连接的事实。在本文中,提出了一种新的热成像数据分析方法来克服现有方法的缺点。所提出的方法在PCT中施加空间连接和稀疏限制。最后,在碳纤维增强聚合物复合材料上对古老的镶嵌样品和另一种案例研究说明了所提出的方法的可行性。

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