用于碳纤维增强聚合物检测的脉冲热成像数据的潜在低阶表示

IF 3.7 3区 工程技术 Q1 INSTRUMENTS & INSTRUMENTATION Quantitative Infrared Thermography Journal Pub Date : 2022-05-17 DOI:10.1080/17686733.2022.2047301
J. Fleuret, S. Ebrahimi, C. Ibarra-Castanedo, X. Maldague
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引用次数: 1

摘要

摘要本文探讨了潜在低秩表示(LatLRR)在脉冲热成像数据上的实现。LatLRR以三种类型的信息的线性关联形式分解图像:观察到的、未观察到的和噪声。然后使用这些信息来区分显著特征和主要特征。本研究发现,在应用最先进的信号处理技术(如主成分热成像(PCT)和脉冲相位热成像(PPT))之前,将LatLRR用作后处理方法时,LatLRR显著提高了缺陷检测:PCT为18%,PPT为92%。然而,在用最先进的算法处理之前,使用LatLRR重建数据集的每个图像的无噪声版本时,没有测量到明显的改进。对LatLRR返回的每种类型的特征进行的调查也未能提供有关缺陷检测的结果。
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Latent Low Rank Representation Applied to Pulsed Thermography Data For Carbon Fibre Reinforced Polymer Inspection
ABSTRACT This paper explores the implementation of Latent Low-Rank Representation (LatLRR) on pulsed thermographic data. LatLRR decomposes an image in the form of a linear association of three types of information: observed, unobserved and noise. This information is then used in order to separate the salient and principal features. This study has found that when used as a post-processing method prior to the application of state-of-the-art signal processing techniques, such as principal component thermography (PCT) and pulsed phase thermography (PPT), LatLRR significantly improves defect detection: 18% for PCT and 92% for PPT. Nevertheless, no noticeable improvement was measured when LatLRR was used to reconstruct a noiseless version of each image of a dataset, before processing it with a state-of-the-art algorithm. The investigations conducted on each type of feature returned by the LatLRR have also failed to provide results regarding the detection of defects.
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来源期刊
Quantitative Infrared Thermography Journal
Quantitative Infrared Thermography Journal Physics and Astronomy-Instrumentation
CiteScore
6.80
自引率
12.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: The Quantitative InfraRed Thermography Journal (QIRT) provides a forum for industry and academia to discuss the latest developments of instrumentation, theoretical and experimental practices, data reduction, and image processing related to infrared thermography.
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