基于深度学习的锁相热成像复合材料层合板缺陷分割

R. Marani, D. Palumbo, M. Attolico, G. Bono, U. Galietti, T. D’orazio
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引用次数: 1

摘要

在航空航天计量的背景下,出于明确的安全原因,必须对生产产量进行可靠的检查。如果缺陷能被快速检测到,尤其是被分割,由于修复策略可以建立,进一步的经济效益可能会出现。鉴于这种情况,本文提出了一种自动方法来处理复合材料层合板的锁定热成像检查数据。热分析对目标表面进行区域扫描,因此可以在相对较短的时间内获得整个结构的完整信息。我们训练了一个深度学习网络来分析振幅和相位图,以检测和分割有缺陷的内含物。由于输入激励的均匀性,这种分析的可靠性通常会受到实际实验问题的影响。出于这个原因,本研究提出了一个初步的处理来管理输入激励的不均匀性,这通常会给振幅和相位图增加一个不可忽略的偏差。通过对来自航空航天生产线的实际样品进行实验,证明了改进后的可靠性。实验结果表明,该方法对埋藏缺陷的分割精度达到了84.38%。
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Improved Deep Learning for Defect Segmentation in Composite Laminates Inspected by Lock-in Thermography
In the context of aerospace metrology, reliable inspections of production yields are mandatory for clear safety reasons. If defects are fastly detected and, above all, segmented, further economical benefits may emerge since repairing strategies can be set up. Given this scenario, this paper presents an automatic methodology to process data from lock-in thermography inspections of composite laminates. Thermal analysis works on area scans of the target surfaces and, consequently, leads to complete information of the whole structure in a relatively short time. A deep learning network has been trained to analyze amplitude and phase maps to detect and segment defective inclusions. The reliability of this analysis is typically undermined by actual experimental issues, due to the homogeneity of the input excitation. For this reason, this study proposes a preliminary processing to manage the inhomogeneity of the input excitation, which typically adds a non-negligible bias to the amplitude and phase maps. The improved reliability has been proven through experiments performed on actual samples, coming from aerospace production lines. The outcomes of these experiments have proven a final per-pixel accuracy of 84.38% in the segmentation of buried defects.
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