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Automatic seeded region growing for thermography debonding detection of CFRP

机译:自动播种区域生长,用于CFRP的热像剥离检测

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摘要

The carbon fiber reinforced polymer (CFRP) has been widely used in aerospace, automobile and sports industries. In laminated composite materials, cyclic stresses and impact will cause internal defects such as delamination and debonding. In order to guarantee internal quality and safety, optical pulsed thermography (OPT) nondestructive testing has been used to detect the internal defects. However, current OPT methods cannot efficiently tackle the influence from uneven illumination, and the resolution enhancement of the defects detection remains as a critical challenge. In this paper, a hybrid of thermographic signal reconstruction (TSR) and automatic seeded region growing (ASRG) algorithm is proposed to deal with the thermography processing of CFRP. The proposed method has the capability to significantly minimize uneven illumination and enhance the detection rate. In addition, it has the capacity to automate segmentation of defects. It also overcomes the crux issues of seeded region growing (SRG) which can automatically select the growth of image, seed points and thresholds. The probability of detection (POD) has been derived to measure the detection results and this is coupled with comparison studies to verify the efficacy of the proposed method.
机译:碳纤维增强聚合物(CFRP)已被广泛用于航空航天,汽车和体育行业。在层压复合材料中,循环应力和冲击将导致内部缺陷,例如分层和脱胶。为了保证内部质量和安全性,已使用光脉冲热成像(OPT)无损检测来检测内部缺陷。然而,当前的OPT方法不能有效地解决来自不均匀照明的影响,并且提高缺陷检测的分辨率仍然是关键挑战。本文提出了一种热成像信号重建(TSR)和自动播种区域生长(ASRG)算法的混合体,以处理CFRP的热成像过程。所提出的方法具有显着最小化不均匀照明并提高检测率的能力。另外,它具有自动分割缺陷的能力。它还克服了种子区域生长(SRG)的关键问题,该问题可以自动选择图像的生长,种子点和阈值。已得出检测概率(POD)以测量检测结果,并与比较研究一起验证了所提出方法的有效性。

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