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Temporal and spatial deep learning network for infrared thermal defect detection

机译:时空深度学习网络,用于红外热缺陷检测

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摘要

Most common types of defects for composite are debond and delamination. It is difficult to detect the inner defects on a complex shaped specimen by using conventional optical thermography nondestructive testing (NDT) methods. In this paper, a hybrid of spatial and temporal deep learning architecture for automatic thermography defects detection is proposed. The integration of cross network learning strategy has the capability to significantly minimize the uneven illumination and enhance the detection rate. 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. The results show that visual geometry group-Unet (VGG-Unet) cross learning structure can significantly improve the contrast between the defective and non-defective regions. In addition, investigation of different feature extraction methods in which embedded in deep learning is conducted to optimize the learning structure. To investigate the efficacy and robustness of the proposed method, experimental studies have been carried out for inner debond defects on both regular and irregular shaped carbon fiber reinforced polymer (CFRP) specimens.
机译:复合材料最常见的缺陷类型是脱粘和分层。使用常规的光学热成像无损检测(NDT)方法很难检测出复杂形状的样品上的内部缺陷。本文提出了一种用于自动热像仪缺陷检测的时空深度学习架构的混合体。跨网络学习策略的集成具有显着减少不均匀照明并提高检测率的能力。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。结果表明,视觉几何群-Unet(VGG-Unet)交叉学习结构可以显着提高缺陷区域和非缺陷区域之间的对比度。另外,研究了嵌入深度学习中的不同特征提取方法,以优化学习结构。为了研究所提出方法的有效性和鲁棒性,已经对规则和不规则形状的碳纤维增强聚合物(CFRP)样品的内部脱胶缺陷进行了实验研究。

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