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首页> 外文期刊>Composite structures >IRT-GAN: A generative adversarial network with a multi-headed fusion strategy for automated defect detection in composites using infrared thermography
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IRT-GAN: A generative adversarial network with a multi-headed fusion strategy for automated defect detection in composites using infrared thermography

机译:IRT-GAN:一种具有多头融合策略的生成对抗网络,用于使用红外热成像技术自动检测复合材料中的缺陷

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摘要

InfraRed Thermography (IRT) is a valuable diagnostic tool to non-destructively detect defects in fiber reinforced polymers. Often, a range of processing techniques are applied, e.g. principal component analysis, Fourier transformation, and thermographic signal reconstruction, in an attempt to enhance the defect detectability. Still, for the actual defect detection and evaluation, the interpretation by an expert operator is required which thus limits the (industrial) application potential of infrared thermography.This study proposes a Generative Adversarial Network (GAN) framework, termed IRT-GAN, to create a single unique thermal-image-to-segmentation translation of defects in composite materials. A large augmented numerical dataset has been simulated for a range of composite materials with different defects in order to train the IRT-GAN model. Integrated with the Spatial Group-wise Enhance layer, the IRT-GAN takes six pre-processed thermal images, thermographic signal reconstruction images in our case, as input and progressively fuses them via a multi-headed fusion strategy in the Generator. As such, this proposed IRT-GAN framework leads to the automated generation of a unique defect segmentation image.The high performance of the IRT-GAN, trained on the virtual dataset, is demonstrated on experimental data of both glass and carbon fiber reinforced polymers with various defect types, sizes, and depths. In addition, it is investigated how early, middle, and late-stage feature fusion in the GAN influences the segmentation performance.
机译:红外热成像 (IRT) 是一种有价值的诊断工具,可以无损检测纤维增强聚合物中的缺陷。通常,应用一系列处理技术,例如主成分分析、傅里叶变换和热成像信号重建,以试图提高缺陷的可检测性。然而,对于实际的缺陷检测和评估,需要专家操作员的解释,从而限制了红外热成像的(工业)应用潜力。本研究提出了一个称为IRT-GAN的生成对抗网络(GAN)框架,以创建复合材料缺陷的单一独特的热图像到分割转换。为了训练IRT-GAN模型,已经对一系列具有不同缺陷的复合材料进行了大型增强数值数据集的仿真。IRT-GAN与空间组增强层集成,将六个预处理的热图像(在我们的例子中为热成像信号重建图像)作为输入,并通过发生器中的多头融合策略逐步融合它们。因此,该提出的IRT-GAN框架可自动生成独特的缺陷分割图像。在虚拟数据集上训练的IRT-GAN的高性能在具有各种缺陷类型、尺寸和深度的玻璃纤维和碳纤维增强聚合物的实验数据上得到了证明。此外,还研究了GAN中早期、中期和晚期特征融合如何影响分割性能。

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