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Application of Deep Learning in Infrared Non-Destructive Testing

机译:深度学习在红外线非破坏性测试中的应用

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Convolutional Neural Networks (CNN) is already known as strong tools in various fields particularly in image processing and computer vision. This paper aims to exploit the power of CNN for transform learning and utilizes it as an unsupervised feature extractor for analyzing defects in a steel specimen with float batten holes and Carbon Fiber Reinforced Plastic (CFRP)composite materials. A pre-trained CNN (ImageNet-VGG-f) has been used for extraction of the vectorized features along with a spectral angler mapper (SAM) to provide a score for defects presented in the image. Empirical results on two aforementioned datasets indicate a promising performance for application of heating and cooling based active thermography with a reasonable computational cost due to unsupervised nature of the algorithm.
机译:卷积神经网络(CNN)已被称为各种领域的强大工具,特别是在图像处理和计算机视觉中。本文旨在利用CNN用于变换学习的力量,并利用它作为无监督的特征提取器,用于分析钢标本中浮石和碳纤维增强塑料(CFRP)复合材料的钢版中的缺陷。预先训练的CNN(ImageNet-VGG-F)已被用于提取矢量化特征以及光谱钓鱼者映射器(SAM)以提供用于图像中呈现的缺陷的分数。在两个上述数据集上的经验结果表明,由于算法的无监督性质,具有合理的计算成本的加热和冷却的主动热成分的应用表明,具有合理的计算成本。

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