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Automated defect classification in infrared thermography based on a neural network

机译:基于神经网络的红外热像仪缺陷自动分类

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摘要

This paper reports on the use of a neural network in infrared thermography to classify defects, such as air, oil, and water, which can degrade material performance. A finite element method and experiment were adopted to simulate air, water, and oil ingress. Raw data, and thermographic signal reconstruction coefficients were used to train, and test the two multilayer, feed-forward NN models. Quantitative comparisons showed that the model using coefficients as features performed better than the one using raw data. It was more precise and had better test repeatability. This indicates the model is more generalizable.
机译:本文报告了在红外热成像中使用神经网络对空气,油和水等缺陷进行分类的缺陷,这些缺陷会降低材料性能。采用了有限元方法和实验来模拟空气,水和油的进入。原始数据和热成像信号重建系数用于训练和测试两个多层前馈NN模型。定量比较表明,使用系数作为特征的模型比使用原始数据的模型表现更好。它更精确,测试重复性更好。这表明该模型更具通用性。

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