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Optimized Gaussian model for non-uniform heating compensation in pulsed thermography

机译:脉冲热成像中的非均匀加热补偿优化高斯模型

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This paper presents a new, to the best of our knowledge, methodology for the thermal compensation of background heating in thermograms of composites. The technique analyzes the spatial data of the thermal images obtained from a pulsed thermography inspection and automatically calculates the optimal parameters of a predefined objective function. These parameters are obtained by curve fitting using the least squares method and model the temperature distribution of the image background using the proposed objective function. To verify the methodology, we use real and synthetic images of a sample of carbon-fiber-reinforced plastic (CFRP) with defects, with diameter/depth ratios that range between 15.0 and 75.0 and between 1.7 and 90.0, respectively. The performance of the method is tested using a local and a global definition of the signal-to-noise ratio (SNR) and is statistically validated by analysis of variance. The average performance values obtained were 55.0 dB and 7.0 dB on synthetic images and real images, respectively. The proposed method provides superior and statistically significant differences compared to techniques reported in the literature for contrast enhancement [e.g., differential absolute contrast (DAC) and background thermal compensation by filtering (BTCF)]. Unlike contrast normalization (CN), the proposed technique stands out since it does not need to predefine variables, select reference regions, have prior knowledge of the partial (or complete) state of the material, or analyze totally (or partially) the temporal evolution of the temperature or any characteristic derived from it. (C) 2020 Optical Society of America
机译:本文呈现出一种新的,据我们所知,在复合材料的热图中的背景加热的热补偿方法。该技术分析了从脉冲热成像检查获得的热图像的空间数据,并自动计算预定义目标函数的最佳参数。这些参数通过使用最小二乘法和使用所提出的目标函数来模拟图像背景的温度分布来获得这些参数。为了验证方法,我们使用具有缺陷的碳 - 纤维增强塑料(CFRP)样品的实际和合成图像,其直径/深度比率分别在1.7和90.0之间的15.0和75.0之间。使用局部和全局定义来测试该方法的性能(SNR)的全局定义,并通过对方差分析进行统计验证。获得的平均性能值分别在合成图像和真实图像上分别为55.0dB和7.0 dB。与文献中报告的综合增强中报告的技术相比,该方法提供了优异的和统计学显着的差异[例如,通过滤波(BTCF)的差分绝对对比(DAC)和背景热补偿。与对比度标准化(CN)不同,所提出的技术突出,因为它不需要预定五个变量,选择参考区域,具有先验的材料的部分(或完整)状态,或者完全(或部分)的时间进化温度或任何特征源自它。 (c)2020美国光学学会

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    《Applied optics》 |2020年第14期|共11页
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