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Improved Spectral Density Measurement from Estimated Reflectance Data with Kernel Ridge Regression

机译:利用核岭回归从估计的反射率数据改进光谱密度测量

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Density measurement of printed color samples takes an important role in print quality inspection and process control. When multi-spectral imaging systems are considered for surface reflectance measurement, the possibility of calculating spectral print density over the spatial image domain arises. A drawback in using multi-spectral imaging systems is that some spectral reconstruction algorithms can produce estimated reflectances which contain negative values that are physically not meaningful. When spectral density calculations are considered, the results are erroneous and calculations might even fail in the worst case. We demonstrate how this problem can be avoided by using kernel ridge regression with additional link functions to constrain the estimates to positive values.
机译:打印颜色样本的密度测量在打印质量检查和过程控制中起着重要作用。当考虑将多光谱成像系统用于表面反射率测量时,出现了在空间图像域上计算光谱印刷密度的可能性。使用多光谱成像系统的一个缺点是某些光谱重建算法会产生估计的反射率,该反射率包含在物理上没有意义的负值。考虑频谱密度计算时,结果是错误的,在最坏的情况下计算甚至可能会失败。我们演示了如何通过使用带有附加链接函数的内核岭回归将估计数约束为正值来避免此问题。

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