Wang Jia-jia, Liao Ning-fang, Wu Wen-min, Cao Bin, Li Ya-sheng, Cheng Hao-bo
Guang Pu Xue Yu Guang Pu Fen Xi. 2017 Mar;37(3):704-9.
Metamerism phenomenon is an important problem in spectral reflectance reconstruction and color reproduction. In this paper, a 3-primary color CCD camera is used to acquire spectral information in CIE standard illuminant D65 and a nonlinear composite model is established, including principal component analysis and neural network method (PCA-NET) to modify the Matrix R Method based on the Metameric Black theory. The standard Munsell color card is used in spectral reflectance reconstruction experiment and the results are evaluated and discussed. The experimental results verified that the PCA-NET algorithm can accurately fit the nonlinear relationship between the output signal of the camera and the principal component coefficients; and it can be used in the R matrix algorithm instead of the linear algorithm; the new method can serve as a promising technique for building a spectral image database whihc is better than the original Matrix R Method. In the fixed illumination environment, the mean RMS of the test set is 0.76 improved, and the mean STD of the test set is 0.85 improved, which can effectively improve the accuracy of spectral reflectance reconstruction. The modified matrix R method has the advantages of higher accuracy and easy implementation, and it can be used in the field of color reproduction and spectral reflectance reconstruction.
同色异谱现象是光谱反射率重建和颜色再现中的一个重要问题。本文采用三基色CCD相机在CIE标准照明体D65下获取光谱信息,并建立了一种非线性复合模型,包括主成分分析和神经网络方法(PCA-NET),以基于同色异谱黑色理论修正矩阵R方法。在光谱反射率重建实验中使用标准孟塞尔色卡,并对结果进行评估和讨论。实验结果验证了PCA-NET算法能够准确拟合相机输出信号与主成分系数之间的非线性关系;并且它可以用于R矩阵算法中替代线性算法;新方法可作为一种有前途的技术用于构建光谱图像数据库,比原始矩阵R方法更好。在固定照明环境下,测试集的平均均方根误差(RMS)提高了0.76,测试集的平均标准差(STD)提高了0.85,这可以有效提高光谱反射率重建的精度。改进后的矩阵R方法具有精度更高、易于实现的优点,可用于颜色再现和光谱反射率重建领域。