Wang Lixia, Wan Xiaoxia, Xiao Gensheng, Liang Jinxing
Opt Express. 2020 Aug 31;28(18):25830-25842. doi: 10.1364/OE.389614.
A sequential weighted nonlinear regression technique from digital camera responses is proposed for spectral reflectance estimation. The method consists of two stages taking colorimetric and spectral errors between training set and target set into accounts successively. Based on polynomial expansion model, local optimal training samples are adaptively employed to recover spectral reflectance as accurately as possible. The performance of the method is compared with several existing methods in the cases of simulated camera responses under three kinds of noise levels and practical camera responses under the self as well as cross test conditions. Results show that the proposed method is able to recover spectral reflectance with a higher accuracy than other methods considered.
提出了一种基于数码相机响应的序列加权非线性回归技术用于光谱反射率估计。该方法包括两个阶段,依次考虑训练集和目标集之间的比色误差和光谱误差。基于多项式展开模型,自适应地采用局部最优训练样本以尽可能准确地恢复光谱反射率。在三种噪声水平下的模拟相机响应以及自我测试和交叉测试条件下的实际相机响应情况下,将该方法的性能与几种现有方法进行了比较。结果表明,所提出的方法能够比其他考虑的方法更准确地恢复光谱反射率。