首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Selecting algorithms, sensors, and linear bases for optimum spectral recovery of skylight
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Selecting algorithms, sensors, and linear bases for optimum spectral recovery of skylight

机译:选择算法,传感器和线性基准,以实现天窗的最佳光谱恢复

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摘要

In a previous work [Appl. Opt. 44, 5688 (2005)] we found the optimum sensors for a planned multispectral system for measuring skylight in the presence of noise by adapting a linear spectral recovery algorithm proposed by Maloney and Wandell [J. Opt. Soc. Am. A 3, 29 (1986)]. Here we continue along these lines by simulating the responses of three to five Gaussian sensors and recovering spectral information from noise-affected sensor data by trying out four different estimation algorithms, three different sizes for the training set of spectra, and various linear bases. We attempt to find the optimum combination of sensors, recovery method, linear basis, and matrix size to recover the best skylight spectral power distributions from colorimetric and spectral (in the visible range) points of view. We show how all these parameters play an important role in the practical design of a real multispectral system and how to obtain several relevant conclusions from simulating the behavior of sensors in the presence of noise.
机译:在以前的工作中[Appl。选择。 44,5,688(2005)],我们发现了一种适用于计划的多光谱系统的最佳传感器,该系统可通过调整Maloney和Wandell提出的线性光谱恢复算法来测量存在噪声的天窗。选择。 Soc。上午。 A 3,29(1986)]。在这里,我们通过模拟3到5个高斯传感器的响应并通过尝试四种不同的估计算法,三种不同的频谱训练集大小以及各种线性基准来从受噪声影响的传感器数据中恢复频谱信息,沿着这些思路继续进行。我们试图找到传感器,恢复方法,线性基础和矩阵大小的最佳组合,以从比色和光谱(在可见范围内)的角度恢复最佳的天光光谱功率分布。我们展示了所有这些参数如何在实际的多光谱系统的实际设计中发挥重要作用,以及如何通过模拟存在噪声的传感器行为来获得一些相关的结论。

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