Vandermeulen Ryan A, Mannino Antonio, Neeley Aimee, Werdell Jeremy, Arnone Robert
Opt Express. 2017 Aug 7;25(16):A785-A797. doi: 10.1364/OE.25.00A785.
Using a modified geostatistical technique, empirical variograms were constructed from the first derivative of several diverse Remote Sensing Reflectance and Phytoplankton Absorbance spectra to describe how data points are correlated with "distance" across the spectra. The maximum rate of information gain is measured as a function of the kurtosis associated with the Gaussian structure of the output, and is determined for discrete segments of spectra obtained from a variety of water types (turbid river filaments, coastal waters, shelf waters, a dense Microcystis bloom, and oligotrophic waters), as well as individual and mixed phytoplankton functional types (PFTs; diatoms, eustigmatophytes, cyanobacteria, coccolithophores). Results show that a continuous spectrum of 5 to 7 nm spectral resolution is optimal to resolve the variability across mixed reflectance and absorbance spectra. In addition, the impact of uncertainty on subsequent derivative analysis is assessed, showing that a 3% Gaussian noise (SNR ~66) addition compromises data quality without smoothing the spectrum, and a 13% noise (SNR ~15) addition compromises data with smoothing.
使用一种改进的地质统计学技术,从几种不同的遥感反射率和浮游植物吸收率光谱的一阶导数构建经验变差函数,以描述数据点如何与光谱上的“距离”相关。信息增益的最大速率作为与输出的高斯结构相关的峰度的函数进行测量,并针对从各种水体类型(浑浊的河流水流、沿海水域、陆架水域、密集的微囊藻水华和贫营养水域)以及单个和混合的浮游植物功能类型(PFTs;硅藻、真眼点藻、蓝细菌、颗石藻)获得的离散光谱段进行确定。结果表明,5至7纳米光谱分辨率的连续光谱最适合解析混合反射率和吸收率光谱的变异性。此外,评估了不确定性对后续导数分析的影响,结果表明,添加3%的高斯噪声(信噪比约为66)会在不使光谱平滑的情况下损害数据质量,而添加13%的噪声(信噪比约为15)会在光谱平滑的情况下损害数据。