Shen Yan, Niu Zheng, Yan Chunyan
College of Meteorology, Nanjing University of Information Science & Technology, Nanjing 210044, China.
Ying Yong Sheng Tai Xue Bao. 2005 Jul;16(7):1218-23.
Based on spectral indices method, this paper utilized the water content (Cw) and reflectance data of 67 fresh different type leaves from LOPEX' 93 database to establish the statistical model between leaf Cw and spectral indices at leaf level through 47 samples, and to test the model with the other 20 samples. The results suggested that fuel moisture content (FMC) and equivalent water thickness (EWT) as Cw demonstrators were different in reflectance spectral curves. The difference between FMC and EWT was large when they were utilized to retrieve the leaf Cw. The correlation coefficient between EWT and each spectral index was higher than FMC, but the forecast precision of FMC was better than that of EWT. The 7 spectral indices could all retrieve the leaf FMC accurately, but only the Ratio975, II and SR were suitable to estimate the leaf EWT. Spectral indices linear model on the strength of optimal subset regressions had the highest precision to retrieve the leaf Cw. Ratio975 might be the universal spectral index to estimate the leaf Cw. At canopy level, the simulated canopy spectra under different leaf area index (LAI) and Cw were derived from the PROSPECT and SAILH coupling models. In order to eliminate background influence and to precisely retrieve the Cw, soil-adjusted water index (SAWI) was proposed at the first time to indicate the information of near-infrared and short-wave infrared canopy reflectance. The ratio of SAWI and other spectral indices could dramatically eliminate the soil background, and effectively retrieve the vegetation Cw at canopy level. Spectral index (Ratio975 - 0.96)/(SAWI + 0.2) as improved Ratio975 could be used to compute the canopy Cw more precisely when LAI was ranging from 0.3 to 8.0 and Cw from 0.0001 to 0. 07cm.
基于光谱指数法,本文利用LOPEX'93数据库中67片新鲜不同类型叶片的含水量(Cw)和反射率数据,通过47个样本建立了叶片水平上叶片Cw与光谱指数之间的统计模型,并用另外20个样本对该模型进行了检验。结果表明,作为Cw指示因子的燃料含水量(FMC)和等效水厚度(EWT)在反射光谱曲线上有所不同。利用FMC和EWT反演叶片Cw时差异较大。EWT与各光谱指数的相关系数高于FMC,但FMC的预测精度优于EWT。7个光谱指数都能准确反演叶片FMC,但只有Ratio975、II和SR适用于估算叶片EWT。基于最优子集回归的光谱指数线性模型反演叶片Cw的精度最高。Ratio975可能是估算叶片Cw的通用光谱指数。在冠层水平上,利用PROSPECT和SAILH耦合模型推导了不同叶面积指数(LAI)和Cw条件下的模拟冠层光谱。为了消除背景影响并精确反演Cw,首次提出了土壤调节水指数(SAWI)来表征近红外和短波红外冠层反射率信息。SAWI与其他光谱指数的比值能显著消除土壤背景,有效反演冠层水平上的植被Cw。当LAI在0.3至8.0之间且Cw在0.0001至0.07cm之间时,改进后的Ratio975即光谱指数(Ratio975 - 0.96)/(SAWI + 0.2)可更精确地计算冠层Cw。