首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression
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Reflectance measurement of canopy biomass and nitrogen status in wheat crops using normalized difference vegetation indices and partial least squares regression

机译:利用归一化差异植被指数和偏最小二乘回归法测量小麦作物​​冠层生物量和氮素状况的反射率

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Hyperspectral reflectance (438 to 884 nm) data were recorded at five different growth stages of winter wheat in a field experiment including two cultivars, three plant densities, and four levels of N application. All two-band combinations in the normalized difference vegetation index (lambda1 - lambda2)/(lambda1 +lambda2) were subsequently used in a linear regression analysis against green biomass (GBM, g fresh weight m(-2) soil), leaf area index (LAI, m(2) green leaf m(-2) soil), leaf chlorophyll concentration (Chl(conc), mg chlorophyll g(-1) leaf fresh weight), leaf chlorophyll density (Chl(density), mg chlorophyll m(-2) soil), leaf nitrogen concentration N-conc, mg nitrogen g(-1) leaf dry weight), and leaf nitrogen density (N-density, g nitrogen m(-2) soil). A number of grouped wavebands with high correlation (R-2>95%) were revealed. For the crop variables based on quantity per unit surface area, i.e. GBM, LAI, Chl(density), and N-density, these wavebands had in the majority (87%) of the cases a center wavelength in the red edge spectral region from 680 to 750 nm and the band combinations were often paired so that both bands were closely spaced in the steep linear shift between R-red and R-nir, The red edge region was almost absent for bands related to Chl(conc) and N-conc, where the visible spectral range, mainly in the blue region, proved to be better. The selected narrow-band indices improved the description of the influence of all six-crop variables compared to the traditional broad- and short-band indices normally applied on data from satellite, aerial photos, and field spectroradiometers. For variables expressed on the basis of soil or canopy surface area, the relationship was further improved when exponential curve fitting was used instead of linear regression. The best of the selected narrow-band indices was compared to the results of a partial least square regression (PLS). This comparison showed that the narrow-band indices related to LAI and Chl(conc), and to some extent also Chl(density) and N-density, were optimal and could not be significantly improved by PLS using the information from all wavelengths in the hyperspectral region. However, PLS improved the prediction of GBM and N-conc by lowering the RMSE with 22% and 24%, respectively, compared to the best narrow-band indices. It is concluded that PLS regression analysis may provide a useful exploratory and predictive tool when applied on hyperspectral reflectance data. (C) 2003 Elsevier Inc. All rights reserved. [References: 42]
机译:在田间试验中记录了冬小麦五个不同生长阶段的高光谱反射率(438至884 nm)数据,包括两个品种,三种植物密度和四个氮素施用水平。随后将归一化差异植被指数(lambda1-lambda2)/(lambda1 + lambda2)中的所有两个波段组合用于针对绿色生物量(GBM,g新鲜重量m(-2)土壤),叶面积指数的线性回归分析(LAI,m(2)绿叶m(-2)土壤),叶绿素浓度(Chl(conc),叶绿素mg g(-1)叶鲜重),叶绿素密度(Chl(密度),mg叶绿素m (-2)土壤),叶氮浓度N-conc,毫克氮g(-1)叶干重)和叶氮密度(N密度,克氮m(-2)土壤)。揭示了许多具有高相关性的分组波段(R-2> 95%)。对于基于单位表面积的量(即GBM,LAI,Chl(密度)和N密度)的农作物变量,这些波段在大多数情况下(87%)具有红色边缘光谱区中的中心波长680至750 nm且能带组合经常配对,从而使两个能带在R-red和R-nir之间的陡峭线性移动中紧密隔开。与Chl(conc)和N-有关的能带几乎没有红色边缘区域浓,可见光谱范围(主要在蓝色区域)被证明是更好的。与通常应用于卫星,航空照片和现场光谱辐射仪的数据的传统宽带和短带索引相比,所选的窄带索引改进了对所有六个作物变量的影响的描述。对于基于土壤或冠层表面积表示的变量,当使用指数曲线拟合而不是线性回归时,该关系进一步改善。将选定的最佳窄带指数与偏最小二乘回归(PLS)的结果进行比较。该比较表明,与LAI和Chl(conc)有关的窄带指数,在某种程度上还与Chl(密度)和N密度有关,是最佳的,PLS无法使用来自所有波长的信息显着改善。高光谱区。但是,与最佳窄带指数相比,PLS通过将RMSE分别降低22%和24%,改善了GBM和N-conc的预测。结论是,当应用于高光谱反射率数据时,PLS回归分析可提供有用的探索性和预测性工具。 (C)2003 Elsevier Inc.保留所有权利。 [参考:42]

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