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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Multiple shadow fractions in spectral mixture analysis of a cotton canopy
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Multiple shadow fractions in spectral mixture analysis of a cotton canopy

机译:棉冠光谱混合分析中的多个阴影部分

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Shadows are being used more frequently to estimate plant canopy biophysical characteristics. Typically, a zero value is assumed or a threshold value is derived from histogram analysis of imagery to determine the shadow endmember (EM). Here, two distinct shadow EMs were measured in situ for use in spectral mixture analysis of a cotton canopy on five dates in 2003. The four EMs used in the analysis were: sunlit green leaf, sunlit dry soil, self-shadowed leaf, shadowed dry soil. This 4-EM model was compared to a 3-EM model where a zero-value shade EM was used for unmixing with the two sunlit EMs. Multiple endmember spectral mixture analysis (MESMA) was used to allow EM composition to vary across each scene. The analysis and EMs were applied to fine-scale hyperspectral image data collected in the wavelength range, 440 to 8 10 nm. Ground data collected included percent cover, height, SPAD (a measure of leaf greenness), and chlorophyll a concentration. The normalized difference vegetation index (NDVI) was also compared to the unmixing results. Regression analysis showed that NDVI was equal to the 4-EM model for estimation of percent cover (r(2) = 0.95, RMSE = 6.6) although the NDVI y-intercept was closer to zero. The 4-EM model was best for estimating height (r(2) = 0.79, PMSE=0.07 in) and chlorophyll a concentration (r(2) = 0.46, RMSE=7.0 mu g/cm(2)). The 3-EM model and NDVI per-formed poorly when estimating chlorophyll a concentration. Inclusion of two distinct shadow EMs in the model improved relationships to crop biophysical parameters and was better than assuming one, zero-value shade EM. Since MESMA operates at the pixel level and allows variable EM assignment to each pixel, mapping the spatial variability of shadows and other variables of interest is possible, providing a powerful input to canopy and ecosystem models as well as precision fanning. (C) 2005 Elsevier Inc. All rights reserved.
机译:阴影被更频繁地用来估计植物冠层的生物物理特性。通常,假定为零值或从图像的直方图分析中得出阈值以确定阴影末端成员(EM)。在这里,在2003年的5个日期现场测量了两个不同的阴影EM,用于棉冠的光谱混合分析。用于分析的四个EM是:阳光照射的绿叶,阳光照射的干燥土壤,自阴影的叶子,阴影的干燥泥。将此4-EM模型与3-EM模型进行了比较,在3-EM模型中,零值阴影EM用于与两个阳光照射的EM混合。使用多端元光谱混合分析(MESMA)可以使EM成分在每个场景中变化。将分析和EM应用于在440至8 10 nm波长范围内收集的精细高光谱图像数据。收集的地面数据包括覆盖率,高度,SPAD(一种测量叶片绿色度)和叶绿素a浓度。还将归一化差异植被指数(NDVI)与拆解结果进行了比较。回归分析显示,尽管NDVI y截距接近于零,但NDVI等于4-EM模型的百分比覆盖率估算值(r(2)= 0.95,RMSE = 6.6)。 4-EM模型最适合估计高度(r(2)= 0.79,PMSE = 0.07 in)和叶绿素a浓度(r(2)= 0.46,RMSE = 7.0μg / cm(2))。估计叶绿素a浓度时,3-EM模型和NDVI表现不佳。在模型中包含两个不同的阴影EM可以改善与作物生物物理参数的关系,并且比假设一个零值阴影EM更好。由于MESMA在像素级别运行,并允许为每个像素分配可变的EM,因此可以绘制阴影和其他感兴趣变量的空间变化,从而为冠层和生态系统模型以及精确扇形提供了强大的输入。 (C)2005 Elsevier Inc.保留所有权利。

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