利用高光谱数据绘制森林化学图

D. Goodenough, T. Han, J. Pearlman, A. Dyk, S. McDonald
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引用次数: 7

摘要

对于利用高光谱图像进行森林化学浓度测绘,通常的做法是通过几种线性回归技术中的一种将化学测量与图像光谱联系起来。为了提高映射精度,我们对图像光谱进行了算术变换,以减少由于像素内分数组成的差异而引起的光谱变化。从线性光谱分解得到的冠层端元分数用于调整化学测量以反映像素分数组成。本研究发现,吸收光谱的2/sup和/导数与叶片氮含量的相关性最好。此外,冠层端元分数的调整可以改善这种相关性。最后,利用多元线性回归将经冠度调整的氮测量值与2/sup和/导数吸收光谱相关联,建立叶片氮浓度图。
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Forest chemistry mapping with hyperspectral data
For forest chemical concentration mapping with hyperspectral imagery, it is a common practice to relate chemical measurements to image spectra by one of several linear regression techniques. To improve the mapping accuracy, we apply arithmetic transformations to the image spectra to reduce the spectra variations due to differences of fractional compositions within pixels. Canopy endmember fractions, derived from a linear spectral unmixing, are used to adjust the chemical measurements to reflect the pixel fractional composition. It is found in this study that the 2/sup nd/ derivative of absorbance spectra have the best correlation with foliar nitrogen measurements. Moreover, the adjustments with canopy endmember fractions can improve this correlation. Finally a foliar nitrogen concentration map is created by using a multiple linear regression to relate the canopy-fraction-adjusted nitrogen measurements to the 2/sup nd/ derivative absorbance spectra.
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