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Simple and robust methods for remote sensing of canopy chlorophyll content: a comparative analysis of hyperspectral data for different types of vegetation

机译:简单而强大的遥感冠层叶绿素含量的方法:不同类型植被的高光谱数据的比较分析

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摘要

Canopy chlorophyll content (CCC) is an essential ecophysiological variable for photosynthetic functioning. Remote sensing of CCC is vital for a wide range of ecological and agricultural applications. The objectives of this study were to explore simple and robust algorithms for spectral assessment of CCC. Hyperspectral datasets for six vegetation types (rice, wheat, corn, soybean, sugar beet and natural grass) acquired in four locations (Japan, France, Italy and USA) were analysed. To explore the best predictive model, spectral index approaches using the entire wavebands and multivariable regression approaches were employed. The comprehensive analysis elucidated the accuracy, linearity, sensitivity and applicability of various spectral models. Multivariable regression models using many wavebands proved inferior in applicability to different datasets. A simple model using the ratio spectral index (RSI; R815, R704) with the reflectance at 815 and 704nm showed the highest accuracy and applicability. Simulation analysis using a physically based reflectance model suggested the biophysical soundness of the results. The model would work as a robust algorithm for canopy-chlorophyll-metre and/or remote sensing of CCC in ecosystem and regional scales. The predictive-ability maps using hyperspectral data allow not only evaluation of the relative significance of wavebands in various sensors but also selection of the optimal wavelengths and effective bandwidths.
机译:冠层的叶绿素含量(CCC)是光合作用的重要生态生理变量。 CCC的遥感对于广泛的生态和农业应用至关重要。这项研究的目的是探索简单而强大的CCC频谱评估算法。分析了在四个地点(日本,法国,意大利和美国)获得的六种植被类型(水稻,小麦,玉米,大豆,甜菜和天然草)的高光谱数据集。为了探索最佳的预测模型,采用了使用整个波段的光谱指数方法和多变量回归方法。全面的分析阐明了各种光谱模型的准确性,线性,灵敏度和适用性。使用许多波段的多变量回归模型在适用于不同数据集方面被证明较差。使用比率光谱指数(RSI; R815,R704)以及815和704nm反射率的简单模型显示了最高的准确性和适用性。使用基于物理的反射模型进行的仿真分析表明了结果的生物物理可靠性。该模型将作为生态系统和区域尺度CCC的冠层叶绿素测量和/或遥感的鲁棒算法。使用高光谱数据的预测能力图不仅可以评估各种传感器中波段的相对重要性,还可以选择最佳波长和有效带宽。

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