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Towards decomposing the effects of foliar nitrogen content and canopy structure on rice canopy spectral variability through multi-scale spectral analysis

机译:通过多尺度光谱分析来分解叶面氮含量和冠层结构对水稻冠层光谱变异性的影响

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The effect of canopy structure on the remote sensing of foliar nitrogen content has been debated in recent years, due to the uncertain mechanism of estimating foliar nitrogen content through canopy reflectance in the near-infrared region. Although this effect was investigated using the radiative transfer modeling of canopy structural influence, the complicated modeling implementation is still of limited practical use and does not make full use of the spectral details in hyperspectral data. This study proposes to decompose the spectral responses to variations in canopy structure and foliar nitrogen content using a multi-scale spectral analysis tool, called continuous wavelet analysis (CWA). Our results on a rice field-plot experiment demonstrated that the leaf nitrogen content (LNC) were best correlated to the wavelet feature (730 nm, scale 4) with a r2 value of 0.62. The wavelet feature (730 nm, scale 6), which was represented with the same wavelength but a higher scale, exhibited strong correlation with the leaf area index (LAI) (r2=0.80). These two wavelet features characterized spectral variation at different scales and could serve as indicators for separating the spectral effects of LAI and LNC. The findings suggest the wavelet tool is promising for better understanding the effect of canopy structure on the spectroscopic estimation of foliar nitrogen and for building structure-insensitive models for LNC prediction.
机译:近年来,由于通过近红外区的冠层反射率估算叶面氮含量的不确定性机制,冠层结构对遥感叶片氮含量的影响一直存在争议。尽管使用树冠结构影响的辐射传递建模研究了这种影响,但是复杂的建模实现仍然受到有限的实际使用,并且没有充分利用高光谱数据中的光谱细节。这项研究建议使用称为连续小波分析(CWA)的多尺度光谱分析工具分解对冠层结构和叶面氮含量变化的光谱响应。我们在水稻田间试验的结果表明,叶氮含量(LNC)与小波特征(730 nm,等级4)最佳相关,r2值为0.62。小波特征(730 nm,等级6)用相同的波长表示,但等级更高,与叶面积指数(LAI)表现出很强的相关性(r2 = 0.80)。这两个小波特征表征了不同尺度下的光谱变化,并且可以用作分离LAI和LNC的光谱效应的指标。研究结果表明,小波工具有望更好地理解冠层结构对叶面氮光谱的影响,并为LNC预测建立结构不敏感的模型。

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