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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Improved remote sensing of leaf nitrogen concentration in winter wheat using multi-angular hyperspectral data
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Improved remote sensing of leaf nitrogen concentration in winter wheat using multi-angular hyperspectral data

机译:利用多角度高光谱数据改善冬小麦叶片氮含量的遥感

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摘要

Real-time, nondestructive monitoring of crop nitrogen (N) status is important for precise N management in winter wheat production. Nadir viewing passive multispectral sensors have limited utility for measuring the N status of winter wheat in middle and bottom layers, and multi-angular remote sensors may instead improve detection of whole canopy physiological and biochemical parameters. Our objective was to improve the predictive accuracy and angular stability of leaf nitrogen concentration (LNC) measurement by constructing a novel Angular Insensitivity Vegetation Index (AIVI). We quantified the relationship between LNC and ground-based multi-angular hyperspectral reflectance in winter wheat (Triticum aestivum L.) across different growth stages, plant types, N rates, planting density, ecological sites and years. The optimum vegetation indices (VIs) obtained from 17 traditional indices reported in the literature were tested for their stability in estimating LNC at 13 view zenith angles (VZAs) in the solar principal plane (SPP). Overall the back-scatter direction gave improved index performance, relative to the nadir and forward-scattering direction. Red-edge VIs (e.g., mND705, GND [750,550], NDRE, RI-1dB) were highly correlated with LNC. However, the relationships strongly depended on experimental conditions, and these VIs tended to saturate at the highest LNC (4.5%). To further overcome the influence of different experimental conditions and VZAs on VIs, we developed a novel index, Angular Insensitivity Vegetation Index (AIVI), based on red-edge, blue and green bands. Our new model showed the highest association with LNC (R-2 = 0.73-0.87) compared to traditional VIs. Investigating AIVI predictive accuracy in measuring LNC across view zenith angles (VZAs) revealed that performance was the highest at -20 degrees and was relatively homogenous between -10 degrees and -40 degrees. This provided a united, predictive model across this wide-angle range, which enhances the possibility of N monitoring by using portable monitors. Testing of the models with independent data gave R-2 of 0.84 at -20 degrees, and 0.83 across the range of -10 degrees to -40 degrees, respectively. These results suggest that the novel AIVI is more effective for monitoring LNC than previously reported VIs for predicting accuracy, monitoring model stability and view angle independency. More generally, our model indicates the importance of accounting for angular effects when analyzing VIs under different experimental conditions. (C) 2015 Elsevier Inc. All rights reserved.
机译:实时,非破坏性地监测作物氮(N)状态对于精确控制冬小麦生产中的氮至关重要。天底观测无源多光谱传感器在测量中层和底层冬小麦的氮状况方面用途有限,而多角度遥感器可能会改善对整个冠层生理和生化参数的检测。我们的目标是通过构建新的角不敏感性植被指数(AIVI)来提高叶氮浓度(LNC)测量的预测准确性和角稳定性。我们量化了不同生长阶段,植物类型,氮素含量,种植密度,生态位点和年限的冬小麦(Triticum aestivum L.)LNC与地面多角度高光谱反射率之间的关系。测试了从文献中报告的17种传统指标获得的最佳植被指数(VIs)的稳定性,以估算太阳主平面(SPP)中13个视图天顶角(VZAs)的LNC。总体而言,相对于最低点和前向散射方向,后向散射方向改善了索引性能。红边VI(例如,mND705,GND [750,550],NDRE,RI-1dB)与LNC高度相关。但是,这种关系在很大程度上取决于实验条件,并且这些VI在最高LNC(4.5%)时趋于饱和。为了进一步克服不同实验条件和VZA对VI的影响,我们基于红边,蓝和绿带,开发了一种新颖的指数,角不敏感植被指数(AIVI)。与传统VI相比,我们的新模型显示出与LNC的关联最高(R-2 = 0.73-0.87)。研究AIVI在跨视角天顶角(VZAs)测量LNC的预测精度时,发现性能在-20度时最高,并且在-10度至-40度之间相对均匀。这在整个广角范围内提供了一个统一的预测模型,从而通过使用便携式监视器提高了进行N监视的可能性。对具有独立数据的模型进行测试,得出-20度时的R-2为0.84,在-10度至-40度的范围内分别为0.83。这些结果表明,新颖的AIVI在监视LNC方面比以前报道的VI在预测准确性,监视模型稳定性和视角独立性方面更为有效。更一般而言,我们的模型表明了在不同实验条件下分析VI时考虑角效应的重要性。 (C)2015 Elsevier Inc.保留所有权利。

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