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Multi-LUTs method for canopy nitrogen density estimation in winter wheat by field and UAV hyperspectral

机译:冬小麦冠层氮密度估计的多LUTS方法,UAV高光谱

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Unmanned aerial vehicle (UAV) based hyperspectral images linked to a radiative transfer model can provide a promising approach for high throughput monitoring of plant nitrogen (N) status. In this study, multiple lookup tables (Multi-LUTs), each LUT corresponding to one growth stage, were constructed based on the N-PROSAIL model, a radiative transfer model, and LUT size was optimized for improving computing efficiency. The objective is to use the constructed Multi-LUTs for estimating canopy N density (CND) in winter wheat. Results suggest that Multi-LUTs of leaf area index, leaf N density and two spectral indices (MSR and MCARI/MTVI2) in winter wheat demonstrate good performance of CND estimation; and LUTs with the optimal size of 6000 rows can yield good accuracy. The R-2 and nRMSE values of the regression relationship between estimated and measured CND were 0.83 and 0.23 from field hyperspectral data, and 0.69 and 0.27 from UAV based hyper-spectral imagery during the 2014-2015 growing season. CND by Multi-LUTs method was also accurately estimated from field hyperspectral data during the 2013-2014 growing season, with R-2 and nRMSE values of 0.74 and 0.26. The estimation accuracy of CND based UAV data was a slightly lower than based field data. The resultant thematic CND map accurately exhibits CND variability at varying spatial and temporal scales. Results from this study confirmed the potential of combining UAV based hyperspectral imagery and physical optics approach for estimating CND in winter wheat.
机译:连接到辐射转移模型的基于无人的空中车辆(UAV)的高光谱图像可以提供植物氮(N)状态的高通量监测的有希望的方法。在本研究中,基于N-HaseM模型,辐射转移模型,针对提高计算效率优化了多个查找表(多LUT),对应于一个生长阶段的每个LUT,每个LUTS),每个LUT阶段对应于一个生长阶段。目的是使用构造的多LUTs用于在冬小麦中估计冠层N密度(CND)。结果表明,冬小麦中叶面积指数,叶片N密度和两种光谱指数(MSR和MCARI / MTVI2)的多LUT表现出良好的CND估计性能;最佳尺寸为6000行的LUT可以产生良好的精度。估计和测量的CND之间的回归关系的R-2和NRMSE值为0.83和0.23,来自现场高光谱数据,来自基于UV的超级光谱图像的0.69和0.27来自2014 - 2015年生长季节。在2013 - 2014年生长季节期间,还通过多LUTS方法进行了多LUTS方法的CND,R-2和NRMSE值为0.74和0.26。基于CND基于UAV数据的估计精度是略低于基于现场数据。得到的主题CND MAP在不同的空间和时间尺度下精确地表现出CND变异性。本研究的结果证实了组合基于UV的高光谱图像和物理光学方法的潜力冬小麦估算CND。

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