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Integrating imaging spectroscopy and neural networks to map grass quality in the Kruger National Park, South Africa

机译:整合成像光谱和神经网络以绘制南非克鲁格国家公园的草质图

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A new integrated approach, involving continuum-removed absorption features, the red edge position and neural networks, is developed and applied to map grass nitrogen concentration in an African savanna rangeland. Nitrogen, which largely determines the nutritional quality of grasslands, is commonly the most limiting nutrient for grazers. Therefore, the remote sensing of foliar nitrogen concentration in savanna rangelands is important for an improved understanding of the distribution and feeding patterns of wildlife. Continuum removal was applied on two absorption features located in the visible (R{sub}(550-757)) and the SWIR (R{sub}(2015-2199)) from an atmospherically corrected HYMAP MKI image. A feature selection algorithm was used to select wavelength variables from the absorption features. Selected band depths from the absorption features as well as the red edge position (REP) were input into a backpropagation neural network. The best-trained neural network was used to map nitrogen concentration over the whole study area. Results indicate that the new integrated approach could explain 60% of the variation in savanna grass nitrogen concentration on an independent test data set, with a root mean square error (rmse) of 0.13 (± 8.30% of the mean observed nitrogen concentration). This result is better compared to the result obtained using multiple linear regression, which yielded an R{sup}2 of 38%, with a RMSE of 0.16 (± 10.30% of the mean observed nitrogen concentration) on an independent test data set. The study demonstrates the potential of airborne hyperspectral data and neural networks to estimate and ultimately to map nitrogen concentration in the mixed species environments of Southern Africa.
机译:开发了一种新的综合方法,该方法涉及去除连续体的吸收特征,红边位置和神经网络,并将其应用于绘制非洲大草原牧场中草氮的浓度图。氮在很大程度上决定着草原的营养质量,通常是放牧者最限制的营养素。因此,对稀树草原草地中的叶片氮含量进行遥感监测对于增进对野生动植物分布和觅食方式的了解非常重要。从大气校正过的HYMAP MKI图像中,连续去除应用于位于可见光(R {sub}(550-757))和SWIR(R {sub}(2015-2199))中的两个吸收特征。使用特征选择算法从吸收特征中选择波长变量。从吸收特征中选择的带深度以及红色边缘位置(REP)被输入到反向传播神经网络。训练有素的神经网络用于绘制整个研究区域的氮浓度图。结果表明,新的综合方法可以在独立的测试数据集上解释热带稀树草原氮浓度的60%,均方根误差(rmse)为0.13(平均观察到的氮浓度的±8.30%)。与使用多元线性回归获得的结果相比,该结果更好,后者在独立的测试数据集上得出R {sup} 2为38%,RMSE为0.16(平均观察到的氮浓度的±10.30%)。该研究证明了机载高光谱数据和神经网络在估计和最终绘制南部非洲混合物种环境中的氮浓度方面的潜力。

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