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首页> 外文期刊>Ciência Rural >Medi??o do conteúdo de nitrogênio no arroz por invers?o de dados de refletancia hiperspectral de um veículo aéreo n?o tripulado
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Medi??o do conteúdo de nitrogênio no arroz por invers?o de dados de refletancia hiperspectral de um veículo aéreo n?o tripulado

机译:通过反演无人机的高光谱反射率数据测量水稻中的氮含量

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The Nitrogen content of rice leaves has a significant effect on growth quality and crop yield. We proposed and demonstrated a non-invasive method for the quantitative inversion of rice nitrogen content based on hyperspectral remote sensing data collected by an unmanned aerial vehicle (UAV). Rice canopy albedo images were acquired by a hyperspectral imager onboard an M600-UAV platform. The radiation calibration method was then used to process these data and the reflectance of canopy leaves was acquired. Experimental validation was conducted using the rice field of Shenyang Agricultural University, which was classified into 4 fertilizer levels: zero nitrogen, low nitrogen, normal nitrogen, and high nitrogen. Gaussian process regression (GPR) was then used to train the inversion algorithm to identify specific spectral bands with the highest contribution. This led to a reduction in noise and a higher inversion accuracy. Principal component analysis (PCA) was also used for dimensionality reduction, thereby reducing redundant information and significantly increasing efficiency. A comparison with ground truth measurements demonstrated that the proposed technique was successful in establishing a nitrogen inversion model, the accuracy of which was quantified using a linear fit (R 2 =0.8525) and the root mean square error (RMSE=0.9507). These results support the use of GPR and provide a theoretical basis for the inversion of rice nitrogen by UAV hyperspectral remote sensing.
机译:稻叶中的氮含量对生长质量和农作物产量有重要影响。我们提出并演示了一种基于无人飞行器(UAV)收集的高光谱遥感数据的水稻氮含量定量反演的非侵入性方法。水稻冠层反照率图像是通过M600-UAV平台上的高光谱成像仪获得的。然后使用辐射校准方法处理这些数据,并获得冠层叶片的反射率。使用沉阳农业大学的稻田进行了试验验证,该稻田分为4种肥料水平:零氮,低氮,正常氮和高氮。然后,使用高斯过程回归(GPR)训练反演算法,以识别贡献最大的特定光谱带。这样可以降低噪声并提高反演精度。主成分分析(PCA)也可用于减少维度,从而减少冗余信息并显着提高效率。与地面真相测量值的比较表明,所提出的技术成功地建立了氮反演模型,其准确性使用线性拟合(R 2 = 0.8525)和均方根误差(RMSE = 0.9507)进行了量化。这些结果支持了GPR的使用,并为无人机高光谱遥感反演水稻氮素提供了理论基础。

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