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Estimating nitrogen concentration in rape from hyperspectral data at canopy level using support vector machines

机译:使用支持向量机从冠层的高光谱数据估算油菜中的氮浓度

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摘要

The estimation of nitrogen concentration from remotely sensed data has been the subject of some work. However, few studies have addressed the effective model for monitoring nitrogen status at canopy level using Support Vector Machines (SVM). The present study is focused on the assessment of an estimation model for nitrogen concentration of rape canopy with hyperspectral data. Two types of estimation model, the traditional statistical method based on stepwise linear regression (SLR) and the emerging computationally powerful techniques based on support vector machines were applied The Root Mean Square Error (RMSE) and T values were used to assess their predictability. The results show that a better agreement between the observed and the predicted nitrogen concentration were obtained by using the SVM model. Compared to the SLR model, the SVM model improved the results by lowering RMSE by 11.86-21.13 %, and by increasing T by 20.00-29.41 % for different spectral transformations. The study demonstrated the potential of SVM to estimate nitrogen concentration using canopy level hyperspectral data and it was concluded that SVM may provide a useful exploratory and predictive tool when applied to canopy-level hyperspectral reflectance data for monitoring nitrogen status of rape.
机译:从遥感数据估算氮浓度一直是一些工作的主题。但是,很少有研究提出使用支持向量机(SVM)监测冠层氮素状态的有效模型。本研究的重点是利用高光谱数据评估油菜冠层氮含量的估算模型。应用了两种类型的估计模型:基于逐步线性回归(SLR)的传统统计方法和基于支持向量机的新兴计算功能强大的技术。均方根误差(RMSE)和T值用于评估其可预测性。结果表明,使用支持向量机模型可以获得观测值与预测值之间更好的一致性。与SLR模型相比,对于不同的光谱转换,SVM模型通过将RMSE降低11.86-21.13%,以及将T增加20.00-29.41%来改善结果。该研究证明了支持向量机利用冠层水平的高光谱数据估算氮浓度的潜力,并得出结论,当支持向量机应用于冠层水平的高光谱反射率数据以监测油菜的氮状况时,可以提供有用的探索和预测工具。

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