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Estimation of Leaf Nitrogen Concentration of Winter Wheat Using UAV-Based RGB Imagery

机译:基于UAV的RGB图像估算冬小麦叶片氮浓度

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Leaf nitrogen concentration (LNC) of winter wheat can reflect its nitrogen (N) status. Rapid, non-destructive and accurate monitoring of LNC of winter wheat has important practical applications in monitoring N nutrition and fertilizing management. The experimental site of winter wheat was located at Xiaotangshan National Demonstration Base of Precision Agricultural Research located in Changping District, Beijing, China. High spatial resolution digital images of the winter wheat were acquired using a low-cost unmanned aerial vehicle (UAV) with digital camera system at three key growth stages of booting, flowering and filling during April to June in 2015. Firstly, the acquired UAV digital images were mosaicked to generate a Digital Orthophoto Map (DOM) of the entire experimental site and 15 digital image variables were constructed. Then, based on the ground measured data onto LNC and digital image variables derived from the DOM for 48 sampling plots of winter wheat, linear and stepwise regression models were constructed for estimating LNC. Finally, the optimum model for estimating LNC was screened out by comprehensively considering the coefficient of determination (R~2), the root mean square error (RMSE), the normalized root mean square error (nRMSE) and the simplicity of model calibrating and validating. The experimental results showed that the linear regression model of rib that was one of the digital image variables for estimating LNC had the best accuracy with the model's calibration and validation of R~2, RMSE and nRMSE were 0.76, 0.40, 11.97% and 0.69, 0.43, 13.02%, respectively. The results suggest that it is feasible to estimate LNC of winter wheat based on the DOM acquired by UAV remote sensing platform carrying a low-cost, high-resolution digital camera, which can rapidly and non-destructively obtains the LNC of winter wheat experiment site and provide a quick and low-cost method for monitoring N nutrition and fertilizing management.
机译:冬小麦的叶片氮浓度(LNC)可以反映其氮气(n)状态。冬小麦LNC的快速,无损和准确监测在监测N营养和施肥管理方面具有重要的实际应用。冬小麦的实验部位位于中国北京昌平区精密农业研究的小康山国家示范基础。在2015年4月到6月在2015年4月到6月,使用低成本的无人驾驶飞行器(UAV)使用低成本的无人驾驶飞行器(UAV)使用低成本的无人驾驶飞行器(UAV)来获取冬小麦的数字图像。首先,收购了UAV数字将图像镶嵌地产生整个实验站点的数字正面地图(DOM),并且构建了15个数字图像变量。然后,基于地面测量数据到LNC和从DOM的数字图像变量,用于冬小麦的48个采样图,构建线性和逐步回归模型用于估计LNC。最后,通过综合考虑确定系数(R〜2),根均线误差(RMSE),归一化均方根误差(NRMSE)以及模型校准和验证的简单性来筛选用于估计LNC的最佳模型。实验结果表明,肋骨的线性回归模型是用于估计LNC的数字图像变量之一,具有最佳的准确性,具有模型的校准和验证的R〜2,RMSE和NRMSE为0.76,0.40,11.97%和0.69, 0.43,13.02%。结果表明,基于携带低成本,高分辨率数码相机的UAV遥感平台获得的DOM估算冬小麦的LNC是可行的,这可以迅速和非破坏性地获得冬小麦实验现场的LNC并提供快速和低成本的监测N营养和施肥管理方法。

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