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Estimation of the Yield and Plant Height of Winter Wheat Using UAV-Based Hyperspectral Images

机译:基于无人机的高光谱图像估算冬小麦的产量和株高

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摘要

Crop yield is related to national food security and economic performance, and it is therefore important to estimate this parameter quickly and accurately. In this work, we estimate the yield of winter wheat using the spectral indices (SIs), ground-measured plant height (H), and the plant height extracted from UAV-based hyperspectral images (H ) using three regression techniques, namely partial least squares regression (PLSR), an artificial neural network (ANN), and Random Forest (RF). The SIs, H, and H were used as input values, and then the PLSR, ANN, and RF were trained using regression techniques. The three different regression techniques were used for modeling and verification to test the stability of the yield estimation. The results showed that: (1) H is strongly correlated with H ( = 0.97); (2) of the regression techniques, the best yield prediction was obtained using PLSR, followed closely by ANN, while RF had the worst prediction performance; and (3) the best prediction results were obtained using PLSR and training using a combination of the SIs and H as inputs ( = 0.77, RMSE = 648.90 kg/ha, NRMSE = 10.63%). Therefore, it can be concluded that PLSR allows the accurate estimation of crop yield from hyperspectral remote sensing data, and the combination of the SIs and H allows the most accurate yield estimation. The results of this study indicate that the crop plant height extracted from UAV-based hyperspectral measurements can improve yield estimation, and that the comparative analysis of PLSR, ANN, and RF regression techniques can provide a reference for agricultural management.
机译:作物产量与国家粮食安全和经济绩效有关,因此,快速准确地估算该参数很重要。在这项工作中,我们使用光谱指数(SIs),地面测量的株高(H)以及使用三种回归技术从基于无人机的高光谱图像(H)中提取的株高来估算冬小麦的产量,即偏最小二乘平方回归(PLSR),人工神经网络(ANN)和随机森林(RF)。将SI,H和H用作输入值,然后使用回归技术训练PLSR,ANN和RF。三种不同的回归技术用于建模和验证,以测试产量估算的稳定性。结果表明:(1)H与H密切相关(= 0.97); (2)回归技术中,使用PLSR获得最佳的产量预测,紧随其后的是ANN,而RF的预测性能最差; (3)使用PLSR和结合SI和H作为输入进行训练可获得最佳预测结果(= 0.77,RMSE = 648.90 kg / ha,NRMSE = 10.63%)。因此,可以得出结论,PLSR可以根据高光谱遥感数据准确估算农作物的产量,SI和H的组合可以估算最准确的产量。这项研究的结果表明,从基于UAV的高光谱测量中提取的作物株高可以改善产量估算,并且PLSR,ANN和RF回归技术的比较分析可以为农业管理提供参考。

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