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Estimating Wheat Coverage Using Multispectral Images Collected by Unmanned Aerial Vehicles and a New Sensor

机译:使用无人飞行器和新传感器采集的多光谱图像估算小麦覆盖率

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摘要

Coverage is an important parameter for indicating wheat growth and health. Remote sensing technology has utility in monitoring wheat coverage in a timely and nondestructive manner over a given spatial scale for precision agriculture. Unmanned aerial vehicles (UAVs) are flexible and can easily be manipulated. They can acquire images with high spatial and temporal resolutions at low cost when equipped with sensors. However, the application of UAVs is still in its initial phases. The objective of this study is to estimate wheat coverage using multispectral images obtained with a low-cost UAV sensor named RedEdge-M and a four-rotor UAV. To meet this goal, a nitrogen fertilization experiment on wheat conducted at the Xiaotangshan National Precision Agriculture Experimental Base in Changping district, Beijing, was used. Multispectral images of wheat in Feekes growth stage 4 were obtained. Additionally, wheat coverage at representative points in each plot were measured by traditional photographic methods. Based on the data described above, spectral data for the sampling points were first extracted from the obtained RedEdge images. Second, the sampling data were divided into two parts. One part contained 24 randomly selected sampling points that were used to design the wheat coverage estimation model, whereas the other part contained the remaining 8 sampling points that were used to test the model. During this process, commonly used spectral indices that are suitable for coverage prediction were selected and used to produce a coverage estimation model. The results showed that multispectral images obtained using RedEdge-M have great potential for use in estimating wheat coverage. All of the selected spectral indices are closely related to wheat coverage. Of these indices, the Triangular Vegetation Index (TVI) and Normalized Difference Red Edge (NDRE) displayed the best performance. During calibration, the R2 values obtained using the TVI and the NDRE were 0.96 and 0.97, respectively; the corresponding RMSE values were 1.56% and 1.50, and the RMSE% values were 8.91 and 8.55. During model validation, the R2 values were 0.90 and 0.90, the RMSE values were 3.11% and 3.31%, and the RMSE% values were 16.96 and 18.05, respectively.
机译:覆盖率是指示小麦生长和健康的重要参数。遥感技术可用于在给定的空间规模上及时,无损地监测小麦的覆盖率,以进行精准农业。无人机(UAV)灵活,可以轻松操纵。配备传感器后,他们可以低成本获取具有高空间和时间分辨率的图像。但是,无人机的应用仍处于初期阶段。这项研究的目的是使用多光谱图像估算小麦的覆盖率,该图像是使用名为RedEdge-M的低成本无人机和四旋翼无人机获得的。为了实现这一目标,在北京昌平区小塘山国家精准农业试验基地进行了小麦氮肥试验。获得了在Feekes生长阶段4的小麦的多光谱图像。另外,通过传统摄影方法测量每个样地中代表点的小麦覆盖率。基于上述数据,首先从获得的RedEdge图像中提取采样点的光谱数据。其次,抽样数据分为两部分。一部分包含用于设计小麦覆盖率估算模型的24个随机选择的采样点,而另一部分包含用于测试模型的其余8个采样点。在此过程中,选择了适用于覆盖范围预测的常用光谱索引,并将其用于生成覆盖范围估计模型。结果表明,使用RedEdge-M获得的多光谱图像在估算小麦覆盖率方面具有巨大潜力。所有选定的光谱指数都与小麦覆盖率密切相关。在这些指数中,三角植被指数(TVI)和归一化差异红边(NDRE)显示了最佳性能。在校准期间,使用TVI和NDRE获得的R2值分别为0.96和0.97。相应的RMSE \值分别为1.56 \%和1.50,RMSE \%值分别为8.91和8.55。在模型验证期间,R2值为0.90和0.90,RMSE值为3.11 \%和3.31 \%,RMSE \%值分别为16.96和18.05。

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  • 会议地点 Hangzhou(CN)
  • 作者单位

    Institute of Geographical Science and Natural Resources Research Chinese Academy of Sciences State Key Laboratory of Resources and Environment Information System Beijing China;

    Center for Information Technology in Agriculture National Engineering Research Beijing China;

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    Dogs;

    机译:小狗;

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