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High-Throughput Phenotyping of Plant Height: Comparing Unmanned Aerial Vehicles and Ground LiDAR Estimates

机译:植物高度的高通量表型分析:比较无人机和地面LiDAR估算值

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摘要

The capacity of LiDAR and Unmanned Aerial Vehicles (UAVs) to provide plant height estimates as a high-throughput plant phenotyping trait was explored. An experiment over wheat genotypes conducted under well watered and water stress modalities was conducted. Frequent LiDAR measurements were performed along the growth cycle using a phénomobile unmanned ground vehicle. UAV equipped with a high resolution RGB camera was flying the experiment several times to retrieve the digital surface model from structure from motion techniques. Both techniques provide a 3D dense point cloud from which the plant height can be estimated. Plant height first defined as the z-value for which 99.5% of the points of the dense cloud are below. This provides good consistency with manual measurements of plant height (RMSE = 3.5 cm) while minimizing the variability along each microplot. Results show that LiDAR and structure from motion plant height values are always consistent. However, a slight under-estimation is observed for structure from motion techniques, in relation with the coarser spatial resolution of UAV imagery and the limited penetration capacity of structure from motion as compared to LiDAR. Very high heritability values (H2> 0.90) were found for both techniques when lodging was not present. The dynamics of plant height shows that it carries pertinent information regarding the period and magnitude of the plant stress. Further, the date when the maximum plant height is reached was found to be very heritable (H2> 0.88) and a good proxy of the flowering stage. Finally, the capacity of plant height as a proxy for total above ground biomass and yield is discussed.
机译:探索了LiDAR和无人飞行器(UAV)作为高通量植物表型性状提供植物高度估计的能力。在水分充足和水分胁迫的模式下进行了小麦基因型试验。使用Phénomobile无人地面车辆在生长周期内进行频繁的LiDAR测量。配备高分辨率RGB相机的无人机进行了多次飞行实验,以从运动技术中检索结构的数字表面模型。两种技术都提供了3D密集点云,可以从中估算植物高度。首先将植物高度定义为z值,在该z值下密集云的点低于99.5%。这与手动测量植物高度(RMSE = 3.5 cm)提供了良好的一致性,同时最大程度地减少了沿每个微图的变异性。结果表明,LiDAR和来自运动植物高度值的结构始终是一致的。但是,与LiDAR相比,无人机技术成像的空间分辨率较粗,而运动的结构穿透能力有限,因此运动技术的结构略有低估。当不存在倒伏时,两种技术的遗传力值都很高(H 2 2

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