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Portable LiDAR-Based Method for Improvement of Grass Height Measurement Accuracy: Comparison with SfM Methods

机译:基于LIDAR的草高测量精度的便携式激光雷达方法:与SFM方法的比较

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摘要

Plant height is a key indicator of grass growth. However, its accurate measurement at high spatial density with a conventional ruler is time-consuming and costly. We estimated grass height with high accuracy and speed using the structure from motion (SfM) and portable light detection and ranging (LiDAR) systems. The shapes of leaf tip surface and ground in grassland were determined by unmanned aerial vehicle (UAV)-SfM, pole camera-SfM, and hand-held LiDAR, before and after grass harvesting. Grass height was most accurately estimated using the difference between the maximum value of the point cloud before harvesting, and the minimum value of the point cloud after harvesting, when converting from the point cloud to digital surface model (DSM). We confirmed that the grass height estimation accuracy was the highest in DSM, with a resolution of 50–100 mm for SfM and 20 mm for LiDAR, when the grass width was 10 mm. We also found that the error of the estimated value by LiDAR was about half of that by SfM. As a result, we evaluated the influence of the data conversion method (from point cloud to DSM), and the measurement method on the accuracy of grass height measurement, using SfM and LiDAR.
机译:植物高度是草地增长的关键指标。然而,其具有传统标尺的高空间密度的精确测量是耗时和昂贵的。我们使用来自运动(SFM)的结构和便携式光检测和测距(LIDAR)系统的结构估计了高精度和速度的草高。草地上的叶尖表面和地面的形状由无人驾驶飞行器(UAV)-SFM,极相机-SFM和手持式激光器,草收获之前和之后确定。使用从点云到数字表面模型(DSM)转换时,使用收获前点云的最大值与点云的最大值与点云的最小值之间最精确估计草高。我们确认草高估计精度是DSM中最高的,分辨率为50-100 mm的SFM,LIDAR为20毫米,当草宽10毫米时。我们还发现,LIDAR的估计值的错误大约是SFM的一半。结果,我们评估了数据转换方法(从点云到DSM)的影响,以及使用SFM和LIDAR的草高测量精度的测量方法。

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