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Evaluation of mobile 3D light detection and ranging based canopy mapping system for tree fruit crops

机译:用于树木果岭作物的移动3D光检测和范围的冠层映射系统评价

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In this study, 3D light detection and ranging (LiDAR) and an inertial measurement unit (IMU) were integrated on a ground vehicle for mapping tree fruit crops. A custom interface was developed in robot operating system for synchronous communication with hardware modules and for continuous field data collection. Point cloud data processing methods were developed for reconstruction and estimation of canopy parameters including height, voxel grid and convex hull methods-based volume and gap fractions in the canopy. The system was tested in apple tree and grapevine canopies. Overall, the mobile 3D LiDAR mapping system provided realistic representation of the canopy compared to the manual methods. For apple trees, the manual canopy volume measurements were strongly correlated to volume derived from the mobile 3D LiDAR mapping system (Convex hull: r = 0.81, Voxel grid: r = 0.51). The voxel grid method adequately considered gaps in the canopy during volume estimation and performed better than the convex hull method. The system was also evaluated for estimating canopy growth in grapevines with different rates of subsurface irrigation treatments. Deficit irrigation treatments did not show any significant effect on the canopy growth due to a high moisture content in the soil, resulting from high winter snowpack prior to that particular season. Nonetheless, the 3D LiDAR mapping system was able to aid in visualization of the temporal changes in canopy growth during the growing season. Change in vine canopy volume for the treatments followed a similar trend to the area ratio estimated from normalized differential vegetation index images derived from small unmanned aerial system based multispectral imagery. Overall, the 3D LiDAR based canopy mapping system and pertinent data mining algorithms can be the useful tool to the growers in rapid assessment of perennial fruit crop canopies for real-time management decision making.
机译:在本研究中,3D光检测和测距(LIDAR)和惯性测量单元(IMU)集成在地面车辆上,用于映射树果作物。在机器人操作系统中开发了自定义接口,用于与硬件模块同步通信和连续现场数据收集。积分云数据处理方法是开发用于重建和估计的冠层参数,包括高度,体素网格和凸壳方法的基于冠层的体积和间隙分数。该系统在苹果树和葡萄檐篷中进行了测试。总的来说,移动3D LIDAR映射系统与手动方法相比提供了冠层的逼真表示。对于苹果树,手动冠层体积测量与来自移动3D LIDAR映射系统的体积强烈相关(凸船:r = 0.81,体素网格:r = 0.51)。体素网格方法在体积估计期间充分考虑了树冠中的间隙,并且比凸壳方法更好地执行。还评估了该系统,用于估计葡萄园的冠层生长,具有不同的地下灌溉处理率。缺陷灌溉治疗未对土壤中的高水分含量显示对树冠增长的任何显着影响,这是由特定季节之前的高冬季积雪引起的。尽管如此,3D LIDAR映射系统能够帮助在生长季节期间可视化冠层增长的时间变化。葡萄冠层的变化对于处理遵循类似的趋势,该趋势与来自基于小型无人的空中系统的多光谱图像的归一化差分植被指数图像估计的面积比相似。总的来说,基于3D激光亚的冠层映射系统和相关数据挖掘算法可以是种植者在常年果实作物Canopies的快速评估中的有用工具,用于实时管理决策。

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