论文标题
使用3D旋转LIDAR大满贯,多年生园艺作物的顶篷密度估计
Canopy Density Estimation in Perennial Horticulture Crops Using 3D Spinning Lidar SLAM
论文作者
论文摘要
我们建议使用3D射线云表示在田间尺度上为多年生园艺作物提出一种新颖的树冠密度估计解决方案。为了在现场条件下达到高空间和时间的忠诚度,我们建议将连续的3D大满贯(同时定位和映射)应用于安装在移动的农业车辆上的旋转LIDAR有效载荷(AGSCAN3D)中。 AGSCAN3D数据是通过连续的时间大满贯算法处理到全球注册的3D射线云中的。全球射线云是一种规范的数据格式(一种数字双胞胎),我们可以在一个季节和整个季节内多次比较葡萄园快照。然后,从射线云中自动提取葡萄园行,并进行新的密度计算以估计葡萄园的最大似然冠层密度。这种数字孪生的结合,以及精确提取冠层结构信息,可以在整个生长季节和一年中分析和比较整个葡萄园。在模拟和现场实验中评估了所提出的方法。在两个生长季节和64个数据收集活动中,在四个地点进行了现场实验,这些地点在葡萄园结构和葡萄藤管理方面有所不同,导致总穿过160公里,42.4公顷被扫描的藤蔓公顷,总计约93,000扫描了葡萄。我们的实验表明,与基于行业标准的基于标准的基于基于差距的解决方案相比,每个葡萄园面板的冠层密度可重复性为3.8%(相对RMSE),获取速度为5-6 km/h,估计密度的标准偏差不到一半。代码和字段数据集可在https://github.com/csiro-robotics/agscan3d上找到。
We propose a novel, canopy density estimation solution using a 3D ray cloud representation for perennial horticultural crops at the field scale. To attain high spatial and temporal fidelity in field conditions, we propose the application of continuous-time 3D SLAM (Simultaneous Localisation and Mapping) to a spinning lidar payload (AgScan3D) mounted on a moving farm vehicle. The AgScan3D data is processed through a Continuous-Time SLAM algorithm into a globally registered 3D ray cloud. The global ray cloud is a canonical data format (a digital twin) from which we can compare vineyard snapshots over multiple times within a season and across seasons. Then, the vineyard rows are automatically extracted from the ray cloud and a novel density calculation is performed to estimate the maximum likelihood canopy densities of the vineyard. This combination of digital twinning, together with the accurate extraction of canopy structure information, allows entire vineyards to be analysed and compared, across the growing season and from year to year. The proposed method is evaluated both in simulation and field experiments. Field experiments were performed at four sites, which varied in vineyard structure and vine management, over two growing seasons and 64 data collection campaigns, resulting in a total traversal of 160 kilometres, 42.4 scanned hectares of vines with a combined total of approximately 93,000 scanned vines. Our experiments show canopy density repeatability of 3.8% (Relative RMSE) per vineyard panel, for acquisition speeds of 5-6 km/h, and under half the standard deviation in estimated densities when compared to an industry standard gap-fraction based solution. The code and field datasets are available at https://github.com/csiro-robotics/agscan3d.