首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >CMPC: An Innovative Lidar-Based Method to Estimate Tree Canopy Meshing-Profile Volumes for Orchard Target-Oriented Spray
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CMPC: An Innovative Lidar-Based Method to Estimate Tree Canopy Meshing-Profile Volumes for Orchard Target-Oriented Spray

机译:CMPC:一种基于创新的激光雷达的方法来估算果园面向目标喷雾的树冠啮合型材

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摘要

Canopy characterization detection is essential for target-oriented spray, which minimizes pesticide residues in fruits, pesticide wastage, and pollution. In this study, a novel canopy meshing-profile characterization (CMPC) method based on light detection and ranging (LiDAR)point-cloud data was designed for high-precision canopy volume calculations. First, the accuracy and viability of this method were tested using a simulated canopy. The results show that the CMPC method can accurately characterize the 3D profiles of the simulated canopy. These simulated canopy profiles were similar to those obtained from manual measurements, and the measured canopy volume achieved an accuracy of 93.3%. Second, the feasibility of the method was verified by a field experiment where the canopy 3D stereogram and cross-sectional profiles were obtained via CMPC. The results show that the 3D stereogram exhibited a high degree of similarity with the tree canopy, although there were some differences at the edges, where the canopy was sparse. The CMPC-derived cross-sectional profiles matched the manually measured results well. The CMPC method achieved an accuracy of 96.3% when the tree canopy was detected by LiDAR at a moving speed of 1.2 m/s. The accuracy of the LiDAR system was virtually unchanged when the moving speeds was reduced to 1 m/s. No detection lag was observed when comparing the start and end positions of the cross-section. Different CMPC grid sizes were also evaluated. Small grid sizes (0.01 m × 0.01 m and 0.025 m × 0.025 m) were suitable for characterizing the finer details of a canopy, whereas grid sizes of 0.1 m × 0.1 m or larger can be used for characterizing its overall profile and volume. The results of this study can be used as a technical reference for the development of a LiDAR-based target-oriented spray system.
机译:天底表征检测对于面向目标的喷雾至关重要,这使水果中的农药残留物最小化,可使农药残留物,杀虫剂浪费和污染。在这项研究中,一种新型的天篷啮合轮廓表征(CMPC)方法基于光检测和测距(LIDAR)点群数据被设计用于高精度篷体积计算。首先,使用模拟冠层测试该方法的准确性和可行性。结果表明,CMPC方法可以精确地表征模拟冠层的3D轮廓。这些模拟的冠层型材类似于手动测量中获得的盖型型材,并且测量的冠层体积达到了93.3%的精度。其次,通过通过CMPC获得冠层3D立体图和横截面轮廓的场实验来验证该方法的可行性。结果表明,3D立体图与树冠呈现出高度相似性,尽管边缘存在一些差异,冠层稀疏。 CMPC衍生的横截面轮廓匹配良好的测量结果。当LIDAR以1.2 m / s的移动速度检测到树冠冠层时,CMPC方法达到了96.3%的精度。当移动速度降至1米/米时,LIDAR系统的准确性几乎不变。在比较横截面的开始和结束位置时,不会观察到检测滞后。还评估了不同的CMPC网格尺寸。小栅格尺寸(0.01米×0.01米和0.025 m×0.025米)适用于冠层的细节,而0.1 m×0.1米或更大的电网尺寸可用于表征其整体轮廓和体积。该研究的结果可用作开发基于LIDAR的目标喷雾系统的技术参考。

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