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首页> 外文期刊>Biosystems Engineering >An algorithm to automate the filtering and classifying of 2D LiDAR data for site-specific estimations of canopy height and width in vineyards
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An algorithm to automate the filtering and classifying of 2D LiDAR data for site-specific estimations of canopy height and width in vineyards

机译:一种算法,用于自动化的滤网和葡萄园顶层高度和宽度的特定网站特定估算的滤波和分类

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摘要

The 3D characterisation of individual vine canopies with a LiDAR sensor requires point cloud classification. A Bayesian point cloud classification algorithm (BPCC) is proposed that combines an automatic filtering method (AFM) and a classification method based on clustering to process LiDAR data. Data were collected on several grape varieties with two different modes of training. To evaluate the quality of the BPCC algorithm and its influence on the estimation of canopy parameters (height and width), it was compared to an expert manual method and to an established semi-automatic research method requiring interactive pre-treatment (PROTOLIDAR). The results showed that the AFM filtering was similar to the expert manual method and retained on average 9% more points than the PROTOLIDAR method over the whole growing season. Estimates of vegetation height and width that were obtained from classification of the AFM-filtered LiDAR data were strongly correlated with estimates made by the PROTOLIDAR method (R-2 = 0.94 and 0.89, respectively). The classification algorithm was most effective if its parameters were permitted to be variable through the season. Optimal values for classification parameters were established for both height and width at different phenological stages. On the whole, the results demonstrated that although the BPCC algorithm operates at a higher level of automation than PROTOLIDAR, the estimates of canopy dimensions in the vineyards were equivalent. BPCC enables the possibility to adjust the spray rate according to local vegetative characteristics in an automated way. (C) 2020 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:具有LIDAR传感器的单个藤檐篷的3D表征需要点云分类。提出了一种基于聚类来处理LIDAR数据的自动滤波方法(AFM)和分类方法的贝叶斯点云分类算法(BPCC)。在几种不同的训练模式上收集了几种葡萄品种的数据。为了评估BPCC算法的质量及其对冠层参数估计的影响(高度和宽度),它与专家手动方法和建立的半自动研究方法进行比较,需要互动预处理(Protolidar)。结果表明,AFM滤波与专家手动方法类似,并且在整个生长季节上的Protolidar方法预先保留了9%的点。从AFM过滤的LIDAR数据分类获得的植被高度和宽度的估计与原粒半径法(R-2 = 0.94和0.89分别)的估计强烈地相关。如果允许其通过本赛季的参数可变,则分类算法最有效。为不同鉴别阶段的高度和宽度建立了分类参数的最佳值。总的来说,结果表明,尽管BPCC算法在比Protolidar更高的自动化水平,但葡萄园中的冠层尺寸的估计量是等同的。 BPCC能够以自动化方式根据当地营养特性调节喷射率。 (c)2020 IAGRE。 elsevier有限公司出版。保留所有权利。

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