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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EVALUATION OF MULTIPLE LINEAR REGRESSION MODEL TO OBTAIN DBH OF TREES USING DATA FROM A LIGHTWEIGHT LASER SCANNING SYSTEM ON-BOARD A UAV
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EVALUATION OF MULTIPLE LINEAR REGRESSION MODEL TO OBTAIN DBH OF TREES USING DATA FROM A LIGHTWEIGHT LASER SCANNING SYSTEM ON-BOARD A UAV

机译:利用无人机上轻型激光扫描系统的数据对树木获得DBH的多线性回归模型进行评估

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摘要

Vegetation mapping requires information about trees and underlying vegetation to ensure proper management of the urban and forest environments. This information can be obtained using remote sensors. For instance, lightweight systems composed of Unmanned Aerial Vehicles (UAVs) as a platform, low-cost laser units and the recent miniaturized navigation sensors (positioning and orientation) have become a very feasible and flexible alternative. Low-cost UAV-ALS systems usually provide centimetric accuracy in altimetry, according to flight data configuration and quality of observations. This paper presents a feasibility study of a lightweight ALS system on-board a UAV to estimate the diameters at breast height (DBH) of urban trees using LiDAR data and linear regression model. A mathematical model correlating the crown diameter and height of the tree to estimate the DBH was developed based on a linear regression with stepwise method. The stepwise linear regression method enables the addition and the removal of predictor variables through statistical tests. The tree samples were separated in two classes (A and B), according to the diametric distribution. These sample classes were used to define two linear regression models. The regression models that best fit the samples achieved an Rsup2/sup adj value above 94% for class A and B, which demonstrates the closeness between the samples and the developed mathematical models. The quality control of the proposed regression models was performed comparing the DBH values estimated and directly measured (reference). DBH of the trees were estimated with an average discrepancy of 8.7?cm.
机译:植被测绘需要有关树木和底层植被的信息,以确保对城市和森林环境进行适当管理。可以使用远程传感器获取此信息。例如,由无人飞行器(UAV)作为平台,低成本的激光装置和最近的小型化导航传感器(定位和方向)组成的轻型系统已成为一种非常可行且灵活的替代方案。低成本的UAV-ALS系统通常根据飞行数据配置和观测质量在测高中提供厘米级精度。本文介绍了一种无人机上轻型ALS系统的可行性研究,该系统使用LiDAR数据和线性回归模型估算城市树木的胸高(DBH)直径。基于逐步回归的线性回归,建立了将树冠直径和树高相关联以估计DBH的数学模型。逐步线性回归方法可通过统计检验添加和删除预测变量。根据直径分布,将树样本分为两类(A和B)。这些样本类别用于定义两个线性回归模型。对于A类和B类,最适合样本的回归模型的R 2 adj值超过94%,这表明样本与已开发的数学模型之间的接近度。建议的回归模型的质量控制是通过比较估计的DBH值和直接测量的DBH值(参考)进行的。估计树木的DBH平均差异为8.7?cm。

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