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Integrating area-based and individual tree detection approaches for estimating tree volume in plantation inventory using aerial image and airborne laser scanning data

机译:使用空中图像和空气传播激光扫描数据集成基于区域和单独的树检测方法,用于估计种植园库存中的树木体积

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摘要

Remote sensing has been increasingly used to assist forest inventory. Airborne Laser Scanning (ALS) systems can accurately estimate tree height in forests, and are being combined with more traditional optical images that provide further details about the horizontal structure of forests. To predict forest attributes two main techniques are applied to process ALS data: the Area Based Approach (ABA), and the Individual Tree Detection (ITD). The first part of this study was focused on the effectiveness of integrating ALS data and aerial imagery to estimate the wood volume in Eucalyptus urograndis plantations using the ABA approach. To this aim, we analyzed three different approaches: (1) using only ALS points cloud metrics (RMSE = 6.84%); (2) using only the variables derived from aerial images (RMSE = 8.45%); and (3) the integration of both 1 and 2 (RMSE = 5.23%), which underestimated the true volume by 2.98%. To estimate individual tree volumes we first detected individual trees and corrected the density estimate for detecting mean difference, with an error of 0.37 trees per hectare and RMSE of 12.68%. Next, we downscaled the total volume prediction to single tree level. Our approach showed a better result of the overall volume in comparison with the traditional forest inventory. There is a remarkable advantage in using the Individual Tree Detection approach, as it allows for a spatial representation of the number of trees sampled, as well as their volume per unit area - an important metric in the management of forest resources.
机译:遥感已经被越来越多地用于协助森林资源。机载激光扫描(ALS)系统可精确地估计在森林树高,并正在与提供关于森林的水平结构的进一步细节更传统的光学图像组合。为了预测森林属性两个主要的技术应用于过程ALS数据:基于区域法(ABA)和个人树检测(ITD)。这项研究的第一部分侧重于整合ALS数据和航空影像来估计使用ABA的方法桉树人工林urograndis的木材蓄积量的有效性。为了达到这个目的,我们分析了三种不同的方法:仅使用ALS点云度量(RMSE = 6.84%)(1); (2)仅使用来自航空图像(RMSE = 8.45%)导出的变量;和(3)的两个1和2(RMSE = 5.23%),其由2.98%低估了真实体积的整合。为了估计个体树体积我们首先检测到的个体树和修正的用于检测平均差异,每公顷和12.68%RMSE 0.37树木的错误密度估计。接下来,我们缩小规模的总量预测一棵树的水平。我们的做法显示,与传统的森林资源清查相比,总体积的更好的结果。有一个显着的优势,在使用个人树检测方法,因为它允许对采样株数的空间表示,以及每单位面积其体积 - 森林资源管理的一项重要指标。

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