首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Combination of individual tree detection and area-based approach in imputation of forest variables using airborne laser data
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Combination of individual tree detection and area-based approach in imputation of forest variables using airborne laser data

机译:结合个体树木检测和基于区域的方法利用机载激光数据估算森林变量

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The two main approaches to deriving forest variables from laser-scanning data are the statistical area-based approach (ABA) and individual tree detection (ITD). With ITD it is feasible to acquire single tree information, as in field measurements. Here, ITD was used for measuring training data for the ABA. In addition to automatic ITD (ITD_(auto)), we tested a combination of ITD_(auto) and visual interpretation (ITD_(visuai)). ITD_(visuai) had two stages: in the first, ITD_(auto) was carried out and in the second, the results of the ITD_(auto) were visually corrected by interpreting three-dimensional laser point clouds. The field data comprised 509 circular plots (r- 10 m) that were divided equally for testing and training. ITD-derived forest variables were used for training the ABA and the accuracies of the k-most similar neighbor (k-MSN) imputations were evaluated and compared with the ABA trained with traditional measurements. The root-mean-squared error (RMSE) in the mean volume was 24.8%, 25.9%, and 27.2% with the ABA trained with field measurements, ITD_(auto), and ITD_(visuai), respectively. When ITD methods were applied in acquiring training data, the mean volume, basal area, and basal area-weighted mean diameter were underestimated in the ABA by 2.7-9.2%. This project constituted a pilot study for using ITD measurements as training data for the ABA. Further studies are needed to reduce the bias and to determine the accuracy obtained in imputation of species-specific variables. The method could be applied in areas with sparse road networks or when the costs of fieldwork must be minimized.
机译:从激光扫描数据得出森林变量的两种主要方法是基于统计区域的方法(ABA)和个体树检测(ITD)。使用ITD,像在现场测量中一样,获取单棵树信息是可行的。在这里,ITD用于测量ABA的训练数据。除了自动ITD(ITD_(auto)),我们还测试了ITD_(auto)和视觉解释(ITD_(visuai))的组合。 ITD_(visuai)有两个阶段:第一,执行ITD_(auto),第二,通过解释三维激光点云在视觉上校正ITD_(auto)的结果。现场数据包括509个圆图(r-10 m),这些圆图被均分以进行测试和训练。使用ITD衍生的森林变量来训练ABA,并评估k个最相似邻居(k-MSN)估算的准确性,并与采用传统测量方法训练的ABA进行比较。使用现场测量训练的ABA,ITD_(自动)和ITD_(visuai),平均体积的均方根误差(RMSE)分别为24.8%,25.9%和27.2%。当使用ITD方法获取训练数据时,ABA中的平均体积,基础面积和基础面积加权平均直径被低估了2.7-9.2%。该项目构成了一项将ITD测量值用作ABA训练数据的试点研究。需要进行进一步的研究以减少偏差并确定归因于物种特定变量的准确性。该方法可用于道路网络稀疏的地区或必须将实地调查的成本降至最低的地区。

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