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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Large tree diameter distribution modelling using sparse airborne laser scanning data in a subtropical forest in Nepal
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Large tree diameter distribution modelling using sparse airborne laser scanning data in a subtropical forest in Nepal

机译:尼泊尔亚热带森林中稀疏机载激光扫描数据的大树径分布建模

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摘要

Large-diameter trees (taking DBH > 30 cm to define large trees) dominate the dynamics, function and structure of a forest ecosystem. The aim here was to employ sparse airborne laser scanning (ALS) data with a mean point density of 0.8 m(-2) and the non-parametric k-most similar neighbour (k-MSN) to predict tree diameter at breast height (DBH) distributions in a subtropical forest in southern Nepal. The specific objectives were: (1) to evaluate the accuracy of the large-tree fraction of the diameter distribution; and (2) to assess the effect of the number of training areas (sample size, n) on the accuracy of the predicted tree diameter distribution. Comparison of the predicted distributions with empirical ones indicated that the large tree diameter distribution can be derived in a mixed species forest with a RMSE% of 66% and a bias% of - 1.33%. It was also feasible to downsize the sample size without losing the interpretability capacity of the model. For large-diameter trees, even a reduction of half of the training plots (n = 250), giving a marginal increase in the RMSE% (1.12-1.97%) was reported compared with the original training plots (n = 500). To be consistent with these outcomes, the sample areas should capture the entire range of spatial and feature variability in order to reduce the occurrence of error. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:大直径树木(使DBH> 30 cm来定义大树)主导着森林生态系统的动力,功能和结构。这里的目的是采用平均点密度为0.8 m(-2)的稀疏机载激光扫描(ALS)数据和非参数k最相似邻居(k-MSN)来预测乳房高度(DBH)时的树径)分布在尼泊尔南部的亚热带森林中。具体目标是:(1)评价直径分布的大树部分的准确性; (2)评估训练区域数量(样本大小,n)对预测树径分布准确性的影响。将预测分布与经验分布进行比较表明,大树径分布可以在混合物种森林中得出,其RMSE%为66%,偏差%为-1.33%。在不损失模型的可解释能力的情况下减小样本大小也是可行的。对于大直径树木,据报道与原始训练区(n = 500)相比,甚至减少了一半的训练区(n = 250),导致RMSE%的边际增加(1.12-1.97%)。为了与这些结果保持一致,样本区域应捕获空间和特征可变性的整个范围,以减少错误的发生。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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