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利用激光雷达指标对植被下层植被进行建模。

Modelling vegetation understory cover using LiDAR metrics.

机构信息

Canadian Forest Service, Great Lakes Forestry Centre, Natural Resources Canada, Saul Ste Marie, ON, Canada.

Department of Wood and Forest Sciences, Center for forest research, Université Laval, Quebec, QC, Canada.

出版信息

PLoS One. 2019 Nov 27;14(11):e0220096. doi: 10.1371/journal.pone.0220096. eCollection 2019.

Abstract

Forest understory vegetation is an important characteristic of the forest. Predicting and mapping understory is a critical need for forest management and conservation planning, but it has proved difficult with available methods to date. LiDAR has the potential to generate remotely sensed forest understory structure data, but this potential has yet to be fully validated. Our objective was to examine the capacity of LiDAR point cloud data to predict forest understory cover. We modeled ground-based observations of understory structure in three vertical strata (0.5 m to < 1.5 m, 1.5 m to < 2.5 m, 2.5 m to < 3.5 m) as a function of a variety of LiDAR metrics using both mixed-effects and Random Forest models. We compared four understory LiDAR metrics designed to control for the spatial heterogeneity of sampling density. The four metrics were highly correlated and they all produced high values of variance explained in mixed-effects models. The top-ranked model used a voxel-based understory metric along with vertical stratum (Akaike weight = 1, explained variance = 87%, cross-validation error = 15.6%). We found evidence of occlusion of LiDAR pulses in the lowest stratum but no evidence that the occlusion influenced the predictability of understory structure. The Random Forest model results were consistent with those of the mixed-effects models, in that all four understory LiDAR metrics were identified as important, along with vertical stratum. The Random Forest model explained 74.4% of the variance, but had a lower cross-validation error of 12.9%. We conclude that the best approach to predict understory structure is using the mixed-effects model with the voxel-based understory LiDAR metric along with vertical stratum, because it yielded the highest explained variance with the fewest number of variables. However, results show that other understory LiDAR metrics (fractional cover, normalized cover and leaf area density) would still be effective in mixed-effects and Random Forest modelling approaches.

摘要

林下植被是森林的一个重要特征。预测和绘制林下植被图是森林管理和保护规划的关键需求,但迄今为止,可用的方法很难实现这一目标。激光雷达有可能生成遥感森林林下结构数据,但这一潜力尚未得到充分验证。我们的目标是检验激光雷达点云数据预测森林林下植被覆盖的能力。我们使用混合效应模型和随机森林模型,将三种垂直层次(0.5 米至<1.5 米、1.5 米至<2.5 米、2.5 米至<3.5 米)的林下结构地面观测值作为各种激光雷达指标的函数进行建模。我们比较了四种旨在控制采样密度空间异质性的林下激光雷达指标。这四个指标高度相关,在混合效应模型中都产生了很高的方差解释值。排名最高的模型使用了基于体素的林下指标和垂直层次(Akaike 权重=1,解释方差=87%,交叉验证误差=15.6%)。我们发现了激光雷达脉冲在最底层被遮挡的证据,但没有证据表明遮挡会影响林下结构的可预测性。随机森林模型的结果与混合效应模型的结果一致,即所有四种林下激光雷达指标都被确定为重要指标,同时还包括垂直层次。随机森林模型解释了 74.4%的方差,但交叉验证误差较低,为 12.9%。我们得出的结论是,预测林下结构的最佳方法是使用基于体素的林下激光雷达指标和垂直层次的混合效应模型,因为它使用了最少的变量,产生了最高的解释方差。然而,结果表明,其他林下激光雷达指标(分数覆盖、归一化覆盖和叶面积密度)在混合效应和随机森林模型方法中仍然有效。

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