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首页> 外文期刊>Frontiers in Plant Science >Recruiting Conventional Tree Architecture Models into State-of-the-Art LiDAR Mapping for Investigating Tree Growth Habits in Structure
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Recruiting Conventional Tree Architecture Models into State-of-the-Art LiDAR Mapping for Investigating Tree Growth Habits in Structure

机译:在研究结构中树木生长习惯的最新LiDAR映射中招募常规树木结构模型

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Mensuration of tree growth habits is of considerable importance for understanding forest ecosystem processes and forest biophysical responses to climate changes. However, the complexity of tree crown morphology that is typically formed after many years of growth tends to render it a non-trivial task, even for the state-of-the-art 3D forest mapping technology—light detection and ranging (LiDAR). Fortunately, botanists have deduced the large structural diversity of tree forms into only a limited number of tree architecture models, which can present a-priori knowledge about tree structure, growth, and other attributes for different species. This study attempted to recruit Hallé architecture models (HAMs) into LiDAR mapping to investigate tree growth habits in structure. First, following the HAM-characterized tree structure organization rules, we run the kernel procedure of tree species classification based on the LiDAR-collected point clouds using a support vector machine classifier in the leave-one-out-for-cross-validation mode. Then, the HAM corresponding to each of the classified tree species was identified based on expert knowledge, assisted by the comparison of the LiDAR-derived feature parameters. Next, the tree growth habits in structure for each of the tree species were derived from the determined HAM. In the case of four tree species growing in the boreal environment, the tests indicated that the classification accuracy reached 85.0%, and their growth habits could be derived by qualitative and quantitative means. Overall, the strategy of recruiting conventional HAMs into LiDAR mapping for investigating tree growth habits in structure was validated, thereby paving a new way for efficiently reflecting tree growth habits and projecting forest structure dynamics.
机译:树木生长习性的测定对于理解森林生态系统过程和森林对气候变化的生物物理响应非常重要。但是,即使经过最先进的3D森林制图技术(光检测和测距(LiDAR)),通常在多年生长后形成的树冠形态的复杂性也往往使其变得不容易。幸运的是,植物学家已经将树木形式的巨大结构多样性推导出为有限数量的树木结构模型,这些模型可以提供有关树木结构,生长以及其他物种其他属性的先验知识。这项研究试图将Hallé建筑模型(HAM)纳入LiDAR映射,以研究树木在结构中的生长习惯。首先,遵循HAM表征的树结构组织规则,我们使用支持向量机分类器以交叉验证的遗忘模式运行基于LiDAR收集的点云的树种分类的核心过程。然后,基于专家知识,在比较LiDAR派生的特征参数的基础上,确定与每个分类树种相对应的HAM。接下来,从确定的HAM推导每种树木的树木生长习惯。在北方环境中生长的4种树种中,试验表明分类准确率达到了85.0%,其生长习性可以通过定性和定量手段得出。总体而言,已验证了将传统HAM引入LiDAR测绘中以研究结构中树木生长习惯的策略,从而为有效反映树木生长习性和预测森林结构动态铺平了道路。

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