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A data-driven identification of growth-model classes for the adaptive estimation of single-tree stem diameter in LiDAR data

机译:基于数据驱动的生长模型类别识别,用于自适应估计LiDAR数据中的单树茎直径

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In this paper we present a growth-model based approach to the accurate estimation of stem diameter at single tree level by using high-density LiDAR data. First, we detect classes of trees characterized by different growth conditions by means of a data-driven inference process. To this end, all the environmental factors that can affect the growth of the tree (i.e., forest density and topography) are modeled and analyzed. Second, for each detected growth-model class a tailored regression function is trained to adapt the model on the considered class. The crown structure, the topography and the forest density are considered to accurately retrieve the stem diameter. Experiments carried out in mountainous scenario characterized by complex morphology and a wide range of soil fertility demonstrate the effectiveness of the proposed method.
机译:在本文中,我们提出了一种基于生长模型的方法,该方法可通过使用高密度LiDAR数据准确估计单棵树的茎干直径。首先,我们通过数据驱动的推理过程来检测以不同生长条件为特征的树木类别。为此,对所有可能影响树木生长的环境因素(即森林密度和地形)进行建模和分析。其次,对于每个检测到的增长模型类别,训练定制的回归函数以使模型适应所考虑的类别。树冠结构,地形和森林密度被认为可以准确地获取茎的直径。以山区为例,以复杂的形态和广泛的土壤肥力为特征的实验证明了该方法的有效性。

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