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Improved Supervised Learning-Based Approach for Leaf and Wood Classification From LiDAR Point Clouds of Forests

机译:利用森林激光乐队点云改进了基于叶子和木材分类的监督

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Accurately classifying 3-D point clouds into woody and leafy components has been an interest for applications in forestry and ecology including the better understanding of radiation transfer between canopy and atmosphere. The past decade has seen an increase in the methods attempting to classify leaves and wood in point clouds based on radiometric or geometric features. However, classification purely based on radiometric features is sensor-specific, and the method by which the local neighborhood of a point is defined affects the accuracy of classification based on geometric features. Here, we present a leaf-wood classification method combining geometrical features defined by radially bounded nearest neighbors at multiple spatial scales in a machine learning model. We compared the performance of three different machine learning models generated by the random forest (RF), XGBoost, and lightGBM algorithms. Using multiple spatial scales eliminates the need for an optimal neighborhood size selection and defining the local neighborhood by radially bounded nearest neighbors makes the method broadly applicable for point clouds of varying quality. We assessed the model performance at the individual tree- and plot-level on field data from tropical and deciduous forests, as well as on simulated point clouds. The method has an overall average accuracy of 94.2% on our data sets. For other data sets, the presented method outperformed the methods in literature in most cases without the need for additional postprocessing steps that are needed in most of the existing methods. We provide the entire framework as an open-source python package.
机译:准确地将3-D点云分类为木质和叶茂成员,这是林业和生态应用的兴趣,包括更好地了解遮阳篷和大气之间的辐射转移。过去十年已经看到了试图基于辐射仪或几何特征在点云中对叶子和木材进行分类的方法的增加。然而,纯粹基于辐射特征的分类是特定于传感器的,并且定义点的本地邻域的方法影响基于几何特征的分类的准确性。这里,我们提出了一种叶木分类方法,将由机器学习模型中的多个空间尺度处的径向界限最近邻居定义的几何特征组合。我们比较了随机林(RF),XGBoost和LightGBM算法产生的三种不同机器学习模型的性能。使用多个空间尺度消除了最佳邻域大小选择并通过径向界限的最近邻居定义本地邻域使得该方法广泛适用于不同质量的点云。我们评估了来自热带和落叶林的场数据以及模拟点云的现场数据的模型性能。该方法在我们的数据集中的总体平均精度为94.2%。对于其他数据集,呈现的方法在大多数情况下在大多数情况下表现了文献中的方法,而无需在大多数现有方法中需要其他所需的后处理步骤。我们将整个框架提供为开源Python包。

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