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A novel approach to internal crown characterization for coniferous tree species classification

机译:针叶树种类分类的内部冠表特征的新方法

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The knowledge about individual trees in forest is highly beneficial in forest management. High density small foot- print multi-return airborne Light Detection and Ranging (LiDAR) data can provide a very accurate information about the structural properties of individual trees in forests. Every tree species has a unique set of crown structural characteristics that can be used for tree species classification. In this paper, we use both the internal and external crown structural information of a conifer tree crown, derived from a high density small foot-print multi-return LiDAR data acquisition for species classification. Considering the fact that branches are the major building blocks of a conifer tree crown, we obtain the internal crown structural information using a branch level analysis. The structure of each conifer branch is represented using clusters in the LiDAR point cloud. We propose the joint use of the k-means clustering and geometric shape fitting, on the LiDAR data projected onto a novel 3-dimensional space, to identify branch clusters. After mapping the identified clusters back to the original space, six internal geometric features are estimated using a branch-level analysis. The external crown characteristics are modeled by using six least correlated features based on cone fitting and convex hull. Species classification is performed using a sparse Support Vector Machines (sparse SVM) classifier.
机译:关于森林中各种树木的知识在森林管理中非常有益。高密度小脚印多返空气传播光检测和测距(LIDAR)数据可以提供关于森林中各树结构性质的非常准确的信息。每种树种都有一套独特的冠结构特征,可用于树种分类。在本文中,我们使用针叶树冠的内部和外部冠结构信息,从高密度小脚印多返回LIDAR数据采集进行物种分类。考虑到分支是针叶树冠的主要构造块,我们使用分支水平分析获得内部冠冠结构信息。每个针叶树分支的结构在LIDAR点云中使用簇表示。我们提出了K-Means集群和几何形状配件的关节使用,在投影到新型三维空间上的LIDAR数据上,以识别分支簇。将识别的集群映射回原始空间后,使用分支级别分析估计六个内部几何特征。通过使用基于锥形配件和凸壳的六个最小相关特征来建模外冠特性。使用稀疏支持向量机(稀疏SVM)分类器进行物种分类。

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