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A novel data-driven approach to tree species classification using high density multireturn airborne lidar data

机译:使用高密度多返回机载激光雷达数据的新型数据驱动的树种分类方法

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Tree species information is crucial for accurate forest parameter estimation. Small footprint high density multi-return Light Detection and Ranging (LiDAR) data contain a large amount of structural details for modelling and thus distinguishing individual tree species. To fully exploit the potential of these data, we propose a data-driven tree species classification approach based on a volumetric analysis of single-tree-point-cloud that extracts features that are able to characterize both the internal and the external crown structure. The method captures the spatial distribution of the LiDAR points within the crown by generating a feature vector representing the three-dimensional (3D) crown information. Each element in the feature vector uniquely corresponds to an Elementary Quantization Volume (EQV) of the crown. Three strategies have been defined to generate unique EQVs that model different representations of the crown components. The classification is performed by using a Support Vector Machines (C-SVM) classifier using the histogram intersection kernel that has the enhanced ability to give maximum preference to the key features in high dimensional feature space. All the experiments were performed on a set of 200 trees belonging to Norway Spruce, European Larch, Swiss Pine, and Silver Fir (i.e., 50 trees per species). The classifier is trained using 120 trees and tested on an independent set of 80 trees. The proposed method outperforms the classification performance of the state-of-the-art method used for comparison.
机译:树种信息对于准确的森林参数估计至关重要。小尺寸的高密度多回波光检测和测距(LiDAR)数据包含大量的结构细节,可用于建模,从而区分出各个树种。为了充分利用这些数据的潜力,我们提出了一种基于数据驱动的树种分类方法,该方法基于对单树点云的体积分析,提取出能够表征内部和外部树冠结构的特征。该方法通过生成代表三维(3D)冠状信息的特征向量来捕获冠状区域内LiDAR点的空间分布。特征向量中的每个元素唯一地对应于树冠的基本量化体积(EQV)。已经定义了三种策略来生成独特的EQV,这些EQV对表冠成分的不同表示建模。通过使用支持向量机(C-SVM)分类器来执行分类,该分类器使用直方图相交内核,该直方图相交内核具有增强的功能,可以对高维特征空间中的关键特征给予最大的优先选择。所有实验都是在属于挪威云杉,欧洲落叶松,瑞士松树和银杉的200棵树上进行的(即每个物种50棵树)。分类器使用120棵树进行训练,并在80棵树的独立集合上进行测试。所提出的方法优于用于比较的最新方法的分类性能。

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