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Top-Down Approach to the Automatic Extraction of Individual Trees from Scanned Scene Point Cloud Data

机译:自上而下的方法从扫描的场景点云数据中自动提取单个树

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Urban trees are essential elements in outdoor scenes recorded via terrestrial laser scanning. Although considerable interest has been centered on tree detection and reconstruction in recent years, trees cannot be easily extracted from dense and unorganized data because of the complexity and diversity of trees. In this paper, we present a top-down approach for detecting trees from point cloud data acquired for dense urban areas. Appropriate feature subsets are chosen, and then the candidate tree clusters are selected via a binary classification. After distinguishing the 3D points belonging to tree-like objects, individual trees are extracted by spectral clustering. Furthermore, a weighted constraint rule is proposed to refine the individual tree clusters. The methodology is tested on five real-world datasets that include different varieties of trees. The results reveal that most of the individual trees can be correctly detected and extracted. The results are quantitatively evaluated and reveal a global F1 value of approximately 97 percent and a precision of approximately 98 percent. Comparative analysis on the datasets is also provided to prove the effectiveness of our proposed method.
机译:在通过地面激光扫描记录的室外场景中,城市树木是必不可少的元素。尽管近年来人们对树木的检测和重建有相当大的兴趣,但是由于树木的复杂性和多样性,无法轻易地从密集且无组织的数据中提取树木。在本文中,我们提出了一种自上而下的方法,用于从密集城市地区获取的点云数据中检测树木。选择适当的特征子集,然后通过二进制分类选择候选树簇。在区分属于树状对象的3D点之后,通过光谱聚类提取单个树。此外,提出了加权约束规则以细化单个树簇。该方法论在包括不同树种的五个真实世界数据集上进行了测试。结果表明,大多数单个树都可以正确检测和提取。对结果进行定量评估,发现F1值约为97%,精度约为98%。还提供了对数据集的比较分析,以证明我们提出的方法的有效性。

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