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Detection of 3-D Individual Trees in Urban Areas by Combining Airborne LiDAR Data and Imagery

机译:结合机载LiDAR数据和影像检测市区3-D树木

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摘要

An automated approach to extracting 3-D individual trees in urban areas is developed based on jointly analyzing airborne LiDAR data and imagery. First, the spectral, geometric, and spatial context attributes are defined and integrated at the LiDAR point level. Then, a binary AdaBoost classifier is used to separate points belonging to trees from other urban objects. Once the classification is completed, a spectral clustering method by applying the normalized cuts to a graph structure of point clouds of the vegetation class is performed to segment single trees. The geometric and spectral attributes play an important role in establishing the weight matrix, which measures the similarity between every two graph nodes and determines the cut function. The performance of the approach is validated by real urban data sets, which were acquired over two European cities. The results show that 3-D individual trees can be detected with mean accuracy of up to 0.65 and 0.12 m for tree position and height. Based on the results of this work, geometric and biophysical properties of individual trees can be further retrieved.
机译:在共同分析机载LiDAR数据和图像的基础上,开发了一种自动提取市区3-D树木的方法。首先,在LiDAR点级别定义和集成光谱,几何和空间上下文属性。然后,使用二进制AdaBoost分类器将属于树木的点与其他城市对象分开。一旦分类完成,通过将归一化的切口应用于植被类的点云的图结构的光谱聚类方法被执行以分割单棵树。几何和光谱属性在建立权重矩阵中起着重要作用,权重矩阵可测量每两个图节点之间的相似度并确定割函数。该方法的性能已通过在两个欧洲城市中获取的真实城市数据集进行了验证。结果表明,对于树木的位置和高度,可以检测到3-D单个树木,平均准确度分别高达0.65和0.12 m。根据这项工作的结果,可以进一步获取单个树木的几何和生物物理特性。

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