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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A new method for 3D individual tree extraction using multispectral airborne LiDAR point clouds
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A new method for 3D individual tree extraction using multispectral airborne LiDAR point clouds

机译:利用多光谱机载LiDAR点云提取3D单树的新方法

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Characterization of individual trees is essential for many applications in forest management and ecology. Previous studies relied on single tree detection from monochromatic wavelength airborne laser scanning (ALS) systems and they focused on the use of the geometric spatial information of the point clouds (Le., X, Y, and Z coordinates). However, there is quite often a difficulty dealing with clumped trees when only the geometric spatial information is considered. The emergence of multispectral LiDAR sensors provides a new solution for individual tree structure acquisition. The aim of this paper is to investigate the performance of multispectral ALS data for delineating individual trees which are challenging by using the monochromatic wavelength ALS system. The proposed workflow utilizes the mean shift segmentation method on different feature spaces for crown isolation. In addition, both spatial domain and multispectral domain are used to refine the under-segmentation crown segments. Ten plots (2 sets of different structural complexity) located in the dense coniferous forest area in Tobermory, Ontario, Canada are selected as experiment data. Results show that the developed method correctly detects 88% and 82% of the dominant trees with and without multispectral information, respectively. Compared with segmentation using geometric spatial information solely, the main improvements are achieved for clumped tree segment with the distinguished multispectral features. This study demonstrates that multi spectral airborne laser scanning data is more capable for individual tree delineation than monochromatic wavelength laser scanning data in dealing with forests with clumped crowns in dense forests.
机译:树木的特性对于森林管理和生态学中的许多应用至关重要。先前的研究依赖于单色波长机载激光扫描(ALS)系统中的单树检测,并且他们专注于点云的几何空间信息(Le,X,Y和Z坐标)的使用。但是,当仅考虑几何空间信息时,通常很难处理结块的树木。多光谱LiDAR传感器的出现为单个树状结构的采集提供了新的解决方案。本文的目的是研究通过使用单色波长ALS系统来描述具有挑战性的树木的多光谱ALS数据的性能。所提出的工作流程在不同特征空间上利用均值漂移分割方法进行冠隔离。另外,空间域和多光谱域都用于细化欠分割冠冠段。选择位于加拿大安大略省托伯莫里的针叶林密集地区的十个样地(两组不同的结构复杂性)作为实验数据。结果表明,所开发的方法正确地检测出有和没有多光谱信息的优势树分别为88%和82%。与仅使用几何空间信息进行分割相比,具有明显的多光谱特征的簇状树段实现了主要改进。这项研究表明,多光谱的机载激光扫描数据在处理茂密森林中冠状成团的森林时比单色波长激光扫描数据更有能力进行单个树的描绘。

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