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Multivariate Gaussian Decomposition for Multispectral Airborne Lidar Data Classification

机译:多光谱机载激光雷达数据分类的多元高斯分解

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Multispectral airborne LiDAR technology has been available since 2014 by the first commercial multispectral airborne LiDAR sensor, Optech Titan. The sensor acquires LiDAR data at three independent wavelengths (1550, 1064 and 532 nm). This allows for the collection of a diversity of spectral information from different land objects. Recent studies have been devoted to use the spectral information of the LiDAR data along with the elevation information for classification purposes. In this paper, we present an automatic classification method for multispectral airborne LiDAR data based on the multivariate Gaussian decomposition (MVGD). A data subset covering an urban area in Oshawa, Ontario, Canada was used to test the method. The proposed method achieved an overall accuracy of 95.6% for classifying the multispectral LiDAR data into four different classes.
机译:MultiSpectral Airborne Lidar技术自2014年以来,首款商业多光谱机载LIDAR传感器,Optech Titan。传感器在三个独立波长(1550,1064和532nm)处获取LIDAR数据。这允许从不同的陆地对象中收集多样性的光谱信息。最近的研究已经致力于使用LIDAR数据的光谱信息以及用于分类目的的高程信息。在本文中,我们为基于多变量高斯分解(MVGD)的多级空气传播LIDAR数据提供了一种自动分类方法。使用加拿大安大略省Oshawa城市地区的数据子集用于测试该方法。该方法实现了95.6%的整体精度,用于将多光谱利达数据分类为四种不同的类别。

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