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Fusion of Hyperspectral and LiDAR Data Using Morphological Attribute Profiles

机译:使用形态属性概况融合高光谱和激光雷达数据

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In this paper we investigate the application of Morphological Attribute Profiles to both hyperspectral and LiDAR data to fuse spectral, spatial and elevation data for classification purposes. While hyperspectral data provides a wealth of spectral information, multi-return LiDAR data provides geometrical information on the elevation and the structure of the objects on the ground as well as a measure of their laser cross section. Therefore, hyperspectral and LiDAR data are complementary information sources and potentially their joint analysis can improve classification accuracies. Morphological Profiles (MPs) and Morphological Attribute Profiles (MAPs) have been successfully used as tools to combine spectral and spatial information for classification of remote sensing data. MPs and MAPs can also be used with the LiDAR data to reduce the irregularities in the LiDAR measurements which are inherent with the sampling strategy used in the acquisition process.. Experiments carried out on hyperspectral and LiDAR data acquired on a urban area of the city of Trento (Italy) point out the effectiveness of MAPs for the classification process.
机译:在本文中,我们研究了形态属性概况的应用于高光谱和LIDAR数据,以进行分类目的的融合频谱,空间和高程数据。虽然高光谱数据提供了丰富的光谱信息,但多返回LIDAR数据提供了关于地面上的物体的图像的几何信息以及其激光横截面的测量。因此,Hyperspectral和LIDAR数据是互补信息来源,并且可能其关节分析可以提高分类精度。形态轮廓(MPS)和形态学属性配置文件(MAPS)已成功用作组合频谱和空间信息的工具,以进行遥感数据的分类。 MPS和MAPS也可以与LIDAR数据一起使用,以减少LIDAR测量中的不规则性,其具有采集过程中使用的采样策略所固有的。在城市城市地区获得的高光谱和激光雷达数据进行实验特伦托(意大利)指出了地图的分类过程的有效性。

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