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SRTM DEM Correction in Vegetated Mountain Areas through the Integration of Spaceborne LiDAR, Airborne LiDAR, and Optical Imagery

机译:通过整合星载LiDAR,机载LiDAR和光学图像对植被山区进行SRTM DEM校正

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The Shuttle Radar Topography Mission (SRTM) digital elevation model (DEM) is one of the most complete and frequently used global-scale DEM products in various applications. However, previous studies have shown that the SRTM DEM is systematically higher than the actual land surface in vegetated mountain areas. The objective of this study is to propose a procedure to calibrate the SRTM DEM over large vegetated mountain areas. Firstly, we developed methods to estimate canopy cover from aerial imagery and tree height from multi-source datasets (i.e., field observations, airborne light detection and ranging (LiDAR) data, Geoscience Laser Altimeter System (GLAS) data, Landsat TM imagery, climate surfaces, and topographic data). Then, the airborne LiDAR derived DEM, covering ~5% of the study area, was used to evaluate the accuracy of the SRTM DEM. Finally, a regression model of the SRTM DEM error depending on tree height, canopy cover, and terrain slope was developed to calibrate the SRTM DEM. Our results show that the proposed procedure can significantly improve the accuracy of the SRTM DEM over vegetated mountain areas. The mean difference between the SRTM DEM and the LiDAR DEM decreased from 12.15 m to −0.82 m, and the standard deviation dropped by 2 m.
机译:航天飞机雷达地形任务(SRTM)数字高程模型(DEM)是在各种应用中最完整,最常用的全球规模DEM产品之一。但是,以前的研究表明,SRTM DEM系统地高于植被山区的实际土地面积。这项研究的目的是提出一种在大型植被山区校准SRTM DEM的程序。首先,我们开发了从航空影像和多源数据集(例如,野外观测,机载光检测和测距(LiDAR)数据,地球科学激光测高仪系统(GLAS)数据,Landsat TM影像,气候)的树木高度估计冠层覆盖率的方法曲面和地形数据)。然后,使用机载LiDAR衍生的DEM(覆盖研究区域的5%)来评估SRTM DEM的准确性。最后,根据树高,树冠覆盖和地形坡度开发了SRTM DEM误差的回归模型,以校准SRTM DEM。我们的结果表明,所提出的程序可以显着提高SRTM DEM在无植被山区的准确性。 SRTM DEM和LiDAR DEM之间的平均差从12.15 m减小到-0.82 m,标准偏差下降了2 m。

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