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Radargrammetric Generation of DEMs from High Resolution Satellite SAR Imagery: A New tool for Landslide Hazard and Vulnerability Assessment

机译:来自高分辨率卫星SAR图像的Radargrammetric Modation的DEM:Landslide危险和漏洞评估的新工具

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Spatial information acquisition and analysis tools play a fundamental role to supplying the information necessary to produce landslide inventories, which represent the foundations for quantifying landslide hazard and vulnerability. In this frame, fundamental data are Digital Surface Models (DSMs) and Digital Elevation Models (DEMs). The goal of this paper is just methodological, focused to illustrate the actual potentialities of DSMs generation from high resolution satellite Synthetic Aperture Radar (SAR) imagery with a radargrammetric stereo-mapping approach. The fundamental advantage of this approach is that it can work with just a couple of images (no matter for their coherence), which can be collected in a short time (half day to quite few days) thanks to the independence of satellite radar acquisition from weather (clouds), daylight and logistic constraints (as for airborne data collection). The suite for the DSMs generation through the radargrammetric approach has been implemented in SISAR (Software per Immagini Satellitari ad Alta Risoluzione), a scientific software developed at the Geodesy and Geomatic Institute of the University of Rome “La Sapienza”. In order to demonstrate the radargrammetric mapping potentialities of high resolution SAR data, a test site was established in the area of Merano (Northern Italy), characterized by mixed morphology and land cover. The data available for the experiment were a COSMO-SkyMed SpotLight stereo pair and a LiDAR DEM, used as ground truth. An accuracy better than 3 m has been achieved in open areas and the implemented algorithm appears able to generate DSMs both over open and forested areas, where the accuracy is around 4 m. Therefore, radargrammetric generation of DSMs from high resolution satellite SAR imagery appears a valuable tool to supply topographic information for landslide inventories at different scales.
机译:空间信息获取和分析工具发挥了基本作用,以提供生产滑坡库存所需的信息,这代表了量化滑坡危害和脆弱性的基础。在此帧中,基本数据是数字表面模型(DSM)和数字高度模型(DEM)。本文的目标只是方法论,专注于用射线测图立体映射方法来说明从高分辨率卫星合成孔径雷达(SAR)图像的DSM产生的实际潜力。这种方法的基本优势在于它可以只能与几张图像(无论是他们的一致性)合作,这可以在短时间内收集(半天到很少几天),因为卫星雷达获取的独立性天气(云),日光和逻辑约束(适用于空中数据收集)。通过Radargrammetric方法的DSM生成的套件已经在Sisar(Saticalini Satellitari Ad Alta Rosoluzione)中实施,该软件是在罗马大学“La Sapienza”的大学和乔治研究所开发的科学软件。为了展示高分辨率SAR数据的Radargrammetric Metiping潜力,在梅拉诺(意大利北部)的地区建立了测试现场,其特征在于混合形态和陆地覆盖。可用于实验的数据是COSMO-SKEDMED Spotlight Stereo对和LIDAR DEM,用作地面真理。在开放区域实现的精度优于3米,所实现的算法似乎能够在开放和森林区域产生DSM,精度约为4米。因此,来自高分辨率卫星SAR图像的DSM的RadarGrammetric产生了一个有价值的工具,可以在不同尺度上为滑坡库存提供地形信息。

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