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3D Terrain Segmentation in the Swir Spectrum

机译:SWIR谱中的3D地形分割

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摘要

We focus on the automatic 3D terrain segmentation problem using hyperspectral shortwave IR (HS-SWIR) imagery and 3D Digital Elevation Models (DEM). The datasets were independently collected, and metadata for the HS-SWIR dataset are unavailable. We explore an overall slope of the SWIR spectrum that correlates with the presence of moisture in soil to propose a band ratio test to be used as a proxy for soil moisture content to distinguish two broad classes of objects: live vegetation from impermeable manmade surface. We show that image based localization techniques combined with the Optimal Randomized RANdom Sample Consensus (RANSAC) algorithm achieve precise spatial matches between HS-SWIR data of a portion of downtown Los Angeles (LA (USA)) and the Visible image of a georegistered 3D DEM, covering a wider-area of LA. Our spectral-elevation rule based approach yields an overall accuracy of 97.7%, segmenting the object classes into buildings, houses, trees, grass, and roads/parking lots.
机译:我们专注于使用超光线短波IR(HS-SWIR)图像和3D数字高度模型(DEM)的自动3D地形分割问题。数据集是独立收集的,HS-SWIR数据集的元数据不可用。我们探讨了SWIR光谱的总坡,与土壤中的水分存在相关,以提出带有用于土壤水分含量的代理的带比测试,以区分两种广泛的物体:从不透水的人造表面上植被。我们表明,基于图像的本地化技术与最佳随机随机样本共识(RANSAC)算法相结合,实现了洛杉矶(LA(USA)的一部分的HS-SWIR数据与地理导演3D DEM的可见图像之间的精确空间匹配,覆盖La的更广泛的区域。基于频谱高程规则的方法产生了97.7%的整体准确性,将物体课程分割为建筑物,房屋,树木,草和道路/停车场。

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