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Close-range environmental remote sensing with 3D hyperspectral technologies

机译:利用3D高光谱技术进行近距离环境遥感

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Estimation of the essential climate variables (ECVs), such as photosynthetically active radiation (FAPAR) and the leaf area index (LAI), is largely based on satellite-based remote sensing and the subsequent inversion of radiative transfer (RT) models. In order to build models that accurately describe the radiative transfer within and below the canopy, detailed 3D structural (geometrical) and spectral (radiometrical) information of the canopy is needed. Close-range remote sensing, such as terrestrial remote sensing and UAV-based 3D spectral measurements, offers significant opportunity to improve the RT modelling and ECV estimation of forests. Finnish Geospatial Research Institute (FGI) has been developing active and passive high resolution 3D hyperspectral measurement technologies that provide reflectance, anisotropy and 3D structure information of forests (i.e. hyperspectral point clouds). Technologies include hyperspectral imaging from unmanned airborne vehicle (UAV), terrestrial hyperspectral lidar (HSL) and terrestrial hyperspectral stereoscopic imaging. A measurement campaign to demonstrate these technologies in ECV estimation with uncertainty propagation was carried out in the Wytham Woods, Oxford, UK, in June 2015. Our objective is to develop traceable processing procedures for generating hyperspectral point clouds with geometric and radiometric uncertainty propagation using hyperspectral aerial and terrestrial imaging and hyperspectral terrestrial laser scanning. The article and presentation will present the methodology, instrumentation and first results of our study.
机译:基本气候变量(ECV)的估算,例如光合有效辐射(FAPAR)和叶面积指数(LAI),很大程度上是基于基于卫星的遥感技术和随后的辐射转移(RT)模型反演。为了建立能够准确描述顶篷内部和下方的辐射传递的模型,需要详细的顶篷3D结构(几何)和光谱(射线)信息。近距离遥感,例如陆地遥感和基于无人机的3D光谱测量,为改善森林的RT建模和ECV估计提供了重要的机会。芬兰地理空间研究所(FGI)一直在开发主动和被动高分辨率3D高光谱测量技术,这些技术可提供森林(即高光谱点云)的反射率,各向异性和3D结构信息。技术包括无人飞行器(UAV)的高光谱成像,地面高光谱激光雷达(HSL)和地面高光谱立体成像。 2015年6月,在英国牛津的Wytham Woods开展了一项测量运动,以证明ECV估计中的这些技术具有不确定性传播。我们的目标是开发可追溯的处理程序,以利用高光谱生成几何和辐射不确定性传播的高光谱点云。空中和地面成像以及高光谱地面激光扫描。文章和演示文稿将介绍我们的研究方法,仪器和初步结果。

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