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PACO: Python-Based Atmospheric Correction

机译:PACO:基于Python的大气校正

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摘要

The atmospheric correction of satellite images based on radiative transfer calculations is a prerequisite for many remote sensing applications. The software package ATCOR, developed at the German Aerospace Center (DLR), is a versatile atmospheric correction software, capable of processing data acquired by many different optical satellite sensors. Based on this well established algorithm, a new Python-based atmospheric correction software has been developed to generate L2A products of Sentinel-2, Landsat-8, and of new space-based hyperspectral sensors such as DESIS (DLR Earth Sensing Imaging Spectrometer) and EnMAP (Environmental Mapping and Analysis Program). This paper outlines the underlying algorithms of PACO, and presents the validation results by comparing L2A products generated from Sentinel-2 L1C images with in situ (AERONET and RadCalNet) data within VNIR-SWIR spectral wavelengths range.
机译:基于辐射转移计算的卫星图像的大气校正是许多遥感应用的前提。由德国航空航天中心(DLR)开发的ATCOR软件包是一种通用的大气校正软件,能够处理许多不同的光学卫星传感器采集的数据。基于这一完善的算法,开发了一种新的基于Python的大气校正软件,以生成Sentinel-2,Landsat-8以及新型天基高光谱传感器(例如DESIS(DLR地球传感成像光谱仪)和EnMAP(环境制图和分析程序)。本文概述了PACO的基本算法,并通过将Sentinel-2 L1C图像生成的L2A产品与VNIR-SWIR光谱波长范围内的原位(AERONET和RadCalNet)数据进行比较,提出了验证结果。

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