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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Multi-sensor mapping of West African land cover using MODIS, ASAR and TanDEM-X/TerraSAR-X data
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Multi-sensor mapping of West African land cover using MODIS, ASAR and TanDEM-X/TerraSAR-X data

机译:使用MODIS,ASAR和TanDEM-X / TerraSAR-X数据对西非土地覆盖物进行多传感器制图

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摘要

Land cover information plays an elementary role for regional water and land management, and is an essential variable for the assessment of ecosystem services and regional climate impact. This paper describes the generation of a regionally optimized land cover dataset for West Africa with a spatial resolution of 250 m, which is based on earth observation data from three optical and radar instruments. The choice of sensors is based on their individual strengths and weaknesses in assessing specific land surface types. Annual profiles of the optical Moderate Resolution Imaging Spectroradiometer (MODIS) are analyzed for the classification of vegetated classes including agriculture. The classification approach builds on random forest classification with learning data extracted from higher resolution land cover maps. Envisat Advanced Synthetic Aperture Radar (ASAR) Wide Swath (WS) time series are used, in combination with MODIS data, to delineate permanent and seasonal water bodies. Here, an approach integrating threshold classification and morphological operations is applied. Built-up areas of different densities are identified based on a seamless coverage of radar imagery collected by the satellites TanDEM-X and TerraSAR-X. The detection of settlements is based on an unsupervised classification scheme which exploits texture metrics and backscattering amplitudes of the fine resolution radar sensors. The accuracy assessment of the multi-sensor land cover map yields an overall accuracy of 80% at legend level 1 (9 classes) and 73% at the more detailed legend level 2 (14 classes). Comparisons with available wall-to-wall datasets of the region demonstrate the valuable information content of the presented West African land cover map. (C) 2015 Elsevier Inc. All rights reserved.
机译:土地覆盖信息对于区域水和土地管理起着基本作用,并且是评估生态系统服务和区域气候影响的重要变量。本文介绍了基于三个光学和雷达仪器的地球观测数据,生成了西非区域优化的土地覆盖数据集,其空间分辨率为250 m。传感器的选择基于它们在评估特定地面类型时的个人优势和劣势。分析了光学中分辨率成像光谱仪(MODIS)的年度概况,对包括农业在内的植被类别进行了分类。分类方法建立在随机森林分类的​​基础上,从更高分辨率的土地覆盖图中提取学习数据。 Envisat高级合成孔径雷达(ASAR)宽幅(WS)时间序列与MODIS数据结合使用,描绘了永久性和季节性水体。在这里,应用了一种将阈值分类和形态运算相结合的方法。根据由TanDEM-X和TerraSAR-X卫星收集的雷达图像的无缝覆盖,识别出不同密度的建筑区域。沉降的检测基于无监督分类方案,该方案利用纹理度量和高分辨率雷达传感器的反向散射振幅。多传感器地面覆盖图的准确性评估在图例级别1(9类)中产生了80%的整体准确性,在更详细的图例级别2(14类)中产生了73%的整体准确性。与该地区可用的逐墙数据集的比较表明,所呈现的西非土地覆盖图的有价值的信息内容。 (C)2015 Elsevier Inc.保留所有权利。

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