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EO4Urban: Sentinel-1A SAR and Sentinel-2A MSI data for global urban services

机译:EO4Urban:用于全球城市服务的Sentinel-1A SAR和Sentinel-2A MSI数据

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The overall objective of this research is to evaluate multitemporal Sentinel-1A SAR and Sentinel-2A MSI data for global urban services using innovative methods and algorithms, namely KTH-Pavia Urban Extractor, a robust algorithm for urban extent extraction and KTH-SEG, a novel object-based classification method for detailed urban land cover mapping. Ten cities around the world in different geographical and environmental conditions were selected as study areas. Large volumes of Sentinel-1A SAR and Sentinel-2A MSI data were acquired during the vegetation season in 2015 and 2016. The urban extraction results showed that urban areas and small towns could be well extracted using multitemporal Sentinel-1 SAR, Sentinel-2A MSI data and their fusion using the Urban Extractors developed within the project. For urban land cover mapping, multitemporal Sentinel-1A SAR data alone yielded an overall classification accuracy of 60% for Stockholm. Sentinel-2A MSI data as well as the fusion of Sentinel-1A SAR and Sentinel-2A MSI data, however, produced much higher classification accuracies, both reached 80%.
机译:这项研究的总体目标是使用创新的方法和算法,即KTH-Pavia Urban Extractor(一种用于城市范围提取的鲁棒算法)和KTH-SEG(一种可用于计算城市环境的新方法)来评估针对全球城市服务的多时相Sentinel-1A SAR和Sentinel-2A MSI数据。新颖的基于对象的详细城市土地覆盖图分类方法。选择了全球十个地理和环境条件不同的城市作为研究区域。在2015年和2016年植被旺季期间,获取了大量Sentinel-1A SAR和Sentinel-2A MSI数据。城市提取结果表明,使用多时相Sentinel-1 SAR,Sentinel-2A MSI可以很好地提取市区和小镇数据及其在项目中开发的城市提取器的融合。对于城市土地覆盖图,仅多时间Sentinel-1A SAR数据就可为斯德哥尔摩提供60%的总体分类精度。 Sentinel-2A MSI数据以及Sentinel-1A SAR和Sentinel-2A MSI数据的融合产生了更高的分类精度,均达到80%。

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