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      "text": "Intermediate users are mainly Value Added Service companies, startups and SMEs.\nEnd users are predominantly local, regional and national authorities.\nSentinel-1 radar data is used for change detection and the development of 3D models.\nSentinel-2 optical data provides relevant data for urban growth monitoring thanks to its high spatial resolution optical imagery.\nA number of global urban datasets derived from EO have been developed, such as the Global Human Settlement Layer (GHSL) and the World Settlement Footprint 2015 (WSF2015).",
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