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      "text": "COPERNICUS DIAS IS FACILITATING DATA ACCESS FOR INTERMEDIATE USERS",
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      "text": "Sentinel-1 is well suited to disseminate radar images covering large areas and enabling temporal comparison. Its spatial resolution is a strong differentiator for monitoring fragmented urban ecosystems.",
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      "text": "The implementation of the DIAS made it much easier to access and process Sentinel data, and enhanced Copernicus competitiveness with respect to other EO international programs such as Landsat.",
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      "text": "The emergence of advanced algorithms to extract data from satellite imagery, or greater computational power open new opportunities for urban remote sensing applications. Technological progress opens new opportunities for Copernicus' Urban Monitoring application.",
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      "text": "Sentinel-1 radar data is used for change detection and the development of 3D models. It provides all-weather imagery with a rapid revisit period (6 days), a wide area coverage and a millimeter accuracy. Sentinel-1 data can also be used for road and other transportation route mapping. Sentinel-2 data provides relevant data for urban growth monitoring thanks to its high spatial resolution optical imagery. The open data policy allows for initial experimental projects before developing deeper EO skills. This is of particular importance for governmental institution relying on public spending money, or even SMEs with limited financial capacity. The main weakness of Copernicus for urban monitoring application lies in the domain of land use, in which commercial satellites imagery is still dominant due to the need of high resolution. Uptakes in this domain are foreseen at a very experimental level, and will be detailed in the case study.",
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      "text": "To monitor land use in urban areas, a vast majority of satellite data comes from commercial satellites. Users do not foresee a significant uptake possibility, unless the resolution is further enhanced",
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