Abstract
Earth Observation services guarantee continuous land cover mapping and are becoming of great interest worldwide. The Google Earth Engine Dynamic World represents a planetary example. This work aims to develop a land cover mapping service in geomorphological complex areas in the Aosta Valley in NW Italy, according to the newest European EAGLE legend starting in the year 2020. Sentinel-2 data were processed in the Google Earth Engine, particularly the summer yearly median composite for each band and their standard deviation with multispectral indexes, which were used to perform a k-nearest neighbor classification. To better map some classes, a minimum distance classification involving NDVI and NDRE yearly filtered and regularized stacks were computed to map the agronomical classes. Furthermore, SAR Sentinel-1 SLC data were processed in the SNAP to map urban and water surfaces to improve optical classification. Additionally, deep learning and GIS updated datasets involving urban components were adopted beginning with an aerial orthophoto. GNSS ground truth data were used to define the training and the validation sets. In order to test the effectiveness of the implemented service and its methodology, the overall accuracy was compared to other approaches. A mixed hierarchical approach represented the best solution to effectively map geomorphological complex areas to overcome the remote sensing limitations. In conclusion, this service may help in the implementation of European and local policies concerning land cover surveys both at high spatial and temporal resolutions, empowering the technological transfer in alpine realities.
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference82 articles.
1. Google Earth Engine: Planetary-Scale Geospatial Analysis for Everyone;Gorelick;Remote Sens. Environ.,2017
2. Lukacz, P.M. (March, January 28). Data Capitalism, Microsoft’s Planetary Computer, and the Biodiversity Informatics Community. Proceedings of the International Conference on Information, Virtual Event.
3. Mutanga, O., and Kumar, L. (2019). Google Earth Engine Applications. Remote Sens., 11.
4. Estimating the United States Space Economy Using Input-Output Frameworks;Highfill;Space Policy,2022
5. Environmental Limits to the Space Sector’s Growth;Miraux;Sci. Total Environ.,2022
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