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Irrigation mapping on two contrasted climatic contexts using Sentinel-1 and Sentinel-2 data

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dc.creator Elwan, E.
dc.creator /Le Page, Michel
dc.creator /Jarlan, Lionel
dc.creator Baghdadi, N.
dc.creator Brocca, L.
dc.creator Modanesi, S.
dc.creator Dari, J.
dc.creator Segui, P. Q.
dc.creator Zribi, M.
dc.date 2022
dc.date.accessioned 2022-04-27T17:37:46Z
dc.date.available 2022-04-27T17:37:46Z
dc.identifier https://www.documentation.ird.fr/hor/fdi:010084518
dc.identifier oai:ird.fr:fdi:010084518
dc.identifier Elwan E., Le Page Michel, Jarlan Lionel, Baghdadi N., Brocca L., Modanesi S., Dari J., Segui P. Q., Zribi M.. Irrigation mapping on two contrasted climatic contexts using Sentinel-1 and Sentinel-2 data. 2022, 14 (5), 804 [13 p.]
dc.identifier.uri http://biblioteca-repositorio.clacso.edu.ar/handle/CLACSO/169083
dc.description This study aims to propose an operational approach to map irrigated areas based on the synergy of Sentinel-1 (S1) and Sentinel-2 (S2) data. An application is proposed at two study sites in Europe-in Spain and in Italy-with two climatic contexts (semiarid and humid, respectively), with the objective of proving the essential role of multi-site training for a robust application of the proposed methodologies. Several classifiers are proposed to separate irrigated and rainfed areas. They are based on statistical variables from Sentinel-1 and Sentinel-2 time series data at the agricultural field scale, as well as on the contrasted behavior between the field scale and the 5 km surroundings. The support vector machine (SVM) classification approach was tested with different options to evaluate the robustness of the proposed methodologies. The optimal number of metrics found is five. These metrics illustrate the importance of optical/radar synergy and the consideration of multi-scale spatial information. The highest accuracy of the classifications, approximately equal to 85%, is based on training dataset with mixed reference fields from the two study sites. In addition, the accuracy is consistent at the two study sites. These results confirm the potential of the proposed approaches towards the most general use on sites with different climatic and agricultural contexts.
dc.language EN
dc.subject Sentinel-1
dc.subject Sentinel-2
dc.subject irrigation map
dc.subject support vector machine
dc.title Irrigation mapping on two contrasted climatic contexts using Sentinel-1 and Sentinel-2 data
dc.type text
dc.coverage ESPAGNE
dc.coverage ITALIE
dc.coverage CATALUNA
dc.coverage EMILIA ROMAGNA


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