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RESEARCH PRODUCT

Data service platform for sentinel-2 surface reflectance and value-added products: System use and examples

Francesco VuoloMateusz ŻółTakClaudia PipitoneLuca ZappaHannah WenngMarkus ImmitzerMarie WeissFrederic BaretClement Atzberger

subject

Earth observation010504 meteorology & atmospheric sciencesreflectanceComputer sciencetélédétection0211 other engineering and technologies02 engineering and technology01 natural sciences7. Clean energyConsistency (database systems)remote sensingTraitement du signal et de l'imageatmospheric correctionremote sensing;sentinel-2;atmospheric correction;Sen2Cor;LAI;broadband HDRFlcsh:Science021101 geological & geomatics engineering0105 earth and related environmental sciencesRemote sensingSentinel-2; atmospheric correction; Sen2Cor; LAI; broadband HDRFbusiness.industrysentinel-2Settore ICAR/02 - Costruzioni Idrauliche E Marittime E IdrologiaSignal and Image processingVegetationReflectivitybroadband HDRFLAIatmosphèreSen2Cor13. Climate actionGeneral Earth and Planetary Scienceslcsh:QData centerData as a servicebusinessdonnée satellitaire[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing

description

This technical note presents the first Sentinel-2 data service platform for obtaining atmospherically-corrected images and generating the corresponding value-added products for any land surface on Earth (http://s2.boku.eodc.eu/). Using the European Space Agency’s (ESA) Sen2Cor algorithm, the platform processes ESA’s Level-1C top-of-atmosphere reflectance to atmospherically-corrected bottom-of-atmosphere (BoA) reflectance (Level-2A). The processing runs on-demand, with a global coverage, on the Earth Observation Data Centre (EODC), which is a public-private collaborative IT infrastructure in Vienna (Austria) for archiving, processing, and distributing Earth observation (EO) data (http://www.eodc.eu). Using the data service platform, users can submit processing requests and access the results via a user-friendly web page or using a dedicated application programming interface (API). Building on the processed Level-2A data, the platform also creates value-added products with a particular focus on agricultural vegetation monitoring, such as leaf area index (LAI) and broadband hemispherical-directional reflectance factor (HDRF). An analysis of the performance of the data service platform, along with processing capacity, is presented. Some preliminary consistency checks of the algorithm implementation are included to demonstrate the expected product quality. In particular, Sentinel-2 data were compared to atmospherically-corrected Landsat-8 data for six test sites achieving a R2 = 0.90 and Root Mean Square Error (RMSE) = 0.031. LAI was validated for one test site using ground estimations. Results show a very good agreement (R2 = 0.83) and a RMSE of 0.32 m2/m2 (12% of mean value).

10.3390/rs8110938https://hal.archives-ouvertes.fr/hal-01403399