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A global cloud free pixel- based image composite from Sentinel-2 data

Christina Corbane, Panagiotis Politis, Pieter Kempeneers, Dario Simonetti, Pierre Soille, Abigail Burger, Martino Pesaresi, Filip Sabo, Vasileios Syrris, Thomas Kemper

2020Data in Brief76 citationsDOIOpen Access PDF

Abstract

Large-scale land cover classification from satellite imagery is still a challenge due to the big volume of data to be processed, to persistent cloud-cover in cloud-prone areas as well as seasonal artefacts that affect spatial homogeneity. Sentinel-2 times series from Copernicus Earth Observation program offer a great potential for fine scale land cover mapping thanks to high spatial and temporal resolutions, with a decametric resolution and five-day repeat time. However, the selection of best available scenes, their download together with the requirements in terms of storage and computing resources pose restrictions for large-scale land cover mapping. The dataset presented in this paper corresponds to global cloud-free pixel based composite created from the Sentinel-2 data archive (Level L1C) available in Google Earth Engine for the period January 2017- December 2018. The methodology used for generating the image composite is described and the metadata associated with the 10 m resolution dataset is presented. The data with a total volume of 15 TB is stored on the Big Data platform of the Joint Research Centre. It can be downloaded per UTM grid zone, loaded into GIS clients and displayed easily thanks to pre-computed overviews.

Topics & Concepts

Cloud computingMetadataCloud coverRemote sensingComputer scienceLand coverPixelEarth observationSatelliteGridScale (ratio)Big dataData miningLand useCartographyGeographyArtificial intelligenceWorld Wide WebGeodesyAerospace engineeringEngineeringCivil engineeringOperating systemRemote Sensing in AgricultureRemote-Sensing Image ClassificationRemote Sensing and Land Use
A global cloud free pixel- based image composite from Sentinel-2 data | Litcius