Harmonized in situ JECAM datasets for agricultural land use mapping and monitoring in tropical countries

Audrey Jolivot,Valentine Lebourgeois,Mael Ameline, Valérie Andriamanga,Beatriz Bellón,Mathieu Castets, Arthur Crespin-Boucaud,Pierre Defourny, Santiana Diaz, Mohamadou Dieye,Stephane Dupuy,Rodrigo Ferraz,Raffaele Gaetano, Marie Gely,Camille Jahel, Bertin Kabore,Camille Lelong,Guerric Le Maire,Louise Leroux,Danny Lo Seen, Martha Muthoni,Babacar Ndao,Terry Newby, Cecília Lira Melo De Oliveira Santos, Eloise Rasoamalala,Margareth Simoes, Ibrahima Thiaw, Alice Timmermans,Annelise Tran,Agnès Bégué

crossref(2021)

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摘要
Abstract. The availability of crop type reference datasets for satellite image classification is very limited for complex agricultural systems as observed in developing and emerging countries. Indeed, agricultural land use is very dynamic, agricultural census are often poorly georeferenced, and crop types are difficult to photo-interpret directly from satellite imagery. In this paper, we present nine datasets collected in a standardized manner between 2013 and 2020 in seven tropical and subtropical countries within the framework of the international JECAM (Joint Experiment for Crop Assessment and Monitoring) initiative. These quality-controlled datasets are distinguished by in situ data collected at field scale by local experts, with precise geographic coordinates, and following a common protocol. Altogether, the datasets completed 27 074 polygons (20 257 crop and 6 817 non-crop) documented by detailed keywords. These datasets can be used to produce and validate agricultural land use maps in the tropics, but also, to assess the performances and the robustness of classification methods of cropland and crop types/practices in a large range of tropical farming systems. The dataset is available at https://doi.org/10.18167/DVN1/P7OLAP.
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