The Impact of Acquisition Date on the Prediction Performance of Topsoil Organic Carbon from Sentinel-2 for Croplands
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Cécile Gomez | Dominique Arrouays | Thomas Loiseau | Emmanuelle Vaudour | Nicolas Baghdadi | Benjamin Loubet | Leïla Ali | Philippe Lagacherie | P. Lagacherie | B. Loubet | N. Baghdadi | C. Gomez | E. Vaudour | D. Arrouays | T. Loiseau | Leïla Ali
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