Accurate mapping of Brazil nut trees (Bertholletia excelsa) in Amazonian forests using WorldView-3 satellite images and convolutional neural networks
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Rodolfo G. Lotte | Matheus Pinheiro Ferreira | Adam R. Benjamin | Francisco V. D'Elia | Christos Stamatopoulos | Do-Hyung Kim | C. Stamatopoulos | Do-Hyung Kim | M. Ferreira | R. G. Lotte | F. D'Elia
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