Individual Tree Detection and Qualitative Inventory of a Eucalyptus sp. Stand Using UAV Photogrammetry Data
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Fábio Guimarães Gonçalves | Adriano Ribeiro de Mendonça | André Almeida | Gilson Silva | Maria Gonzaga | Jeferson Silva | Rodolfo Souza | Igor Leite | Karina Neves | Marcus Boeno | Braulio Sousa | F. Gonçalves | Karina Neves | A. Almeida | A. Mendonça | J. Silva | B. Sousa | I. Leite | Gilson Silva | M. Gonzaga | Rodolfo Souza | M. Boeno
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