Estimating Pasture Biomass and Canopy Height in Brazilian Savanna Using UAV Photogrammetry
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Jonathan Li | Edson Takashi Matsubara | Wesley Nunes Gonçalves | José Marcato Junior | Veraldo Liesenberg | Geison Salgado Filho | Henrique Lopes Siqueira | Maurício de Souza | Alexandre Dias | Juliana Batistoti | Luís Ítavo | Eva Gomes | Bianca Oliveira | Thales Akiyama | W. Gonçalves | E. Matsubara | Jonathan Li | V. Liesenberg | J. M. Junior | Maurício de Souza | L. Ítavo | Juliana Batistoti | Eva Gomes | Bianca Oliveira | T. Akiyama | Alexandre Dias
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