Monitoring Pasture Aboveground Biomass and Canopy Height in an Integrated Crop-Livestock System Using Textural Information from PlanetScope Imagery
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Rubens A. C. Lamparelli | Jansle Vieira Rocha | Gleyce Kelly Dantas Araújo Figueiredo | Alexandre Camargo Coutinho | Paulo Sergio Graziano Magalhães | Júlio César Dalla Mora Esquerdo | Aliny A. Dos Reis | João P. S. Werner | Bruna C. Silva | João Francisco Gonçalves Antunes | R. Lamparelli | J. Rocha | A. Coutinho | J. Esquerdo | P. G. Magalhães | G. Figueiredo | B. C. Silva | J. P. S. Werner | A. A. D. Reis | J. Antunes | J. P. Werner
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