Object-Based Land Cover Classification of Cork Oak Woodlands using UAV Imagery and Orfeo ToolBox
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Giuseppe Modica | Salvatore di Fazio | João M. N. Silva | José Campos | Giandomenico De Luca | Sofia Cerasoli | João Araújo | João M. N. Silva | G. Modica | S. Cerasoli | J. Campos | S. D. Fazio | G. Luca | J. Araújo
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