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Improving land cover classification through contextual-based optimum-path forest

Improving land cover classification through contextual-based optimum-path forest

D. Osaku, R. Y. M. Nakamura, L. A. M. Pereira, R. J. Pisani, A. L. M. Levada, F. A. M Cappabianco, A. X. Falcão, João P. Papa

ARTIGO

Inglês

Agradecimentos: The authors are grateful to FAPESP grant nos. 2009/16206-1, 2012/06472-9, 2013/20387-7 and 2014/16250-9, as well as CNPq grant nos. 303182/2011-3, 470571/2013-6 and 306166/2014-3

Abstract: Traditional machine learning algorithms very often assume statistically independent data samples. However, this is clearly not the case in remote sensing image applications, in which pixels present spatial and/or temporal dependencies. In this work, it has been presented an approach to... Ver mais

CONSELHO NACIONAL DE DESENVOLVIMENTO CIENTÍFICO E TECNOLÓGICO - CNPQ

303182/2011-3; 470571/2013-6; 306166/2014-3

FUNDAÇÃO DE AMPARO À PESQUISA DO ESTADO DE SÃO PAULO - FAPESP

2009/16206-1; 2012/06472-9; 2013/20387-7; 2014/16250-9

Aberto

Improving land cover classification through contextual-based optimum-path forest

D. Osaku, R. Y. M. Nakamura, L. A. M. Pereira, R. J. Pisani, A. L. M. Levada, F. A. M Cappabianco, A. X. Falcão, João P. Papa

										

Improving land cover classification through contextual-based optimum-path forest

D. Osaku, R. Y. M. Nakamura, L. A. M. Pereira, R. J. Pisani, A. L. M. Levada, F. A. M Cappabianco, A. X. Falcão, João P. Papa

    Fontes

    Information sciences (Fonte avulsa)