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...
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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 improve land cover image classification using a contextual approach based on optimum-path forest (OPF) and the well-known Markov random fields (MRFs), hereinafter called OPF–MRF. In addition, it is also introduced a framework to the optimization of the amount of contextual information used by OPF–MRF. Experiments over high- and medium-resolution satellite (CBERS-2B, Landsat 5 TM, Ikonos-2 MS and Geoeye) and radar (ALOS-PALSAR) images covering the area of two Brazilian cities have shown the proposed approach can overcome several shortcomings related to standard OPF classification. In some cases, the proposed approach outperformed traditional OPF in about 9% of recognition rate, which is crucial for land cover classification
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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
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Information sciences (Fonte avulsa) |