Use este identificador para citar ou linkar para este item: http://www.alice.cnptia.embrapa.br/alice/handle/doc/909476
Título: Diferentes classificadores na predição de classes de solos em mapeamento digital.
Autoria: SILVA, C. C. da
OLIVEIRA, S. R. de M.
ADAMI, S. F.
CRIVELENTI, R. C.
COELHO, R. M.
Afiliação: CRISTIANO CASSIANO DA SILVA, IAC; STANLEY ROBSON DE MEDEIROS OLIVEIRA, CNPTIA; SAMUEL FERNANDO ADAMI, IAC; RAFAEL CASTRO CRIVELENTI, SMA-SP; RICARDO MARQUES COELHO, IAC.
Ano de publicação: 2011
Referência: In: SIMPÓSIO BRASILEIRO DE SENSORIAMENTO REMOTO, 15., 2011, Curitiba. Anais... São José dos Campos: Inpe, 2011.
Páginas: p. 9088-9095.
Conteúdo: ABSTRACT: The study had as objective to develop techniques for digital soil mapping with support of main parameters of relief descriptors, of geologic map and pedological map pre-existing of Dois Córregos (SP, BRAZIL) sheet (1:50,000 scale), using data mining techniques. It was built a database from digital topographic and thematic, and data from soils and geology. Were calculate geomorphometric slope, curvature in plan and in profile and diagonal distance of the drainage area of study. These parameters and the geological map units were crossed through georeferencing the pedological map, enabling the construction of a matrix relating soil mapping units with original caption and simplified legend to the topography and geology parameters of reference areas.. This matrix was analyzed by three different techniques of machine learning, decision trees, k-NN and Naive Bayes, who predicted the soil mapping units. We evaluated soil mapping units accuracy individually and overall maps accuracy. Our results demonstrate that increasing number of records for training the algorithm increased the individual mapping units accuracy and maps. The decision tree algorithms and k-NN had the highest accuracy in both types of legend, but low in relation to training maps.
Thesagro: Pedologia
NAL Thesaurus: Soil
Geographic information systems
Palavras-chave: Solos
Mineração de dados
Sistemas de informação geográfica
Data mining
Notas: SBSR 2011.
Tipo do material: Artigo em anais e proceedings
Acesso: openAccess
Aparece nas coleções:Artigo em anais de congresso (CNPTIA)

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