Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME

Detalhes bibliográficos
Autor(a) principal: Fantinel, Roberta Aparecida
Data de Publicação: 2020
Tipo de documento: Dissertação
Idioma: por
Título da fonte: Manancial - Repositório Digital da UFSM
Texto Completo: http://repositorio.ufsm.br/handle/1/21179
Resumo: Satellite images from remote sensors appear as viable and efficient alternatives in the study of information on patterns of land use and coverage. Data extracted from satellite images are currently used in machine learning, and this method is able to predict the class of new data in the domain in which it was trained.Thus, the present study aimed to analyze the capacity of machine learning algorithms to predict land use and land cover in the municipality of Dona Francisca - RS. The geographic database was implemented in the QGIS software, where the import of TM/Landsat 5 images began in 2004 and 2009 and OLI/Landsat 8 for 2015 and 2019. Subsequently, the synthetic composition of the false bands RGB color 543 from Landsat 5 and RGB 654 Landsat 8, in order to obtain the samples of the reference pixels, taking into consideration the spectral information of each pixel (numerical value), in order to obtain information to characterize and differentiate patterns of land use and coverage (water, agriculture, countryside, forest and exposed soil). After the training and testing of the algorithms started in the proportions of 80% - 20%, 70% -30%, 60% -40% through the machine learning algorithms Random Forest (RF), Support Vector Machine (SVM) , K-Nearest Neighbors (KNN) and Naive Bayes (NB) in the KNIME software, and finally presented the performance of the global accuracy and the Kappa index. The results showed that the RF and SVM machine learning algorithms showed the best performances for the years 2004 and 2009. As for the year 2015, the KNN and RF algorithms had a better overall accuracy. The NB algorithm showed lower performance in all tests than the other studied algorithms. The Kappa index values generated by the KNIME software indicate that the quality of the classifications generated by the RF, SVM, KNN and NB algorithms for all years were from very good to excellent. It is evident that the machine learning algorithms showed satisfactory results, so that they were efficient in predicting land use and land cover from data from orbital images.
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spelling Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIMEMachine learning procedures for analysis of spatial patterns with the use of the KNIME platformInteligência artificialKNIMESensoriamento remotoLandsatArtificial intelligenceRemote sensingCNPQ::CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTALSatellite images from remote sensors appear as viable and efficient alternatives in the study of information on patterns of land use and coverage. Data extracted from satellite images are currently used in machine learning, and this method is able to predict the class of new data in the domain in which it was trained.Thus, the present study aimed to analyze the capacity of machine learning algorithms to predict land use and land cover in the municipality of Dona Francisca - RS. The geographic database was implemented in the QGIS software, where the import of TM/Landsat 5 images began in 2004 and 2009 and OLI/Landsat 8 for 2015 and 2019. Subsequently, the synthetic composition of the false bands RGB color 543 from Landsat 5 and RGB 654 Landsat 8, in order to obtain the samples of the reference pixels, taking into consideration the spectral information of each pixel (numerical value), in order to obtain information to characterize and differentiate patterns of land use and coverage (water, agriculture, countryside, forest and exposed soil). After the training and testing of the algorithms started in the proportions of 80% - 20%, 70% -30%, 60% -40% through the machine learning algorithms Random Forest (RF), Support Vector Machine (SVM) , K-Nearest Neighbors (KNN) and Naive Bayes (NB) in the KNIME software, and finally presented the performance of the global accuracy and the Kappa index. The results showed that the RF and SVM machine learning algorithms showed the best performances for the years 2004 and 2009. As for the year 2015, the KNN and RF algorithms had a better overall accuracy. The NB algorithm showed lower performance in all tests than the other studied algorithms. The Kappa index values generated by the KNIME software indicate that the quality of the classifications generated by the RF, SVM, KNN and NB algorithms for all years were from very good to excellent. It is evident that the machine learning algorithms showed satisfactory results, so that they were efficient in predicting land use and land cover from data from orbital images.Imagens de satélites provenientes dos sensores remotos surgem como alternativas viáveis e eficientes no estudo de informações sobre os padrões do uso e cobertura da terra. Dados extraídos das imagens de satélite, são atualmente empregados no aprendizado de máquina, sendo este método capaz de prever a classe de novos dados do domínio no qual ele foi treinado. Desta forma, o presente trabalho teve como objetivo analisar a capacidade dos algoritmos de aprendizado de máquina em predizer o uso e cobertura da terra do município de Dona Francisca - RS. O banco de dados geográficos foi implementado no software QGIS, onde iniciou-se a importação das imagens TM/Landsat 5 nos anos de 2004 e 2009 e OLI/Landsat 8 para os anos de 2015 e 2019. Posteriormente realizou-se a composição sintética das bandas falsa cor RGB 543 do Landsat 5 e RGB 654 Landsat 8, com a finalidade de obter as amostras dos pixels de referência, levando em consideração a informação espectral de cada pixel (valor numérico), com a finalidade de obter informações para caracterizar e diferenciar os padrões de uso e cobertura da terra (água, agricultura, campo, floresta e solo exposto). Após iniciou-se o treinamento e teste dos algoritmos nas proporções de 80%-20%, 70%- 30%, 60%-40% por meio dos algoritmos de aprendizado de máquina Random Forest (RF), Support Vector Machine (SVM), K-Nearest Neighbors (KNN) e Naive Bayes (NB) no software KNIME, e por fim apresentado o desempenho da acurácia global e do índice de Kappa. Os resultados evidenciaram que os algoritmos de aprendizado de máquina RF e SVM apresentaram os melhores desempenhos para os anos de 2004 e 2009. Já para o ano de 2015, os algoritmos KNN e a RF tiveram uma acurácia global melhor. O algoritmo NB demostrou em todos os testes desempenhos inferiores aos demais algoritmos estudados. Os valores do índice Kappa gerados pelo software KNIME indicam que a qualidade das classificações geradas pelos algoritmos RF, SVM, KNN e NB para todos os anos foram de muito boa a excelente. Evidencia-se que os algoritmos de aprendizado de máquina mostraram resultados satisfatórios, de maneira que apresentaram eficiência em predizer o uso e cobertura da terra a partir de dados provenientes das imagens orbitais.Universidade Federal de Santa MariaBrasilRecursos Florestais e Engenharia FlorestalUFSMPrograma de Pós-Graduação em Engenharia FlorestalCentro de Ciências RuraisPereira, Rudiney Soareshttp://lattes.cnpq.br/9479801378014588Padilha, Damaris GonçalvesXXXXXXXXXXXXXXXSilva, Emanuel AraújoXXXXXXXXXXXXXXXXXXFantinel, Roberta Aparecida2021-06-22T18:47:23Z2021-06-22T18:47:23Z2020-02-20info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesisapplication/pdfhttp://repositorio.ufsm.br/handle/1/21179porAttribution-NonCommercial-NoDerivatives 4.0 Internationalhttp://creativecommons.org/licenses/by-nc-nd/4.0/info:eu-repo/semantics/openAccessreponame:Manancial - Repositório Digital da UFSMinstname:Universidade Federal de Santa Maria (UFSM)instacron:UFSM2021-06-23T06:01:48Zoai:repositorio.ufsm.br:1/21179Biblioteca Digital de Teses e Dissertaçõeshttps://repositorio.ufsm.br/ONGhttps://repositorio.ufsm.br/oai/requestatendimento.sib@ufsm.br||tedebc@gmail.comopendoar:2021-06-23T06:01:48Manancial - Repositório Digital da UFSM - Universidade Federal de Santa Maria (UFSM)false
dc.title.none.fl_str_mv Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
Machine learning procedures for analysis of spatial patterns with the use of the KNIME platform
title Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
spellingShingle Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
Fantinel, Roberta Aparecida
Inteligência artificial
KNIME
Sensoriamento remoto
Landsat
Artificial intelligence
Remote sensing
CNPQ::CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTAL
title_short Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
title_full Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
title_fullStr Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
title_full_unstemmed Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
title_sort Procedimentos de aprendizagem de máquina para análise de padrões espaciais com o uso da plataforma KNIME
author Fantinel, Roberta Aparecida
author_facet Fantinel, Roberta Aparecida
author_role author
dc.contributor.none.fl_str_mv Pereira, Rudiney Soares
http://lattes.cnpq.br/9479801378014588
Padilha, Damaris Gonçalves
XXXXXXXXXXXXXXX
Silva, Emanuel Araújo
XXXXXXXXXXXXXXXXXX
dc.contributor.author.fl_str_mv Fantinel, Roberta Aparecida
dc.subject.por.fl_str_mv Inteligência artificial
KNIME
Sensoriamento remoto
Landsat
Artificial intelligence
Remote sensing
CNPQ::CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTAL
topic Inteligência artificial
KNIME
Sensoriamento remoto
Landsat
Artificial intelligence
Remote sensing
CNPQ::CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTAL
description Satellite images from remote sensors appear as viable and efficient alternatives in the study of information on patterns of land use and coverage. Data extracted from satellite images are currently used in machine learning, and this method is able to predict the class of new data in the domain in which it was trained.Thus, the present study aimed to analyze the capacity of machine learning algorithms to predict land use and land cover in the municipality of Dona Francisca - RS. The geographic database was implemented in the QGIS software, where the import of TM/Landsat 5 images began in 2004 and 2009 and OLI/Landsat 8 for 2015 and 2019. Subsequently, the synthetic composition of the false bands RGB color 543 from Landsat 5 and RGB 654 Landsat 8, in order to obtain the samples of the reference pixels, taking into consideration the spectral information of each pixel (numerical value), in order to obtain information to characterize and differentiate patterns of land use and coverage (water, agriculture, countryside, forest and exposed soil). After the training and testing of the algorithms started in the proportions of 80% - 20%, 70% -30%, 60% -40% through the machine learning algorithms Random Forest (RF), Support Vector Machine (SVM) , K-Nearest Neighbors (KNN) and Naive Bayes (NB) in the KNIME software, and finally presented the performance of the global accuracy and the Kappa index. The results showed that the RF and SVM machine learning algorithms showed the best performances for the years 2004 and 2009. As for the year 2015, the KNN and RF algorithms had a better overall accuracy. The NB algorithm showed lower performance in all tests than the other studied algorithms. The Kappa index values generated by the KNIME software indicate that the quality of the classifications generated by the RF, SVM, KNN and NB algorithms for all years were from very good to excellent. It is evident that the machine learning algorithms showed satisfactory results, so that they were efficient in predicting land use and land cover from data from orbital images.
publishDate 2020
dc.date.none.fl_str_mv 2020-02-20
2021-06-22T18:47:23Z
2021-06-22T18:47:23Z
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/masterThesis
format masterThesis
status_str publishedVersion
dc.identifier.uri.fl_str_mv http://repositorio.ufsm.br/handle/1/21179
url http://repositorio.ufsm.br/handle/1/21179
dc.language.iso.fl_str_mv por
language por
dc.rights.driver.fl_str_mv Attribution-NonCommercial-NoDerivatives 4.0 International
http://creativecommons.org/licenses/by-nc-nd/4.0/
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Attribution-NonCommercial-NoDerivatives 4.0 International
http://creativecommons.org/licenses/by-nc-nd/4.0/
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Universidade Federal de Santa Maria
Brasil
Recursos Florestais e Engenharia Florestal
UFSM
Programa de Pós-Graduação em Engenharia Florestal
Centro de Ciências Rurais
publisher.none.fl_str_mv Universidade Federal de Santa Maria
Brasil
Recursos Florestais e Engenharia Florestal
UFSM
Programa de Pós-Graduação em Engenharia Florestal
Centro de Ciências Rurais
dc.source.none.fl_str_mv reponame:Manancial - Repositório Digital da UFSM
instname:Universidade Federal de Santa Maria (UFSM)
instacron:UFSM
instname_str Universidade Federal de Santa Maria (UFSM)
instacron_str UFSM
institution UFSM
reponame_str Manancial - Repositório Digital da UFSM
collection Manancial - Repositório Digital da UFSM
repository.name.fl_str_mv Manancial - Repositório Digital da UFSM - Universidade Federal de Santa Maria (UFSM)
repository.mail.fl_str_mv atendimento.sib@ufsm.br||tedebc@gmail.com
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