MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE

Detalhes bibliográficos
Autor(a) principal: Marques, Américo José
Data de Publicação: 2023
Outros Autores: Montanher, Otávio Cristiano
Tipo de documento: Artigo
Idioma: por
Título da fonte: Caminhos de Geografia
Texto Completo: https://seer.ufu.br/index.php/caminhosdegeografia/article/view/65520
Resumo: This article aims to evaluate the use of orbital images from the MSI sensor, Sentinel 2A satellite, to map the vegetation in the area corresponding to the Maringá sheet (PR), chart SF-22-Y-D-II-3. The NDVI index was the spectral variable selected, and nine images were processed using Google Earth Engine between February 2021 and January 2022. The classifications were based on the statistical images of mean and standard deviation, instead of individual images. Two classification methods were tested, one by simple slicing, and the other method was the decision tree (algorithm J48), in which 413 reference points were used. The results showed that the decision tree classifier presented slightly better results than the simple slicing, with Kappa indexes equal to 0.893 and 0.877, respectively. The decision tree used the mean as the main variable, but when it was between 0.6678 and 0.7504 the pixels were also classified using the standard deviation. Simple slicing classified more areas as vegetation, while the decision tree classified less areas. While the first classifier would be more suitable for mapping conservation areas, regardless of the size of the vegetation, the second would be more suitable for mapping forest cover.
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spelling MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREEMAPEAMENTO DA COBERTURA VEGETAL PARA ATUALIZAÇÃO CARTOGRÁFICA EM MARINGÁ/PR COM USO DE ABORDAGEM ESTATÍSTICA DO NDVI E ÁRVORE DE DECISÃOGEEClassificaçãoEscalaUso do soloSentinel 2AGEEClassificationScaleUse of the soilSentinel 2AThis article aims to evaluate the use of orbital images from the MSI sensor, Sentinel 2A satellite, to map the vegetation in the area corresponding to the Maringá sheet (PR), chart SF-22-Y-D-II-3. The NDVI index was the spectral variable selected, and nine images were processed using Google Earth Engine between February 2021 and January 2022. The classifications were based on the statistical images of mean and standard deviation, instead of individual images. Two classification methods were tested, one by simple slicing, and the other method was the decision tree (algorithm J48), in which 413 reference points were used. The results showed that the decision tree classifier presented slightly better results than the simple slicing, with Kappa indexes equal to 0.893 and 0.877, respectively. The decision tree used the mean as the main variable, but when it was between 0.6678 and 0.7504 the pixels were also classified using the standard deviation. Simple slicing classified more areas as vegetation, while the decision tree classified less areas. While the first classifier would be more suitable for mapping conservation areas, regardless of the size of the vegetation, the second would be more suitable for mapping forest cover.Este artigo tem como objetivo avaliar o uso de imagens orbitais do sensor MSI, satélite Sentinel 2A, para o mapeamento da vegetação na área correspondente à carta topográfica de Maringá (PR), folha SF-22-Y-D-II-3. O índice NDVI foi a variável espectral selecionada, e com uso do Google Earth Engine foram processadas nove imagens entre fev/2021 e jan/2022. As classificações se pautaram nas imagens-estatísticas de média e desvio-padrão, ao invés das imagens individuais. Foram testados dois métodos de classificação, um por fatiamento simples, e o outro método foi a árvore de decisão (algoritmo J48), em que foram usados 413 pontos de referência. Os resultados mostraram que o classificador por árvore de decisão apresentou resultados ligeiramente melhores do que o fatiamento simples, com índices Kappa iguais a 0,893 e 0,877, respectivamente. A árvore de decisão utilizou a média como principal variável, mas quando ela esteve entre 0,6678 e 0,7504 os pixels foram classificados também com o uso do desvio-padrão. O fatiamento simples classificou mais áreas como vegetação, enquanto a árvore de decisão classificou menos áreas. Enquanto o primeiro classificador seria mais indicado para o mapeamento de áreas de preservação, independentemente do porte da vegetação, o segundo seria mais indicado para o mapeamento de coberturas florestais.EDUFU - Editora da Universidade Federal de Uberlândia2023-06-12info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionAvaliado pelos paresapplication/pdfhttps://seer.ufu.br/index.php/caminhosdegeografia/article/view/6552010.14393/RCG249365520Caminhos de Geografia; Vol. 24 No. 93 (2023): Junho; 65-76Caminhos de Geografia; Vol. 24 Núm. 93 (2023): Junho; 65-76Caminhos de Geografia; v. 24 n. 93 (2023): Junho; 65-761678-6343reponame:Caminhos de Geografiainstname:Universidade Federal de Uberlândia (UFU)instacron:UFUporhttps://seer.ufu.br/index.php/caminhosdegeografia/article/view/65520/36152Copyright (c) 2023 Américo José Marques, Otávio Cristiano Montanherhttp://creativecommons.org/licenses/by-nc-nd/4.0info:eu-repo/semantics/openAccessMarques, Américo JoséMontanher, Otávio Cristiano2023-06-12T12:29:01Zoai:ojs.www.seer.ufu.br:article/65520Revistahttps://seer.ufu.br/index.php/caminhosdegeografia/indexPUBhttp://www.seer.ufu.br/index.php/caminhosdegeografia/oaiflaviasantosgeo@gmail.com1678-63431678-6343opendoar:2023-06-12T12:29:01Caminhos de Geografia - Universidade Federal de Uberlândia (UFU)false
dc.title.none.fl_str_mv MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
MAPEAMENTO DA COBERTURA VEGETAL PARA ATUALIZAÇÃO CARTOGRÁFICA EM MARINGÁ/PR COM USO DE ABORDAGEM ESTATÍSTICA DO NDVI E ÁRVORE DE DECISÃO
title MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
spellingShingle MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
Marques, Américo José
GEE
Classificação
Escala
Uso do solo
Sentinel 2A
GEE
Classification
Scale
Use of the soil
Sentinel 2A
title_short MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
title_full MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
title_fullStr MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
title_full_unstemmed MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
title_sort MAPPING OF VEGETABLE COVERAGE FOR CARTOGRAPHIC UPDATE IN MARINGÁ/PR USING THE NDVI STATISTICAL APPROACH AND DECISION TREE
author Marques, Américo José
author_facet Marques, Américo José
Montanher, Otávio Cristiano
author_role author
author2 Montanher, Otávio Cristiano
author2_role author
dc.contributor.author.fl_str_mv Marques, Américo José
Montanher, Otávio Cristiano
dc.subject.por.fl_str_mv GEE
Classificação
Escala
Uso do solo
Sentinel 2A
GEE
Classification
Scale
Use of the soil
Sentinel 2A
topic GEE
Classificação
Escala
Uso do solo
Sentinel 2A
GEE
Classification
Scale
Use of the soil
Sentinel 2A
description This article aims to evaluate the use of orbital images from the MSI sensor, Sentinel 2A satellite, to map the vegetation in the area corresponding to the Maringá sheet (PR), chart SF-22-Y-D-II-3. The NDVI index was the spectral variable selected, and nine images were processed using Google Earth Engine between February 2021 and January 2022. The classifications were based on the statistical images of mean and standard deviation, instead of individual images. Two classification methods were tested, one by simple slicing, and the other method was the decision tree (algorithm J48), in which 413 reference points were used. The results showed that the decision tree classifier presented slightly better results than the simple slicing, with Kappa indexes equal to 0.893 and 0.877, respectively. The decision tree used the mean as the main variable, but when it was between 0.6678 and 0.7504 the pixels were also classified using the standard deviation. Simple slicing classified more areas as vegetation, while the decision tree classified less areas. While the first classifier would be more suitable for mapping conservation areas, regardless of the size of the vegetation, the second would be more suitable for mapping forest cover.
publishDate 2023
dc.date.none.fl_str_mv 2023-06-12
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Avaliado pelos pares
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://seer.ufu.br/index.php/caminhosdegeografia/article/view/65520
10.14393/RCG249365520
url https://seer.ufu.br/index.php/caminhosdegeografia/article/view/65520
identifier_str_mv 10.14393/RCG249365520
dc.language.iso.fl_str_mv por
language por
dc.relation.none.fl_str_mv https://seer.ufu.br/index.php/caminhosdegeografia/article/view/65520/36152
dc.rights.driver.fl_str_mv Copyright (c) 2023 Américo José Marques, Otávio Cristiano Montanher
http://creativecommons.org/licenses/by-nc-nd/4.0
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2023 Américo José Marques, Otávio Cristiano Montanher
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 EDUFU - Editora da Universidade Federal de Uberlândia
publisher.none.fl_str_mv EDUFU - Editora da Universidade Federal de Uberlândia
dc.source.none.fl_str_mv Caminhos de Geografia; Vol. 24 No. 93 (2023): Junho; 65-76
Caminhos de Geografia; Vol. 24 Núm. 93 (2023): Junho; 65-76
Caminhos de Geografia; v. 24 n. 93 (2023): Junho; 65-76
1678-6343
reponame:Caminhos de Geografia
instname:Universidade Federal de Uberlândia (UFU)
instacron:UFU
instname_str Universidade Federal de Uberlândia (UFU)
instacron_str UFU
institution UFU
reponame_str Caminhos de Geografia
collection Caminhos de Geografia
repository.name.fl_str_mv Caminhos de Geografia - Universidade Federal de Uberlândia (UFU)
repository.mail.fl_str_mv flaviasantosgeo@gmail.com
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