Use of sampling polygons in supervisioned classifications of satellite images

Detalhes bibliográficos
Autor(a) principal: Fitz, Paulo Roberto
Data de Publicação: 2019
Outros Autores: Vieira, Jeferson Cordeiro, Soares, Mirlla Casimiro
Tipo de documento: Artigo
Idioma: por
Título da fonte: Entre-Lugar (Online)
Texto Completo: https://ojs.ufgd.edu.br/entre-lugar/article/view/9595
Resumo: The territory dynamics has always been prominent in geographic and, more precisely, environmental research. Different methods and techniques can be used to perform these studies, among them, it is possible to highlight the application of remote sensing techniques with the use of orbital satellite images. This study aimed to analyze the data obtained through the relationship between the dimensions of the classified areas and the increasing number of sampling polygons, based on the supervised classification of satellite images using training areas or polygon clusters. Experiments were carried out with three classes for the years 1985 and 2018, namely water bodies, anthropic areas and "original" vegetation cover. The simulations carried out confirmed the hypothesis presented, i.e., that there would be a trend of stabilization in the data according to the increase of training areas. As a recommendation for future classifications, it is suggested to adopt at least fifty sample polygons per class, which best defines the region to be classified, since such areas of training should cover all the characteristics related to the classes to be adopted.
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spelling Use of sampling polygons in supervisioned classifications of satellite imagesO uso de polígonos de amostragem em classificações supervisionadas de imagens de satéliteRemote sensing. Classification of satellite images. Training áreas. Cluster of polygons. Number of samples.Sensoriamento remoto. Classificação supervisionada. Áreas de treinamento. Polígonos de amostragem. Cluster de polígonos.The territory dynamics has always been prominent in geographic and, more precisely, environmental research. Different methods and techniques can be used to perform these studies, among them, it is possible to highlight the application of remote sensing techniques with the use of orbital satellite images. This study aimed to analyze the data obtained through the relationship between the dimensions of the classified areas and the increasing number of sampling polygons, based on the supervised classification of satellite images using training areas or polygon clusters. Experiments were carried out with three classes for the years 1985 and 2018, namely water bodies, anthropic areas and "original" vegetation cover. The simulations carried out confirmed the hypothesis presented, i.e., that there would be a trend of stabilization in the data according to the increase of training areas. As a recommendation for future classifications, it is suggested to adopt at least fifty sample polygons per class, which best defines the region to be classified, since such areas of training should cover all the characteristics related to the classes to be adopted.A dinâmica existente no território sempre ocupou destaque em pesquisas geográficas e, mais precisamente, ambientais. Diferentes métodos e técnicas podem ser utilizados para a realização destes estudos e, entre eles, pode-se destacar a aplicação das técnicas do sensoriamento remoto com o uso de imagens de satélites orbitais. Logo, este estudo buscou, a partir da classificação supervisionada de imagens do satélite Landsat com o uso de áreas de treinamento, ou clusters de polígonos, analisar os dados obtidos através da relação entre as dimensões das áreas classificadas com o incremento de polígonos de amostragem. Foram realizadas experimentações com três classes para os anos de 1985 e de 2018, a saber, corpos d’água, áreas antropizadas e cobertura vegetal “original”. As simulações realizadas confirmaram a hipótese apresentada, ou seja, a de que haveria uma tendência de estabilização nos dados de acordo com o incremento de áreas de treinamento. Como recomendação para futuras classificações, sugere-se a adoção de, pelo menos, cinquenta polígonos amostrais por classe, que configurem, da melhor forma possível, a região a ser classificada uma vez que tais áreas de treinamento deverão abarcar todas as características relativas às classes a serem adotadas.Editora da Universidade Federal da Grande Dourados2019-07-30info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttps://ojs.ufgd.edu.br/entre-lugar/article/view/959510.30612/el.v10i19.9595ENTRE-LUGAR; v. 10 n. 19 (2019); 319-3412177-78292176-9559reponame:Entre-Lugar (Online)instname:Universidade Federal da Grande Dourados (UFGD)instacron:UFGDporhttps://ojs.ufgd.edu.br/entre-lugar/article/view/9595/5214Copyright (c) 2019 ENTRE-LUGARinfo:eu-repo/semantics/openAccessFitz, Paulo RobertoVieira, Jeferson CordeiroSoares, Mirlla Casimiro2019-08-02T16:20:03Zoai:ojs.pkp.sfu.ca:article/9595Revistahttps://ojs.ufgd.edu.br/index.php/entre-lugarPUBhttps://ojs.ufgd.edu.br/index.php/entre-lugar/oaimarcosmondardo@yahoo.com.br||charleisilva@ufgd.edu.br||editora.suporte@ufgd.edu.br10.306122177-78292176-9559opendoar:2019-08-02T16:20:03Entre-Lugar (Online) - Universidade Federal da Grande Dourados (UFGD)false
dc.title.none.fl_str_mv Use of sampling polygons in supervisioned classifications of satellite images
O uso de polígonos de amostragem em classificações supervisionadas de imagens de satélite
title Use of sampling polygons in supervisioned classifications of satellite images
spellingShingle Use of sampling polygons in supervisioned classifications of satellite images
Fitz, Paulo Roberto
Remote sensing. Classification of satellite images. Training áreas. Cluster of polygons. Number of samples.
Sensoriamento remoto. Classificação supervisionada. Áreas de treinamento. Polígonos de amostragem. Cluster de polígonos.
title_short Use of sampling polygons in supervisioned classifications of satellite images
title_full Use of sampling polygons in supervisioned classifications of satellite images
title_fullStr Use of sampling polygons in supervisioned classifications of satellite images
title_full_unstemmed Use of sampling polygons in supervisioned classifications of satellite images
title_sort Use of sampling polygons in supervisioned classifications of satellite images
author Fitz, Paulo Roberto
author_facet Fitz, Paulo Roberto
Vieira, Jeferson Cordeiro
Soares, Mirlla Casimiro
author_role author
author2 Vieira, Jeferson Cordeiro
Soares, Mirlla Casimiro
author2_role author
author
dc.contributor.author.fl_str_mv Fitz, Paulo Roberto
Vieira, Jeferson Cordeiro
Soares, Mirlla Casimiro
dc.subject.por.fl_str_mv Remote sensing. Classification of satellite images. Training áreas. Cluster of polygons. Number of samples.
Sensoriamento remoto. Classificação supervisionada. Áreas de treinamento. Polígonos de amostragem. Cluster de polígonos.
topic Remote sensing. Classification of satellite images. Training áreas. Cluster of polygons. Number of samples.
Sensoriamento remoto. Classificação supervisionada. Áreas de treinamento. Polígonos de amostragem. Cluster de polígonos.
description The territory dynamics has always been prominent in geographic and, more precisely, environmental research. Different methods and techniques can be used to perform these studies, among them, it is possible to highlight the application of remote sensing techniques with the use of orbital satellite images. This study aimed to analyze the data obtained through the relationship between the dimensions of the classified areas and the increasing number of sampling polygons, based on the supervised classification of satellite images using training areas or polygon clusters. Experiments were carried out with three classes for the years 1985 and 2018, namely water bodies, anthropic areas and "original" vegetation cover. The simulations carried out confirmed the hypothesis presented, i.e., that there would be a trend of stabilization in the data according to the increase of training areas. As a recommendation for future classifications, it is suggested to adopt at least fifty sample polygons per class, which best defines the region to be classified, since such areas of training should cover all the characteristics related to the classes to be adopted.
publishDate 2019
dc.date.none.fl_str_mv 2019-07-30
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://ojs.ufgd.edu.br/entre-lugar/article/view/9595
10.30612/el.v10i19.9595
url https://ojs.ufgd.edu.br/entre-lugar/article/view/9595
identifier_str_mv 10.30612/el.v10i19.9595
dc.language.iso.fl_str_mv por
language por
dc.relation.none.fl_str_mv https://ojs.ufgd.edu.br/entre-lugar/article/view/9595/5214
dc.rights.driver.fl_str_mv Copyright (c) 2019 ENTRE-LUGAR
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2019 ENTRE-LUGAR
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Editora da Universidade Federal da Grande Dourados
publisher.none.fl_str_mv Editora da Universidade Federal da Grande Dourados
dc.source.none.fl_str_mv ENTRE-LUGAR; v. 10 n. 19 (2019); 319-341
2177-7829
2176-9559
reponame:Entre-Lugar (Online)
instname:Universidade Federal da Grande Dourados (UFGD)
instacron:UFGD
instname_str Universidade Federal da Grande Dourados (UFGD)
instacron_str UFGD
institution UFGD
reponame_str Entre-Lugar (Online)
collection Entre-Lugar (Online)
repository.name.fl_str_mv Entre-Lugar (Online) - Universidade Federal da Grande Dourados (UFGD)
repository.mail.fl_str_mv marcosmondardo@yahoo.com.br||charleisilva@ufgd.edu.br||editora.suporte@ufgd.edu.br
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