COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL

One of the main applications of satellite images is the characterization of terrestrial coverage, that from the use of classification techniques, allows the monitoring of spatial transformations of the terrestrial surface, this process being directly associated with the potential of classifiers to d...

Full description

Bibliographic Details
Main Authors: P. R. M. Pereira, F. W. D. Costa, E. L. Bolfe, L. Macarringe, A. C. Botelho
Format: Article
Language:English
Published: Copernicus Publications 2021-06-01
Series:ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/V-3-2021/167/2021/isprs-annals-V-3-2021-167-2021.pdf
id doaj-730388e255634282b0135fc94cf42074
record_format Article
spelling doaj-730388e255634282b0135fc94cf420742021-06-17T21:16:26ZengCopernicus PublicationsISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences2194-90422194-90502021-06-01V-3-202116717310.5194/isprs-annals-V-3-2021-167-2021COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZILP. R. M. Pereira0F. W. D. Costa1E. L. Bolfe2E. L. Bolfe3L. Macarringe4A. C. Botelho5University of Campinas – Unicamp / Graduate Programme in Geography, Campinas - SP, BrazilFaculdade de Ciências e Tecnologia – UNESP PP, Presidente Prudente - SP, BrazilUniversity of Campinas – Unicamp / Graduate Programme in Geography, Campinas - SP, BrazilBrazilian Agricultural Research Corporation – Embrapa Informática Agropecuária, Campinas - SP, BrazilUniversity of Campinas – Unicamp / Graduate Programme in Geography, Campinas - SP, BrazilUniversity of Campinas – Unicamp / Graduate Programme in Geography, Campinas - SP, BrazilOne of the main applications of satellite images is the characterization of terrestrial coverage, that from the use of classification techniques, allows the monitoring of spatial transformations of the terrestrial surface, this process being directly associated with the potential of classifiers to differentiate the most diverse data present in the images, a fundamental aspect for the use of remote sensing data. This article evaluates the performance of different classification algorithms in the mapping classes of land use and land cover in medium resolution images from the Landsat 8 program, the test area of this test corresponds to the Municipality of Tasso Fragoso (State Maranhão - Brazil), stands out for a typical vegetation cover of the Cerrado Biome, presents similar spectral patterns that induce high difficulty of class differentiation automatically. In this paper, were analyzed the machine learning algorithms C5.0 and Random Forest in comparison to traditional classification algorithms being the Minimum Distance and the Spectral Angle Mapper. The best results were generated by Random Forest with 90% accuracy and Kappa of 0.861, followed by the C5.0 algorithm. Traditional algorithms, on the other hand, presented a lower precision rate with global accuracy, not exceeding 75% of accuracy and Kappa varying between 0.507 and 0.627. The accuracy of the producer showed that all the algorithms, in major or minor tendency presented difficulties in to differentiate the areas, with rates of mistakes varying between 25 and 75%, being the main, the confusion with pastoral areas.https://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/V-3-2021/167/2021/isprs-annals-V-3-2021-167-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author P. R. M. Pereira
F. W. D. Costa
E. L. Bolfe
E. L. Bolfe
L. Macarringe
A. C. Botelho
spellingShingle P. R. M. Pereira
F. W. D. Costa
E. L. Bolfe
E. L. Bolfe
L. Macarringe
A. C. Botelho
COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
author_facet P. R. M. Pereira
F. W. D. Costa
E. L. Bolfe
E. L. Bolfe
L. Macarringe
A. C. Botelho
author_sort P. R. M. Pereira
title COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL
title_short COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL
title_full COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL
title_fullStr COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL
title_full_unstemmed COMPARISON OF CLASSIFICATION ALGORITHMS OF IMAGES FOR THE MAPPING OF THE LAND COVERING IN TASSO FRAGOSO MUNICIPALITY, BRAZIL
title_sort comparison of classification algorithms of images for the mapping of the land covering in tasso fragoso municipality, brazil
publisher Copernicus Publications
series ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
issn 2194-9042
2194-9050
publishDate 2021-06-01
description One of the main applications of satellite images is the characterization of terrestrial coverage, that from the use of classification techniques, allows the monitoring of spatial transformations of the terrestrial surface, this process being directly associated with the potential of classifiers to differentiate the most diverse data present in the images, a fundamental aspect for the use of remote sensing data. This article evaluates the performance of different classification algorithms in the mapping classes of land use and land cover in medium resolution images from the Landsat 8 program, the test area of this test corresponds to the Municipality of Tasso Fragoso (State Maranhão - Brazil), stands out for a typical vegetation cover of the Cerrado Biome, presents similar spectral patterns that induce high difficulty of class differentiation automatically. In this paper, were analyzed the machine learning algorithms C5.0 and Random Forest in comparison to traditional classification algorithms being the Minimum Distance and the Spectral Angle Mapper. The best results were generated by Random Forest with 90% accuracy and Kappa of 0.861, followed by the C5.0 algorithm. Traditional algorithms, on the other hand, presented a lower precision rate with global accuracy, not exceeding 75% of accuracy and Kappa varying between 0.507 and 0.627. The accuracy of the producer showed that all the algorithms, in major or minor tendency presented difficulties in to differentiate the areas, with rates of mistakes varying between 25 and 75%, being the main, the confusion with pastoral areas.
url https://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/V-3-2021/167/2021/isprs-annals-V-3-2021-167-2021.pdf
work_keys_str_mv AT prmpereira comparisonofclassificationalgorithmsofimagesforthemappingofthelandcoveringintassofragosomunicipalitybrazil
AT fwdcosta comparisonofclassificationalgorithmsofimagesforthemappingofthelandcoveringintassofragosomunicipalitybrazil
AT elbolfe comparisonofclassificationalgorithmsofimagesforthemappingofthelandcoveringintassofragosomunicipalitybrazil
AT elbolfe comparisonofclassificationalgorithmsofimagesforthemappingofthelandcoveringintassofragosomunicipalitybrazil
AT lmacarringe comparisonofclassificationalgorithmsofimagesforthemappingofthelandcoveringintassofragosomunicipalitybrazil
AT acbotelho comparisonofclassificationalgorithmsofimagesforthemappingofthelandcoveringintassofragosomunicipalitybrazil
_version_ 1721373626436943872