Comparison of the classification methods for the images modeled by Gaussian random fields
In image classification often occur such situations, when images in some level are corrupted by additive noise. Such noise in image classification can be modeled by Gaussian random fields (GRF). In image classification supervised and unsupervised methods are used. In this paper we compare our propo...
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Vilnius University Press
2011-12-01
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doaj-f56d9ac10795476189a3ee2720baf6e62020-11-25T03:08:36ZengVilnius University PressLietuvos Matematikos Rinkinys0132-28182335-898X2011-12-0152proc. LMS10.15388/LMR.2011.mt04Comparison of the classification methods for the images modeled by Gaussian random fieldsLijana Stabingienė0Giedrius Stabingis1Kęstutis Dučinskas2Klaipeda UniversityKlaipeda UniversityKlaipeda University In image classification often occur such situations, when images in some level are corrupted by additive noise. Such noise in image classification can be modeled by Gaussian random fields (GRF). In image classification supervised and unsupervised methods are used. In this paper we compare our proposed supervised classification methods based on plugin Bayes discriminant functions (PBDF) (see [6] and [11]) with unsupervised classification method based on grey level co-occurrence matrix (GLCM) (see e.g. [8] and [1]). The remotely sensed image is used for classification (USGS Earth Explorer). Also GRF with different spatial correlation range are generated and added to the original remotely sensed image. Such situation can naturally occur during forest fire, when smoke covers some territory. These images are used for classification accuracy examination. https://www.journals.vu.lt/LMR/article/view/15421image classificationGaussian random fieldssupervised classificationBayes discriminant functionunsupervised classificationgrey level co-occurrence matrix |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lijana Stabingienė Giedrius Stabingis Kęstutis Dučinskas |
spellingShingle |
Lijana Stabingienė Giedrius Stabingis Kęstutis Dučinskas Comparison of the classification methods for the images modeled by Gaussian random fields Lietuvos Matematikos Rinkinys image classification Gaussian random fields supervised classification Bayes discriminant function unsupervised classification grey level co-occurrence matrix |
author_facet |
Lijana Stabingienė Giedrius Stabingis Kęstutis Dučinskas |
author_sort |
Lijana Stabingienė |
title |
Comparison of the classification methods for the images modeled by Gaussian random fields |
title_short |
Comparison of the classification methods for the images modeled by Gaussian random fields |
title_full |
Comparison of the classification methods for the images modeled by Gaussian random fields |
title_fullStr |
Comparison of the classification methods for the images modeled by Gaussian random fields |
title_full_unstemmed |
Comparison of the classification methods for the images modeled by Gaussian random fields |
title_sort |
comparison of the classification methods for the images modeled by gaussian random fields |
publisher |
Vilnius University Press |
series |
Lietuvos Matematikos Rinkinys |
issn |
0132-2818 2335-898X |
publishDate |
2011-12-01 |
description |
In image classification often occur such situations, when images in some level are corrupted by additive noise. Such noise in image classification can be modeled by Gaussian random fields (GRF). In image classification supervised and unsupervised methods are used. In this paper we compare our proposed supervised classification methods based on plugin Bayes discriminant functions (PBDF) (see [6] and [11]) with unsupervised classification method based on grey level co-occurrence matrix (GLCM) (see e.g. [8] and [1]). The remotely sensed image is used for classification (USGS Earth Explorer). Also GRF with different spatial correlation range are generated and added to the original remotely sensed image. Such situation can naturally occur during forest fire, when smoke covers some territory. These images are used for classification accuracy examination.
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topic |
image classification Gaussian random fields supervised classification Bayes discriminant function unsupervised classification grey level co-occurrence matrix |
url |
https://www.journals.vu.lt/LMR/article/view/15421 |
work_keys_str_mv |
AT lijanastabingiene comparisonoftheclassificationmethodsfortheimagesmodeledbygaussianrandomfields AT giedriusstabingis comparisonoftheclassificationmethodsfortheimagesmodeledbygaussianrandomfields AT kestutisducinskas comparisonoftheclassificationmethodsfortheimagesmodeledbygaussianrandomfields |
_version_ |
1724665444566040576 |