Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm

We take the concept of typicality from the field of cognitive psychology, and we apply the meaning to the interpretation of numerical data sets and color images through fuzzy clustering algorithms, particularly the GKPFCM, looking to get better information from the processed data. The Gustafson Kess...

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Main Authors: B. Ojeda-Magaña, R. Ruelas, M. A. Corona Nakamura, D. W. Carr Finch, L. Gómez-Barba
Format: Article
Language:English
Published: Hindawi Limited 2013-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2013/716753
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spelling doaj-283fb097976b4bb98b6cb58702a399812020-11-24T21:33:14ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472013-01-01201310.1155/2013/716753716753Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering AlgorithmB. Ojeda-Magaña0R. Ruelas1M. A. Corona Nakamura2D. W. Carr Finch3L. Gómez-Barba4Systems Department, CUCEA, Guadalajara University, 45100 Zapopan, JAL, MexicoDepartment of Projects Engineering DIP-CUCEI, University of Guadalajara, 45101 Zapopan, JAL, MexicoDepartment of Projects Engineering DIP-CUCEI, University of Guadalajara, 45101 Zapopan, JAL, MexicoDepartment of Projects Engineering DIP-CUCEI, University of Guadalajara, 45101 Zapopan, JAL, MexicoSystems Department, CUCEA, Guadalajara University, 45100 Zapopan, JAL, MexicoWe take the concept of typicality from the field of cognitive psychology, and we apply the meaning to the interpretation of numerical data sets and color images through fuzzy clustering algorithms, particularly the GKPFCM, looking to get better information from the processed data. The Gustafson Kessel Possibilistic Fuzzy c-means (GKPFCM) is a hybrid algorithm that is based on a relative typicality (membership degree, Fuzzy c-means) and an absolute typicality (typicality value, Possibilistic c-means). Thus, using both typicalities makes it possible to learn and analyze data as well as to relate the results with the theory of prototypes. In order to demonstrate these results we use a synthetic data set and a digitized image of a glass, in a first example, and images from the Berkley database, in a second example. The results clearly demonstrate the advantages of the information obtained about numerical data sets, taking into account the different meaning of typicalities and the availability of both values with the clustering algorithm used. This approach allows the identification of small homogeneous regions, which are difficult to find.http://dx.doi.org/10.1155/2013/716753
collection DOAJ
language English
format Article
sources DOAJ
author B. Ojeda-Magaña
R. Ruelas
M. A. Corona Nakamura
D. W. Carr Finch
L. Gómez-Barba
spellingShingle B. Ojeda-Magaña
R. Ruelas
M. A. Corona Nakamura
D. W. Carr Finch
L. Gómez-Barba
Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm
Mathematical Problems in Engineering
author_facet B. Ojeda-Magaña
R. Ruelas
M. A. Corona Nakamura
D. W. Carr Finch
L. Gómez-Barba
author_sort B. Ojeda-Magaña
title Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm
title_short Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm
title_full Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm
title_fullStr Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm
title_full_unstemmed Pattern Recognition in Numerical Data Sets and Color Images through the Typicality Based on the GKPFCM Clustering Algorithm
title_sort pattern recognition in numerical data sets and color images through the typicality based on the gkpfcm clustering algorithm
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2013-01-01
description We take the concept of typicality from the field of cognitive psychology, and we apply the meaning to the interpretation of numerical data sets and color images through fuzzy clustering algorithms, particularly the GKPFCM, looking to get better information from the processed data. The Gustafson Kessel Possibilistic Fuzzy c-means (GKPFCM) is a hybrid algorithm that is based on a relative typicality (membership degree, Fuzzy c-means) and an absolute typicality (typicality value, Possibilistic c-means). Thus, using both typicalities makes it possible to learn and analyze data as well as to relate the results with the theory of prototypes. In order to demonstrate these results we use a synthetic data set and a digitized image of a glass, in a first example, and images from the Berkley database, in a second example. The results clearly demonstrate the advantages of the information obtained about numerical data sets, taking into account the different meaning of typicalities and the availability of both values with the clustering algorithm used. This approach allows the identification of small homogeneous regions, which are difficult to find.
url http://dx.doi.org/10.1155/2013/716753
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