PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ

Linear discriminant analysis is one of method frequently used and developed in the field of pattern recognition. This method tries to find the optimal subspace by maximizing the Fisher Criterion. Application of pattern recognition in highdimensional data and the less number of training samples cause...

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Main Authors: Rully Soelaiman, Wiwik Anggraini, M Mujahidillah
Format: Article
Language:English
Published: Institut Teknologi Sepuluh Nopember 2009-01-01
Series:JUTI: Jurnal Ilmiah Teknologi Informasi
Online Access:http://juti.if.its.ac.id/index.php/juti/article/view/80
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spelling doaj-91e7b1fcf8dc42d3b68565ff9a016b4f2021-05-29T12:50:09ZengInstitut Teknologi Sepuluh NopemberJUTI: Jurnal Ilmiah Teknologi Informasi1412-63892406-85352009-01-017313514210.12962/j24068535.v7i3.a8080PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZRully SoelaimanWiwik AnggrainiM MujahidillahLinear discriminant analysis is one of method frequently used and developed in the field of pattern recognition. This method tries to find the optimal subspace by maximizing the Fisher Criterion. Application of pattern recognition in highdimensional data and the less number of training samples cause singular within-class distribution matrix. In this paper, we developed Linear Discriminant Analysis method using Fukunaga Koontz Transformation approach to meet the needs of the nonsingular within-class distribution matrix. Based on Fukunaga Koontz Transformation, the entire space of data is decomposed into four subspaces with different discriminant ability (measured by the ratio of eigenvalue). Maximum Fisher Criterion can be identified by linking the ratio of eigenvalue and generalized eigenvalue. Next, this paper will introduce a new method called complex discriminant analysis by transforming the data into intraclass and extraclass then maximize their Bhattacharyya distance. This method is more efficient because it can work even though within-class distribution matrix is singular and between-class distribution matrix is zero.http://juti.if.its.ac.id/index.php/juti/article/view/80
collection DOAJ
language English
format Article
sources DOAJ
author Rully Soelaiman
Wiwik Anggraini
M Mujahidillah
spellingShingle Rully Soelaiman
Wiwik Anggraini
M Mujahidillah
PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ
JUTI: Jurnal Ilmiah Teknologi Informasi
author_facet Rully Soelaiman
Wiwik Anggraini
M Mujahidillah
author_sort Rully Soelaiman
title PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ
title_short PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ
title_full PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ
title_fullStr PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ
title_full_unstemmed PENERAPAN METODE ANALISA DISKRIMINAN MAJEMUK DENGAN PENDEKATAN TRANSFORMASI FUKUNAGA KOONTZ
title_sort penerapan metode analisa diskriminan majemuk dengan pendekatan transformasi fukunaga koontz
publisher Institut Teknologi Sepuluh Nopember
series JUTI: Jurnal Ilmiah Teknologi Informasi
issn 1412-6389
2406-8535
publishDate 2009-01-01
description Linear discriminant analysis is one of method frequently used and developed in the field of pattern recognition. This method tries to find the optimal subspace by maximizing the Fisher Criterion. Application of pattern recognition in highdimensional data and the less number of training samples cause singular within-class distribution matrix. In this paper, we developed Linear Discriminant Analysis method using Fukunaga Koontz Transformation approach to meet the needs of the nonsingular within-class distribution matrix. Based on Fukunaga Koontz Transformation, the entire space of data is decomposed into four subspaces with different discriminant ability (measured by the ratio of eigenvalue). Maximum Fisher Criterion can be identified by linking the ratio of eigenvalue and generalized eigenvalue. Next, this paper will introduce a new method called complex discriminant analysis by transforming the data into intraclass and extraclass then maximize their Bhattacharyya distance. This method is more efficient because it can work even though within-class distribution matrix is singular and between-class distribution matrix is zero.
url http://juti.if.its.ac.id/index.php/juti/article/view/80
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