Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis

In face recognition applications, the dimension of the sample space is usually larger than the number of the samples in a training set. As a result, Fisher Linear Discriminant Analysis (FLD) based methods suffers due to singularity problem (of scatter matrix). This situation is often referred as &qu...

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Main Authors: Janahiraman T.V., Omar J., Farukh H.N.
Other Authors: 35198314400
Format: Conference paper
Published: 2023
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Institution: Universiti Tenaga Nasional
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spelling my.uniten.dspace-298422023-12-28T16:57:54Z Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis Janahiraman T.V. Omar J. Farukh H.N. 35198314400 24463418200 35198080900 Computer science Cosine transforms Discrete cosine transforms Discriminant analysis Feature extraction Fisher information matrix Learning algorithms Nonlinear analysis Complex data Face images Fisher linear discriminant analysis High-dimensional Input sample Kernel fisher discriminant analysis Linear algorithms Nonlinear features Nonlinear kernel functions ORL database Recognition accuracy Sample space Scatter matrix Singularity problems Small Sample Size Training sets Face recognition In face recognition applications, the dimension of the sample space is usually larger than the number of the samples in a training set. As a result, Fisher Linear Discriminant Analysis (FLD) based methods suffers due to singularity problem (of scatter matrix). This situation is often referred as "small sample size" (SSS) problem. Moreover, FLD is a linear algorithm by nature. Hence, it fails to extract important information from nonlinear and complex data such as face image. To remedy this problem, this paper presents a new face recognition approach by integrating Discrete Cosine Transform (DCT) and Kernel Fisher Discriminant Analysis (KFDA). The DCT has the capability to compact the energy in an image and let the dimensionality of the input sample space to be reduced. Then, KFDA, a new variant of FLD, will be used to extract the most discriminating feature. This is performed by transforming the reduced DCT subset using a nonlinear kernel function to a high dimensional nonlinear feature space and then followed by the FLD step. Based on the extensive experiments performed on ORL Database, the highest recognition accuracy of 95.375% is achieved with only 24 features. �2006 IEEE. Final 2023-12-28T08:57:54Z 2023-12-28T08:57:54Z 2006 Conference paper 10.1109/ICOCI.2006.5276535 2-s2.0-71249128487 https://www.scopus.com/inward/record.uri?eid=2-s2.0-71249128487&doi=10.1109%2fICOCI.2006.5276535&partnerID=40&md5=53d7047c6ff2b1ae8c76ecf6b1f18dca https://irepository.uniten.edu.my/handle/123456789/29842 5276535 Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Computer science
Cosine transforms
Discrete cosine transforms
Discriminant analysis
Feature extraction
Fisher information matrix
Learning algorithms
Nonlinear analysis
Complex data
Face images
Fisher linear discriminant analysis
High-dimensional
Input sample
Kernel fisher discriminant analysis
Linear algorithms
Nonlinear features
Nonlinear kernel functions
ORL database
Recognition accuracy
Sample space
Scatter matrix
Singularity problems
Small Sample Size
Training sets
Face recognition
spellingShingle Computer science
Cosine transforms
Discrete cosine transforms
Discriminant analysis
Feature extraction
Fisher information matrix
Learning algorithms
Nonlinear analysis
Complex data
Face images
Fisher linear discriminant analysis
High-dimensional
Input sample
Kernel fisher discriminant analysis
Linear algorithms
Nonlinear features
Nonlinear kernel functions
ORL database
Recognition accuracy
Sample space
Scatter matrix
Singularity problems
Small Sample Size
Training sets
Face recognition
Janahiraman T.V.
Omar J.
Farukh H.N.
Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
description In face recognition applications, the dimension of the sample space is usually larger than the number of the samples in a training set. As a result, Fisher Linear Discriminant Analysis (FLD) based methods suffers due to singularity problem (of scatter matrix). This situation is often referred as "small sample size" (SSS) problem. Moreover, FLD is a linear algorithm by nature. Hence, it fails to extract important information from nonlinear and complex data such as face image. To remedy this problem, this paper presents a new face recognition approach by integrating Discrete Cosine Transform (DCT) and Kernel Fisher Discriminant Analysis (KFDA). The DCT has the capability to compact the energy in an image and let the dimensionality of the input sample space to be reduced. Then, KFDA, a new variant of FLD, will be used to extract the most discriminating feature. This is performed by transforming the reduced DCT subset using a nonlinear kernel function to a high dimensional nonlinear feature space and then followed by the FLD step. Based on the extensive experiments performed on ORL Database, the highest recognition accuracy of 95.375% is achieved with only 24 features. �2006 IEEE.
author2 35198314400
author_facet 35198314400
Janahiraman T.V.
Omar J.
Farukh H.N.
format Conference paper
author Janahiraman T.V.
Omar J.
Farukh H.N.
author_sort Janahiraman T.V.
title Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
title_short Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
title_full Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
title_fullStr Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
title_full_unstemmed Face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
title_sort face recognition using integrated discrete cosine transform and kernel fisher discriminant analysis
publishDate 2023
_version_ 1806427398439174144