Discriminant Tchebichef based moment features for face recognition

Face representation using small number of features with highest discriminatory measure is vital in the development of a face recognition system. In the holistic based approach, features are extracted from the global appearance of a face. Fisher's Linear Discriminant Analysis (FLD) is a popular...

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Main Authors: Tiagrajah V.J., Jamaludin O., Farrukh H.N.
Other Authors: 35198314400
Format: Conference paper
Published: 2023
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spelling my.uniten.dspace-296052023-12-28T15:05:47Z Discriminant Tchebichef based moment features for face recognition Tiagrajah V.J. Jamaludin O. Farrukh H.N. 35198314400 24463418200 55029501900 Face recognition feature extraction Linear Discriminant Analysis Tchebichef moments Discriminant analysis Feature extraction Face recognition systems Face representations Facial images Feature extractor Fisher's linear discriminant analysis Linear discriminant analysis Moment features ORL database Recognition rates Scatter matrix Small sample size problems Tchebichef Tchebichef moments Face recognition Face representation using small number of features with highest discriminatory measure is vital in the development of a face recognition system. In the holistic based approach, features are extracted from the global appearance of a face. Fisher's Linear Discriminant Analysis (FLD) is a popular holistic based feature extractor. However, it is subject to several limitations such as small sample size problem and heavy computation due to large scatter matrix. In this paper, a new approach is introduced to remedy this problem. Firstly, discrete orthogonal Tchebichef moments are computed to summarise the information lying in a large sized facial image. Secondly, the scatter matrices are calculated on the Tchebichef moments to obtain an optimised discriminant feature using FLD. The proposed method is tested on ORL database, which consist of 40 subjects with 400 images. Highest recognition rate of 96.5% were obtained using only 29 features. � 2011 IEEE. Final 2023-12-28T07:05:47Z 2023-12-28T07:05:47Z 2011 Conference paper 10.1109/ICSIPA.2011.6144081 2-s2.0-84857466779 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84857466779&doi=10.1109%2fICSIPA.2011.6144081&partnerID=40&md5=ebda31fb5fe81957afbfddd10e574a24 https://irepository.uniten.edu.my/handle/123456789/29605 6144081 192 197 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 Face recognition
feature extraction
Linear Discriminant Analysis
Tchebichef moments
Discriminant analysis
Feature extraction
Face recognition systems
Face representations
Facial images
Feature extractor
Fisher's linear discriminant analysis
Linear discriminant analysis
Moment features
ORL database
Recognition rates
Scatter matrix
Small sample size problems
Tchebichef
Tchebichef moments
Face recognition
spellingShingle Face recognition
feature extraction
Linear Discriminant Analysis
Tchebichef moments
Discriminant analysis
Feature extraction
Face recognition systems
Face representations
Facial images
Feature extractor
Fisher's linear discriminant analysis
Linear discriminant analysis
Moment features
ORL database
Recognition rates
Scatter matrix
Small sample size problems
Tchebichef
Tchebichef moments
Face recognition
Tiagrajah V.J.
Jamaludin O.
Farrukh H.N.
Discriminant Tchebichef based moment features for face recognition
description Face representation using small number of features with highest discriminatory measure is vital in the development of a face recognition system. In the holistic based approach, features are extracted from the global appearance of a face. Fisher's Linear Discriminant Analysis (FLD) is a popular holistic based feature extractor. However, it is subject to several limitations such as small sample size problem and heavy computation due to large scatter matrix. In this paper, a new approach is introduced to remedy this problem. Firstly, discrete orthogonal Tchebichef moments are computed to summarise the information lying in a large sized facial image. Secondly, the scatter matrices are calculated on the Tchebichef moments to obtain an optimised discriminant feature using FLD. The proposed method is tested on ORL database, which consist of 40 subjects with 400 images. Highest recognition rate of 96.5% were obtained using only 29 features. � 2011 IEEE.
author2 35198314400
author_facet 35198314400
Tiagrajah V.J.
Jamaludin O.
Farrukh H.N.
format Conference paper
author Tiagrajah V.J.
Jamaludin O.
Farrukh H.N.
author_sort Tiagrajah V.J.
title Discriminant Tchebichef based moment features for face recognition
title_short Discriminant Tchebichef based moment features for face recognition
title_full Discriminant Tchebichef based moment features for face recognition
title_fullStr Discriminant Tchebichef based moment features for face recognition
title_full_unstemmed Discriminant Tchebichef based moment features for face recognition
title_sort discriminant tchebichef based moment features for face recognition
publishDate 2023
_version_ 1806427460343955456
score 13.222552