An innovative weighted 2 DLDA approach for face recognition

Two Dimensional Linear Discrimination Analysis (2DLDA) is an effective feature extraction approach for face recognition, which manipulates on the two dimensional image matrices directly. However, some between-class distances in the projected space are too small andthis may bring large error classifi...

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Main Authors: Lu, C., An, Senjian, Liu, Wan-quan, Liu, X.
Other Authors: Paisarn Muneesawang
Format: Conference Paper
Published: Springer 2009
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/21668
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author Lu, C.
An, Senjian
Liu, Wan-quan
Liu, X.
author2 Paisarn Muneesawang
author_facet Paisarn Muneesawang
Lu, C.
An, Senjian
Liu, Wan-quan
Liu, X.
author_sort Lu, C.
building Curtin Institutional Repository
collection Online Access
description Two Dimensional Linear Discrimination Analysis (2DLDA) is an effective feature extraction approach for face recognition, which manipulates on the two dimensional image matrices directly. However, some between-class distances in the projected space are too small andthis may bring large error classification rates. In this paper we proposea new 2DLDA-based approach that can overcome such drawback in the 2DLDA. The proposed approach redefines the between-class scatter matrix by putting a weighting function based on the between-class distances, and this will balance the between-class distances in the projected space iteratively. In order to design an effective weighting function, the between-class distances are calculated and then used to iteratively change the between-class scatter matrix. Experimental results showed that the proposed approach can improve the recognition rates on the ORL database, the Yale database and the YaleB database in comparison with other 2DLDA variants
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institution Curtin University Malaysia
institution_category Local University
last_indexed 2025-11-14T07:40:16Z
publishDate 2009
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spelling curtin-20.500.11937-216682022-12-09T06:09:40Z An innovative weighted 2 DLDA approach for face recognition Lu, C. An, Senjian Liu, Wan-quan Liu, X. Paisarn Muneesawang Feng Wu Itsuo Kumazawa Athikom Roeksabutr Mark Liao Xiaoou Tang Weighted - Linear Discriminant Analysis Face recognition Two dimensional Linear Discriminant Analysis Two Dimensional Linear Discrimination Analysis (2DLDA) is an effective feature extraction approach for face recognition, which manipulates on the two dimensional image matrices directly. However, some between-class distances in the projected space are too small andthis may bring large error classification rates. In this paper we proposea new 2DLDA-based approach that can overcome such drawback in the 2DLDA. The proposed approach redefines the between-class scatter matrix by putting a weighting function based on the between-class distances, and this will balance the between-class distances in the projected space iteratively. In order to design an effective weighting function, the between-class distances are calculated and then used to iteratively change the between-class scatter matrix. Experimental results showed that the proposed approach can improve the recognition rates on the ORL database, the Yale database and the YaleB database in comparison with other 2DLDA variants 2009 Conference Paper http://hdl.handle.net/20.500.11937/21668 10.1007/978-3-642-10467-1_9 Springer restricted
spellingShingle Weighted - Linear Discriminant Analysis
Face recognition
Two dimensional Linear Discriminant Analysis
Lu, C.
An, Senjian
Liu, Wan-quan
Liu, X.
An innovative weighted 2 DLDA approach for face recognition
title An innovative weighted 2 DLDA approach for face recognition
title_full An innovative weighted 2 DLDA approach for face recognition
title_fullStr An innovative weighted 2 DLDA approach for face recognition
title_full_unstemmed An innovative weighted 2 DLDA approach for face recognition
title_short An innovative weighted 2 DLDA approach for face recognition
title_sort innovative weighted 2 dlda approach for face recognition
topic Weighted - Linear Discriminant Analysis
Face recognition
Two dimensional Linear Discriminant Analysis
url http://hdl.handle.net/20.500.11937/21668