Title of article
Two-Dimensional Heteroscedastic Discriminant Analysis for Facial Gender Classification
Author/Authors
Junying Gan، نويسنده , , Sibin He، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
6
From page
169
To page
174
Abstract
In this paper, a novel discriminant analysis named two-dimensional Heteroscedastic Discriminant Analysis (2DHDA) is presented, and used for gender classification. In 2DHDA, equal within-class covariance constraint is removed. Firstly, the criterion of 2DHDA is defined according to that of 2DLDA. Secondly, the criterion of 2DHDA, log and rearranging terms are taken, and then the optimal projection matrix is solved by gradient descent algorithm. Thirdly, face images are projected onto the optimal projection matrix, thus the 2DHDA features are extracted. Finally, Nearest Neighbor classifier is selected to perform gender classification. Experimental results show that higher recognition rate is obtained by way of 2DHDA compared with 2DLDA and HDA
Keywords
Gender classification , Two-dimensional teteroscedastic discriminant analysis , Two-dimensional linear discriminant analysis
Journal title
Computer and Information Science
Serial Year
2009
Journal title
Computer and Information Science
Record number
678423
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