Title :
Weighted Two-Dimensional Heterosecedastic Discriminant Analysis for face recognition
Author :
Gan, Jun-Ying ; He, Si-Bin ; Wang, Peng
Author_Institution :
Sch. of Inf., Wuyi Univ., Jiangmen, China
Abstract :
In Two-Dimensional Linear Discriminant Analysis (2DLDA), it is satisfied that within-class covariance matrixes are equal; while in Two-Dimensional Heteroscedastic Discriminant Analysis (2DHDA), within-class covariance matrixes are heteroscedastic. Based on the characters of 2DLDA and 2DHDA, Weighted Two-Dimensional Heteroscedastic Discriminant Analysis (W2DHDA) is introduced and used in face recognition, in which within-class covariance matrix is defined as weighted summation of both within-class covariance matrixes of 2DLDA and 2DHDA. In this way, the defined within-class covariance matrixes in W2DHDA are more robust. Experimental results based on ORL (Olivetti Research Laboratory) and Yale mixture face database show the validity of W2DHDA in face recognition.
Keywords :
covariance matrices; face recognition; 2D linear discriminant analysis; face recognition; weighted 2D heterosecedastic discriminant analysis; weighted summation; within-class covariance matrix; Covariance matrix; Databases; Face; Face recognition; Feature extraction; Linear discriminant analysis; Training; Face Recognition; Two-Dimensional Heteroscedastic Discriminant Analysis; Two-Dimensional Linear Discriminant Analysis; Weighted Two-Dimensional Heteroscedastic Discriminant Analysis;
Conference_Titel :
Signal Processing (ICSP), 2010 IEEE 10th International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4244-5897-4
DOI :
10.1109/ICOSP.2010.5656852