An Enhanced Linear Discriminant Analysis Criterion Based on Uniform Theory of PCA and LDA[J]. Journal of Image and Graphics, 2008, 13(4): 702. DOI: 10.11834/jig.20080418.
An Enhanced Linear Discriminant Analysis Criterion Based on Uniform Theory of PCA and LDA
Principal Components Analysis (PCA)and Linear Discriminant Analysis (LDA)are two popular feature extraction methods for pattern recognition
and in image recognition
researchers usually use PCA+LDA instead of LDA.An enhanced linear discriminant analysis (ELDA)criterion
which integrates their merits
is proposed in the paper.It can not only overcome the PCA’s shortcomings of lower precision when using the minimal distance
but also resolve the problem of projective vector solution of LDA when the within class scatter matrix is singular.So the two step method of PCA+LDA can be substituted by ELDA.Moreover
its recognition rate exceeds the single PCA
LDA
or PCA+LDA largely.Many experiments on ORL
YALE and NUST603 face database indicate that our method is effective.