Article ID Journal Published Year Pages File Type
531211 Pattern Recognition 2006 4 Pages PDF
Abstract

We propose a generalized null space uncorrelated Fisher discriminant analysis (GNUFDA) technique integrating the uncorrelated discriminant analysis and weighted pairwise Fisher criterion. The GNUFDA can effectively deal with the small sample-size problem and perform satisfactorily when the dimensionality of the null space decreases with increase in the number of training samples per class and/or classes, C. The proposed GNUFDA can extract at most C-1C-1 optimal uncorrelated discriminative vectors without being influenced by the null-space dimensionality.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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