I. Introduction
As one of the hottest topics in the field of pattern recognition and artificial intelligence, face recognition has been widely used in public securities, such as crime and terrorist detection, etc. There are various subspace transformation methods for recognizing faces. Principal component analysis (PCA) [1] is a widely used linear subspace transformation method maximizing the variance of the transformed features in the projective subspace. Linear discriminant analysis (LDA) [2] encodes discriminant information by maximizing the between-class covariance, while minimizing the within-class covariance in the projective subspace. Moreover, in order to keep spatial structure information of a gray image, Yang et al. [3] proposed an algorithm called two-dimensional PCA (2D-PCA) for face recognition, in which the image covariance (scatter) matrix is directly computed from the image matrix representation. Li and Yuan [4] extended this idea using discriminant information and presented 2D-LDA, which constructs the image between-class covariance matrix and the image within-class covariance matrix. All these methods are used to deal with gray face images rather than color face images because some past researches suggested that color appears to confer no significant face recognition advantages beyond the gray [5].