Author_Institution :
Coll. of Inf. Eng., Shanghai Maritime Univ., Shanghai, China
Abstract :
One of the key issues of face recognition is to extract the features of face images, and a new method of feature extraction, two-dimensional discriminate locality preserving projections (2D-DLPP), is proposed. 2D-DLPP benefits from three techniques, i.e., locality preserving projections (LPP), image based projection and discriminant analysis. Firstly, LPP is an effective feature extraction method that optimally preserves the local structure of the samples. Secondly, compared to vector based projection, image based projection can reduce the complexity of algorithm, avoid the small sample size problem and give more spatial structural information of image. Finally, discriminant analysis applied in 2D-DLPP can improve recognition performance by maximizing the interpersonal distance and minimizing the intrapersonal distance. Experiments are performed to test and evaluate the algorithm using the ORL and the Yale face databases. The Experimental results show that 2D-DLPP has better face recognition performance than other methods.
Keywords :
computational complexity; face recognition; feature extraction; 2D discriminant locality preserving projection; 2D discriminate locality preserving projection; 2D-DLPP; algorithm complexity; discriminant analysis; face images; face recognition; feature extraction; image based projection; interpersonal distance; intrapersonal distance; local structure; recognition performance; small sample size problem; spatial structural information; Data mining; Educational institutions; Face recognition; Feature extraction; Image analysis; Information analysis; Information processing; Performance analysis; Performance evaluation; Testing; discriminant analysis; face recognition; locality preserving projections; two-dimensional;