For the purpose of face recognition (FR), the new color local texture features, i.e., color local Gabor wavelets (CLGWs) and color local binary pattern (CLBP), are being proposed. The proposed color local texture features are able to exploit the discriminative information derived from spatiochromatic texture patterns of different spectral channels within a certain local face region. Furthermore, in order to maximize a complementary effect taken by using color and texture information, the opponent color texture features that capture the texture patterns of spatial interactions between spectral channels are also incorporated into the generation of CLGW and CLBP. In addition, to perform the final classification, multiple color local texture features (each corresponding to the associated color band) are combined within a feature-level fusion framework using Neural Network. Particularly, compared with gray scale texture features, the proposed color local texture features are able to provide excellent recognition rates for face images taken under severe variation in illumination, as well as some variations in face images.
@artical{s242013ijsea02041005,
Title = "Facial Feature Extraction Based on Local Color and Texture for Face Recognition using Neural Network",
Journal ="International Journal of Science and Engineering Applications (IJSEA)",
Volume = "2",
Issue ="4",
Pages ="78 - 82",
Year = "2013",
Authors ="S.Cynthia Christabel, M.Annalakshmi, Mr.D.Prince Winston"}