Using Gabor Features for Multi Pose Face recognition in color images ABSTRACT: Human face recognition plays an important role in applications such as video surveillance, human computer interface, and face image database management. This paper presents an improved face recognition method formulti-pose face recognition in color images, which addresses the problems of illumination and pose variation. At first, color multi-pose faces image features were extracted based on Gabor wavelet with different orientations and scales filters, then the mean and standard deviation of the filtering image output are computed as featuresfor face recognition. In addition, these features were fed up into support vector machine (SVM) for facerecognition. Experimental results show that successful face recognition over a wide range of facial variations incolor, position, scale, orientation, 3D pose, and expression in images from stereo-pair database. Did you like this research project? To get this research project Guidelines, Training and Code... Click Here facebook twitter google+ linkedin stumble pinterest Effective Fuzzy C means clustering algorithm for MRI Brain tumor detection Video Watermarking Algorithms Using the SVD Transform