MULTI MODAL FACE RECOGNITION USING BLOCK BASED CURVELET FEATURES
Jyothi. K 1
, Prabhakar C.J 2
1 Department of IS&E, J.N.N College of Engineering, Shimoga, Karnataka, India
2Department of Studies and Research in Computer Science Kuvempu University,
Shankaraghatta, Karnataka, India
ABSTRACT
In this paper, we present multimodal 2D +3D face recognition method using block based curvelet features.
The 3D surface of face (Depth Map) is computed from the stereo face images using stereo vision technique.
The statistical measures such as mean, standard deviation, variance and entropy are extracted from each
block of curvelet subband for both depth and intensity images independently.In order to compute the
decision score, the KNN classifier is employed independently for both intensity and depth map. Further,
computed decision scoresof intensity and depth map are combined at decision level to improve the face
recognition rate. The combination of intensity and depth map is verified experimentally using benchmark
face database. The experimental results show that the proposed multimodal method is better than
individual modality.
Keywords
Curvelet Transform, Multimodal face recognition, Depth, Disparity, Stereo, Block- based.
More Details : http://airccse.org/journal/ijcga/papers/4214ijcga03.pdf
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