Similarity of Inference Face Matching On Angle Oriented Face Recognition

Face recognition is one of the wide applications of image processing technique. In this paper complete image of face recognition algorithm is proposed. In the prepared algorithm the local information is extracted using angle oriented discrete cosine transforms and invokes certain normalization techniques. To increase the Reliability of the Face detection process, neighborhood pixel information is incorporated into the proposed method. Discrete Cosine Transform (DCT) are renowned methods are implementing in the field of access control and security are utilizing the feature extraction capabilities. But these algorithms have certain limitations like poor discriminatory power and disability to handle large computational load. The face matching classification for the proposed system is done using various distance measure methods like Euclidean Distance, Manhattan Distance and Cosine Distance methods and the recognition rate were compared for different distance measures. The proposed method has been successfully tested on image database which is acquired under variable illumination and facial expressions. It is observed from the results that use of face matching like various method gives a recognition rate are high while comparing other methods. Also this study analyzes and compares the obtained results from the proposed Angle oriented face recognition with threshold based face detector to show the level of robustness using texture features in the proposed face detector. It was verified that a face recognition based on textual features can lead to an efficient and more reliable face detection method compared with KLT (Karhunen Loeve Transform), a threshold face detector. Keywords : Angle Oriented, Cosine Similarity, Discrete Cosine Transform, Euclidean Distance, Face Matching, Feature Extraction, Face Recognition, Image texture features.

[1]  Rainer Stiefelhagen,et al.  Local appearance based face recognition using discrete cosine transform , 2005, 2005 13th European Signal Processing Conference.

[2]  Alaa Y. Taqa,et al.  Increasing the Reliability of Fuzzy Inference System- Based Skin Detector , 2010 .

[3]  Paul E. Black,et al.  Dictionary of Algorithms and Data Structures | NIST , 1998 .

[4]  Daijin Kim,et al.  Illumination-robust face recognition using ridge regressive bilinear models , 2008, Pattern Recognit. Lett..

[5]  Brian C. Lovell,et al.  Face Recognition Robust to Head Pose from One Sample Image , 2006, 18th International Conference on Pattern Recognition (ICPR'06).

[6]  Monson H. Hayes,et al.  A hidden markov model-based approach for face detection and recognition , 1999 .

[7]  Martin D. Levine,et al.  Face Recognition Using the Discrete Cosine Transform , 2001, International Journal of Computer Vision.

[8]  Alaa Y. Taqa,et al.  Increasing the reliability of skin detectors , 2010 .

[9]  Rama Chellappa,et al.  Human and machine recognition of faces: a survey , 1995, Proc. IEEE.

[10]  P. Yip,et al.  Discrete Cosine Transform: Algorithms, Advantages, Applications , 1990 .

[11]  Zhongde Wang Fast algorithms for the discrete W transform and for the discrete Fourier transform , 1984 .

[12]  Subhash Kak,et al.  Block-level discrete cosine transform coefficients for autonomic face recognition , 2003 .

[13]  M. Javed,et al.  Face images feature extraction analysis for recognition in frequency domain , 2006 .

[14]  Kuldip K. Paliwal,et al.  Features for robust face-based identity verification , 2003, Signal Process..

[15]  M. Turk,et al.  Eigenfaces for Recognition , 1991, Journal of Cognitive Neuroscience.

[16]  Y. Chien,et al.  Pattern classification and scene analysis , 1974 .