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Study of Different Face Recognition Algorithms and Challenges


Affiliations
1 Dept. of Electronics & Communication, Maulana Azad National Institute of Technology, Bhopal, India
 

At present face recognition has wide area of applications such as security, law enforcement. Imaging conditions, Orientation, Pose and presence of occlusion are huge problems associated with face recognition. The performance of face recognition systems decreases due to these problems. Discriminant Analysis (LDA) or Principal Components Analysis (PCA) is used to get better recognition results. Human face contains relevant information that can extracted from face model developed by PCA technique. Principal Components Analysis method uses eigenface approach to describe face image variation. A face recognition technique that is robust to all situations is not available. Some techniques are better in case of illumination, some for pose problem and some for occlusion problem. This paper presents some algorithms for face recognition.

Keywords

Eigenfaces, Recognition, PCA, LDA.
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  • Study of Different Face Recognition Algorithms and Challenges

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Authors

Uma Shankar Kurmi
Dept. of Electronics & Communication, Maulana Azad National Institute of Technology, Bhopal, India
Dheeraj Agrawal
Dept. of Electronics & Communication, Maulana Azad National Institute of Technology, Bhopal, India
R. K. Baghel
Dept. of Electronics & Communication, Maulana Azad National Institute of Technology, Bhopal, India

Abstract


At present face recognition has wide area of applications such as security, law enforcement. Imaging conditions, Orientation, Pose and presence of occlusion are huge problems associated with face recognition. The performance of face recognition systems decreases due to these problems. Discriminant Analysis (LDA) or Principal Components Analysis (PCA) is used to get better recognition results. Human face contains relevant information that can extracted from face model developed by PCA technique. Principal Components Analysis method uses eigenface approach to describe face image variation. A face recognition technique that is robust to all situations is not available. Some techniques are better in case of illumination, some for pose problem and some for occlusion problem. This paper presents some algorithms for face recognition.

Keywords


Eigenfaces, Recognition, PCA, LDA.