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Performance Evaluation of Face Recognition Using Gabor Filter, Log Gabor filter and Discrete Wavelet Transform


Affiliations
1 Department of CSE, Manonmaniam Sundaranar University, India
2 Nandha College of Engineering and Technology, Erode, India
3 Department of CSE, Francis Xavier Engineering College, India
 

The face recognition problem is made difficult by the great variability in head rotation and tilt, lighting intensity and angle, facial expression, aging, partial occlusion (e.g. Wearing Hats, scarves, glasses etc.), etc. The Eigenfaces algorithm has long been a mainstay in the field of face recognition and the face space has high dimension. Principal components from the face space are used for face recognition to reduce dimensionality. A multiscale representation for face recognition is done to preserve the discriminant information prior to dimensionality reduction. In this paper, three multiscale representation techniques Gabor filter; Log Gabor filter and Discrete Wavelet Transform are applied prior to dimensionality reduction. PCA is then applied on the above techniques to find the face recognition accuracy rate and to compare the results of the three methods with PCA method. The approximation coefficients in discrete wavelet transform is extracted and it is used to compute the face recognition accuracy instead of using all the coefficients.

Keywords

Eigenfaces, Face Space, Gabor Filter, Principal Components, Multiscale, Log Gabor Filter.
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  • Performance Evaluation of Face Recognition Using Gabor Filter, Log Gabor filter and Discrete Wavelet Transform

Abstract Views: 329  |  PDF Views: 229

Authors

D. Murugan
Department of CSE, Manonmaniam Sundaranar University, India
S. Arumugam
Nandha College of Engineering and Technology, Erode, India
K. RajalakshmiDepartment of CSE, Francis Xavier Engineering College
Department of CSE, Francis Xavier Engineering College, India
T. I. Manish
Department of CSE, Manonmaniam Sundaranar University, India

Abstract


The face recognition problem is made difficult by the great variability in head rotation and tilt, lighting intensity and angle, facial expression, aging, partial occlusion (e.g. Wearing Hats, scarves, glasses etc.), etc. The Eigenfaces algorithm has long been a mainstay in the field of face recognition and the face space has high dimension. Principal components from the face space are used for face recognition to reduce dimensionality. A multiscale representation for face recognition is done to preserve the discriminant information prior to dimensionality reduction. In this paper, three multiscale representation techniques Gabor filter; Log Gabor filter and Discrete Wavelet Transform are applied prior to dimensionality reduction. PCA is then applied on the above techniques to find the face recognition accuracy rate and to compare the results of the three methods with PCA method. The approximation coefficients in discrete wavelet transform is extracted and it is used to compute the face recognition accuracy instead of using all the coefficients.

Keywords


Eigenfaces, Face Space, Gabor Filter, Principal Components, Multiscale, Log Gabor Filter.