Title of article :
Enhancement of the Face Recognition Using a Modified Fourier-Gabor Filter
Author/Authors :
Essam Al Daoud، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
A modified Fourier-Gabor filter is used to enhance the classificationrate of the face recognition. To verify the effectiveness of the proposedmethod, five well known methods are applied to four datasets; themethods are implemented without and with the suggested filter. Thedatasets consist of varying lighting conditions, different facialexpressions, configuration, orientations and emotions. The experimentsshow that using the suggested Fourier-Gabor filter enhances the classification rates for all methods, all datasets and all training/testing percentage. The highest classification rates are obtained by using Fourier-Gabor filter with batch linear discriminant analysis (FGBatch- ILDA), where the average classification rate over the four datasets is 93.8, the next is 93.77 by using Fourier-Gabor filter withlinear discriminant analysis (FG-LDA) and 90.85 by using Fourier- Gabor filter with support vector machine (FG-SVM
Keywords :
Gabor filter , Face recognition , linear discriminant analysis , Principal component analysis , Support vector machine , Fourier transform
Journal title :
International Journal of Advances in Soft Computing and Its Applications
Journal title :
International Journal of Advances in Soft Computing and Its Applications