A New Method for Face Recognition Using Feature Clustering with Fuzzy Parameters


Authors

S. Biswas - Department of Mathematics, National Institute of Technology, Jamshedpur. T. Som - Department of Applied Mathematics, Indian Institute of Technology (BHU), Varanasi.


Abstract

In this paper, we have applied Gabor filter for fiducial point localisation. The fiducial points are represented as trapezoidal fuzzy numbers. These fiducial points are then transformed into crisp numbers. The number of fiducial points are then reduced by using a distance formula. The distance of each of these fiducial points are then stored in the database of the system. The same methodology is applied on the input face which is to be matched with the faces available in the database. Then a fuzzy preference relation matrix is obtained .The largest eigen value of this matrix is then determined. Once the largest eigen value is determined the corresponding priority vector can easily be obtained, from which we can easily match the input face with the database. In the broadest sense we have observed we have used the fuzzy mathematics to counter the impreciseness in facial recognition.


Share and Cite

  • Share on Facebook
  • Share on Twitter
  • Share on LinkedIn
ISRP Style

S. Biswas, T. Som, A New Method for Face Recognition Using Feature Clustering with Fuzzy Parameters, Journal of Mathematics and Computer Science, 7 (2013), no. 3, 181-195

AMA Style

Biswas S., Som T., A New Method for Face Recognition Using Feature Clustering with Fuzzy Parameters. J Math Comput SCI-JM. (2013); 7(3):181-195

Chicago/Turabian Style

Biswas, S., Som, T.. "A New Method for Face Recognition Using Feature Clustering with Fuzzy Parameters." Journal of Mathematics and Computer Science, 7, no. 3 (2013): 181-195


Keywords


MSC


References