FINGER KNUCKLE PRINT BASED VERIFICATION USING MINIMUM AVERAGE CORRELATION ENERGY FILTER

Authors

  • Gaurav Verma Indian Institute of Technology Delhi
  • Aloka Sinha Indian Institute of Technology Delhi

DOI:

https://doi.org/10.7903/ijecs.1089

Keywords:

Authentication, Correlation Filter, Minimum Average Correlation Energy Filter, Finger Knuckle Print, Region of Interest

Abstract

Biometric-based technologies are being widely used for personal authentication and identification in access control and e-commerce applications. Finger knuckle print, a new hand based biometric trait has recently been utilized in verification and identification based systems. A finger knuckle print possesses a unique and highly distinctive pattern. In this paper, the high discrimination capability of correlation filters were employed for a finger knuckle print based recognition system. The correlation filters have important characteristics like shift invariance and distortion tolerance. A minimum average correlation energy correlation filter was designed for finger knuckle print verification. The performance of the designed filter was evaluated by calculating the peak to side lobe ratio, the false acceptance ratio, the false rejection ratio and the equal error rate. The computational experiments were done on a Matlab platform on the Poly U finger knuckle print database.

To cite this document: Gaurav Verma and Aloka Sinha, "Finger knuckle print based verification using minimum average correlation energy filter", International Journal of Electronic Commerce Studies, Vol.5, No.2, pp. 233-246, 2014.

Permanent link to this document:
http://dx.doi.org/10.7903/ijecs.1089

Downloads

Published

2014-12-19

Issue

Section

ATISR/Electronic Commerce Systems, Technologies, and Applications