Open Access Open Access  Restricted Access Subscription or Fee Access

An Efficient Algorithm for Human Identification Based on Fingerprint Biometrics

P. Esther Rani, B. Ratheesh Kannan, S. Mohammed Ali, K. Chandirasekar

Abstract


This paper proposes an efficient algorithm for
fingerprint matching based human identification. Fingerprint
biometrics finds its special position in biometric based identification due to the fact that they are easy to obtain and most importantly they are scientifically unique, reliable and universally accepted. A major approach in fingerprint recognition now-a-days is based on the
distance metrics based minutiae matching. One important problem is false spurious minutiae in the finger features. One main reason for these false minutiae is presence of noise. In our proposed system we remove the noise by adaptive wiener filtering technique. Morphological thinning plays a main role in proposed system for thinning the ridges. We have also presented an accurate fingerprint identification technique for minutia extraction and a minutia matching. For minutia marking we considered two steps in post processing to remove false minutia and for minutiae matching we considered alignment based relax box matching method. MATLAB
7.9 is used for system verification. Experimental results show that this method achieves a much better and efficient matching performance.


Keywords


Adaptive Wiener Filter, Biometrics, Fingerprint matching, MATLAB, Minutiae, PolyU.

Full Text:

PDF

References


Ashwini R. Patil, Mukesh A. Zaveri, “A Novel Approach for Fingerprint

Matching using Minutiae” ,2010

T.-Y. Jea, “Minutiae based partial fingerprint recognition” -Ph.D. thesis,

State University of New York, 2005.

Kanagalakshmi .K,Chandra E, “Performance Evaluation Of Filters In

Noise Removal of Fingerprint Image”,2011

Khalil, M.S; Muhammed, D.; Khan,M.K.; Alghathbar,K., “Fingerprint

Verification Based On Statistical Analysis”.

R. C. Gonzalez and R. E. Woods, “Digial image processing” - New

Jersey: Prentice-Hall, Inc., 2006.

Zhang, D.; Feing Liu; Qijun Zhao; Guangming Lu; Nan Luo; “Selecting

A Reference High Resolution For Fingerprint Recognition Using

Minuate and Pores”.

Rafael C. Gonzalez and R. E. Woods, “Digial image processing using

MATLAB” - New Jersey: Prentice-Hall, Inc., 2001.

A. Jain, S. Pankanti, S. Prabhakar, and A. Ross, “Recent advancesin

fingerprint verification” - Lecture Notes Comput.Sci., 2001, pp. 182–

Weiguo Sheng; Howells, G.; Fairhurst, M.; Deravi, F.;Dept. Of

Electron., Kent Univ., Canterbury ; “A Memetic Fingerprint Matching

Algorithm”.

Dadgostar, M.; Tabrizi, P.R.; Fatemizadeh, E.; Soltanian-Zadeh, H.;Sch.

Of Biomed. Eng., Islamic Azad Univ., Tehran; “Feature Extraction

Using Gabor Filter and Recursive Fisher Linear Discriminant with

Application In Fingerprint Identification”.

Xinjian Chen; Jie Tian; Xin Yang-Center for Biometrics & Security

Res., Chinese Acad of Sci., Beijing, China- “A New Algorithm For

Distorted Fingerprints Matching Based On Normalized Fuzzy Similarity

Measure”.

N. Ratha, K. Karu, S. Chen, and A. Jain, “A real-time matching system

for large fingerprint databases,” in IEEETransaction on Pattern Analysis

and Machine Intelligence,1996, pp. 799–813.

H. L., W. Y., and J. A., “Fingerprint image enhancement:Algorithm and

performance evaluation,” in IEEE Trans. OnPattern Analysis and

Machine Intelligence, 1998.

Chih-Jen Lee; Tai-Ning Yang; Chun-Jung Chen; Chang, A.Y.; Sheng-

Hsuan Hsu;Dept. Of Comput. Sci., Chinese Culture Univ.,

Taipei,Taiwan - “Fingerprint Identification Using Local Gabor Filter”

Jain, L. Hong, S. Pankanti, and R. Bolle, “An identity authentication

system using fingerprints,” in Proceedings of the IEEE, 1997, pp. 1365–

PolyU HRF Database available:

http://www4.comp.polyu.edu.hk/~biometrics/HRF/HRF.html


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.