Rotation Invariant Fingerprint Matching based on Gray values using SLFNN
DOI:
https://doi.org/10.26438/ijcse/v6i8.620628Keywords:
Fingerprint Matching, Image based matching, Region of Interest, Ressiliant Propagation, Rotation InvariantAbstract
Fingerprint matching is most widely used mean of person identification or verification since last two decades. The issues related to efficient matching under transformation requires lots of attention of the research community. This paper presents rotational invariant directional features computed directly from gray values of fingerprint images and referred as Local Directional Pattern (LDP). Single hidden Layer Feed Forward Neural Network (SLFNN) is proposed to be used for classification. Network is trained using four different training algorithms to determine the suitability of these algorithms. The results show that these features are very discriminatory under rotation and also the efficiency of SLFNN for matching. It is also evident that Resilient Propagation (RP) algorithm is much faster and gives best performance as compared to other training algorithms
References
[1] D. Maltoni, D. Maio, A. K. Jain and S. Prabhakar, Handbook of Fingerprint Recognition, Springer-Verlag, June 2009.
[2] Berry, John, and David A. Stoney. "The history and development of fingerprinting." Advances in fingerprint Technology Vol.2 pp.13-52 , 2001
[3] Galton, Francis. Fingerprint directories. Macmillan and Co., 1895.
[4] D. Maltoni, D. Maio, A. K. Jain and S. Prabhakar, Handbook of Fingerprint Recognition, Springer-Verlag, June 2009.
[5] Jiang, Xudong, and Wei-Yun Yau. "Fingerprint minutiae matching based on the local and global structures." Pattern recognition, 2000. Proceedings. 15th international conference, IEEE Vol. 2, 2000.
[6] M. Tico and P. Kuosmanen, “Fingerprint matching using and orientation-based minutia descriptor,” IEEE Trans. Pattern Anal. Mach. Intell., Vol. 25, No. 8, pp. 1009–1014, 2003.
[7] J. Qi, S. Yang, and Y. Wang, “Fingerprint matching combining the global orientation field with minutia,” Pattern Recognition. Lett., Vol. 26, pp. 2424–2430, 2005.
[8] Jain, Anil K., Salil Prabhakar, Lin Hong, and Sharath Pankanti. "Filterbank-based fingerprint matching." Image Processing, IEEE Transactions Vol. 9, No. 5, pp.846-859, 2000
[9] Sha, Lifeng, Feng Zhao, and Xiaoou Tang. "Improved fingercode for filterbank-based fingerprint matching." In Image Processing, 2003. ICIP 2003. Proceedings. 2003 International Conference, IEEE, Vol. 2, pp. 895-898, 2003.
[10] Nanni, Loris, and Alessandra Lumini. "Local binary patterns for a hybrid fingerprint matcher." Pattern recognition Vol.41, No. 11 pp.3461-3466, 2008
[11] Tico, Marius, P. Kuosmanen, and J. Saarinen. "Wavelet domain features for fingerprint recognition." Electronics Letters Vol.37, No. 1, pp. 21-22, 2001
[12] Amornraksa, T., and S. Tachaphetpiboon. "Fingerprint recognition using DCT features." Electronics Letters Vol.42, No. 9 pp. 522-523, 2006
[13] Andrew Teoh Beng, David Ngo Chek Ling, and Ong Thian Song. "An efficient fingerprint verification system using integrated wavelet and Fourier–Mellin invariant transform." Image and Vision Computing Vol.22, No. 6, pp. 503-513, 2004
[14] Ross, Arun, Anil Jain, and James Reisman. "A hybrid fingerprint matcher." Pattern Recognition Vol.36, No. 7 pp. 1661-1673, 2003
[15] Benhammadi, F., M. N. Amirouche, H. Hentous, K. Bey Beghdad, and M. Aissani. "Fingerprint matching from minutiae texture maps." Pattern Recognition, Vol.40, No. 1, pp.189-197, 2007
[16] R. Cappelli, M. Ferrara, D. Maltoni, and M. Tistarelli, “MCC: A baseline algorithm for fingerprint verification in FVC-onGoing,” in Proc. 11th Int. Conf. Control, Automation, Robotics and Vision, pp. 19-23, 2010.
[17] L. Hong, A. Jain, “Classification of fingerprint images”, in: 11th Scandinavian Conference on Image Analysis, Vol. 2, pp. 665-672, 1999.
[18] Masahiro Kawagoe , Akio Tojo, “Fingerprint pattern classification”, Pattern Recognition, Vol 3, pp.295-303, 1984.
[19] Jain, A.K., Prabhakar, S., Hong, L. and Pankanti, S., “Filterbank-based fingerprint matching”, IEEE Trans. Image Process. Vol.9(5), pp. 846-859, 2000.
[20] Ju Cheng Yang , Dong Sun Park, “A fingerprint verification algorithm using tessellated invariant moment features”, Neurocomputing, Vol.71, No.10-12, pp.1939-1946, 2008.
[21] Jang X, Yau WY “Fingerprint minutiae matching based on the local and global structures.” In: Proceedings of international conference on pattern recognition, Vol. 2, pp 1024–1045, 2000.
[22] Kumar, R., Chandra, P., & Hanmandlu, M. “A Robust Fingerprint Matching System Using Orientation Features.” Journal of information processing systems, Vol.12(1), pp.83-99, 2016.
[23] Jabid, T., Kabir, M. H., & Chae, O. “Local directional pattern (LDP)–A robust image descriptor for object recognition.” In Advanced Video and Signal Based Surveillance (AVSS), Seventh IEEE International Conference pp. 482-487, 2010.
[24] Simon Haykin,"Neural Network and Learning Machines",Third Edition, Prentice Hall India, 2009.
[25] Mahajan, A., Singh, H. P., & Sukavanam, N. “An unsupervised learning based neural network approach for a robotic manipulator.” International Journal of Information Technology, Vol.9(1), pp.1-6, 2017.
[26] Sinha, G. R. “Study of assessment of cognitive ability of human brain using deep learning.” International Journal of Information Technology, Vol.9(3), pp.321-326, 2017
[27] Kumar, Ravinder, Pravin Chandra, and M. Hanmandlu. "Fingerprint matching based on texture feature." Mobile communication and power engineering. Springer, Berlin, Heidelberg, pp.86-91, 2013
[28] Kumar, Ravinder, Pravin Chandra, and Madasu Hanmandlu. "Rotational invariant fingerprint matching using local directional descriptors." International Journal of Computational Intelligence Studies Vol.3.4, pp.292-319, 2014
[29] Kumar, Ravinder, Pravin Chandra, and Madasu Hanmandlu. "Local directional pattern (LDP) based fingerprint matching using SLFNN." Image Information Processing (ICIIP), Second International Conference on. IEEE, 2013.
[30] Kumar, Ravinder, Pravin Chandra, and M. Hanmandlu. "Fingerprint matching based on orientation feature." Advanced materials research. Vol. 121, pp.83-99, 2012.
[31] Kumar, Ravinder, Pravin Chandra, and Madasu Hanmandlu. "Fingerprint matching using rotational invariant image based descriptor and machine learning techniques." Emerging Trends in Engineering and Technology (ICETET), 6th International Conference on. IEEE, 2013.
[32] Kumar, Ravinder, Madasu Hanmandlu, and Pravin Chandra. "An empirical evaluation of rotation invariance of LDP feature for fingerprint matching using neural networks." International Journal of Computational Vision and Robotics Vol.4.4 pp.330-348, 2014.
[33] Kumar, Ravinder, Pravin Chandra, and M. Hanmandlu. "Fingerprint singular point detection using orientation field reliability." Advanced Materials Research, Trans Tech Publications ,Vol. 403, 2012.
[34] Kumar, Ravinder, Pravin Chandra, and M. Hanmandlu. "Statistical descriptors for fingerprint matching." International Journal of Computer Applications Vol.59.16, 2012.
[35] Kumar, Ravinder, Pravin Chandra, and M. Hanmandlu. "Information Theoretic Approach for Fingerprint Matching." Proc. Int. Conf. on Advances in Computing, Control, and Telecommunication Technologies,(ACT) 2012.
[36] Kumar, Ravinder, and Brajesh Kr Singh. "Empirical analysis of contents based image retrieval using gabor feature extractor." International Journal of Advanced Research in Computer Science Vol. 8, Issue.7, pp.1015 -1020, 2017.
[37] Kumar, Ravinder. "A Robust Biometrics System Using Finger Knuckle Print." Handbook of Research on Network Forensics and Analysis Techniques. IGI Global, pp.416-446, 2018.
[38] Kumar, Ravinder. "Hand Image Biometric Based Personal Authentication System." Intelligent Techniques in Signal Processing for Multimedia Security. Springer, Cham, pp.201-226, 2017.
[39] Ravinder Kumar, Brajesh Kumar Singh, "Performance evaluation of Invariant moment features on Image retrieval", International Journal of Computer Sciences and Engineering, Vol.5, Issue.12, pp.73-78, 2017.
[40] Kumar, Ravinder. "A Review of Non-Minutiae Based Fingerprint Features." International Journal of Computer Vision and Image Processing , Vol.8, No.1, 32-58, 2018.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
Authors contributing to this journal agree to publish their articles under the Creative Commons Attribution 4.0 International License, allowing third parties to share their work (copy, distribute, transmit) and to adapt it, under the condition that the authors are given credit and that in the event of reuse or distribution, the terms of this license are made clear.
