A New Intelligent System for Predicting Gender from Fingerprint
Abstract
This paper proposes a new method for predicting genders from only fingerprints based on Artificial Neural Network (ANN) model. The modelling tasks are achieved by capturing fingerprints, analyzing an obtained fingerprint part (for example cropping 5x5mm part from a fingerprint image), determining ridges crossed by the diagonal of the obtained fingerprint part automatically, finding the ridge counts, ridge thicknesses, average fingerprint ridge counts of individuals, combining these features in a model, preparing and setting the structure of it and finally testing the model. The results of proposed model have shown that the best model achieves the task within 72% accuracy.
Keywords
References
- [1] N. Özkaya, and Ş. Sağıroğlu, “Public Key Infrastructure and Biometric Systems”, 1st National Symposium on Electronic Signatures Proceeding Book, Ankara, Turkey, 2006, pp. 283-290.
- [2] S. Görgünoğlu and A. Çavuşoğlu, “Performance Analysis of Feature Extraction Algorithms Used in Fingerprint Recognition Systems”, 5th International Symposium on Advanced Technologies (IATS’09) Proceeding Book, Karabük, Turkey, 2009, pp. 104-107.
- [3] V.V. Nabiyev, M. Ekinci and Y. Öztürk, “Biometric Scanning by Palm Lines”, 10th National Electrical, Electronics and Computer Engineering Congress and Expo Proceeding Book, İstanbul, Turkey, 2005, pp. 535-538.
- [4] M. Yozgat, “Fingerprint Recognition on Computer”, MSc Thesis, Institute of Science and Technology, Gazi University, Ankara, 2003.
- [5] G. Dede and M.H. Sazlı, “Examination of Biometric Systems from the Perspective of Pattern Recognition and Voice Recognition Module Simulation”, EMO 13th National Congress Proceeding Book, Ankara, Turkey, 2009, pp. 57-61.
- [6] A. Ross and A.K. Jain, “Information Fusion in Biometrics”, Pattern Recognition Letters, vol. 24, no.13, pp. 2115-2125, 2003.
- [7] O. Urhan, M.K. Güllü and S. Ertürk, “Modified Phase-Correlation Based Robust Hard-Cut Detection with Application to Archive Film”, IEEE Transactions on Circuits and Systems for Video Technology, vol. 6, pp. 753-770, 2006.
- [8] M.M. Karabulut, “Fingerprint Recognition Based Real-Time Student Attendance System Automation”, MSc Thesis, Institute of Science and Technology, Fırat University, Elazığ, 2010.
Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Publication Date
January 31, 2019
Submission Date
October 8, 2018
Acceptance Date
December 18, 2018
Published in Issue
Year 2019 Volume: 7 Number: 1