Title: A fingerprint-based hybrid gender classification system using genetic algorithm

Authors: K.T. Shanavaz; P. Mythili

Addresses: Division of Electronics Engineering, School of Engineering, Cochin University of Science and Technology, Kochi, Kerala, India ' Division of Electronics Engineering, School of Engineering, Cochin University of Science and Technology, Kochi, Kerala, India

Abstract: In this article, a multilevel hybrid approach which gives better accuracy for gender classification is presented. The first level uses discrete wavelet transform (DWT), singular value decomposition (SVD) and principal component analysis (PCA) techniques to derive three independent sets of feature vectors for simultaneous gender classification by three independent neural networks. Coefficients similar to cdf9/7 DWT lifting coefficients and optimum values of initial seeds for the classifiers are evolved using genetic algorithm (GA), for obtaining better feature vectors. Use of lifting coefficients causes faster evolution. In the second stage, the output is derived by decision formulated based on the outputs of the individual classifiers. With a database consisting left thumb impressions of 100 males and 100 females, an overall success rate of 93.94% and an average improvement of 5.24% accuracy over the existing classifiers is achieved. Use of feature vectors having lesser number of elements enhances the speed of operation of the classifier as well.

Keywords: fingerprints; gender classification; genetic algorithms; discrete wavelet transform; DWT; lifting scheme; singular value decomposition; SVD; principal component analysis; PCA; computational vision; neural networks; thumb impressions; feature vectors.

DOI: 10.1504/IJCVR.2016.079400

International Journal of Computational Vision and Robotics, 2016 Vol.6 No.4, pp.399 - 413

Received: 26 Jun 2014
Accepted: 02 Dec 2014

Published online: 28 Sep 2016 *

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