CVMay 30, 2012

Fingerprint Gender Classification using Wavelet Transform and Singular Value Decomposition

arXiv:1205.6745v171 citations
Originality Synthesis-oriented
AI Analysis

This work addresses gender identification in biometrics, but it is incremental as it combines existing techniques on a specific dataset.

The paper tackled gender classification from fingerprints by proposing a method using discrete wavelet transform and singular value decomposition, achieving an overall classification rate of 88.28% with specific finger accuracies up to 95.46%.

A novel method of gender Classification from fingerprint is proposed based on discrete wavelet transform (DWT) and singular value decomposition (SVD). The classification is achieved by extracting the energy computed from all the sub-bands of DWT combined with the spatial features of non-zero singular values obtained from the SVD of fingerprint images. K nearest neighbor (KNN) used as a classifier. This method is experimented with the internal database of 3570 fingerprints finger prints in which 1980 were male fingerprints and 1590 were female fingerprints. Finger-wise gender classification is achieved which is 94.32% for the left hand little fingers of female persons and 95.46% for the left hand index finger of male persons. Gender classification for any finger of male persons tested is attained as 91.67% and 84.69% for female persons respectively. Overall classification rate is 88.28% has been achieved.

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