Title of article
Improved fingerprint identification with supervised filtering enhancement
Author/Authors
Alam، Mohammad Sayeedul نويسنده , , Bal، Abdullah نويسنده , , El-Saba، Aed-M. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
-646
From page
647
To page
0
Abstract
An important step in the fingerprint identification system is the reliable extraction of distinct features from fingerprint images. Identification performance is directly related to the enhancement of fingerprint images during or after the enrollment phase. Among the various enhancement algorithms, artificial-intelligence-based feature-extraction techniques are attractive owing to their adaptive learning properties. We present a new supervised filtering technique that is based on a dynamic neural-network approach to develop a robust fingerprint enhancement algorithm. For pattern matching, a joint transform correlation (JTC) algorithm has been incorporated that offers high processing speed for real-time applications. Because the fringe-adjusted JTC algorithm has been found to yield a significantly better correlation output compared with alternate JTCs, we used this algorithm for the identification process. Test results are presented to verify the effectiveness of the proposed algorithm.
Keywords
image processing , Spatial filtering , image enhancement , Optical correlators , optical signal processing , Fourier optics , Pattern recognition , Feature extraction
Journal title
Applied Optics
Serial Year
2005
Journal title
Applied Optics
Record number
75568
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