The paper presents a people identity verification system based on the matching of top view finger snapshots, supplementing purely geometrical finger shape comparison with textural information. Low dimensional feature vectors are used to train binary classifiers based on small Gaussian Basis Functions networks which, in this task, are able to match Support Vector Machines performance while outperforming them in runtime effciency, thereby exposing a different facet in the comparison which complements available literature reports.

Identity Verification through Finger Matching: A Comparison of Support Vector Machines and Gaussian Basis Function Classifiers

Brunelli, Roberto
2006-01-01

Abstract

The paper presents a people identity verification system based on the matching of top view finger snapshots, supplementing purely geometrical finger shape comparison with textural information. Low dimensional feature vectors are used to train binary classifiers based on small Gaussian Basis Functions networks which, in this task, are able to match Support Vector Machines performance while outperforming them in runtime effciency, thereby exposing a different facet in the comparison which complements available literature reports.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11582/2927
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