Published February 2003 | Version Published
Journal Article Open

Visual identification by signature tracking

Abstract

We propose a new camera-based biometric: visual signature identification. We discuss the importance of the parameterization of the signatures in order to achieve good classification results, independently of variations in the position of the camera with respect to the writing surface. We show that affine arc-length parameterization performs better than conventional time and Euclidean arc-length ones. We find that the system verification performance is better than 4 percent error on skilled forgeries and 1 percent error on random forgeries, and that its recognition performance is better than 1 percent error rate, comparable to the best camera-based biometrics.

Additional Information

© 2003 IEEE. Reprinted with permission. Manuscript received 24 Aug. 1 2001; revised 17 May 2002; accepted 14 July 2002. Posted online: 2003-02-19. Recommended for acceptance by S. Sclaroff. The authors gratefully acknowledge support from the US National Science Foundation Engineering Research Center on Neuromorphic Systems Engineering at Caltech (NSF) Cooperative Agreement No. EEC-9402726). They would also like to express their gratitude to all the subjects that collaborated in the experiments by providing their time and their signatures to build the example databases.

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Identifiers

Eprint ID
2194
Resolver ID
CaltechAUTHORS:MUNieeetpami03

Funding

Center for Neuromorphic Systems Engineering, Caltech
NSF
EEC-9402726

Dates

Created
2006-03-14
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Updated
2021-11-08
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