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Off-line signature verification by the tracking of feature and stroke positions
Authors:B. FangAuthor VitaeC.H. LeungAuthor Vitae  Y.Y. TangAuthor VitaeK.W. TseAuthor Vitae  P.C.K. KwokAuthor VitaeY.K. WongAuthor Vitae
Affiliation:a Singapore-MIT Alliance, The National University of Singapore, Singapore
b Department of Electrical and Electronic Engineering, The University of Hong Kong, Pokfulam Road, Pokfulam, Hong Kong
c Department of Computer Science, Hong Kong Baptist University, Hong Kong
d School of Science and Technology, Open University of Hong Kong, Hong Kong
e Department of Electrical Engineering, The Hong Kong Polytechnic University, Hong Kong
Abstract:There are inevitable variations in the signature patterns written by the same person. The variations can occur in the shape or in the relative positions of the characteristic features. In this paper, two methods are proposed to track the variations. Given the set of training signature samples, the first method measures the positional variations of the one-dimensional projection profiles of the signature patterns; and the second method determines the variations in relative stroke positions in the two-dimension signature patterns. The statistics on these variations are determined from the training set. Given a signature to be verified, the positional displacements are determined and the authenticity is decided based on the statistics of the training samples. For the purpose of comparison, two existing methods proposed by other researchers were implemented and tested on the same database. Furthermore, two volunteers were recruited to perform the same verification task. Results show that the proposed system compares favorably with other methods and outperforms the volunteers.
Keywords:Signature verification   Feature tracking   Elastic matching   Off-line system   Handwriting recognition
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