Off-line Signature Verification Using Enhanced Modified Direction Features in Conjunction with Neural Classifiers and Support Vector Machines

As a biometric, signatures have been widely used to identify people. In the context of static image processing, the lack of dynamic information such as velocity, pressure and the direction and sequence of strokes has made the realization of accurate off-line signature verification systems more challenging as compared to their on-line counterparts. In this paper, we propose an effective method to perform off-line signature verification based on intelligent techniques. Structural features are extracted from the signature's contour using the modified direction feature (MDF) and its extended version: the Enhanced MDF (EMDF). Two neural network-based techniques and Support Vector Machines (SVMs) were investigated and compared for the process of signature verification. The classifiers were trained using genuine specimens and other randomly selected signatures taken from a publicly available database of 3840 genuine signatures from 160 volunteers and 4800 targeted forged signatures. A distinguishing error rate (DER) of 17.78% was obtained with the SVM whilst keeping the false acceptance rate for random forgeries (FARR) below 0.16%.

[1]  M. Blumenstein,et al.  A modified direction feature for cursive character recognition , 2004, 2004 IEEE International Joint Conference on Neural Networks (IEEE Cat. No.04CH37541).

[2]  Hong Yan,et al.  Off-line signature verification using structural feature correspondence , 2002, Pattern Recognit..

[3]  Richard M. Guest Age dependency in handwritten dynamic signature verification systems , 2006, Pattern Recognit. Lett..

[4]  Vallipuram Muthukkumarasamy,et al.  Off-line Signature Verification using the Enhanced Modified Direction Feature and Neural-based Classification , 2006, The 2006 IEEE International Joint Conference on Neural Network Proceedings.

[5]  F. Prêteux,et al.  Off-line signature verification by local granulometric size distributions , 1997 .

[6]  Abdenaim El Yacoubi,et al.  An off-line signature verification system using hidden Markov model and cross-validation , 2000, Proceedings 13th Brazilian Symposium on Computer Graphics and Image Processing (Cat. No.PR00878).

[7]  Madasu Hanmandlu,et al.  Off-line signature verification and forgery detection using fuzzy modeling , 2005, Pattern Recognit..

[8]  Miguel Angel Ferrer-Ballester,et al.  Offline geometric parameters for automatic signature verification using fixed-point arithmetic , 2005, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[9]  Thorsten Joachims,et al.  Optimizing search engines using clickthrough data , 2002, KDD.

[10]  Flávio Bortolozzi,et al.  A comparison of SVM and HMM classifiers in the off-line signature verification , 2005, Pattern Recognit. Lett..

[11]  Daniel A. Keim,et al.  On Knowledge Discovery and Data Mining , 1997 .

[12]  Christopher J. C. Burges,et al.  A Tutorial on Support Vector Machines for Pattern Recognition , 1998, Data Mining and Knowledge Discovery.

[13]  Vladimir Vapnik,et al.  Statistical learning theory , 1998 .

[14]  Kejun Wang,et al.  A survey of off-line signature verification , 2004 .