Optimized Signature Recognition System Based on Feature Extraction Methods and Neural Network Classifier

Mohammed A. Abdala*, Saja K. Jamee**
*Associate Professor, Department of Information Engineering, University of Nahrain, Baghdad, Iraq.
**M.Sc. Degree in Information Engineering, Department of Information Engineering, University of Nahrain, Baghdad, Iraq.
Periodicity:October - December'2008
DOI : https://doi.org/10.26634/jse.3.2.245

Abstract

This paper presents new techniques for off-line signature recognition. The proposed systems are based on invariant moment, texture and global features. For each one of these features sets neural network classifiers which are based on MLP (Multilayer Perceptron), RBF (Radial Basis Function) and Elman neural network classifier are implemented. These nine signature recognition systems are tested then the optimized system that has the highest recognition rate is selected. The optimized system is evaluated with rotation and scaling effects.

Keywords

Signature recognition, Global, Texture, Moment, Neural classifiers, MLP, RBF, Elman, Optimized system

How to Cite this Article?

Mohammed A. Abdala and Saja K. Jameel (2008). Optimized Signature Recognition System Based on Feature Extraction Methods and Neural Network Classifier. i-manager’s Journal on Software Engineering, 3(2),20-27. https://doi.org/10.26634/jse.3.2.245

References

[1] O. Rohl´ik, "Handwritten Text Analysis", M.Sc. Thesis, University of West Bohemia in Pilsen,March 2003.
[2] U. Park, L. Udpa, G. Stockman, B. Shih and J. Fitzpatrick, "Real-Time Implementation of Motion-Based Filtering in Magneto-optic imager", Review of progress in Quantitative Nondestructive Evaluation, Wisconsin, USA, V22, 2003.
[3] R. Gonzalez and R.Woods, "Digital Image Processing", prentice -hall, 2002.
[4] S. Newsam and C. Kamath, "Comparing Shape and Texture Features for Pattern Recognition in Simulation Data", 7000 East Avenue, Livermore, CA 94550, U.S.A, 2005.
[5] A. K. Mikkilineni, P.-J. Chiang, G. N. Ali, G. T.-C. Chiu, J. P. Allebach, and E. J. Delp, "Printer Identification Based on Textural Features", Proceedings of the IS &T's NIP20: Internat ional Conference on Digi tal Pr int ing Technologies, Vol. 20, Salt Lake City, UT, pp. 306-311, October/November 2004.
[6] H. Baltzkis and N. Papamarkos, "A New Signature Verification Technique based on a Two Stage Neural Network Classifier", Engineering, 2001.
[7] A. G. Prasad and V. M. Amaresh, "A Offline Signature Verification System", VIII Semester E&C, KREC, Surathkal - 574157, 1999.
[8] B. Krose and P. Smagt, "An Introduction to Neural Networks", by the University of Amsterdam, 1996.
[9] A. K. Jain and K. M. Mohluddin, "Artificial Neural Networks: A Tutorial", IEEE Trans-actions on Pattern Analysis and Machine Intelligence, Vol.29, Issue:3, pp.31-44, 1996.
[10] K. Doya, " Recurrent Networks: Learning Algorithms", (ATR) Human Information Science Laboratories, 2-2-2 Hikaridai, Seika, Soraku, Kyoto 619-0288, Japan, February 2002.
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