In this paper, we present an empirical contribution towards the understanding of multi-script signature identification. In the proposed signature identification system, the signatures of Bengali (Bangla), Hindi (Devanagari) and English are considered for the identification process. This system will identify whether a claimed signature belongs to the group of Bengali, Hindi or English signatures. Zernike Moment and histogram of gradient are employed as two different feature extraction techniques. In the proposed system, Support Vector Machines (SVMs) are considered as classifiers for signature identification. A database of 2100 Bangla signatures, 2100 Hindi signatures and 2100 English signatures are used for experimentation. Two different results based on two different feature sets are calculated and analysed. The highest accuracy of 92.14% is obtained based on the gradient features using 4200 (1400 Bangla +1400 Hindi + 1400 English) samples for training and 2100 (700 Bangla +700 Hindi +700 English) samples for testing.
Conference proceeding
Multi-script off-line signature identification
Proceedings of the 12th International Conference on Hybrid Intelligent Systems (HIS), pp.236-240
2012 12th International Conference on Hybrid Intelligent Systems (HIS) (Pune, India, 04/12/2012 - 07/12/2012)
2012
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Abstract
Details
- Title
- Multi-script off-line signature identification
- Creators
- Srikanta Pal (Author) - Griffith UniversityAli Reza Alaei (Author) - Universite Francois Rabelais de ToursUmapada Pal (Author) - Indian Statistical InstituteMichael Blumenstein (Author) - Griffith University
- Publication Details
- Proceedings of the 12th International Conference on Hybrid Intelligent Systems (HIS), pp.236-240
- Conference
- 2012 12th International Conference on Hybrid Intelligent Systems (HIS) (Pune, India, 04/12/2012 - 07/12/2012)
- Publisher
- IEEE; Piscataway, NJ
- Number of pages
- 236-240
- Identifiers
- 2011; 991012821910702368
- Academic Unit
- Information Technology; Faculty of Science and Engineering; School of Business and Tourism; Faculty of Business, Law and Arts
- Language
- English
- Resource Type
- Conference proceeding