In this paper, an efficient offline signature verification method based on an interval symbolic representation and a fuzzy similarity measure is proposed. In the feature extraction step, a set of local binary pattern-based features is computed from both the signature image and its under-sampled bitmap. Interval-valued symbolic data is then created for each feature in every signature class. As a result, a signature model composed of a set of interval values (corresponding to the number of features) is obtained for each individual's handwritten signature class. A novel fuzzy similarity measure is further proposed to compute the similarity between a test sample signature and the corresponding interval-valued symbolic model for the verification of the test sample. To evaluate the proposed verification approach, a benchmark offline English signature data set (GPDS-300) and a large data set (BHSig260) composed of Bangla and Hindi offline signatures were used. A comparison of our results with some recent signature verification methods available in the literature was provided in terms of average error rate and we noted that the proposed method always outperforms when the number of training samples is eight or more.
Journal article
An efficient signature verification method based on an interval symbolic representation and a fuzzy similarity measure
IEEE Transactions on Information Forensics and Security, Vol.12(10), pp.2360-2372
2017
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Abstract
Details
- Title
- An efficient signature verification method based on an interval symbolic representation and a fuzzy similarity measure
- Creators
- Ali Reza Alaei - Griffith UniversitySrikanta Pal - Griffith UniversityUmapada Pal - Indian Statistical Institute, KolkataMichael Blumenstein - University of Technology Sydney
- Publication Details
- IEEE Transactions on Information Forensics and Security, Vol.12(10), pp.2360-2372
- Identifiers
- 1979; 991012821053202368
- Academic Unit
- Information Technology; Faculty of Science and Engineering; School of Business and Tourism; Faculty of Business, Law and Arts
- Resource Type
- Journal article