Handwritten signatures are a widespread biometric trait for person identification and verification. Reliable authentication and authorization of individuals are, however, challenging tasks due to possible skilled forgeries; especially when a forger has access to a given signature and deliberately tries to imitate it. This problem is even more emphasised in offline signature verification, where dynamic signature information is lost, resulting, as a consequence, in an increased difficulty discerning between genuine and forged signatures. To address this issue, solutions based on convolutional neural networks (CNN) are currently being devised to automatically extract features from a signature. Although highly performing, these methods require a high number of learnable parameters to produce meaningful signature representations, ultimately leading to long training times. In this paper, the R-SigNet architecture, a multi-task approach exploiting a relaxed loss to learn a reduced feature space for writer-independent (WI) signature verification, is presented. Compact generic features are automatically extracted by this network, so that a support vector machine (SVM) can be trained and tested in offline writer-dependent (WD) mode. By leveraging a small generic feature space, the proposed system achieves improved performances and reduced training times with respect to the current literature, as shown by the results obtained on several benchmark datasets.

R-SigNet: Reduced space writer-independent feature learning for offline writer-dependent signature verification / Avola, D.; Bigdello, M. J.; Cinque, L.; Fagioli, A.; Marini, M. R.. - In: PATTERN RECOGNITION LETTERS. - ISSN 0167-8655. - 150:(2021), pp. 189-196. [10.1016/j.patrec.2021.06.033]

R-SigNet: Reduced space writer-independent feature learning for offline writer-dependent signature verification

Avola D.
Primo
;
Cinque L.;Fagioli A.
;
Marini M. R.
2021

Abstract

Handwritten signatures are a widespread biometric trait for person identification and verification. Reliable authentication and authorization of individuals are, however, challenging tasks due to possible skilled forgeries; especially when a forger has access to a given signature and deliberately tries to imitate it. This problem is even more emphasised in offline signature verification, where dynamic signature information is lost, resulting, as a consequence, in an increased difficulty discerning between genuine and forged signatures. To address this issue, solutions based on convolutional neural networks (CNN) are currently being devised to automatically extract features from a signature. Although highly performing, these methods require a high number of learnable parameters to produce meaningful signature representations, ultimately leading to long training times. In this paper, the R-SigNet architecture, a multi-task approach exploiting a relaxed loss to learn a reduced feature space for writer-independent (WI) signature verification, is presented. Compact generic features are automatically extracted by this network, so that a support vector machine (SVM) can be trained and tested in offline writer-dependent (WD) mode. By leveraging a small generic feature space, the proposed system achieves improved performances and reduced training times with respect to the current literature, as shown by the results obtained on several benchmark datasets.
2021
Convolutional neural networks; Feature learning; Offline signature verification
01 Pubblicazione su rivista::01a Articolo in rivista
R-SigNet: Reduced space writer-independent feature learning for offline writer-dependent signature verification / Avola, D.; Bigdello, M. J.; Cinque, L.; Fagioli, A.; Marini, M. R.. - In: PATTERN RECOGNITION LETTERS. - ISSN 0167-8655. - 150:(2021), pp. 189-196. [10.1016/j.patrec.2021.06.033]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1619791
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