DeepSign: Deep On-Line Signature Verification
Entity
UAM. Departamento de Ingeniería InformáticaPublisher
Institute of Electrical and Electronics Engineers Inc. (IEEE)Date
2021-04-26Citation
10.1109/TBIOM.2021.3054533
IEEE Transactions on Biometrics, Behavior, and Identity Science 3.2 (2021): 229-239
ISSN
2637-6407 (online)DOI
10.1109/TBIOM.2021.3054533Funded by
This work was supported in part by PRIMA under Grant H2020-MSCA-ITN-2019-860315; in part by TRESPASS-ETN under Grant H2020-MSCA-ITN-2019-860813; in part by BIBECA under Grant RTI2018-101248-B-I00 MINECO/FEDER; in part by Bio-Guard (Ayudas Fundación BBVA a Equipos de Investigación Científica 2017); and in part by UAM-Cecabank. The work of Ruben Tolosana was supported by the Comunidad de Madrid and Fondo Social Europeo. Spanish Patent Application (P202030060)Project
info:eu-repo/grantAgreement/EC/H2020/860315/EU/PriMa-ITN; info:eu-repo/grantAgreement/EC/H2020/860813/EU/TReSPAsS-ETN; Gobierno de España. RTI2018-101248-B-I00Editor's Version
https://doi.org/10.1109/TBIOM.2021.3054533Subjects
Biometrics; deep learning; DeepSignDB; DTW; handwritten signature; RNN; TA-RNN; InformáticaRights
© Institute of Electrical and Electronics EngineersAbstract
Deep learning has become a breathtaking technology in the last years, overcoming traditional handcrafted approaches and even humans for many different tasks. However, in some tasks, such as the verification of handwritten signatures, the amount of publicly available data is scarce, what makes difficult to test the real limits of deep learning. In addition to the lack of public data, it is not easy to evaluate the improvements of novel proposed approaches as different databases and experimental protocols are usually considered. The main contributions of this study are: i) we provide an in-depth analysis of state-of-the-art deep learning approaches for on-line signature verification, ii) we present and describe the new DeepSignDB on-line handwritten signature biometric public database,1 iii) we propose a standard experimental protocol and benchmark to be used for the research community in order to perform a fair comparison of novel approaches with the state of the art, and iv) we adapt and evaluate our recent deep learning approach named Time-Aligned Recurrent Neural Networks (TA-RNNs)2. for the task of on-line handwritten signature verification. This approach combines the potential of Dynamic Time Warping and Recurrent Neural Networks to train more robust systems against forgeries. Our proposed TA-RNN system outperforms the state of the art, achieving results even below 2.0% EER when considering skilled forgery impostors and just one training signature per user.1https://github.com/BiDAlab/DeepSignDB 2Spanish Patent Application (P202030060)
Files in this item
Google Scholar:Tolosana Moranchel, Rubén
-
Vera Rodríguez, Rubén
-
Fiérrez Aguilar, Julián
-
Ortega García, Javier
This item appears in the following Collection(s)
Related items
Showing items related by title, author, creator and subject.
-
SVC-onGoing: Signature verification competition
Tolosana Moranchel, Rubén; Vera Rodríguez, Rubén
; Gonzalez-Garcia, Carlos; Fiérrez Aguilar, Julián
; Morales Moreno, Aythami
; Ortega García, Javier
; Carlos Ruiz-Garcia, Juan; Romero-Tapiador, Sergio; Rengifo, Santiago; Caruana, Miguel; Jiang, Jiajia; Lai, Songxuan; Jin, Lianwen; Zhu, Yecheng; Galbally, Javier; Diaz, Moises; Angel Ferrer, Miguel; Gomez-Barrero, Marta; Hodashinsky, Ilya; Sarin, Konstantin; Slezkin, Artem; Bardamova, Marina; Svetlakov, Mikhail; Saleem, Mohammad; Lia Szcs, Cintia; Kovari, Bence; Pulsmeyer, Falk; Wehbi, Mohamad; Zanca, Dario; Ahmad, Sumaiya; Mishra, Sarthak; Jabin, Suraiya
2022-02-24