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329159

Signature Verification Based on Deep Learning

Article

Last updated: 29 Dec 2024

Subjects

-

Tags

Mathematics: Pure and Applied Mathematics, Theoretical and Applied statistics, Computer Science

Abstract

Signature verification is considered one of the main features in determining the person identity. Our proposed framework emphasizes the potential of Deep Learning Models (DLMs) in revolutionizing signature verification techniques and underscores the need for continuous exploration and advancement in the realm of automated signature authentication. Therefore, five pre-trained DLMs, ResNet50, DenseNet121, MobileNetV3, InceptionV3, and VGG16, based on five different datasets, the ICDAR 2011 (Dutch) , CEDAR, BH-Sig260 Bengali, BHSig260 Hindi,and ICDAR 2011(Dutch), are introduced in this paper to verify the person identity. Furthermore, data augmentation techniques are applied to overcome dataset limitations and increase the framework's performance. Additionally, transfer learning and fine-tuning techniques are performed to reduce computational time and memory usage.
It is observed that the InceptionV3 DLM based on the ICDAR 2011 (Dutch) achieved the best performance of 100% accuracy, 100% AUC and 100% sensitivity. While, CEDAR Dataset achieves performance with an accuracy of 99.76%, an AUC of 99.94%, sensitivity of 99.76%, precision of 99.76%, an F1-score of 99.71%, score, and a computational time of 13.627s.

DOI

10.21608/ajst.2023.236375.1016

Keywords

Machine Learning, Artificial Intelligent, verification

Authors

First Name

Wessam

Last Name

Salama

MiddleName

M.

Affiliation

pharos university in Alexandria

Email

wessam.salama@pua.edu.eg

City

Alexandria

Orcid

0000-0002-1411-1970

Volume

1

Article Issue

2

Related Issue

44687

Issue Date

2023-12-01

Receive Date

2023-09-13

Publish Date

2023-12-01

Page Start

55

Page End

63

Print ISSN

2974-3265

Online ISSN

2974-3273

Link

https://ajst.journals.ekb.eg/article_329159.html

Detail API

https://ajst.journals.ekb.eg/service?article_code=329159

Order

1

Type

Original Article

Type Code

2,581

Publication Type

Journal

Publication Title

Alexandria Journal of Science and Technology

Publication Link

https://ajst.journals.ekb.eg/

MainTitle

Signature Verification Based on Deep Learning

Details

Type

Article

Created At

29 Dec 2024