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395753

Palm-print recognition based on deep residual networks

Article

Last updated: 29 Dec 2024

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Tags

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Abstract

A palmprint is a tiny portion of the palm flat that carries extra information that may be utilized in authentication systems. It also has the quality of permanence, meaning that it will not change throughout time. Extracting meaningful characteristics from palm prints. PPR offers high precise accuracy in authentication operations, especially in civilian applications and military and law enforcement applications. Civilian applications play vital roles in sectors such as biometric identification, forensic investigations, banking and financial services, time and attendance systems, and military and law enforcement applications such as border control and immigration, military access control, criminal databases, and counterterrorism operations. The majority of newly developed approaches rely on primary lines, wrinkles, and creases, which are insufficient to discriminate between two people owing to their proximity. Deep learning approaches are increasingly used for extracting deep properties such as texture. We introduce a deep residual neural network (RESENT) built for safe authentication using palmprint photos. Experiments were conducted using the CASIA, IIT Delhi Touchless, and SMPD Palm-Print databases, with accuracy and F1-score employed for assessment. The suggested model was highly accurate, scoring 99.75 percent. This approach for palmprint authentication is efficient and effective.

DOI

10.21608/ijt.2024.333452.1066

Keywords

PPR, Biometric, DL, Convolutional neural network, authentication

Authors

First Name

tarek

Last Name

elbendary

MiddleName

awad

Affiliation

engineer.tarekawadelbendary@std.mans.edu.eg; M.Sc. student at the Department of Electronics and Communications Engineering at the Faculty of Engineering, Mansoura University 1

Email

tarekawadelbendary55@gmail.com

City

-

Orcid

-

First Name

Abeer

Last Name

Khalil

MiddleName

-

Affiliation

Associate Professor at the Department of Electronics and Communications Engineering, at the Faculty of Engineering, Mansoura University

Email

abeer.twakol@mans.edu.eg

City

-

Orcid

-

First Name

mahmoud

Last Name

Saafan

MiddleName

M.

Affiliation

Associate Professor at the Department of Computers Engineering and Control systems, at the Faculty of Engineering, Mansoura University

Email

saafan2007@mans.edu.eg

City

CAIRO

Orcid

-

First Name

Hossam

Last Name

Moustafa

MiddleName

-

Affiliation

Professor at the Department of Electronics and Communications Engineering at the Faculty of En-gineering, Mansoura University

Email

hossam_moustafa@mans.edu.eg

City

mansoura

Orcid

-

Volume

04

Article Issue

02

Related Issue

48864

Issue Date

2024-07-01

Receive Date

2024-11-03

Publish Date

2024-12-07

Page Start

1

Page End

18

Online ISSN

2805-3044

Link

https://ijt.journals.ekb.eg/article_395753.html

Detail API

https://ijt.journals.ekb.eg/service?article_code=395753

Order

395,753

Type

Original Article

Type Code

2,522

Publication Type

Journal

Publication Title

International Journal of Telecommunications

Publication Link

https://ijt.journals.ekb.eg/

MainTitle

Palm-print recognition based on deep residual networks

Details

Type

Article

Created At

29 Dec 2024