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https://doi.org/10.31803/tg-20240206125322

Palm Print Recognition using Deep Learning

Ruaa Sadoon Salman ; Ministry of Education, Karkh Three Directorate of Education, Baghdad, Iraq
Mauj Haider AbdAlkreem ; Ministry of Education/Administrative Affairs, Baghdad, Iraq *
Qaswaa Khaled Abood ; University of Baghdad, College of Science-Computer Science Department, Baghdad Governorate, Baghdad, Iraq

* Dopisni autor.


Puni tekst: engleski pdf 1.119 Kb

str. 368-374

preuzimanja: 161

citiraj


Sažetak

In recent decades, numerous studies have focused extensively on biometric palmprint recognition. Palm print recognition has gained significant popularity and importance across various domains owing to its exceptional efficiency and accuracy in personal identification. The biometric characterization of a person's palm print is unique. However, a way to enhance the image is needed in order to produce a better and clearer image. Recently, palm print recognition methods based on features acquired using a series of convolutional neural networks have been introduced, among which DenseNet-121 has a densely connected structure, unlike other structures. This paper presents a scheme for palm print recognition by image enhancement. Contrast-limited adaptive histogram equation (CLAHE) is one of the image enhancement methods that can provide bounded segment and region size and is based on deep learning using DenseNet-121. To measure performance, the CASIA dataset was used. Experimental results on the DS show that the palm print features of Denes 21 achieve a recognition accuracy of 99 %, demonstrating the effectiveness and reliability of the proposed palm print.

Ključne riječi

biometric; CLAHE; deep learning; DenseNet-121; ROI

Hrčak ID:

332162

URI

https://hrcak.srce.hr/332162

Datum izdavanja:

15.9.2025.

Posjeta: 271 *