Utilizing Deep Learning Techniques to Identify People by Palm Print

محتوى المقالة الرئيسي

Mathiq Hassan Yasir
Alyaa Al-Barrak

الملخص

Person recognition systems have been applied for several years, as fingerprint recognition has been experimented with different image resolutions for 15 years. Fingerprint recognition and biometrics for security are becoming commonplace. Biometric systems are emerging and evolving topics seen as fertile ground for researchers to investigate more deeply and discover new approaches. Among the most prominent of these systems is the palm printing system, which identifies individuals based on the palm of their hands because of the advantages that the palm possesses that cannot be replicated among humans, as in its theory of other fingerprints. This paper proposes a biometric system to identify people by handprint, especially palm area, using deep learning technology via a pre-trained model on the PolyU-IITD dataset. The proposed system goes through several basic stages, namely data pruning, processing, training, and prediction, and the results were promising, as the system's accuracy reached 90% based on the confusion matrix measures.

تفاصيل المقالة

القسم

Articles

كيفية الاقتباس

"Utilizing Deep Learning Techniques to Identify People by Palm Print" (2024) مجلة الهندسة, 30(04), ص 87–98. doi:10.31026/j.eng.2024.04.06.

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