Utilizing Deep Learning Techniques to Identify People by Palm Print

Main Article Content

Mathiq Hassan Yasir
Alyaa Al-Barrak

Abstract

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.

Article Details

How to Cite
“Utilizing Deep Learning Techniques to Identify People by Palm Print” (2024) Journal of Engineering, 30(04), pp. 87–98. doi:10.31026/j.eng.2024.04.06.
Section
Articles

How to Cite

“Utilizing Deep Learning Techniques to Identify People by Palm Print” (2024) Journal of Engineering, 30(04), pp. 87–98. doi:10.31026/j.eng.2024.04.06.

Publication Dates

Received

2023-05-04

Accepted

2023-07-27

Published Online First

2024-04-01

References

Ali, M.M., Mahale, V.H., Yannawar, P.L., and Gaikwad, A.T., 2018. A review: Palmprirecognition process and techniques. International Journal of Applied Engineering Research, 13(10), pp. 7499-7507. Doi:10.1080/00207543.2018.1524168

Aberni, Y., Boubchir, L., and Daachi, B., 2017. Multispectral palmprint recognition: A state-of-the-art review. In 2017 40th International Conference on Telecommunications and Signal Processing (TSP), pp. 793-797. Doi:10.1109/TSP.2017.8076097

Amrouni, N., Benzaoui, A., and Zeroual, A., 2023. Palmprint Recognition: Extensive exploration of databases, methodologies, comparative assessment, and future directions. Applied Sciences, 14(1), P. 153. Doi:10.3390/app14010153

Abood, Q.K., and AL-Jibory, F., 2023. Predicting age and gender using AlexNet. TEM J., 12(1), pp. 512–518, Doi: 10.18421/TEM121-61.

Al-Taie, S.A.M., and Khaleel, B.I., 2023. Palm print recognition using intelligent techniques: A review. Jurnal Ilmiah Teknik Elektro Komputer dan Informatika, 9(1), pp. 156-164. Doi:10.26555/jiteki.v9i1.25777

Attallah, B., Serir, A., and Chahir, Y., 2019. Feature extraction in palmprint recognition using spiral of moment skewness and kurtosis algorithm. Pattern Analysis and Applications, 22, pp. 1197-1205. Doi:10.1007/s10044-018-0712-

Al-Zwainy, F.M.S., and Hadal, N.T., 2016. Application artificial forecasting techniques in cost management. Journal of Engineering, 22(8), pp. 1-15. Doi:10.31026/j.eng.2016.08.01

Ajagbe, S.A., and Adigun, M.O., 2024. Deep learning techniques for detection and prediction of pandemic diseases: a systematic literature review. Multimedia Tools and Applications, 83, pp. 1-35. Doi:10.1007/s11042-023-15805-z

Al-Rubaye, W.T.J., Al-Araji, A.S., and Dhahad, H.A., 2020. An adaptive digital neural network-like-PID control law design for fuel cell system based on FPGA technique. Journal of Engineering, 26(9), pp. 24-44. Doi:10.31026/j.eng.2020.09.03

Abbas, S.H., Khudair, B.H., and Jaafar, M.S., 2019. River water salinity impact on drinking water treatment plant performance using artificial neural network. Journal of Engineering, 25(8), pp. 149-159. Doi:10.31026/j.eng.2019.08.10

AL Jamali, N.A.S., 2020. Convolutional multi-spike neural network as intelligent system prediction for control systems. Journal of Engineering, 26(11), pp. 184-194. Doi:10.31026/j.eng.2020.11.12

Bachay, F.M., and Abdul Ameer, M.H., 2022. Hybrid deep learning model based on autoencoder and CNN for palmprint authentication. International Journal of Intelligent Engineering and Systems, 15(3), pp. 488-499. Doi:10.22266/ijies2022.0630.41

Fei, L., Zhang, B., Xu, Y., Huang, D., Jia, W., and Wen, J., 2020. Local discriminant direction binary pattern for palmprint representation and recognition. IEEE Transactions on Circuits and Systems for Video Technology, 30(2), pp. 468-481. Doi:10.1109/TCSVT.2019.2890835 .

Ghadi, N.M., and Salman, N.H., 2022. Deep Learning-Based Segmentation and Classification Techniques for Brain Tumor MRI: A Review. Journal of Engineering, 28(12), pp. 93-112. Doi:10.31026/j.eng.2022.12.07

Hussien, A. and Abdullah, N.A., 2023. A Review for Arabic Sentiment Analysis Using Deep Learning. Iraqi Journal of Science, pp.6572-6585. Doi:10.24996/ijs.2023.64.12.37

Hafeez, A., Ahmad, S., Siddqui, S.A., Ahmad, M., and Mishra, S., 2020. A review of COVID-19 (Coronavirus Disease-2019) diagnosis, treatments and prevention. Ejmo, 4(2), pp. 116-125.

Hussein, N.A.K. and Al-Sarray, B., 2022. Deep learning and machine learning via a genetic algorithm to classify breast cancer DNA data. Iraqi Journal of Science, pp. 3153-3168. Doi:10.24996/ijs.2022.63.7.36

Htet, A.S.M., and Lee, H.J., 2023. Contactless Palm vein recognition based on attention-gated residual U-Net and ECA-ResNet. Applied Sciences, 13(11), p.6363. Doi:10.3390/app13116363

Kong, A., Zhang, D., and Kamel, M., 2009. A survey of palmprint recognition. pattern recognition, 42(7), pp. 1408-1418. Doi:10.1016/j.patcog.2009.01.018

Khader, M.Q., and Mohammed, A.A., 2023. Transfer Learning Based Traffic Light Detection and Recognition Using CNN Inception-V3 Model. Iraqi Journal of Science, pp. 6258-6275.

Kadhm, M.S., Ayad, H., and Mohammed, M.J., 2021. Palmprint recognition system based on proposed features extraction and (c5. 0) decision tree, k-nearest neighbour (knn) classification approaches. Journal of Engineering Science and Technology, 16(1), pp. 816-831.

Liu, H., and Lang, B., 2019. Machine learning and deep learning methods for intrusion detection systems: A survey. Applied Sciences, 9(20), P. 4396. Doi:10.3390/app9204396

Minaee, S., Abdolrashidi, A., Su, H., Bennamoun, M., and Zhang, D., 2023. Biometrics recognition using deep learning: A survey. Artificial Intelligence Review, pp.1-49. Doi:10.1007/s10462-022-10237-x

Mohsen, A.A., AL-Husseiny, H.F., Hattaf, K., and Boulfoul, B., 2021. A mathematical Model for the Dynamics of COVID-19 Pandemy Involving the Infective Immigrants. Iraqi Journal of Science, 62(1), pp. 295-307.

Mahmood, A.R. and Hameed, S.M., 2023. A Smishing Detection Method Based on SMS Contents Analysis and URL Inspection Using Google Engine and Virus Total. Iraqi Journal of Science, pp.6276-6291.

Poonia, P., Ajmera, P.K., and Shende, V., 2020. Palmprint recognition using robust template matching. Procedia Computer Science, 167, pp. 727-736. Doi:10.1016/j.procs.2020.03.338

Soares, E., Angelov, P., Biaso, S., Froes, M.H., and Abe, D.K., 2020. SARS-CoV-2 CT-scan dataset: A large dataset of real patients CT scans for SARS-CoV-2 identification. MedRxiv, pp. 2020-04.

Ungureanu, A.S., Salahuddin, S., and Corcoran, P., 2020. Toward unconstrained palmprint recognition on consumer devices: A literature review. IEEE Access, 8, pp. 86130-86148. Doi:10.1109/ACCESS.2020.2992219

Veigas, J.P., and Kumari M, S., 2022. Deep learning approach for Touchless Palmprint Recognition based on Alexnet and Fuzzy Support Vector Machine. International journal of electrical and computer engineering systems, 13(7), pp.551-559.

Zhong, D., Du, X., and Zhong, K., 2019. Decade progress of palmprint recognition: A brief survey. Neurocomputing, 328, pp. 16-28. Doi:10.1016/j.neucom.2018.03.081 .

Yousif, W.K., and Ali, A.A., 2020. Simulation of pose to pose moving of the mobile robot with specified GPS points. Journal of Engineering, 26(11), pp. 195-208. doi: 10.31026/j.eng.2020.11.13.

Zhang, K., Xu, G., Jin, Y.K., Qi, G., Yang, X., and Bai, L., 2023. Palmprint recognition based on gating mechanism and adaptive feature fusion. Frontiers in Neurorobotics, 17, p.1203962. Doi:10.3389/fnbot.2023.1203962

Zhao, S., Zhang, B., and Chen, C.P., 2019. Joint deep convolutional feature representation for hyperspectral palmprint recognition. Information Sciences, 489, pp.167-181. Doi:10.1016/j.ins.2019.03.027

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