Articles | Open Access | https://doi.org/10.37547/ijasr-03-07-08

ANALYSIS OF NON-CRYPTOGRAPHIC METHODS FOR SOFTWARE BINDING TO FACIAL BIOMETRIC DATA OF USER IDENTITY

Agzamova Mohinabonu Tashkent University Of Information Technologies Named After Muhammad Al-Khwarizmi, Tashkent, Uzbekistan Irgasheva Durdona Tashkent University Of Information Technologies Named After Muhammad Al-Khwarizmi, Tashkent, Uzbekistan

Abstract

Facial biometrics have gained significant attention as a convenient and reliable means of user authentication in various applications. In this research article, we conduct a comprehensive analysis of non-cryptographic methods for binding software to facial biometric data of user identity. The objective is to explore the effectiveness and limitations of these methods in enhancing the security and reliability of information technology systems. The analysis considers various techniques used in the processing and analysis of facial biometric data, shedding light on their applicability and potential vulnerabilities. The findings of this analysis provide valuable insights for researchers, developers, and practitioners in the field of facial biometric authentication.

Keywords

Facial biometrics, non-cryptographic methods, software binding

References

Ding C, Tao D. Trunk-branch ensemble convolutional neural networks for video-based face recognition. IEEE Trans Pattern Anal Mach Intell. 2017;40: 1002–1014. 10.1109/TPAMI.2017.2700390 [PubMed] [CrossRef] [Google Scholar]

Al-Waisy AS, Qahwaji R, Ipson S, Al-Fahdawi S. A multimodal deep learning framework using local feature representations for face recognition. Mach Vis Appl. 2018;29: 35–54. [Google Scholar]

Sivalingam T, Kabilan S, Dhanabal M, Arun R, Chandrabhagavan K. An efficient partial face detection method using AlexNet CNN. SSRG Int J Electron Commun Eng. 2017: 213–216. [Google Scholar]

Power Jonathan D., Plitt Mark, Gotts Stephen J., Kundu Prantik, Voon Valerie, Bandettini Peter A., and Martin Alex. "Ridding fMRI data of motion-related influences: Removal of signals with distinct spatial and physical bases in multiecho data." Proceedings of the National Academy of Sciences 115, no. 9 (2018): E2105–E2114. 10.1073/pnas.1720985115 [PMC free article] [PubMed] [CrossRef] [Google Scholar]

Yin Y, Liu L, Sun X, SDUMLA-HMT: A multimodal biometric database. In: Chinese conference on biometric recognition. Beijing, China: Springer; 2011. pp. 260–268.

Singh, J., Singh, D., Singh, H., & Kaur, A. (2021). A Comparative Study of Face Recognition Techniques in 2D and 3D. Journal of Information Technology and Computer Science, 9(1), 16-23.

Xia, J., Li, X., Li, H., & Huang, G. (2020). A novel approach to facial recognition with deep learning. Multimedia Tools and Applications, 79(23), 16317-16332. https://doi.org/10.1007/s11042-020-09503-7

Yang, S., Hu, Y., & Guo, Y. (2019). Face recognition using improved k-nearest neighbor algorithm. International Journal of Engineering and Technology, 11(2), 29-34.

Wen, Y., Zhang, K., Li, Z., & Qiao, Y. (2021). Deep learning for face recognition: A comprehensive review. Neurocomputing, 451, 295-316.

Hassaballah, M., Torki, M., & Abdelwahab, M. (2018). A survey on face recognition techniques. Egyptian Informatics Journal, 19(2), 129-173. doi: 10.1016/j.eij.2018.05.001

Article Statistics

Downloads

Download data is not yet available.

Copyright License

Download Citations

How to Cite

ANALYSIS OF NON-CRYPTOGRAPHIC METHODS FOR SOFTWARE BINDING TO FACIAL BIOMETRIC DATA OF USER IDENTITY. (2023). International Journal of Advance Scientific Research, 3(07), 38-47. https://doi.org/10.37547/ijasr-03-07-08