Implementation of Face Detection Login System using Python

Authors

  • Dwi Hastuti University of PGRI Adi Buana Surabaya
  • Rasyida Shabihah Zukro Aini University of PGRI Adi Buana Surabaya
  • Afif Nuril Musthofa University of PGRI Adi Buana Surabaya

DOI:

https://doi.org/10.36456/best.vol6.no2.9880

Keywords:

cybersecurity, login system, face detection, python programming language

Abstract

Traditional authentication methods, primarily relying on passwords, face several critical challenges. Users often choose weak passwords, reuse them across multiple platforms, or struggle to remember complex combinations, leading to potential security vulnerabilities. As cybersecurity threats continue to evolve, traditional password-based authentication mechanisms have proven increasingly vulnerable to various attacks. Face detection-based login systems have emerged as a promising alternative, offering a balance between security and user convenience. This paper provides a detailed examination of implementing face detection-based login systems, focusing on using Python programming language. The research highlights both the advantages and potential vulnerabilities of such systems while proposing mitigation strategies for enhanced security.

 

 

References

Wang, M., & Deng, W. (2021). "Deep Face Recognition: A Survey." Neurocomputing, 429, 215-244.

Li, Y., Xu, K., Yan, Q., Li, Y., & Deng, R. H. (2019). "Understanding OSN-based Facial Recognition and its Privacy Implications." IEEE Transactions on Information Forensics and Security, 14(11), 3097-3111.

Singh, A. K., Joshi, P., & Nandi, G. C. (2020). "Face Recognition with Liveness Detection using Eye and Mouth Movement." International Conference on Signal Processing and Integrated Networks (SPIN), 1-5.

Guo, G., & Zhang, N. (2019). "A Survey on Deep Learning Based Face Recognition." Computer Vision and Image Understanding, 189, 102805.

Khan, S., Sharif, M., Raza, M., Murtaza, K., & Saba, T. (2020). "Face Recognition: A Comprehensive Review of State-of-the-art." Multimedia Tools and Applications, 79(39), 29125-29148.

Nguyen, D. T., Park, S. R., Lee, K. W., & Park, K. R. (2021). "Deep Learning-Based Face Anti-Spoofing: A Comprehensive Review." Electronics, 10(1), 66.

Nixon, M. S., & Aguado, A. S. (2020). "Feature Extraction and Image Processing for Computer Vision." Academic Press.

Downloads

Published

16-09-2024

Issue

Section

Contents of the Journal

How to Cite

Dwi Hastuti, et al. “Implementation of Face Detection Login System Using Python”. Best : Journal of Applied Electrical, Science and Technology, vol. 6, no. 2, Sept. 2024, pp. 79-83, https://doi.org/10.36456/best.vol6.no2.9880.