Facial Recognition Attendance Monitoring System using Deep Learning Techniques

Authors

  • M.A Thalor Assistant Professor & Head of Dept, Dept. of Information Technology, Aissms
  • Omkar S. Gaikwad Student, Dept. of Information Technology, Aissms Ioit, Pune, Maharashtra, India.

DOI:

https://doi.org/10.59890/ijist.v2i1.1290

Keywords:

Facial Recognition, Attendance Monitoring, Deep Learning Techniques, LBPH and Ethical Considerations

Abstract

The Facial Recognition Attendance Monitoring System employing Deep Learning Techniques represents a cutting-edge application of artificial intelligence in educational and corporate environments. The implementation of a Facial Recognition System can aid in identifying or verifying a person's identity from a digital image. Accurate     attendance records   are       vital    to classroom      evaluation.   However,       manual attendance tracking can result in errors, missed students, or duplicate entries. The adoption of the Face Recognition-based attendance system could help  eliminate these  shortcomings.  This innovative approach involves utilizing a camera to capture input images, detecting faces using algorithms such as Haarcascade, Eigen values, support vector machines, or the Fisher face algorithm, verifying the faces against a database of student profiles, and marking attendance in an Excel sheet. The use of OpenCV, an open-source computer vision library, ensures the efficient

References

Marko Arsenovic, Srdjan Sladojevic, Andras Anderla, “FaceTime – Deep

Learning Based Face Recognition Attendance System”. ResearchGate. Retrieved

-10-14.

Aparna Trivedi, Chandan Mani Tripathi, Dr. Yusuf Perwej, Ashish Kumar Srivastava, Neha Kulshrestha, “Face Recognition Based Automated Attendance Management System”. IEEE xplore. Retrieved 2022-02-12.

Lim, S. Sim, and M. Mansor, "Rfid based attendance system, " in Industrial Electronics & Applications, ISIEA, IEEE Symposium on, vol. 2. IEEE, pp. 778- 782, 2009.

W. Zhao, R. Chellappa, P. J. Phillips, and A. Rosenfeld, "Face recognition: A literature survey", Acm Computing Surveys (CSUR), vol. 35, no. 4, pp. 399- 458,

Yusuf Perwej, “Recurrent Neural Network Method in Arabic Words Recognition System”, International Journal of Computer Science and Telecommunications (IJCST), UK, London, volume 3, Issue 11, Pages 43-48, 2012.

Downloads

Published

2024-01-31

How to Cite

M.A Thalor, & Omkar S. Gaikwad. (2024). Facial Recognition Attendance Monitoring System using Deep Learning Techniques. International Journal of Integrated Science and Technology, 2(1), 45–52. https://doi.org/10.59890/ijist.v2i1.1290