Facial Recognition Attendance Monitoring System using Deep Learning Techniques

Authors

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

DOI:

https://doi.org/10.59890/ijist.v1i6.685

Keywords:

Facial Recognition, Attendance Monitoring, Deep Learning Techniques, LBPJ and Ethnical 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 functioning of the system.

References

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Published

2024-01-01

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, 1(6), 841–848. https://doi.org/10.59890/ijist.v1i6.685