Face Recognition Based Attendance Management System

Authors

  • Prof. N. R. Gavai   Assistant Professor, Department of Information Technology, SKNSITS, Lonavala, Maharashtra, India
  • Pranay Doshi   U.G. Student, Department of Information Technology, SKNSITS, Lonavala, Maharashtra, India
  • Vishal Bende   U.G. Student, Department of Information Technology, SKNSITS, Lonavala, Maharashtra, India
  • Kalpesh Mahajan   U.G. Student, Department of Information Technology, SKNSITS, Lonavala, Maharashtra, India
  • Kavita Mahadik  U.G. Student, Department of Information Technology, SKNSITS, Lonavala, Maharashtra, India

Keywords:

Face detection, Recognition, Attendance

Abstract

One of the major challenges in a smart classroom system environment is to develop a computer vision based unobtrusive classroom attendance management system. Already existing traditional attendance system uses a manual attendance system to mark attendance of students by forwarding attendance sheet or by calling names of students. Both of these methods interrupts the teaching as well as learning process and also consume a lot of time of faculty. It has some basic problems such as students proxy etc. which can result in wrong attendance marking. In this paper, we propose an face recognition based smart classroom attendance management system using the high de?nition camera for capturing the faces of students The system will capture faces of students sitting in a classroom and will recognize face of each student using pre-trained dataset and will mark the attendance of students in an excel sheet.

References

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Published

2019-04-06

Issue

Section

Research Articles

How to Cite

[1]
Prof. N. R. Gavai , Pranay Doshi , Vishal Bende , Kalpesh Mahajan , Kavita Mahadik, " Face Recognition Based Attendance Management System, International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 5, Issue 7, pp.122-126, March-April-2019.