Multi Face Detection and Gender Classification Based Attendance System

Year : 2024 | Volume :15 | Issue : 01 | Page : 1-7
By

Abhishek Ghuge

Divyansh Srivatava

Dnyaneshwari Gawande

R.P. Patil

  1. Student, Department of Electronics and Telecommunication, Vadgaon (BK), Pune, Maharashtra, India
  2. Student, Department of Electronics and Telecommunication, Vadgaon (BK), Pune, Maharashtra, India
  3. Student, Department of Electronics and Telecommunication, Vadgaon (BK), Pune, Maharashtra, India
  4. Assistant Professor, Department of Electronics and Telecommunication, Sinhgad College of Engineering ,Vadgaon (BK), Maharashtra, India

Abstract

Time management is critical in today’s hectic classroom, and keeping track of attendance can take up valuable class time. Utilizing technologies like facial recognition and detection can greatly expedite this procedure. While face recognition algorithms compare the detected faces with known faces kept in a database, face detection algorithms can recognize human faces within a group photo or video stream. Without the need for human interaction, teachers can effectively record attendance by incorporating these technologies into an automated attendance system. By adding multi-face detection capabilities to your project, you can further increase efficiency—especially in larger class sizes—by having the system scan numerous faces at once. This shortens the time required for the process by enabling the recording of attendance for every student in the frame at once. An image or video stream of the class is usually captured, face detection is used to find faces in the frame, and face recognition is used to compare these faces with the student database. A match is automatically recorded as present in the student’s attendance record. It is crucial to deploy robust face detection and identification algorithms that can tolerate fluctuations in illumination, facial expressions, and occlusions to assure accuracy and reliability. The storage and use of facial data should also take data security and privacy concerns into account. By putting in place an automated attendance system, educators can guarantee precise and effective attendance monitoring while freeing up important class time for more productive activities.

Keywords: Face detection, attendance, automatic, multifaced detection, robust face

[This article belongs to Journal of Electronic Design Technology(joedt)]

How to cite this article: Abhishek Ghuge, Divyansh Srivatava, Dnyaneshwari Gawande, R.P. Patil. Multi Face Detection and Gender Classification Based Attendance System. Journal of Electronic Design Technology. 2024; 15(01):1-7.
How to cite this URL: Abhishek Ghuge, Divyansh Srivatava, Dnyaneshwari Gawande, R.P. Patil. Multi Face Detection and Gender Classification Based Attendance System. Journal of Electronic Design Technology. 2024; 15(01):1-7. Available from: https://journals.stmjournals.com/joedt/article=2024/view=150164

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Regular Issue Subscription Original Research
Volume 15
Issue 01
Received April 22, 2024
Accepted May 23, 2024
Published June 13, 2024