Smart Attendance Monitoring System using Facial Recognition

Author:

Natarajan S 1,Dr. H. Jayamangal 1

Affiliation:

1. Vels Institute of Science Technology and Advanced Studies, Pallavaram, Chennai, India

Abstract

All Standard institutes of learning place high priority on class attendance that if the criteria is not met by the student, the student will not be granted access to sit for his/her examination conducted by the school. This makes class attendance an important activity for the student. Over the years, class attendance has been conducted manually and is still taking place currently in almost 80% of Nigerian Universities. Manual monitoring of attendance by the university's lecturer has become a hectic one for most lecturers and students. With the advancement of technology, manual marking of student’s attendance has been replaced by biometric concepts. Though many researchers have made provisions on some biometric functions like fingerprint scanner, iris recognition, hand and finger geometric. In this paper we will propose a facial recognition concept as a means of verification in marking student’s attendance and store it into the database once verified. The system made use of a dlib library OpenCv library in successfully carrying out facial recognition. Images are read into directory, and these images are encoded so as to generate 128 facial measurements like distances between the nose, ear, and eyebrow etc. This encodings will be used in making comparisons with images read from camera or from live streaming videos in other to find best matches. For the real time attendance system, we created a web application using python flask. Here we used bootstrap framework for frontend design, python as the programming language and Mysql for database design

Publisher

Naksh Solutions

Reference10 articles.

1. [1] Ajinkya Patil, Mridang Shukla, "Implementation of ClassRoom Attendance System Based on Face Recognition III Class", IJAET (International Journal of Advances in Engineering and Technology), Vol. 7, Issue 3, July 2014.

2. [2] Naveed Khan Baloch, M. HaroonYousaf, Wagar Ahmad, M. Iran Baig, "Algorithm for Efficient Attendance Management: Face Recognition based Approach", IJCSI, Vol. 9, Issue 4, No I, July 2012.

3. [3] S. P.. Gagare., P. A. Sathe, V. T. Pawaskar., S. S. Bhave. “Smart Attendance System”, International Journal on Recent and Innovation Trends in Computing and Communication ISSN: 2321-8169 Volume: 2 Issue: 1 2014.

4. [4] Himanshu T., Akhilesh K. S., Atul B. “Smart Attendance Portal Using Facial Recognition” advances and Applications in Mathematical Sciences Volume 20, Issue 3, January 2021, Pages 459-469 2021.

5. [5] S. Bussa, S.Bharuka, A. Mani, S. Kaushik “Smart Attendance System using OPENCV based on Facial Recognition”, International Journal of Engineering Research & Technology Vol. 9 Issue 03, pp.54-59 2020.

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