FaceNet-Based CNN Architecture for Enhanced Attendance Monitoring System

Author:

Srinivasa P.1,Racha Ganesh2,Yavvari Naveen3,A Sravanthi P4,Kamatam Yedukondalu1

Affiliation:

1. CVR College of Engineering

2. JNTUH University, CVR College of Engineering

3. Tech IV Year Student, CVR College of Engineering

4. Aditya College of Engineering

Abstract

Abstract

In the present days, the domain of image classification has seen notable progress, particularly with the rise of Convolutional Neural Networks (CNNs) as a formidable tool in this area. The CNNs excel in detecting intricate patterns and features within images like human eye detection pattern system. The CNN architecture is designed by using convolutional layers, pooling layers, and fully connected layers, enables automatic feature extraction and abstraction, leading to more accurate image classification. By employing machine learning techniques, CNNs continuously improve their ability to classify various images with high precision through training on labelled datasets. In practical scenarios, CNNs find application in image classification for automating attendance tracking of groups. Utilizing facial recognition capabilities, the CNN system accurately identifies and records the attendance of individual persons in real-time, eliminating the necessity of manual tracking. To ensure ease of use, a user-friendly web interface is developed, providing a centralized platform for displaying all attendance records. This integrated solution not only streamlines attendance monitoring but also showcases the seamless integration of advanced image classification techniques and web development, offering an efficient approach to attendance management.

Publisher

Research Square Platform LLC

Reference12 articles.

1. Development of an Automatic Class Attendance System using CNN-based Face Recognition. 2020 Emerging Technology in Computing, Communication and Electronics (ETCCE);Chowdhury S,2020

2. Natesan P, Mohana Karthikeyan KV, Gothai E, Muthukumar V, Rajalaxmi, Naveen (2021) Smart staff attendance system using Convolutional Neural Network International Conference on Computer Communication and Informatics (ICCCI)

3. Shubhobrata Bhattacharya GS, Nainala P, Das, Routray A (2018) Smart Attendance Monitoring System (SAMS): A Face Recognition based Attendance System for Classroom Environment Volume 18, Issue 1

4. Prof. Shweta S, Bagali DK, Amuthabala P, Iranna Amargol, Mr H, Prajwal Smart Attendance Syst using Mach Learn Int J Eng Res & Technology (IJERT).

5. Faizan, Ahmad Aaima Najam and Zeeshan Ahmed Image-based Face Detection and Recognition: State of the Art Department of Computer Science & Engineering, Beijing University of Aeronautics & Astronautics Beijing, China

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