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https://doi.org/10.22178/pos.106-33

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Design and Development of a Cutting-Edge Machine Learning-Driven Virtual Learning Platform to Revolutionize Online Education and Improve Student Learning during COVID-19

[journal article]

Ejiofor, Mavis Malachi
Akintayo, Taiwo Abdulahi
Godwin, Agbonze Nosa

Abstract

Instructors in virtual classes are facing previously unheard-of difficulties in sustaining student engagement and attendance as the COVID-19 pandemic continues to alter the education landscape. To solve this pressing problem, we have created facial analysis technology that enables teachers to track ... view more

Instructors in virtual classes are facing previously unheard-of difficulties in sustaining student engagement and attendance as the COVID-19 pandemic continues to alter the education landscape. To solve this pressing problem, we have created facial analysis technology that enables teachers to track students' engagement and attention in real-time.Our user-friendly platform uses cutting-edge face detection technology and machine learning to give teachers a visual dashboard that shows disengaged students as red boxes and engaged students as green boxes. This cutting-edge tool helps teachers determine which students need more encouragement or support, guaranteeing individualized attention and better learning results.Our tool provides instructors with features, such as automated attendance records and early departure detection, that go beyond simple attendance tracking and help them optimize online class management. Our solution seeks to humanize online learning by utilizing facial analysis to provide students with a more engaging and productive learning environment.... view less

Keywords
learning environment; computer aided learning

Classification
Curriculum, Teaching, Didactics

Free Keywords
Facial analysis; Python; Machine learning; student engagement; instructor support; virtual classroom; COVID-19

Document language
English

Publication Year
2024

Page/Pages
p. 8001-8005

Journal
Path of Science, 10 (2024) 7

ISSN
2413-9009

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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GESIS LogoDFG LogoOpen Access Logo
Home  |  Legal notices  |  Operational concept  |  Privacy policy
© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.