Optimizing Virtual Classrooms: Real-Time Emotion Recognition with AI and Facial Features

Sakhi, Abdelhak and Mansour, Salah-Eddine (2025) Optimizing Virtual Classrooms: Real-Time Emotion Recognition with AI and Facial Features. International Journal of Robotics and Control Systems, 5 (2). pp. 1051-1064.

[thumbnail of 1827-6919-3-PB.pdf] Text
1827-6919-3-PB.pdf - Published Version

Download (899kB)

Abstract

Online education, especially post-COVID, faces the challenge of maintaining student engagement, particularly at the college level. A key factor in effective learning is understanding students’ emotional states, as they influence comprehension and participation. To address this, we propose an intelligent system that classifies students’ emotions by analyzing facial expressions, allowing teachers to adapt their methods in real-time. Our system utilizes the Learning Focal Point algorithm to improve emotion classification accuracy, focusing on key facial regions related to emotional expressions. The methodology involves preprocessing facial images, extracting features, and classifying emotions using the algorithm. Trained on a diverse dataset, the system performs well under various conditions, with a classification accuracy of 94% based on a well-known database. Although the system shows significant improvements over traditional methods, factors like image quality and internet connection can impact accuracy in realworld applications. Ultimately, our approach enhances remote learning by providing real-time emotional feedback, fostering a more responsive and student-centered environment.

Item Type: Article
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Depositing User: IJRCS ASCEE
Date Deposited: 01 May 2026 15:35
Last Modified: 01 May 2026 15:35
URI: https://alxiv.org/id/eprint/367

Actions (login required)

View Item
View Item