Online learning has gained immense popularity, especially since the COVID-19 pandemic. However, it has also brought its own set of challenges. One of the critical challenges in online learning is the ability to evaluate students' concentration levels during virtual classes. Unlike traditional brick-and-mortar classrooms, teachers do not have the advantage of observing students' body language and facial expressions to determine whether they are paying attention. To address this challenge, this study proposes utilizing facial and body gestures to evaluate students' concentration levels. Common gestures such as yawning, playing with fingers or objects, and looking away from the screen indicate a lack of focus. A dataset containing images of st...
Detecting student’s engagement in online lectures involves monitoring eye movement as they learn con...
Many modern applications of artificial intelligence involve, to some extent, an understanding of hum...
This paper proposes a novel and comprehensive approach to identifying student's attentiveness based ...
These past few years have introduced the most important time in history to study new faucets of onli...
Learning involves a substantial amount of cognitive, social and emotional states. Therefore, recogni...
Learning involves a substantial amount of cognitive, social and emotional states. Therefore, recogni...
A major challenge for online learning is the inability of systems to support student emotion and to...
With COVID-19, formal education was interrupted in all countries and the importance of distance lear...
Emotion plays a powerful role in students learning process, however, many intelligent tutoring syste...
The present study aimed to develop a method for estimating students’ attentional state from f...
Abstract This paper proposes a novel approach to automatic estimation of attention of students durin...
AbstractEmotion originates from old Frenchesmovoir toexcite, from Latinēmovēre to disturb and movēre...
The level of attention of students who receive classes through videoconferencing platforms is troubl...
Can deep learning models accurately predict whether an individual is focused or distracted on a task...
The pandemic caused by COVID-19, has achieved the confinement of people around the world, changing ...
Detecting student’s engagement in online lectures involves monitoring eye movement as they learn con...
Many modern applications of artificial intelligence involve, to some extent, an understanding of hum...
This paper proposes a novel and comprehensive approach to identifying student's attentiveness based ...
These past few years have introduced the most important time in history to study new faucets of onli...
Learning involves a substantial amount of cognitive, social and emotional states. Therefore, recogni...
Learning involves a substantial amount of cognitive, social and emotional states. Therefore, recogni...
A major challenge for online learning is the inability of systems to support student emotion and to...
With COVID-19, formal education was interrupted in all countries and the importance of distance lear...
Emotion plays a powerful role in students learning process, however, many intelligent tutoring syste...
The present study aimed to develop a method for estimating students’ attentional state from f...
Abstract This paper proposes a novel approach to automatic estimation of attention of students durin...
AbstractEmotion originates from old Frenchesmovoir toexcite, from Latinēmovēre to disturb and movēre...
The level of attention of students who receive classes through videoconferencing platforms is troubl...
Can deep learning models accurately predict whether an individual is focused or distracted on a task...
The pandemic caused by COVID-19, has achieved the confinement of people around the world, changing ...
Detecting student’s engagement in online lectures involves monitoring eye movement as they learn con...
Many modern applications of artificial intelligence involve, to some extent, an understanding of hum...
This paper proposes a novel and comprehensive approach to identifying student's attentiveness based ...