Abstract

Various studies have measured and analyzed learners’ emotions in both traditional classroom and e-learning settings. Learners’ emotions can be estimated using their text input, speech, body language, or facial expressions. The presence of certain facial expressions has shown to indicate a learner’s levels of concentration in both traditional and e-learning environments. Many studies have focused on the use of facial expressions in estimating the emotions experienced by learners. However, little research has been conducted on the use of analyzed emotions in estimating the learning affect experienced. Previous studies have shown that online learning can enhance students’ motivation, interest, attention, and performance as well as counteract negative emotions, such as boredom and anxiety, that students may experience. Thus, it is crucial to integrate modules into an existing e-learning platform to effectively estimate learners’ learning affect (LLA), provide appropriate feedback to both learner and lecturers, and potentially change the overall online learning experience. This paper proposes a learning affect estimation framework that employs relational reasoning for facial expression recognition and adaptive mapping between recognized emotions and learning affect. Relational reasoning and deep learning, when used for autoanalysis of facial expressions, have shown promising results. The proposed methodology includes estimating a learner’s facial expressions using relational reasoning; mapping the estimated expressions to the learner’s learning affect using the adaptive LLA transfer model; and analyzing the effectiveness of LLA within an online learning environment. The proposed research thus contributes to the field of facial expression recognition enhancing online learning experience and adaptive learning.

Highlights

  • E-learning is flexible and can meet various challenges posed within the sphere of information technology (IT), and most notably it has the potential to widen people’s access to knowledge. e joint impact of communication and IT on learning offers various routes of exploration, such as how best to capture and keep learners’ attention, as well as developing active and flexible learning environments that motivate students to learn continuously through the use of a variety of IT tools [1].With the COVID-19 situation, e-learning has been at the forefront in providing quality education to learners

  • Shen et al [36] investigated biophysical signals to assess how emotions evolve during teaching and learning, as well as whether or not it was possible to apply the findings to increase learning in their study. eir research examined the emotions of students who were taking part in a learning process using Russell’s circumplex model of affect, as well as machine learning techniques such as support vector machine (SVM) and K-nearest neighbor (KNN), among others. ey reported that SVMs surpass other methods with an accuracy of 86.3%

  • Work e proposed temporal relational network (TRN) model was evaluated in this paper using both the DISFA + dataset and live images from a computer web camera. e system achieved an accuracy of 91.3%, 86.95%, and 80.43% for multi-scale TRN, single-scale TRN, and MLP on the DISFA + test dataset, respectively, and was capable of making effective real-time predictions

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Summary

Introduction

E-learning is flexible and can meet various challenges posed within the sphere of information technology (IT), and most notably it has the potential to widen people’s access to knowledge. e joint impact of communication and IT on learning offers various routes of exploration, such as how best to capture and keep learners’ attention, as well as developing active and flexible learning environments that motivate students to learn continuously through the use of a variety of IT tools [1]. An engagement recognition system that works in real time could be applied widely to the following scenarios: (i) teachers who work in distance learning could receive immediate feedback based on the engagement levels of their learners; (ii) participants’ reactions could be used to identify sections of a video where people are disengaged, which can be addressed by the maker of the video; (iii) to gather data on the causes and variables that affect learner engagement; and (iv) institutions could use this technology to monitor online engagement. Communication via facial expressions plays a very important role during this interaction as faces have an ability to impart information about a learners’ mood or present mental and emotional state of being and to an extent, their internal feelings. The methods for estimating learning affects are examined and elaborated in depth

Methods for Estimating Learning Affects
Types of Learning Affects
Live Testing and Experimental Results
Findings
Conclusion and Future
Full Text
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