Detecting Disengagement in Virtual Learning as an Anomaly

11/13/2022
by   Ali Abedi, et al.
0

Student engagement is an important factor in meeting the goals of virtual learning programs. Automatic measurement of student engagement provides helpful information for instructors to meet learning program objectives and individualize program delivery. Many existing approaches solve video-based engagement measurement using the traditional frameworks of binary classification (classifying video snippets into engaged or disengaged classes), multi-class classification (classifying video snippets into multiple classes corresponding to different levels of engagement), or regression (estimating a continuous value corresponding to the level of engagement). However, we observe that while the engagement behaviour is mostly well-defined (e.g., focused, not distracted), disengagement can be expressed in various ways. In addition, in some cases, the data for disengaged classes may not be sufficient to train generalizable binary or multi-class classifiers. To handle this situation, in this paper, for the first time, we formulate detecting disengagement in virtual learning as an anomaly detection problem. We design various autoencoders, including temporal convolutional network autoencoder, long-short-term memory autoencoder, and feedforward autoencoder using different behavioral and affect features for video-based student disengagement detection. The result of our experiments on two publicly available student engagement datasets, DAiSEE and EmotiW, shows the superiority of the proposed approach for disengagement detection as an anomaly compared to binary classifiers for classifying videos into engaged versus disengaged classes (with an average improvement of 9 the area under the curve of the receiver operating characteristic curve and 22 on the area under the curve of the precision-recall curve).

READ FULL TEXT
research
06/21/2021

Affect-driven Engagement Measurement from Videos

In education and intervention programs, person's engagement has been ide...
research
01/17/2023

Bag of States: A Non-sequential Approach to Video-based Engagement Measurement

Automatic measurement of student engagement provides helpful information...
research
04/20/2021

Improving state-of-the-art in Detecting Student Engagement with Resnet and TCN Hybrid Network

Automatic detection of students' engagement in online learning settings ...
research
01/11/2021

Multimodal Engagement Analysis from Facial Videos in the Classroom

Student engagement is a key construct for learning and teaching. While m...
research
08/09/2022

Inconsistencies in Measuring Student Engagement in Virtual Learning – A Critical Review

In recent years, virtual learning has emerged as an alternative to tradi...
research
07/08/2019

Bootstrap Model Ensemble and Rank Loss for Engagement Intensity Regression

This paper presents our approach for the engagement intensity regression...
research
07/26/2019

Detection of Malfunctioning Smart Electricity Meter

In this paper, a method for malfunctioning smart meter detection, based ...

Please sign up or login with your details

Forgot password? Click here to reset