CVHCLGMay 24, 2024

Biometrics and Behavior Analysis for Detecting Distractions in e-Learning

arXiv:2405.15434v311 citationsh-index: 42SIIE
Originality Synthesis-oriented
AI Analysis

This addresses the problem of monitoring learner engagement in e-learning for educators, but it is incremental as it applies existing computer vision methods to a new context.

The study tackled detecting distractions in e-learning by analyzing head pose changes during mobile phone usage, achieving over 90% sensitivity in flagging such events for review.

In this article, we explore computer vision approaches to detect abnormal head pose during e-learning sessions and we introduce a study on the effects of mobile phone usage during these sessions. We utilize behavioral data collected from 120 learners monitored while participating in a MOOC learning sessions. Our study focuses on the influence of phone-usage events on behavior and physiological responses, specifically attention, heart rate, and meditation, before, during, and after phone usage. Additionally, we propose an approach for estimating head pose events using images taken by the webcam during the MOOC learning sessions to detect phone-usage events. Our hypothesis suggests that head posture undergoes significant changes when learners interact with a mobile phone, contrasting with the typical behavior seen when learners face a computer during e-learning sessions. We propose an approach designed to detect deviations in head posture from the average observed during a learner's session, operating as a semi-supervised method. This system flags events indicating alterations in head posture for subsequent human review and selection of mobile phone usage occurrences with a sensitivity over 90%.

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