Authors
Ardhendu Behera, Peter Matthew, Alexander Keidel, Peter Vangorp, Hui Fang, Susan Canning
Publication date
2020/6
Journal
International Journal of Artificial Intelligence in Education
Volume
30
Pages
236-270
Publisher
Springer New York
Description
Learning involves a substantial amount of cognitive, social and emotional states. Therefore, recognizing and understanding these states in the context of learning is key in designing informed interventions and addressing the needs of the individual student to provide personalized education. In this paper, we explore the automatic detection of learner’s nonverbal behaviors involving hand-over-face gestures, head and eye movements and emotions via facial expressions during learning. The proposed computer vision-based behavior monitoring method uses a low-cost webcam and can easily be integrated with modern tutoring technologies. We investigate these behaviors in-depth over time in a classroom session of 40 minutes involving reading and problem-solving exercises. The exercises in the sessions are divided into three categories: an easy, medium and difficult topic within the context of undergraduate …
Total citations
2019202020212022202320241211102317
Scholar articles
A Behera, P Matthew, A Keidel, P Vangorp, H Fang… - International Journal of Artificial Intelligence in …, 2020