Computer vision techniques using a fusion of video-extracted features detected student engagement with an AUC of 0.758 for concurrent and 0.733 for retrospective annotations.
Observational (n=22)
Can computer vision techniques using facial expressions and heart rate detect student engagement during a writing activity?
Computer vision techniques combining facial features and heart rate can detect student engagement with moderate accuracy.
Effect estimate: AUC 0.758 (concurrent), 0.733 (retrospective)
We explored how computer vision techniques can be used to detect engagement while students (N = 22) completed a structured writing activity (draft-feedback-review) similar to activities encountered in educational settings. Students provided engagement annotations both concurrently during the writing activity and retrospectively from videos of their faces after the activity. We used computer vision techniques to extract three sets of features from videos, heart rate, Animation Units (from Microsoft Kinect Face Tracker), and local binary patterns in three orthogonal planes (LBP-TOP). These features were used in supervised learning for detection of concurrent and retrospective self-reported engagement. Area under the ROC Curve (AUC) was used to evaluate classifier accuracy using leave-several-students-out cross validation. We achieved an AUC = .758 for concurrent annotations and AUC = .733 for retrospective annotations. The Kinect Face Tracker features produced the best results among the individual channels, but the overall best results were found using a fusion of channels.
Monkaresi et al. (Wed,) conducted a observational in Student engagement (n=22). Computer vision techniques (video-based estimation of facial expressions and heart rate) was evaluated on Detection of concurrent and retrospective self-reported engagement (AUC 0.758 (concurrent), 0.733 (retrospective)). Computer vision techniques using a fusion of video-extracted features detected student engagement with an AUC of 0.758 for concurrent and 0.733 for retrospective annotations.