Unobtrusive and Multimodal Approach for Behavioral Engagement Detection of Students
classification
💻 cs.HC
cs.LGstat.ML
keywords
behavioralengagementapproachdetectionmultimodalstatesstudentsunobtrusive
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We propose a multimodal approach for detection of students' behavioral engagement states (i.e., On-Task vs. Off-Task), based on three unobtrusive modalities: Appearance, Context-Performance, and Mouse. Final behavioral engagement states are achieved by fusing modality-specific classifiers at the decision level. Various experiments were conducted on a student dataset collected in an authentic classroom.
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