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This project augments an existing intelligent
tutoring system (AutoTutor) that helps learners construct
explanations by interacting with them in natural language and
helping them use simulation environments. The research aims to
develop an agile learning environment that is sensitive to a
learner’s affective state, presuming that this will promote
learning. We integrate state-of-the-art, non-intrusive,
affect-sensing technology with AutoTutor in an endeavor to
classify emotions on the bases of facial expressions, gross body
movements, and conversational cues. |
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