We propose an AI-powered intelligent learning ecosystem that integrates real-time behavioral analysis with reinforcement learning to enhance student engagement and learning outcomes. The system continuously monitors facial expressions, body posture, and vocal tone using models trained on benchmark datasets (e.g., AffectNet, COCO, RAVDESS) to assess attention and emotion. A reinforcement learning-based tutor dynamically adjusts quiz difficulty, ensuring students remain in an optimal learning zone. Human instructors are seamlessly integrated for expert-assisted intervention. Simulated pilot results show improved engagement tracking and adaptive learning performance, highlighting the system's potential to bridge emotional insight with intelligent personalization in both digital and physical classrooms.
Varneeth Varma Nandimandalam (Thu,) studied this question.