Deep Learning-based Student Learning Behavior Understanding Framework in Real Classroom Scene.

Yuxin Yang,Zhengyong Ren, Chris Lenart, Ashton Corsello, Karl W. Kosko, Simon Su,Qiang Guan

International Conference on Machine Learning and Applications(2023)

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摘要
Deep learning techniques have emerged as valuable tools for video analysis and motion detection. Recent advancements in this field have shown promising results. Our objective is to leverage these video understanding techniques to aid teachers in evaluating their teaching quality and enhancing their effectiveness in the classroom. However, existing research on student behavior analysis primarily focuses on recognizing actions pertaining to classroom management, neglecting the identification of “learning behaviors” exhibited by students. To address this limitation, we introduce a novel video dataset specifically designed to capture the nuances of “learning behaviors” displayed by primary-grade students in the mathematics classroom, along with a dedicated student localization dataset focused on detecting the location of individuals. Our approach introduces a framework that utilizes deep learning-based object detection and action recognition techniques trained on our curated datasets to analyze and comprehend student learning behaviors in the classroom. To assess the performance of our approach, we conduct separate tests on our object detection and action recognition models. Sub-sequently, our framework is applied to a collection of recorded 360-degree classroom videos, enabling a thorough evaluation of its capabilities.
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关键词
deep learning,action recognition,object detection,student learning behavior analysis
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