StuArt: Individualized Classroom Observation of Students with Automatic
Behavior Recognition and Tracking
- URL: http://arxiv.org/abs/2211.03127v1
- Date: Sun, 6 Nov 2022 14:08:04 GMT
- Title: StuArt: Individualized Classroom Observation of Students with Automatic
Behavior Recognition and Tracking
- Authors: Huayi Zhou, Fei Jiang, Jiaxin Si, Lili Xiong, Hongtao Lu
- Abstract summary: StuArt is a novel automatic system designed for the individualized classroom observation.
It can recognize five representative student behaviors that are highly related to the engagement and track their variation trends during the course.
It adopts various user-friendly visualization designs to help instructors quickly understand the individual and whole learning status.
- Score: 22.850362142924975
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Each student matters, but it is hardly for instructors to observe all the
students during the courses and provide helps to the needed ones immediately.
In this paper, we present StuArt, a novel automatic system designed for the
individualized classroom observation, which empowers instructors to concern the
learning status of each student. StuArt can recognize five representative
student behaviors (hand-raising, standing, sleeping, yawning, and smiling) that
are highly related to the engagement and track their variation trends during
the course. To protect the privacy of students, all the variation trends are
indexed by the seat numbers without any personal identification information.
Furthermore, StuArt adopts various user-friendly visualization designs to help
instructors quickly understand the individual and whole learning status.
Experimental results on real classroom videos have demonstrated the superiority
and robustness of the embedded algorithms. We expect our system promoting the
development of large-scale individualized guidance of students.
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