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小学教室中注视和身体朝向的自动检测

Automatic Detection of Gaze and Body Orientation in Elementary School Classrooms.

作者信息

Araya Roberto, Sossa-Rivera Jorge

机构信息

Institute of Education, Universidad de Chile, Santiago, Chile.

出版信息

Front Robot AI. 2021 Sep 1;8:729832. doi: 10.3389/frobt.2021.729832. eCollection 2021.

Abstract

Detecting the direction of the gaze and orientation of the body of both teacher and students is essential to estimate who is paying attention to whom. It also provides vital clues for understanding their unconscious, non-verbal behavior. These are called "honest signals" since they are unconscious subtle patterns in our interaction with other people that help reveal the focus of our attention. Inside the classroom, they provide important clues about teaching practices and students' responses to different conscious and unconscious teaching strategies. Scanning this non-verbal behavior in the classroom can provide important feedback to the teacher in order for them to improve their teaching practices. This type of analysis usually requires sophisticated eye-tracking equipment, motion sensors, or multiple cameras. However, for this to be a useful tool in the teacher's daily practice, an alternative must be found using only a smartphone. A smartphone is the only instrument that a teacher always has at their disposal and is nowadays considered truly ubiquitous. Our study looks at data from a group of first-grade classrooms. We show how video recordings on a teacher's smartphone can be used in order to estimate the direction of the teacher and students' gaze, as well as their body orientation. Using the output from the OpenPose software, we run Machine Learning (ML) algorithms to train an estimator to recognize the direction of the students' gaze and body orientation. We found that the level of accuracy achieved is comparable to that of human observers watching frames from the videos. The mean square errors (RMSE) of the predicted pitch and yaw angles for head and body directions are on average 11% lower than the RMSE between human annotators. However, our solution is much faster, avoids the tedium of doing it manually, and makes it possible to design solutions that give the teacher feedback as soon as they finish the class.

摘要

检测教师和学生的注视方向以及身体朝向对于判断谁在关注谁至关重要。它还为理解他们无意识的非语言行为提供了关键线索。这些被称为“诚实信号”,因为它们是我们与他人互动中无意识的微妙模式,有助于揭示我们的注意力焦点。在课堂上,它们为教学实践以及学生对不同有意识和无意识教学策略的反应提供了重要线索。扫描课堂上的这种非语言行为可以为教师提供重要反馈,以便他们改进教学实践。这种类型的分析通常需要复杂的眼动追踪设备、运动传感器或多个摄像头。然而,要使其成为教师日常教学中的有用工具,必须找到一种仅使用智能手机的替代方法。智能手机是教师随时都能使用的唯一工具,如今被认为真正无处不在。我们的研究考察了一组一年级课堂的数据。我们展示了如何使用教师智能手机上的视频记录来估计教师和学生的注视方向以及他们的身体朝向。利用OpenPose软件的输出,我们运行机器学习(ML)算法来训练一个估计器,以识别学生的注视方向和身体朝向。我们发现所达到的准确率水平与观看视频帧的人类观察者相当。头部和身体方向预测俯仰角和偏航角的均方根误差(RMSE)平均比人类注释者之间的RMSE低11%。然而,我们的解决方案速度要快得多,避免了手动操作的繁琐,并且使得设计出教师一上完课就能给出反馈的解决方案成为可能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9e1b/8440962/6549aaba2fed/frobt-08-729832-g001.jpg

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