课堂教学中用视线跟踪和物体检测分析学生的注意力

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Technologies and Applications Pub Date : 2023-01-24 DOI:10.1108/dta-09-2021-0236
Hui Xu, Junjie Zhang, Hui Sun, Miao Qi, Jun Kong
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引用次数: 2

摘要

目的注意力是影响学生学习成绩的重要因素之一。有效分析学生课堂注意力,可以促进教师的精准教学和学生的个性化学习。为了从第一人称视角智能地分析学生在课堂上的注意力,本文提出了一种基于视线跟踪和物体检测的融合模型。特别地,所提出的注意力分析模型不依赖于任何智能设备。设计/方法论/方法给定学生学习的第一人称视频,作者首先通过使用深空-时间神经网络来估计注视点。其次,比较采用单镜头多盒检测器和快速分割卷积神经网络来准确检测视频中的对象。第三,他们通过结合注视点估计和物体检测的结果来预测注视物体。最后,基于预测的凝视对象和可测量的眼动标准,分析了学生的个性化注意力。发现大量实验是在公共数据库和真实课堂中构建的新数据集上进行的。实验结果表明,该模型不仅能够准确地跟踪学生的凝视轨迹,有效地分析学生个体和全体学生的注意力波动,而且为评估学生的学习过程提供了有价值的参考。原创性/价值本文的贡献可概括如下。分析学生的注意力对提高教学质量和学生成绩具有重要作用。然而,关于如何自动、智能地分析学生的注意力的研究却很少。为了缓解这一问题,本文重点通过课堂教学中的注视跟踪和物体检测来分析学生的注意力,这对教育领域的实际应用具有重要意义。作者提出了一种基于深度神经网络的有效智能融合模型,主要包括注视点模块和物体检测模块,以分析学生在课堂教学中的注意力,而不是依赖于任何智能穿戴设备。他们在注视点模块中引入了注意力机制,以提高注视点检测的性能,并在公共数据集上进行了一些比较实验,以证明注视点模块可以获得更好的性能。他们将眼动标准与视觉凝视相关联,获得可量化的客观数据,用于学生的注意力分析,为评估学生的学习过程提供有价值的依据,为家长和教师提供有用的学生学习信息,支持个性化教学的发展。他们建立了一个新的数据库,其中包含11名受试者在真实课堂上的第一人称视频,并用它来评估所提出模型的有效性和可行性。
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Analyzing students' attention by gaze tracking and object detection in classroom teaching
PurposeAttention is one of the most important factors to affect the academic performance of students. Effectively analyzing students' attention in class can promote teachers' precise teaching and students' personalized learning. To intelligently analyze the students' attention in classroom from the first-person perspective, this paper proposes a fusion model based on gaze tracking and object detection. In particular, the proposed attention analysis model does not depend on any smart equipment.Design/methodology/approachGiven a first-person view video of students' learning, the authors first estimate the gazing point by using the deep space–time neural network. Second, single shot multi-box detector and fast segmentation convolutional neural network are comparatively adopted to accurately detect the objects in the video. Third, they predict the gazing objects by combining the results of gazing point estimation and object detection. Finally, the personalized attention of students is analyzed based on the predicted gazing objects and the measurable eye movement criteria.FindingsA large number of experiments are carried out on a public database and a new dataset that is built in a real classroom. The experimental results show that the proposed model not only can accurately track the students' gazing trajectory and effectively analyze the fluctuation of attention of the individual student and all students but also provide a valuable reference to evaluate the process of learning of students.Originality/valueThe contributions of this paper can be summarized as follows. The analysis of students' attention plays an important role in improving teaching quality and student achievement. However, there is little research on how to automatically and intelligently analyze students' attention. To alleviate this problem, this paper focuses on analyzing students' attention by gaze tracking and object detection in classroom teaching, which is significant for practical application in the field of education. The authors proposed an effectively intelligent fusion model based on the deep neural network, which mainly includes the gazing point module and the object detection module, to analyze students' attention in classroom teaching instead of relying on any smart wearable device. They introduce the attention mechanism into the gazing point module to improve the performance of gazing point detection and perform some comparison experiments on the public dataset to prove that the gazing point module can achieve better performance. They associate the eye movement criteria with visual gaze to get quantifiable objective data for students' attention analysis, which can provide a valuable basis to evaluate the learning process of students, provide useful learning information of students for both parents and teachers and support the development of individualized teaching. They built a new database that contains the first-person view videos of 11 subjects in a real classroom and employ it to evaluate the effectiveness and feasibility of the proposed model.
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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