Evaluation of learning performance by quantifying user's engagement investigation through low-cost multi-modal sensors

Vedant Sandhu, Aung Aung Phyo Wai, C. Y. Ho
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引用次数: 4

Abstract

Although new forms of learning methods emerge embracing digital technologies, there is still no solution to objectively assess student's engagement, something pertinent to learning performance. Besides the traditional class questionnaire and exam, measuring attention or engagement using sensors, in real-time, is quickly growing interest. This paper investigates how multimodal sensors attributes to quantify engagement levels through a set of learning experiments. We conducted experiments with 10 high school students who participated in different activities that lasted about one hour, comprising of a 2-phase experiment. Phase 1 involved collecting training data for the classifier. While phase 2 required participants to complete two reading comprehension tests with passages they liked and disliked, simulating an e-Learning experience. We use commercial low-cost sensors such as EEG headband, desktop eye tracker, PPG and GSR sensors to collect multimodal data. Different features from different sensors were extracted and labelled using our experiment design and tasks measuring reaction time. Accuracies upwards of 90% were achieved while classifying the EEG data into 3-class engagement levels. We, thus, suggest leveraging multimodal sensors to quantify multi-dimensional indexes such as engagement, emotion etc., for real-time assessment of learning performance. We are hoping that our work paves ways for assessing learn performance in a multi-faceted criteria, encompassing different neural, physiological and psychological states
通过低成本多模态传感器量化用户参与调查来评估学习绩效
尽管采用数字技术的新形式的学习方法出现了,但仍然没有办法客观地评估学生的参与度,这与学习表现有关。除了传统的课堂问卷和考试之外,利用传感器实时测量注意力或参与度也正迅速引起人们的兴趣。本文研究了多模态传感器如何通过一组学习实验来量化参与水平。我们对10名高中生进行了实验,他们参加了不同的活动,持续了大约一个小时,包括两个阶段的实验。阶段1包括为分类器收集训练数据。第二阶段要求参与者完成两个阅读理解测试,测试内容包括他们喜欢和不喜欢的文章,模拟电子学习体验。我们使用商用低成本传感器,如EEG头带,桌面眼动仪,PPG和GSR传感器来收集多模态数据。利用我们的实验设计和测量反应时间的任务,从不同的传感器中提取和标记不同的特征。将脑电数据分为3类参与水平,准确率达到90%以上。因此,我们建议利用多模态传感器来量化多维指标,如参与度、情绪等,以实时评估学习表现。我们希望我们的工作能为从多方面的标准来评估学习表现铺平道路,包括不同的神经、生理和心理状态
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