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首页> 外文期刊>American journal of applied sciences >A Combined Approach to Improve Supervised E-Learning using Multi-Sensor Student Engagement Analysis | Science Publications
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A Combined Approach to Improve Supervised E-Learning using Multi-Sensor Student Engagement Analysis | Science Publications

机译:多传感器学生参与度分析的组合式方法,可改善有监督的在线学习科学出版物

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> >E-learning provides an important means of education which can reach masses irrespective of their locations all over the world. The E-learning systems and platforms have evolved over the years, but E-learning methodologies are still lagging in matching the benefits of teacher-student interaction in a classroom. The absence of human supervision is always a concern as a student cannot be monitored for losing interest or not getting engaged in the e-learning session. Given this problem, this research was carried out in two phases, first to identify a solution which can augment the emotional and mental state of the student to a feedback system and second, use the feedback to change the content as per learner's level of engagement or interest. The findings presented in this study relates to the first phase of the research. A novel methodology was used to use three types of measurements to assess the interest or engagement of the student during an E-learning session. These measurements were carried out using Facial recognition based engagement analysis, Electro Dermal Activity (EDA) data and pulse rate information. Facial recognition was carried out to infer interest level from the student's facial expressions and was used as a reference to find correlation with EDA and pulse rate. A single timeline was used to carry out all these three mode of measurements. Statistical correlation results showed that all the three modes of measurements exhibit significant correlation between them and thus these can be effectively used together to ascertain the engagement or interest of the student in an E-learning session. These findings will help in improving the efficacy of E-learning environment by altering the content structure and visual presentation as per learner's learning curve.
机译: > >电子学习提供了一种重要的教育手段,无论其在世界各地的地理位置如何,都能影响到群众。多年来,电子学习系统和平台不断发展,但电子学习方法在匹配教室中师生互动的好处方面仍然滞后。缺少人工监督始终是一个问题,因为无法监视学生是否失去兴趣或不参与电子学习课程。针对此问题,本研究分两个阶段进行,首先是确定可以将学生的情绪和心理状态增强到反馈系统的解决方案,其次,根据学生的参与程度使用反馈来更改内容,或者利益。这项研究中提出的发现与研究的第一阶段有关。一种新颖的方法被用于使用三种类型的度量来评估学生在在线学习期间的兴趣或参与度。这些测量是使用基于面部识别的参与分析,皮肤电活动(EDA)数据和脉搏率信息进行的。进行面部识别以从学生的面部表情中推断出兴趣水平,并将其用作查找与EDA和脉搏率相关的参考。单个时间轴用于执行所有这三种测量模式。统计相关结果显示,所有三种测量模式之间都显示出显着的相关性,因此可以有效地将它们一起用于确定学生在电子学习课程中的参与度或兴趣。这些发现将通过根据学习者的学习曲线改变内容结构和视觉呈现方式来帮助提高在线学习环境的效率。

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