In recent years, the main problem in e-learning has shifted from analyzing content to personalization of learning environment by Intelligence Tutoring Systems (ITSs). Therefore, by designing personalized teaching models, learners are able to have a successful and satisfying experience in achieving their learning goals. Affective Tutoring Systems (ATSs) are some kinds of ITS that can recognize and respond to affective states of learner. In this study, we designed, implemented, and evaluated a system to personalize the learning environment based on the facial emotions recognition, head pose estimation, and cognitive style of learners. First, a unit called Intelligent Analyzer (AI) created which was responsible for recognizing facial expression and head angles of learners. Next, the ATS was built which mainly made of two units: ITS, IA. Results indicated that with the ATS, participants needed less efforts to pass the tests. In other words, we observed when the IA unit was activated, learners could pass the final tests in fewer attempts than those for whom the IA unit was deactivated. Additionally, they showed an improvement in terms of the mean passing score and academic satisfaction.
翻译:近些年来,电子学习的主要问题已经从分析学习环境的内容转向由情报教程系统(ITS)对学习环境的个人化,因此,通过设计个性化教学模式,学习者能够在实现其学习目标方面拥有成功和令人满意的经验。情感教程系统(ATS)是某些能够认识和应对学习者情感状态的ITS。在这个研究中,我们设计、实施和评价了一个系统,根据面部情绪识别、头部构成估计和学习者认知风格,使学习环境个人化。首先,一个名为Intellic Analyzer(AI)的单位(AI)的创建,负责确认学生面部表现和头部角度。接着,苯丙胺类兴奋剂主要由两个单位组成:ITS,IA。结果显示,随着ATS,参与者需要较少的努力来通过测试。换句话说,当IA单位启动时,我们观察到,学习者通过最后测试的尝试比IA单元被解职时要少。此外,它们显示平均分数和学术满意度的改进。