利用眼动特征识别虚拟教室参与水平的基于CNN的模型

S. Akshay, P. Vasanth
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引用次数: 2

摘要

随着互联网连接的普及,从传统课堂学习到虚拟学习的转变比以往任何时候都要容易。网络教育已经全面发展,取代了传统的学习方式。精确监控用户行为和了解学习过程中的痛点的能力是在线学习变化的好处之一。因此,本研究将为在线学习教育提供有益的启示。在这里,注视识别证明,包括限制和识别眼球追踪惯例中的注视和扫视,是眼动信息处理的重要组成部分,可以共同影响更高水平的考试。固着区分证明技术,通常是随便谈论的,很少分析。指定的工作给出了固定区分证明计算的科学分类,根据它们如何利用眼球跟随惯例的空间和短暂数据对计算进行分组。利用这种科学分类,自适应算法在科学分类中提出了一种独特的类,并基于经常使用的策略。然后,在这一点上,利用一堆主观规则,我们研究并观察这个算法。在这里,CNN被用于人脸信息注册和眼睛注视的自适应计算。这些关联的后续效应对算法将如何被利用有着有趣的影响。对隐形眼镜和卡哈尔的适应性提供了预期的结果,加强了研究工作。提出了一个警报和电子邮件系统,如果在线课程中缺乏重点,则通知参与者。
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A CNN based model for Identification of the Level of Participation in Virtual Classrooms using Eye Movement Features
As the widespread Internet connection is expanding, the transition from traditional classroom learning to virtual learning is now easier than ever. Online education has developed all over and replacing traditional learning. The ability to precisely monitor user behavior and understand where the pain spots are in the learning process is one of the benefits of the change to online learning. Therefore, this research will provide a benefit to Online learning education. Here, Fixation recognizable proof, which involves confining and identifying Fixation and saccades in eye-tracking conventions, is a vital piece of eye movement information handling that can altogether affect more elevated level examinations. Fixation distinguishing proof techniques, then again, are normally talked about casually and seldom analyzed. The work specified gives a scientific classification of fixation distinguishing proof calculations that groups calculations as per how they utilize spatial and fleeting data in eye-following conventions. Utilizing this scientific categorization, the Adaptive algorithm that is suggestive of one-of-a-kind classes in the scientific classification and is based on regularly utilized strategies. Then, at that point, utilizing a bunch of subjective rules, we investigate and look at this algorithm. Here, CNN has been utilized for face information registering and Adaptive calculation for eye fixation. The after effects of these correlations have interesting ramifications for how algorithms will be utilized later on. Providing an expected results on adapting for eye contact lenses and kajal strengthens the research work. An alert and email system that notifies the participant if there is a lack in focus during the online class is proposed.
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