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Implementation of an IoT-Based E-Learning Testbed: Performance Evaluation Using Mean-Shift Clustering Approach Considering Four Types of BrainWaves

机译:基于物联网的电子学习测试床的实现:使用均值漂移聚类方法的性能评估,考虑了四种脑电波类型

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Due to the opportunities provided by the Internet, people are taking advantage of e-learning courses and enormous research efforts have been dedicated to the development of e-learning systems. So far, many e-learning systems are proposed and used practically. However, in these systems the e-learning completion rate is low. One of the reasons is the low study desire and motivation. In this work, we present an IoT-Based E-Learning testbed using Raspberry Pi mounted on Raspbian. We carried out some experiments with a student of our laboratory for gamma type of brain waves. We used Mind Wave Mobile (MWM) to get the data and considered four situations: sleeping, relaxing, active and moving. Then, we used mean-shift clustering algorithm to cluster the data. The evaluation results show that our testbed can judge the human situation by using delta, theta, gamma and alpha brain waves.
机译:由于互联网提供的机会,人们正在利用电子学习课程,并且已经为电子学习系统的开发付出了巨大的努力。到目前为止,已经提出并实际使用了许多电子学习系统。但是,在这些系统中,电子学习完成率很低。原因之一是学习欲望和动力不足。在这项工作中,我们展示了一个使用安装在Raspbian上的Raspberry Pi的基于IoT的电子学习测试平台。我们与我们实验室的一名学生进行了一些有关伽马型脑电波的实验。我们使用Mind Wave Mobile(MWM)来获取数据,并考虑了四种情况:睡眠,放松,活动和移动。然后,我们使用均值漂移聚类算法对数据进行聚类。评估结果表明,我们的测试平台可以使用delta,theta,γ和alpha脑电波来判断人类的处境。

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