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Recognizing the Degree of Human Attention Using EEG Signals from Mobile Sensors

机译:使用来自移动传感器的EEG信号识别人的注意力程度

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During the learning process, whether students remain attentive throughout instruction generally influences their learning efficacy. If teachers can instantly identify whether students are attentive they can be suitably reminded to remain focused, thereby improving their learning effects. Traditional teaching methods generally require that teachers observe students' expressions to determine whether they are attentively learning. However, this method is often inaccurate and increases the burden on teachers. With the development of electroencephalography (EEG) detection tools, mobile brainwave sensors have become mature and affordable equipment. Therefore, in this study, whether students are attentive or inattentive during instruction is determined by observing their EEG signals. Because distinguishing between attentiveness and inattentiveness is challenging, two scenarios were developed for this study to measure the subjects' EEG signals when attentive and inattentive. After collecting EEG data using mobile sensors, various common features were extracted from the raw data. A support vector machine (SVM) classifier was used to calculate and analyze these features to identify the combination of features that best indicates whether students are attentive. Based on the experiment results, the method proposed in this study provides a classification accuracy of up to 76.82%. The study results can be used as a reference for learning system designs in the future.
机译:在学习过程中,学生是否在整个教学过程中保持专注,通常会影响他们的学习效果。如果教师能够立即确定学生是否专心学习,可以适当提醒他们保持专注,从而提高他们的学习效果。传统的教学方法通常要求教师观察学生的表情以确定他们是否正在专心学习。但是,这种方法常常不准确,增加了教师的负担。随着脑电图(EEG)检测工具的发展,移动脑电波传感器已成为成熟且价格合理的设备。因此,在本研究中,通过观察他们的EEG信号来确定学生在教学过程中是专心还是专心。由于区分注意力和注意力不集中是具有挑战性的,因此本研究开发了两种方案来测量注意力和注意力不集中时受试者的脑电信号。使用移动传感器收集脑电数据后,从原始数据中提取了各种常见特征。支持向量机(SVM)分类器用于计算和分析这些功能,以识别最能表明学生是否专心的功能组合。根据实验结果,本研究提出的方法提供了高达76.82%的分类精度。研究结果可作为将来学习系统设计的参考。

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