基于三维和二维教育内容的脑电信号真假记忆预测系统

Saeed Bamatraf, M. Hussain, Hatim Aboalsamh, H. Mathkour, A. Malik, H. Amin, Muhammad Ghulam, Emad-ul-Haq Qazi
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引用次数: 5

摘要

脑电图(EEG)已被广泛用于研究大脑在学习和记忆等不同认知任务中的行为。在本文中,我们提出了一种模式识别系统,通过分析脑电图信号来区分三维和二维教育内容的短期记忆(STM)。将脑电信号转换成地形图,利用城市街区距离减少冗余,选择最具判别性的地形图。最后,从选定的地形图中提取统计特征,并将其传递给支持向量机(SVM)来预测真实和错误记忆对应的大脑状态。34名健康受试者参加了实验,实验包括两个任务:学习和记忆回忆。在学习任务中,一半的参与者观看了2D教育内容,一半的参与者观看了3D模式的相同内容。在记忆保持30分钟后,他们被要求执行记忆回忆任务,并记录脑电图信号。3D的分类准确率为97.5%,而2D的分类准确率为96.5%。统计分析结果表明,二维和三维教育内容在STM的真假记忆评价上没有显著差异。
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A system based on 3D and 2D educational contents for true and false memory prediction using EEG signals
Electroencephalography (EEG) has been widely adopted for investigating brain behavior in different cognitive tasks e.g. learning and memory. In this paper, we propose a pattern recognition system for discriminating the true and false memories in case of short-term memory (STM) for 3D and 2D educational contents by analyzing EEG signals. The EEG signals are converted to scalp-maps (topomaps) and city-block distance is applied to reduce the redundancy and select the most discriminative topomaps. Finally, statistical features are extracted from selected topomaps and passed to Support Vector Machine (SVM) to predict brain states corresponding to true and false memories. A sample of thirty four healthy subjects participated in the experiments, which consist of two tasks: learning and memory recall. In the learning task, half of the participants watched 2D educational contents and half of them watched the same contents in 3D mode. After 30 minutes of retention, they were asked to perform memory recall task, in which EEG signals were recorded. The classification accuracy of 97.5% was achieved for 3D as compared to 96.5% for 2D. The statistical analysis of the results suggest that there is no significant difference between 2D and 3D educational contents on STM in terms of true and false memory assessment.
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