基于脑电图的多媒体内容预演效果评价

Moona Mazher, A. Aziz, A. Malik
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引用次数: 1

摘要

排练是一种常见的现象,通过练习使其在长期记忆中更具弹性。本文将介绍基于脑电图记录数据的多媒体内容预演效果。使用机器学习算法,使用三个基于频率的特征来区分L1, L2和L3三种学习状态。在这三种学习状态中,L1是第一学习状态,L2和L3是L1的排练状态。用于分析的频谱特征集基于强度加权平均频率(IWMF),其带宽(IWBW)和频谱功率密度(PSD)。为了进行分析,研究的三种脑电波是α波、θ波和δ波。研究结果表明,与其他脑电图记录的波相比,α波从休息状态到学习状态产生了去同步。这种不同步导致在学习任务中工作记忆所施加的精神努力。使用SVM分类器对L1的Alpha波显示出更高的准确率,使用PSD特征为85%,IWFM为86%,使用IBWB特征为78.4%。结果还提到,对于三个提取的特征,L3产生的分类器精度值低于L2和L1。这说明L3在学习过程中需要较少的脑力劳动。研究结果证明,预演是一种长期记忆学习的好现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of rehearsal effects of multimedia content based on EEG using machine learning algorithms
Rehearsal is a common phenomenon of practicing something to make it more resilient in long-term memory. This paper will present the rehearsal effects based on electroencephalography (EEG) recorded data for multimedia contents. Three frequency based features are used to discriminate the three learning states mentioned as L1, L2 and L3 using machine learning algorithms. From these three learning states, L1 is the first learning state whether L2 and L3 are the rehearsal states of L1. The set of spectral features that are used for analysis are based on the intensity weighted mean frequency (IWMF), its bandwidth (IWBW), and spectral power density (PSD). For the analysis, the three brain waves investigated are the alpha waves, theta waves and delta waves. The results of the study show that the alpha waves produce de-synchronization from rest to learning state as compared to other EEG recorded waves. This de-synchronization lead to mental effort imposed by working memory during a learning task. The Alpha wave shows more accuracy in L1 using SVM classifier that is 85% using PSD features, 86% for IWFM and 78.4% using IBWB feature. The results also mention that L3 produces less classifier accuracy value as compared to the L2 and L1 for each of three extracted features. This indicates that L3 requires less mental effort during learning. The findings proved the rehearsal as a good phenomenon of long-term memorized learning.
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