脑电信号冥想状态分类的特征表示

Min Huang, Lizhen Ye, Junze Chen, Rurui Fu, Changle Zhou
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引用次数: 1

摘要

冥想已被证明是一种促进人类健康的有效方法。大多数研究集中在坐姿的冥想上。然而,走路姿势的冥想很少被研究。为了识别这两种冥想状态(即坐着和走着),我们提出了一个利用从脑电图信号中提取的不同特征和随机森林分类器的分类框架。本研究首先研究了不同的单模态特征,包括原始功率、功率比和非线性动力学。此外,我们还将所有的单模态特征连接成一个多模态特征。实验结果表明,在冥想状态分类中,原始功率特征优于非线性动态特征。此外,多模态特征优于所有单模态特征,能够以较高的准确率识别坐禅和行禅。
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Feature Representation for Meditation State Classification in EEG Signal
Meditation has been shown as an efficient way to promote human well-being. Most studies focused on meditation in sitting posture. However, meditation in walking posture was rarely studied. In order to identify these two meditation states (i.e., sitting and walking), we proposed a classification framework by leveraging different features extracted from the EEG signals and the random forest classifier. This study first investigated different single-modal features, including original power, power ratio, and non-linear dynamics. Further, we also concatenated all the single-modal features into a multi-modal feature. The experimental results show that the original power feature is better than the non-linear dynamics feature in meditation state classification. Moreover, the multi-modal feature outperforms all the single-modal features and can identify sitting and walking meditation with high accuracy.
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