基于经验小波变换时频特征的脑电空间注意转移检测

Gokhan Altan, Gulcin Inat
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引用次数: 5

摘要

人类的神经系统有超过100亿个神经细胞,其中大部分位于大脑。脑电图(EEG)是通过神经的相互作用而发生的。脑电图用于评估事件相关电位、想象运动任务、神经障碍、空间注意力转移等。在这项研究中,我们对18个健康个体的29通道脑电图记录进行了实验。在特征提取阶段,使用经验小波变换(一种时频域分析技术)对每个记录进行分解。计算调制的统计特征,为传统的机器学习算法提供信息。该模型采用决策树算法获得了最佳的空间注意转移检测准确率,准确率为89.24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG based Spatial Attention Shifts Detection using Time-Frequency features on Empirical Wavelet Transform
The human nervous system has over 100b nerve cells, of which the majority are located in the brain. Electrical alterations, Electroencephalogram (EEG), occur through the interaction of the nerves. EEG is utilized to evaluate event-related potentials, imaginary motor tasks, neurological disorders, spatial attention shifts, and more. In this study, We experimented with 29-channel EEG recordings from 18 healthy individuals. Each recording was decomposed using Empirical Wavelet Transform, a time-frequency domain analysis technique at the feature extraction stage. The statistical features of the modulations were calculated to feed the conventional machine learning algorithms. The proposal model achieved the best spatial attention shifts detection accuracy using the Decision Tree algorithm with a rate of 89.24%.
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