基于能量熵的运动意象脑电信号分类

D. Xiao, Z. Mu, Jianfeng Hu
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引用次数: 33

摘要

脑电信号的特征提取与分类是基于脑机接口(BCI)的核心问题。通常,这种分类是使用来自一组选定的EEG传感器的信号来执行的。由于脑电信号传感器信号是有效信号和噪声的混合,信噪比较低,运动图像脑电信号难以分类。采用能量熵对运动意象脑电数据进行预处理,采用Fisher类可分性准则提取特征。最后,采用基于统计理论的方法对四种类型的运动意象脑电进行分类。6种类型组合和3个主体的平均分类准确率达到85%。结果表明,利用能量熵提取运动意象脑电信号具有明显的分类优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Motor Imagery EEG Signals Based on Energy Entropy
Feature extraction and classification of EEG signals is core issues on EEG-based brain computer interface (BCI). Typically, such classification has been performed using signals from a set of selected EEG sensors. Because EEG sensor signals are mixtures of effective signals and noise, which has low signal-to-noise ratio, motor imagery EEG signals can be difficult to classification. Energy entropy was used to preprocess motor imagery EEG data, and the Fisher class separability criterion was used to extract features. Finally, classification of four types motor imagery EEG was performed by a method based on the statistical theory. An average of 85% classification accuracy of the six type combination and the three subjects was achieved. The results showed that motor imagery EEG signals can be extracted using energy entropy and that these extracted features offered clear advantages for classification.
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