脑电信号特征与集成学习方法在运动意象分类中的比较

Mostafa Mohammadpour, M. Ghorbanian, S. Mozaffari
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引用次数: 19

摘要

脑机接口(BCI)对脑电图信号进行分类是分析人体不同器官的有效方法,可用于与外界通信和控制外部设备。脑电信号提取特征的准确分类是许多研究者试图解决的问题。尽管人们提出并发展了许多提取脑电信号特征和分类的方法,但其中许多方法都存在从脑电信号中提取数据准确性较低的问题。本文综述了四种信号特征提取方法和三种集成学习方法,并比较了运动意象任务分类技术的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of EEG signal features and ensemble learning methods for motor imagery classification
Classifying electroencephalogram (EEG) signal in Brain Computer Interface (BCI) is a useful methods to analysis different organs of human body and it can be used for communicate with the outside world and controlling external device. Accuracy classification of extracted features from EEG signals is a problem which many researcher try to improve it. Although many methods for extracting feature and classifying EEG signal have been proposed and developed, many of them suffer from extracting less accurate data from EEG signals. In this work, four signal feature extraction and three ensemble learning method have been reviewed and performances of classification techniques are compared for motor imagery task.
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