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Decision tree structure based classification of EEG signals recorded during two dimensional cursor movement imagery

机译:基于决策树结构的二维光标运动图像中记录的脑电信号分类

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Background: Input signals of an EEG based brain computer interface (BCI) system are naturally non-stationary, have poor signal to noise ratio, depend on physical or mental tasks and are contaminated with various artifacts such as external electromagnetic waves, electromyogram and electrooculogram. All these disadvantages have motivated researchers to substantially improve speed and accuracy of all components of the communication system between brain and a BCI output device. New method: In this study, a fast and accurate decision tree structure based classification method was proposed for classifying EEG data to up/down/right/left computer cursor movement imagery EEG data. The data sets were acquired from three healthy human subjects in age group of between 24 and 29 years old in two sessions on different days.
机译:背景:基于EEG的脑计算机接口(BCI)系统的输入信号自然是不稳定的,信噪比很差,取决于身体或精神任务,并被各种伪影(例如外部电磁波,肌电图和眼电图)污染。所有这些缺点促使研究人员大大提高了大脑与BCI输出设备之间通信系统所有组件的速度和准确性。新方法:在这项研究中,提出了一种基于快速,准确的决策树结构的分类方法,用于将EEG数据分类为上/下/右/左计算机光标运动图像EEG数据。数据集来自不同年龄段的24至29岁年龄段的三名健康人类受试者,分别在不同的日期进行两次会议。

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