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Neuro-fuzzy classification of brain computer interface data using phase based feature

机译:使用基于阶段的功能的脑电脑接口数据的神经模糊分类

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Brain-Computer Interface is an interface technique between human and computer which can help severely motor-disabled persons to communicate and control their environment. In this study we have examined phase locking value as a possible feature to use in BCI systems based on the adaptive neuro-fuzzy inference system (ANFIS). To provide this feature, for classification of three motor imagery tasks, phase locking value was calculated for two pairs of electrodes, FCz-C3 and FCz-C4. The effect of different frequency bands was investigated as well. Result indicate that accuracy of classification between foot and hands movement imagery was more than the classification of right and left hand motor imagination. And broadband classification was more accurate than narrowband.
机译:脑电脑界面是人员和计算机之间的界面技术,可以帮助严重的电机残疾人沟通和控制他们的环境。在该研究中,我们已经将阶段锁定值作为基于自适应神经模糊推理系统(ANFIS)的BCI系统使用的可能特征。为了提供该特征,对于三个电动机图像的分类,计算两对电极,FCZ-C3和FCZ-C4的锁相值。还研究了不同频带的效果。结果表明,脚和手的分类准确性移动图像的分类超过左手和左手电机想象的分类。宽带分类比窄带更准确。

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