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Brain-Computer Interface of Motor Imagery Using ICA and Recurrent Neural Networks

机译:使用ICA和经常性神经网络的电机图像脑接口

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Brain-Computer Interface (BCI) is a device that can connect brain commands without the need for movement, gesture, or voice. Usually, BCI uses the Electroencephalogram (EEG) signal as an intermediate device. EEG signals need to be extracted into waves that represent the action in mind. In this study used Wavelet transformation to obtain the imagery motor component from the EEG signal. However, the problem also arises in the considerable channel redundancy in EEG signal recording. Therefore, it requires a signal reduction process. This paper proposed the problem using Independent Component Analysis (ICA). Then ICA components are features of Recurrent Neural Networks (RNN) to classify BCI information into four classes. The experimental results showed that using ICA improved accuracy by up to 99.06%, compared to Wavelet and RNN only, which is only 94.06%. We examined three optimization models, particularly Adam, AdaDelta, and AdaGrad. However, two optimization models provided the best recognition capabilities, i.e., AdaDelta, and AdaGrad.
机译:脑电脑接口(BCI)是一种可以连接大脑命令的设备,而无需移动,手势或语音。通常,BCI使用脑电图(EEG)信号作为中间设备。需要提取eeg信号,以表示记住行动的波浪。在该研究中,使用小波变换从EEG信号获取图像电机组件。但是,在EEG信号记录中的相当大的频道冗余中也出现了问题。因此,它需要信号还原过程。本文提出了使用独立分量分析(ICA)的问题。然后,ICA组件是经常性神经网络(RNN)的特征,以将BCI信息分类为四个类别。实验结果表明,与小波和RNN相比,使用ICA的精度高达99.06%,仅为94.06%。我们检查了三种优化模型,特别是Adam,Adadelta和Adagrad。然而,两个优化模型提供了最佳识别功能,即Adadelta和Adagrad。

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