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A BCI System Based on Orthogonalized EEG Data and Multiple Multilayer Neural Networks in Parallel Form

机译:基于正交脑电数据和并行多层多层神经网络的BCI系统

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A BCI system, using orthogonalized EEG data sets and multiple multilayer neural networks (MLNNs) in a parallel form, is proposed. In order to emphasize feature of multi-channel EEG data, Gram-Schmidt orthogonalization has been applied. Since there are many channel orders to be orthogonalized, many kinds of orthogonalized data sets can be generated for the same EEG data set by changing the channel order. These data sets have different features. In the proposed method, different channel orders are assigned to the multiple MLNNs in a training phase and in a classification process. A good solution can be searched for by changing the channel orders within a small number of trials. By using EEG data for five mental tasks, a correct classification rate is increased from 88% to 92%, and an error classification rate is decreased from 4% to 0%.
机译:提出了一种BCI系统,该系统使用正交化的EEG数据集和并行形式的多层神经网络(MLNN)。为了强调多通道EEG数据的特征,已应用Gram-Schmidt正交化。由于存在许多要正交的信道顺序,因此可以通过更改信道顺序为同一EEG数据集生成多种正交数据集。这些数据集具有不同的功能。在所提出的方法中,在训练阶段和分类过程中,将不同的信道顺序分配给多个MLNN。可以通过在少量试验中更改频道顺序来寻找一个好的解决方案。通过将EEG数据用于五项心理任务,正确的分类率从88%提高到92%,错误的分类率从4%降低到0%。

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