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A Channel Selection Approach Based on Convolutional Neural Network for Multi-channel EEG Motor Imagery Decoding

机译:基于卷积神经网络的多通道脑电运动图像解码的通道选择方法

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For many disabled people, brain computer interface (BCI) may be the only way to communicate with others and to control things around them. Using motor imagery paradigm, one can decode an individual's intention by using their brainwaves to help them interact with their environment without having to make any physical movement. For decades, machine learning models, trained on features extracted from acquired electroencephalogram (EEG) signals have been used to decode motor imagery activities. This method has several limitations and constraints especially during feature extraction. Large number of channels on the current EEG devices make them hard to use in real-life as they are bulky, uncomfortable to wear, and takes lot of time in preparation. In this paper, we introduce a technique to perform channel selection using convolutional neural network (CNN) and to decode multiple classes of motor imagery intentions from four participants who are amputees. A CNN model trained on EEG data of 64 channels achieved a mean classification accuracy of 99.7% with five classes. Channel selection based on weights extracted from the trained model has been performed with subsequent models trained on eight selected channels achieved a reasonable accuracy of 91.5%. Training the model in time domain and frequency domain was also compared, different window sizes were experimented to test the possibilities of realtime application. Our method of channel selection was then evaluated on a publicly available motor imagery EEG dataset.
机译:对于许多残疾人来说,大脑计算机接口(BCI)可能是与他人交流并控制周围事物的唯一途径。使用运动图像范式,人们可以利用他们的脑电波来解码个人的意图,以帮助他们与周围环境互动,而无需进行任何身体运动。数十年来,对从获取的脑电图(EEG)信号中提取的特征进行训练的机器学习模型已用于解码运动图像活动。该方法具有多个限制和约束,尤其是在特征提取期间。当前的EEG设备上的大量通道使它们难以在现实生活中使用,因为它们体积庞大,佩戴不舒服并且准备时间很长。在本文中,我们介绍了一种使用卷积神经网络(CNN)执行频道选择并解码来自四名被截肢者的多类运动图像意图的技术。在64个通道的EEG数据上训练的CNN模型在五个类别中的平均分类准确率达到了99.7%。已经执行基于从训练后的模型中提取的权重的信道选择,随后在八个选定的信道上训练的后续模型实现了91.5%的合理精度。还比较了在时域和频域上训练模型,对不同的窗口大小进行了实验,以测试实时应用的可能性。然后,在公开的运动图像EEG数据集上评估了我们的频道选择方法。

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