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BCINet: An Optimized Convolutional Neural Network for EEG-Based Brain-Computer Interface Applications

机译:BCINET:用于基于EEG的脑电电脑接口应用的优化卷积神经网络

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EEG based brain-computer interface (BCI) allows people to communicate and control external devices using brain signals. The application of BCI ranges from assisting in disabilities to interaction in a virtual reality environment by detecting user intent from EEG signals. The major problem lies in correctly classifying the EEG signals to issue a command with minimal requirement of pre-processing and resources. To overcome these problems, we have proposed, BCINet, a novel optimized convolution neural network model. We have evaluated the BCINet over two EEG based BCI datasets collected in mobile brain/body imaging (MoBI) settings. BCINet significantly outperforms the classification for two datasets with up to 20% increase in accuracy while fewer than 75% trainable parameters. Such a model with improved performance while less requirement of computation resources opens the possibilities for the development of several real-world BCI applications with high performance.
机译:基于EEG的脑 - 计算机接口(BCI)允许人们使用脑信号进行通信和控制外部设备。 BCI范围的应用通过检测EEG信号的用户意图来帮助辅助残疾在虚拟现实环境中交互。主要问题在于正确分类EEG信号以发出命令,以最小的预处理和资源要求。为了克服这些问题,我们提出了一种新颖的优化卷积神经网络模型的BCInet。我们已经在移动大脑/身体成像(MOBI)设置中收集的基于eEG的BCI数据集进行了评估了BCINET。 BCINET显着优于两个数据集的分类,该数据集的准确性高达20%,而较少于75%的培训参数。这种模型具有改进的性能,而计算资源的要求较少,可以开发具有高性能的几个现实BCI应用的可能性。

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