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A time-frequency convolutional neural network for the offline classification of steady-state visual evoked potential responses

机译:时频卷积神经网络用于稳态视觉诱发电位响应的离线分类

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摘要

A new convolutional neural network architecture is presented. It includes the fast Fourier transform between two hidden layers to switch the signal analysis from the time domain to the frequency domain inside the network. This technique allows the signal classification without any special pre-processing and uses knowledge from the problem in the network topology. The first step allows the creation of different spatial and time filters. The second step is dedicated to the signal transformation in the frequency domain. The last step is the classification. The system is tested offline on the classification of EEG signals that contain steady-state visual evoked potential (SSVEP) responses. The mean recognition rate of the classification of five different types of SSVEP response is 95.61% on a time segment length of 1 s. The proposed strategy outperforms other classical neural network architecures.
机译:提出了一种新的卷积神经网络架构。它包括两个隐藏层之间的快速傅立叶变换,以将信号分析从网络内部的时域切换到频域。这种技术无需进行任何特殊的预处理就可以对信号进行分类,并使用网络拓扑中的问题知识。第一步允许创建不同的空间和时间过滤器。第二步专用于频域中的信号转换。最后一步是分类。对系统进行脱机测试,对包含稳态视觉诱发电位(SSVEP)响应的EEG信号进行分类。在1 s的时间段长度内,对五种不同类型的SSVEP响应进行分类的平均识别率为95.61%。所提出的策略优于其他经典的神经网络架构。

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