脑电运动图像分类的时间卷积网络解决方案

N. Lu, Tao Yin, Xue Jing
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引用次数: 3

摘要

基于脑电运动图像识别的脑机接口是构建大脑与外界替代通路的重要方案。脑电信号通常被噪声所掩盖,信噪比很低,这给有效的运动图像分类带来了很大的挑战。此外,对于特定运动意象,主体内和主体间的信号差异较大,也给准确分类带来了困难。近年来,一些基于AutoEncoder、Restricted Boltzmann Machine、CNN和RNN的深度学习解决方案被提出用于脑电运动图像分类,很好地提高了运动图像的分类精度。然而,多主题、多任务的运动意象分类问题仍然是一个挑战。现有深度学习解决方案的高计算成本是另一个需要解决的严重问题。提出了一种基于时间卷积网络(TCN)的运动图像分类方法。与传统rnn相比,TCN内部的扩展因果卷积可以很好地以并行方式合并时间信息,计算效率更高。采用时间叠加的空间脑电图信号作为TCN的输入。在此基础上,考虑了脑信号的空间分布信息和时间变化。大量的实验表明,提出的TCN方法在多主体、多任务运动图像分类上取得了较好的效果。在20个学科和5个任务上达到了97.89%的高分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Temporal Convolution Network Solution for EEG Motor Imagery Classification
EEG motor imagery recognition based brain computer interface has been an import scheme to construct an alternative pathway of the brain to the outside world. EEG signal is usually buried in noise and has very low signal to noise ratio (SNR), which has presented great challenge for efficient motor imagery classification. In addition, the large intra-subject and inter-subject signal variance toward one specific motor imagery also brings difficulty for accurate classification. In recent years, some deep learning solutions based on AutoEncoder, Restricted Boltzmann Machine, CNN and RNN have been proposed for EEG motor imagery classification which have well improved the motor imagery classification accuracy. However, the multi-subject and multi-task motor imagery classification problem remains a challenge. The high computational cost of the existing deep learning solutions is another serious issue to be addressed. In this paper, a new motor imagery classification solution based on Temporal Convolutional Network (TCN) is developed. The dilated causal convolution within TCN could well incorporate the temporal information in a parallel way with much higher computational efficiency than the traditional RNNs. Time stacked spatial EEG signal has been employed as the input to the TCN. Based on which, both the spatial distribution information and temporal variation of the brain signal have been considered. Extensive experiments have shown that the proposed TCN solution has obtained state of the art performance on multi-subject and multi-task motor imagery classification. A high classification accuracy as 97.89% on 20 subjects and 5 tasks has been reached.
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