EEG-based Gait State and Gait Intention Recognition Using Spatio-Spectral Convolutional Neural Network

SangWook Park, F. Park, Junhyuk Choi, Hyungmin Kim
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引用次数: 9

Abstract

EEG-based BCI was recently applied to lower limb exoskeleton robots. Various machine learning decoders have shown high accuracy performance on classifying the gait state whether the subject is walking or standing. However, there is a trade-off between the accuracy and the responsiveness due to the delay time. The delay time is critical when controlling the exoskeleton robots with EEG decoders online (real-time). In this research, we propose spatio-spectral convolutional neural networks with relatively short segment of EEG data (0.2s) having 83.4% accuracy on gait state recognition. The gait intention recognition that detects the subject’s gait intention prior to the actual gait had 77.3% accuracy. We were able to classify EEG data of both healthy subjects and stroke patients at subacute and chronic phases.
基于脑电图的步态状态与步态意图空间谱卷积神经网络识别
基于脑电图的脑机接口最近被应用于下肢外骨骼机器人。各种机器学习解码器在分类受试者是行走还是站立的步态状态方面表现出了很高的准确性。然而,由于延迟时间的原因,在准确性和响应性之间存在权衡。延迟时间是利用EEG解码器在线(实时)控制外骨骼机器人的关键。在这项研究中,我们提出了相对较短的脑电数据片段(0.2s)的空间光谱卷积神经网络对步态状态的识别准确率为83.4%。在实际步态之前检测受试者步态意图的步态意图识别准确率为77.3%。我们能够在亚急性期和慢性期对健康受试者和脑卒中患者的脑电图数据进行分类。
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