Detecting voluntary gait initiation/termination intention using EEG

Junhyuk Choi, S. Lee, Seung-jong Kim, Jong Min Lee, Hyungmin Kim
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引用次数: 5

Abstract

In this study, we employed a linear classifier to grasp the abstract features of electroencephalography (EEG) for recognizing voluntary gait intention and termination. We monitored Mu-band EEG to find gait intention and tried to detect a movement on/offset. Considerable gait-related (de) synchronization occurred hence, amplified by common spatial pattern (CSP). Performance of the classifier was evaluated in terms of classification success rates and false positive rates.
利用脑电图检测自主步态启动/终止意图
在这项研究中,我们使用线性分类器来掌握脑电图(EEG)的抽象特征,以识别自主步态的意图和终止。我们监测mu波段脑电图来发现步态意图,并试图检测运动/偏移。因此,大量的步态相关(非)同步发生,并被共同空间模式(CSP)放大。分类器的性能根据分类成功率和假阳性率进行评估。
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