基于跨脑CSP和超脑网络的多用户运动图像脑机接口的空闲状态检测

Li Zhu, Chongwei Su, Gaochao Cui, Changle Zhou, Jianhai Zhang, Wanzeng Kong
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引用次数: 2

摘要

运动意象(MI)是一种自发控制的脑机接口(BCI)范式,它更倾向于“精神控制”的概念。空闲状态检测是构建鲁棒MI- bci系统的一个重要问题,因为它需要判断被试是否处于MI任务中,而空闲状态包含多种情况。在这里,基于脑电图的多用户脑机接口是指两个或两个以上的受试者在同时记录他们的脑电图的情况下从事一个坐标任务。本文的目的是探讨基于CSP(公共空间模式)和脑网络特征的多用户MI-BCI在空闲检测中的性能。我们提出了几种跨脑特征融合策略。结果表明:1)通过CSP特征,跨脑CSP特征在不同策略下的分类准确率优于单脑CSP特征;2)通过脑网络特征,与配对对象连接的分类准确率优于单个脑网络,而脑网络间的分类准确率低于单个被试。3)alpha频带表现优于其他频带。多用户MI-BCI是一种提高空闲状态检测精度的潜在方法。
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Idle-State Detection in Multi-user Motor Imagery Brain Computer Interface with Cross-Brain CSP and Hyper-Brain-Network
Motor imagery (MI) is a kind of spontaneous controlled brain computer interface (BCI) paradigm, which is more likely to the concept of 'mind control'. The idle state detection is an important problem to construct a robust MI-BCI system since it needs to tell whether the subject is in MI task and the idle state contains much diverse cases. Herein, EEG-based multi-user BCI refers to two or more subjects engage in a coordinate task while their EEG are simultaneously recorded. The objective of this paper is to explore how the multi-user MI-BCI performance in idle detection based on CSP (common spatial pattern) and brain-network features. We proposed several strategies for cross-brain feature fusion. Results show that 1) Through CSP features, the classification accuracy of cross-brain outperforms the single brain CSP feature across different strategies. 2) Through brain-network features, the classification accuracy of concatenated with the paired subjects outperforms the single brain-network, while the inter-brain-network is lower than single subject 3) alpha frequency band shows better performance than other bands. Multi-user MI-BCI would be a potential way to improve the idle state detection accuracy.
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