不同脑力负荷水平对基于运动意象的脑机接口的影响

Bin Gu, Long Chen, Yufeng Ke, Yijie Zhou, Haiqing Yu, Kun Wang, Dong Ming
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引用次数: 2

摘要

基于运动意象的脑机接口(MI-BCI)是目前应用最广泛的基于脑电图的脑机接口模式之一,它不仅用于控制外部设备,还用于帮助偏瘫患者重建受损的运动功能。然而,在MI-BCI的实际应用中,使用者往往面临更加多变的外部环境和复杂的认知活动,这可能会导致较高的心理负荷。本文通过设计一个包含要求动作和N-back任务的并行任务,以动作执行为对照,研究了心理负荷对动作意象的影响。实验结果表明,高心理负荷促进了运动意象的认知运动过程,抑制了运动执行。此外,我们还评估和比较了运动想象和运动空闲状态在不同心理负荷水平下MI-BCI的分类性能。我们还验证了在离线分析中检测运动意象期间心理工作量水平的可能性。本文通过探索运动想象和执行的认知-运动机制,为MI-BCI的广泛应用做出了贡献。
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The effects of varying levels of mental workload on motor imagery based brain-computer interface
As one of the most applied EEG-based paradigms, motor imagery based brain-computer interface (MI-BCI) is used not only to control external devices, but also to help hemiplegic patients to reconstruct impaired motor function. However, in practical application of MI-BCI, users often face more varied external environments and complex cognitive activities, which could induce a high mental workload. This paper studied the effects of mental workload on motor imagery by designing a parallel task containing required motor and N-back task, taking motor execution as comparison. The experimental results showed that high mental workloads promoted the cognitive-motor process of motor imagery and restrained motor execution. Besides, the classification performance of MI-BCI was evaluated and compared at different mental workload levels between motor imagery and motor idle state. We also verified the possibility of detecting mental workload levels during motor imagery in offline analysis. The paper contributed to a wide range of MI-BCI applications and by exploring the cognitive-motor mechanism in motor imagery and execution.
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