论文标题

mynd:对消费者硬件的新型BCI控制策略的无监督评估

MYND: Unsupervised Evaluation of Novel BCI Control Strategies on Consumer Hardware

论文作者

Hohmann, Matthias R., Konieczny, Lisa, Hackl, Michelle, Wirth, Brian, Zaman, Talha, Enficiaud, Raffi, Grosse-Wentrup, Moritz, Schölkopf, Bernhard

论文摘要

神经生理研究通常在生态有效性,可伸缩性和发现的普遍性的实验室中进行。这是开发脑部计算机界面(BCI)的重大挑战,最终需要在消费级硬件的无监督环境中运行。我们介绍了MYND:一个框架,该框架将消费级记录硬件与易于使用的应用程序进行了无监督评估BCI控制策略的评估。通过实验选择,硬件拟合,记录和数据上传的对象进行指导,以便自我管理的多日研究,包括神经生理记录和问卷。作为用例,我们通过将MYN与四通道脑电图(EEG)相结合,在现实的情况下评估了两种BCI控制策略(“正面记忆”和“音乐图像”)。有30名受试者在家中记录了70.4小时的脑电图数据。耳机贴合时间中位数为25.9秒,在记录期间保留了90.2%的中位信号质量。这两种控制策略的神经活动均可以平均平均离线准确度为68.5%和64.0%。反复的无监督执行相同的策略影响了绩效,可以通过实施反馈来解决策略之间切换或使用平台制定新策略来解决。

Neurophysiological studies are typically conducted in laboratories with limited ecological validity, scalability, and generalizability of findings. This is a significant challenge for the development of brain-computer interfaces (BCIs), which ultimately need to function in unsupervised settings on consumer-grade hardware. We introduce MYND: A framework that couples consumer-grade recording hardware with an easy-to-use application for the unsupervised evaluation of BCI control strategies. Subjects are guided through experiment selection, hardware fitting, recording, and data upload in order to self-administer multi-day studies that include neurophysiological recordings and questionnaires. As a use case, we evaluate two BCI control strategies ("Positive memories" and "Music imagery") in a realistic scenario by combining MYND with a four-channel electroencephalogram (EEG). Thirty subjects recorded 70.4 hours of EEG data with the system at home. The median headset fitting time was 25.9 seconds, and a median signal quality of 90.2% was retained during recordings.Neural activity in both control strategies could be decoded with an average offline accuracy of 68.5% and 64.0% across all days. The repeated unsupervised execution of the same strategy affected performance, which could be tackled by implementing feedback to let subjects switch between strategies or devise new strategies with the platform.

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