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Transferring Shared Responses Across Electrode Montages for Facilitating Calibration in High-Speed Brain Spellers

机译:跨电极蒙太奇传递共享的响应,以便于在高速脑部喷雾器中进行校准。

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Recent studies have shown that using the user's average steady-state visual evoked responses (SSVEPs) as the template to template-matching methods could significantly improve the accuracy and speed of the SSVEP-based brain-computer interface (BCI). However, collecting the pilot data for each individual can be time-consuming. To resolve this practical issue, this study aims to explore the feasibility of leveraging pre-recorded datasets from the same users by transferring common electroencephalogram (EEG) responses across different sessions with the same or different electrode montages. The proposed method employs spatial filtering techniques including response averaging, canonical correlation analysis (CCA), and task-related component analysis (TRCA) to project scalp EEG recordings onto a shared response domain. The transferability was evaluated by using 40-class SSVEPs recorded from eight subjects with nine electrodes on two different days. Three subsets of electrode montages were selected to simulate different scenarios such as identical, partly overlapped, and non-overlapped electrode placements across two sessions. The target identification accuracy of the proposed methods with transferred training data significantly outperformed a conventional training-free algorithm. The result suggests training data required in the BCI speller could be transferred from different EEG montages and/or headsets.
机译:最近的研究表明,使用用户的平均稳态视觉诱发反应(SSVEP)作为模板与模板匹配方法的模板,可以显着提高基于SSVEP的脑机接口(BCI)的准确性和速度。但是,为每个人收集导频数据可能很耗时。为了解决这个实际问题,本研究旨在探索通过在相同或不同电极蒙太奇的不同会话之间转移通用脑电图(EEG)响应来利用来自相同用户的预先记录的数据集的可行性。所提出的方法采用包括响应平均,规范相关分析(CCA)和任务相关组件分析(TRCA)在内的空间滤波技术,将头皮脑电图记录投影到共享响应域上。通过使用两天不同时间从八名受试者(使用九个电极)记录的40类SSVEPs来评估可转移性。选择了三个电极蒙太奇子集,以模拟不同的场景,例如跨两个会话的相同,部分重叠和不重叠的电极放置。所提出的方法的目标识别精度与转移的训练数据相比,明显优于传统的无训练算法。结果表明,可以从不同的EEG蒙太奇和/或头戴式耳机中传输BCI拼写器中所需的训练数据。

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