基于 SSVEP 的 BCI 用户友好型大型数据库

Yue Dong, Sen Tian
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引用次数: 1

摘要

背景:脑机接口(BCIs)在帮助运动障碍患者进行交流和康复方面的潜力受到了广泛关注。在各种脑机接口中,基于稳态视觉诱发电位(SSVEP)的系统在互动应用中表现出极高的效率。然而,人体工程学设计方面的挑战限制了其在工业环境中的实际应用。闪烁刺激造成的视觉和精神疲劳以及耗时的准备过程等问题阻碍了用户对此类系统的采用。方法:为了评估这些生物识别(BCI)解决方案,我们引入了一个开放式数据库,该数据库由 59 名健康志愿者使用符合人体工程学设计的半干电极和网格刺激采集的脑电图(EEG)数据组成。该数据库是在没有电磁屏蔽的情况下采集的,每位参与者的准备时间小于 5 分钟。实验中使用了带提示的 40 个目标 SSVEP 拼写系统。实验结果我们通过时间和频谱分析方法对数据库进行了验证。为了进一步研究该数据库,我们使用了滤波器组典型相关分析(FBCCA)、集合任务相关成分分析(e-TRCA)和多刺激任务相关成分分析(msTRCA)进行分类。数据库可从以下链接下载:https://drive.google.com/drive/folders/1TXuxU863nZoniZRgNWZy0PRuL8lhBuP4?usp=sharing。结论:本研究通过解决用户体验和系统设计方面的难题,有助于提高基于 SSVEP 的 BCI 在实际环境中的应用。所提出的用户友好型视觉刺激和符合人体工程学的电极设计提高了舒适度和可用性。开放式数据集为未来研究提供了宝贵资源,有助于开发适合工业应用的稳健高效的 SSVEP- BCI 系统。
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A large database towards user-friendly SSVEP-based BCI
Background: Brain-computer interfaces (BCIs) have gained considerable attention for their potential in assisting individuals who have motor impairments with communication and rehabilitation. Among BCIs, steady-state visual evoked potential (SSVEP)-based systems have demonstrated high efficiency in interactive applications. However, ergonomic design challenges have limited their practical implementation in industrial settings. Issues such as visual and mental fatigue caused by flickering stimuli and the time-consuming preparation process hinder user adoption of such systems. Methods: To evaluate these BCI solutions, we introduced an open database comprising Electroencephalogram (EEG) data collected from 59 healthy volunteers using ergonomically designed semi-dry electrodes and grid stimuli. The database was acquired without electromagnetic shielding, and the preparation time for each participant was <5 min. A 40-target SSVEP speller system with cues was used in the experiment. Results: We validate the database by temporal and spectral analyzing methods. To further investigate the database, filter bank canonical correlation analysis (FBCCA), ensemble task-related component analysis (e-TRCA) and multi-stimulus task-related component analysis (msTRCA) were used for classification. The database can be downloaded from the following link: https://drive.google.com/drive/folders/1TXuxU863nZoniZRgNWZy0PRuL8lhBuP4?usp=sharing. Conclusions: This research contributes to enhancing the use of SSVEP-based BCIs in practical settings by addressing user experience and system design challenges. The proposed user-friendly visual stimuli and ergonomic electrode design improve comfort and usability. The open dataset serves as a valuable resource for future studies, enabling the development of robust and efficient SSVEP- BCI systems suitable for industrial applications.
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