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基于 P300 的脑机接口中用于减少校准时间的通用模型集研究。

The Study of Generic Model Set for Reducing Calibration Time in P300-Based Brain-Computer Interface.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2020 Jan;28(1):3-12. doi: 10.1109/TNSRE.2019.2956488. Epub 2019 Nov 28.

DOI:10.1109/TNSRE.2019.2956488
PMID:31794401
Abstract

P300-based brain-computer interfaces (BCIs) provide an additional communication channel for individuals with communication disabilities. In general, P300-based BCIs need to be trained, offline, for a considerable period of time, which causes users to become fatigued. This reduces the efficiency and performance of the system. In order to shorten calibration time and improve system performance, we introduce the concept of a generic model set. We used ERP data from 116 participants to train the generic model set. The resulting set consists of ten models, which are trained by weighted linear discriminant analysis (WLDA). Twelve new participants were then invited to test the validity of the generic model set. The results demonstrated that all new participants matched the best generic model. The resulting mean classification accuracy equaled 80% after online training, an accuracy that was broadly equivalent to the typical training model method. Moreover, the calibration time was shortened by 70.7% of the calibration time of the typical model method. In other words, the best matching model method only took 81s to calibrate, while the typical model method took 276s. There were also significant differences in both accuracy and raw bit rate between the best and the worst matching model methods. We conclude that the strategy of combining the generic models with online training is easily accepted and achieves higher levels of user satisfaction (as measured by subjective reports). Thus, we provide a valuable new strategy for improving the performance of P300-based BCI.

摘要

基于 P300 的脑机接口 (BCI) 为有交流障碍的人提供了额外的交流渠道。一般来说,基于 P300 的 BCI 需要离线进行相当长时间的训练,这会导致用户疲劳。这降低了系统的效率和性能。为了缩短校准时间并提高系统性能,我们引入了通用模型集的概念。我们使用来自 116 名参与者的 ERP 数据来训练通用模型集。由此产生的集合由十个模型组成,这些模型是通过加权线性判别分析 (WLDA) 训练的。然后邀请 12 名新参与者测试通用模型集的有效性。结果表明,所有新参与者都与最佳通用模型匹配。在线训练后的平均分类准确率为 80%,与典型训练模型方法的准确率大致相当。此外,校准时间缩短了典型模型方法校准时间的 70.7%。换句话说,最佳匹配模型方法只需 81 秒即可校准,而典型模型方法则需要 276 秒。最佳和最差匹配模型方法之间在准确率和原始比特率方面也存在显著差异。我们得出结论,结合通用模型和在线训练的策略易于接受,并实现了更高水平的用户满意度(通过主观报告衡量)。因此,我们为提高基于 P300 的 BCI 的性能提供了一种有价值的新策略。

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