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P300 Speller Performance Predictor Based on RSVP Multi-feature

机译:基于RSVP多特征的P300喷头性能预测器

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摘要

Brain-computer interface (BCI) systems were developed so that people can control computers or machines through their brain activity without moving their limbs. The P300 speller is one of the BCI applications used most commonly, as is very simple and reliable and can achieve satisfactory performance. However, like other BCIs, the P300 speller still has room for improvements in terms of its practical use, for example, selecting the best compromise between spelling accuracy and information transfer rate (ITR; speed) so that the P300 speller can maintain high accuracy while increasing spelling speed. Therefore, seeking correlates of, and predicting, the P300 speller’s performance is necessary to understand and improve the technique. In this work, we investigated the correlations between rapid serial visual presentation (RSVP) task features and the P300 speller’s performance. Fifty-five subjects participated in the RSVP and conventional matrix P300 speller tasks and RSVP behavioral and electroencephalography (EEG) features were compared in the P300’s speller performance. We found that several of the RSVP’s event-related potential (ERP) and behavioral features were correlated with the P300 speller’s offline binary classification accuracy. Using these features, we propose a simple multi-feature performance predictor (r = 0.53, p = 0.0001) that outperforms any single feature performance predictor, including that of the conventional RSVP T1% predictor (r = 0.28, p = 0.06). This result demonstrates that selective multi-features can predict BCI performance better than a single feature alone.
机译:开发了脑机接口(BCI)系统,使人们可以通过大脑活动控制计算机或机器,而无需四肢运动。 P300拼写器是最常用的BCI应用程序之一,因为它非常简单可靠,并且可以实现令人满意的性能。但是,像其他BCI一样,P300拼写器在实际使用方面仍然有改进的余地,例如,在拼写准确性和信息传输率(ITR;速度)之间选择最佳折衷,以便P300拼写器可以在保持精度的同时保持较高的准确性。提高拼写速度。因此,寻找和预测P300拼写器性能的相关因素对于理解和改进该技术是必要的。在这项工作中,我们研究了快速序列视觉呈现(RSVP)任务功能与P300拼写器性能之间的相关性。五十五名受试者参加了RSVP和常规的P300矩阵拼写任务,并比较了PVP的RSVP行为和脑电图(EEG)功能。我们发现,RSVP的一些与事件相关的电位(ERP)和行为特征与P300拼写工具的离线二进制分类准确性有关。利用这些功能,我们提出了一种简单的多功能性能预测器(r = 0.53,p = 0.0001),其性能优于任何单个功能性能预测器,包括常规的RSVP T1%预测器(r = 0.28,p = 0.06)。该结果表明,选择性的多功能比单独的单个功能可以更好地预测BCI性能。

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