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An Idle-State Detection Algorithm for SSVEP-Based Brain-Computer Interfaces Using a Maximum Evoked Response Spatial Filter

机译:基于最大诱发反应空间滤波器的基于SSVEP的脑机接口的空闲状态检测算法

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Although accurate recognition of the idle state is essential for the application of brain-computer interfaces (BCIs) in real-world situations, it remains a challenging task due to the variability of the idle state. In this study, a novel algorithm was proposed for the idle state detection in a steady-state visual evoked potential (SSVEP)-based BCI. The proposed algorithm aims to solve the idle state detection problem by constructing a better model of the control states. For feature extraction, a maximum evoked response (MER) spatial filter was developed to extract neurophysiologically plausible SSVEP responses, by finding the combination of multi-channel electroencephalogram (EEG) signals that maximized the evoked responses while suppressing the unrelated background EEGs. The extracted SSVEP responses at the frequencies of both the attended and the unattended stimuli were then used to form feature vectors and a series of binary classifiers for recognition of each control state and the idle state were constructed. EEG data from nine subjects in a three-target SSVEP BCI experiment with a variety of idle state conditions were used to evaluate the proposed algorithm. Compared to the most popular canonical correlation analysis-based algorithm and the conventional power spectrum-based algorithm, the proposed algorithm outperformed them by achieving an offline control state classification accuracy of 88.0 +/- 11.1% and idle state false positive rates (FPRs) ranging from 7.4 +/- 5.6% to 14.2 +/- 10.1%, depending on the specific idle state conditions. Moreover, the online simulation reported BCI performance close to practical use: 22.0 +/- 2.9 out of the 24 control commands were correctly recognized and the FPRs achieved as low as approximately 0.5 event/min in the idle state conditions with eye open and 0.05 event/min in the idle state condition with eye closed. These results demonstrate the potential of the proposed algorithm for implementing practical SSVEP BCI systems.
机译:尽管对空闲状态的准确识别对于在现实情况下应用脑机接口(BCI)至关重要,但是由于空闲状态的可变性,它仍然是一项具有挑战性的任务。在这项研究中,提出了一种新的算法,用于基于稳态视觉诱发电位(SSVEP)的BCI中的空闲状态检测。所提出的算法旨在通过构建更好的控制状态模型来解决空闲状态检测问题。对于特征提取,通过找到多通道脑电图(EEG)信号的组合来最大程度地激发诱发反应,同时抑制无关的背景EEG,开发了最大诱发反应(MER)空间滤波器,以提取神经生理学上合理的SSVEP反应。然后,将所提取的在有人参与和无人参与刺激的频率下的SSVEP响应用于形成特征向量,并构建了一系列用于识别每个控制状态和空闲状态的二进制分类器。在具有多种空闲状态条件的三目标SSVEP BCI实验中,来自九名受试者的EEG数据用于评估该算法。与最流行的基于规范相关分析的算法和基于常规功率谱的算法相比,该算法在离线控制状态分类精度为88.0 +/- 11.1%且空闲状态误报率(FPR)范围内,性能优于它们从7.4 +/- 5.6%到14.2 +/- 10.1%,具体取决于特定的空闲状态条件。此外,在线模拟报告的BCI性能接近于实际使用:在24个控制命令中,正确识别了22.0 +/- 2.9,并且在睁眼和0.05事件的闲置状态下,FPR达到低至约0.5事件/ min。 / min在空闲状态下闭眼。这些结果证明了所提出的算法在实现实际的SSVEP BCI系统中的潜力。

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