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An Online Self-paced Brain-Computer Interface Onset Detection Based on Sound-production Imagery Applied to Real-life Scenarios

机译:基于应用于现实方案的声音生产图像,在线自定节型脑电电脑界面开始检测

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This research investigated an online onset detection (i.e., ON state detection in asynchronous BCIs) method for BCIs by opening a message when it arrives in two different daily-life task scenarios (watching video and reading text). A new sound-production related cognitive task (Sound-production imagery, SI) was tested. Blind-source separation with canonical correlation analysis was used for artefact handling. Autoregressive coefficients, band power, common spatial patterns and discrete wavelet transform were used for feature extraction to cover all time, frequency, and spatial time-frequency domain. Linear discriminant analysis was used for classification. The averaged true-positive rate with six subjects was 88.9% in the watching video scenario and 78.9% in the reading text case. The average false-positive rates were 4.2% and 3.9%, respectively. In terms of task response speed, SI task recognition took 4.45s on average for an onset. From these results, the new SI task showed promising results for an online self-paced onset detection system compared to other similar studies.
机译:该研究通过在到达两种不同的日常生活任务方案(观看视频和读取文本)时,研究了BCIS的在线生物发作检测(即,异步BCIS中的状态检测)方法。测试了一个新的健全的相关认知任务(系统生产图像,SI)。使用规范相关性分析的盲源分离用于人工制品处理。自回归系数,频带电力,公共空间模式和离散小波变换用于特征提取,以覆盖所有时间,频率和空间时频域。线性判别分析用于分类。观看视频场景中的平均真正阳性率为88.9%,读取文本案例为78.9%。平均假率分别为4.2%和3.9%。在任务响应速度方面,SI任务识别平均花费4.45秒,以获得发病。从这些结果来看,新的SI任务表明,与其他类似研究相比,在线自定位发病检测系统显示了有希望的结果。

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