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A Generic Transferable EEG Decoder for Online Detection of Error Potential in Target Selection

机译:用于目标选择中错误潜力在线检测的通用可转移EEG解码器

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摘要

Reliable detection of error from electroencephalography (EEG) signals as feedback while performing a discrete target selection task across sessions and subjects has a huge scope in real-time rehabilitative application of Brain-computer Interfacing (BCI). Error Related Potentials (ErrP) are EEG signals which occur when the participant observes an erroneous feedback from the system. ErrP holds significance in such closed-loop system, as BCI is prone to error and we need an effective method of systematic error detection as feedback for correction. In this paper, we have proposed a novel scheme for online detection of error feedback directly from the EEG signal in a transferable environment (i.e., across sessions and across subjects). For this purpose, we have used a P300-speller dataset available on a BCI competition website. The task involves the subject to select a letter of a word which is followed by a feedback period. The feedback period displays the letter selected and, if the selection is wrong, the subject perceives it by the generation of ErrP signal. Our proposed system is designed to detect ErrP present in the EEG from new independent datasets, not involved in its training. Thus, the decoder is trained using EEG features of 16 subjects for single-trial classification and tested on 10 independent subjects. The decoder designed for this task is an ensemble of linear discriminant analysis, quadratic discriminant analysis, and logistic regression classifier. The performance of the decoder is evaluated using accuracy, F1-score, and Area Under the Curve metric and the results obtained is 73.97, 83.53, and 73.18%, respectively.
机译:在跨会话和主题执行离散目标选择任务时,可靠地检测出来自脑电图(EEG)信号作为反馈的错误在脑机接口(BCI)的实时修复应用中具有广阔的范围。错误相关电位(ErrP)是当参与者观察到来自系统的错误反馈时出现的EEG信号。 ErrP在这种闭环系统中具有重要意义,因为BCI容易出错,我们需要一种有效的系统错误检测方法作为校正反馈。在本文中,我们提出了一种新颖的方案,用于在可转移环境中(即跨会话和跨主题)直接从EEG信号在线检测错误反馈。为此,我们使用了BCI竞赛网站上的P300-speller数据集。任务涉及主题选择单词的字母,然后是反馈期。反馈周期显示选择的字母,如果选择错误,对象会通过ErrP信号的产生来感知它。我们提出的系统旨在从新的独立数据集中检测脑电图中存在的ErrP,而无需参与其训练。因此,使用16个受试者的EEG特征对解码器进行了单次分类训练,并对10个独立的受试者进行了测试。为此任务设计的解码器是线性判别分析,二次判别分析和逻辑回归分类器的集合。使用精度,F1分数和“曲线下面积”指标评估解码器的性能,获得的结果分别为73.97、83.53和73.18%。

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