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Online and Offline Domain Adaptation for Reducing BCI Calibration Effort

机译:在线和离线域调整以减少BCI校准工作

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摘要

Many real-world brain–computer interface (BCI) applications rely on single-trial classification of event-related potentials (ERPs) in EEG signals. However, because different subjects have different neural responses to even the same stimulus, it is very difficult to build a generic ERP classifier whose parameters fit all subjects. The classifier needs to be calibrated for each individual subject, using some labeled subject-specific data. This paper proposes both online and offline weighted adaptation regularization (wAR) algorithms to reduce this calibration effort, i.e., to minimize the amount of labeled subject-specific EEG data required in BCI calibration, and hence to increase the utility of the BCI system. We demonstrate using a visually evoked potential oddball task and three different EEG headsets that both online and offline wAR algorithms significantly outperform several other algorithms. Moreover, through source domain selection, we can reduce their computational cost by about text{50}%, making them more suitable for real-time applications.
机译:许多现实世界的脑机接口(BCI)应用程序都依赖于EEG信号中事件相关电位(ERP)的单次试验分类。但是,由于不同的对象对相同的刺激也有不同的神经反应,因此很难建立一个适用于所有对象的通用ERP分类器。需要使用一些带有标签的特定于受试者的数据针对每个受试者对分类器进行校准。本文提出了在线和离线加权自适应正则化(wAR)算法,以减少此校准工作量,即最小化BCI校准所需的标记受试者特定脑电数据的数量,从而提高BCI系统的实用性。我们展示了使用视觉诱发的潜在奇异球任务和三种不同的EEG耳机,在线和离线wAR算法均明显优于其他几种算法。此外,通过源域选择,我们可以将它们的计算成本降低约文本{50}%,从而使其更适合于实时应用。

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