Liu Yimeng, Höllerer Tobias, Sra Misha
Department of Computer Science, University of California, Santa Barbara, Santa Barbara, CA, United States.
Front Comput Neurosci. 2022 May 20;16:803384. doi: 10.3389/fncom.2022.803384. eCollection 2022.
Electroencephalogram (EEG) signals are often used as an input modality for Brain Computer Interfaces (BCIs). While EEG signals can be beneficial for numerous types of interaction scenarios in the real world, high levels of noise limits their usage to strictly noise-controlled environments such as a research laboratory. Even in a controlled environment, EEG is susceptible to noise, particularly from user motion, making it highly challenging to use EEG, and consequently BCI, as a ubiquitous user interaction modality. In this work, we address the EEG noise/artifact correction problem. Our goal is to detect physiological artifacts in EEG signal and automatically replace the detected artifacts with imputed values to enable robust EEG sensing overall requiring significantly reduced manual effort than is usual. We present a novel EEG state-based imputation model built upon a recurrent neural network, which we call SRI-EEG, and evaluate the proposed method on three publicly available EEG datasets. From quantitative and qualitative comparisons with six conventional and neural network based approaches, we demonstrate that our method achieves comparable performance to the state-of-the-art methods on the EEG artifact correction task.
脑电图(EEG)信号常被用作脑机接口(BCI)的一种输入方式。虽然EEG信号在现实世界的众多交互场景中可能有益,但高水平的噪声限制了它们只能在诸如研究实验室等严格噪声控制的环境中使用。即使在受控环境中,EEG也容易受到噪声影响,特别是来自用户动作的噪声,这使得将EEG以及相应的BCI用作一种普遍存在的用户交互方式极具挑战性。在这项工作中,我们解决EEG噪声/伪迹校正问题。我们的目标是检测EEG信号中的生理伪迹,并自动用估算值替换检测到的伪迹,以实现稳健的EEG传感,总体上所需的人工工作量比通常情况显著减少。我们提出了一种基于循环神经网络构建的新颖的基于EEG状态的估算模型,我们称之为SRI - EEG,并在三个公开可用的EEG数据集上评估了所提出的方法。通过与六种传统方法和基于神经网络的方法进行定量和定性比较,我们证明了我们的方法在EEG伪迹校正任务上达到了与当前最先进方法相当的性能。