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基于脑电图运动想象脑机接口基线校正的主题不变深度神经网络

Subject-Invariant Deep Neural Networks Based on Baseline Correction for EEG Motor Imagery BCI.

作者信息

Kwak Youngchul, Kong Kyeongbo, Song Woo-Jin, Kim Seong-Eun

出版信息

IEEE J Biomed Health Inform. 2023 Apr;27(4):1801-1812. doi: 10.1109/JBHI.2023.3238421. Epub 2023 Apr 4.

DOI:10.1109/JBHI.2023.3238421
PMID:37022076
Abstract

Electroencephalography (EEG)-based brain-computer interface (BCI) systems have been extensively used in various applications, such as communication, control, and rehabilitation. However, individual anatomical and physiological differences cause subject-specific variability of EEG signals for the same task, and BCI systems thus require a calibration procedure that adjusts system parameters to each subject. To overcome this problem, we propose a subject-invariant deep neural network (DNN) using baseline-EEG signals that can be recorded from subjects resting in comfortable states. We first modeled the deep features of EEG signals as a decomposition of subject-invariant and subject-variant features corrupted by anatomical/physiological characteristics. Subject-variant features were then removed from the deep features by learning the network with a baseline correction module (BCM) using the underlying individual information in baseline-EEG signals. The subject-invariant loss forces the BCM to assemble subject-invariant features that have the same class, irrespective of the subject. Using 1-min baseline-EEG signals of the new subject, our algorithm can eliminate subject-variant components from test data without the calibration process. The experimental results show that our subject-invariant DNN framework significantly increases decoding accuracies of the conventional DNN methods for BCI systems. Furthermore, feature visualizations illustrate that the proposed BCM extracts subject-invariant features that are close to each other in the same class.

摘要

基于脑电图(EEG)的脑机接口(BCI)系统已广泛应用于各种领域,如通信、控制和康复。然而,个体的解剖学和生理学差异会导致同一任务的EEG信号存在个体特异性差异,因此BCI系统需要一个校准程序来针对每个受试者调整系统参数。为了克服这个问题,我们提出了一种使用基线EEG信号的个体不变深度神经网络(DNN),该信号可以从处于舒适状态休息的受试者身上记录下来。我们首先将EEG信号的深度特征建模为受解剖学/生理学特征破坏的个体不变特征和个体可变特征的分解。然后,通过使用基线EEG信号中的潜在个体信息,利用基线校正模块(BCM)对网络进行学习,从深度特征中去除个体可变特征。个体不变损失迫使BCM组装具有相同类别的个体不变特征,而不考虑受试者。使用新受试者的1分钟基线EEG信号,我们的算法可以在无需校准过程的情况下从测试数据中消除个体可变成分。实验结果表明,我们的个体不变DNN框架显著提高了BCI系统中传统DNN方法的解码准确率。此外,特征可视化表明,所提出的BCM提取了同一类中彼此接近的个体不变特征。

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