Proxy-based Masking Module for Revealing Relevance of Characteristics in Motor Imagery.

Hyeon-Taek Han, Sung-Jin Kim, Dae-Hyeok Lee, Seong-Whan Lee
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Abstract

Brain-computer interface (BCI) has been developed for communication between users and external devices by reflecting users' status and intentions. Motor imagery (MI) is one of the BCI paradigms for controlling external devices by imagining muscle movements. MI-based EEG signals generally tend to contain signals with sparse MI characteristics (sparse MI signals). When conducting domain adaptation (DA) on MI signals with sparse MI signals, it could interrupt the training process. In this paper, we proposed the proxy-based masking module (PMM) for masking sparse MI signals within MI signals. The proposed module was designed to suppress the amplitude of sparse MI signals using the negative similarity-based mask generated between the proxy of rest signals and the feature vectors of MI signals. We attached our proposed module to the conventional DA methods (i.e., the DJDAN, the MAAN, and the DRDA) to verify the effectiveness in the cross-subject environment on dataset 2a of BCI competition IV. When our proposed module was attached to each conventional DA method, the average accuracy was improved by much as 4.67 %, 0.76 %, and 1.72 %, respectively. Hence, we demonstrated that our proposed module could emphasize the information related to MI characteristics. The code of our implementation is accessible on GitHub.1.

基于代理的掩蔽模块揭示运动意象中相关特征。
脑机接口(Brain-computer interface, BCI)通过反映用户的状态和意图,实现了用户与外部设备之间的通信。运动想象(MI)是通过想象肌肉运动来控制外部装置的脑机接口范式之一。基于MI的脑电信号通常倾向于包含具有稀疏MI特征的信号(稀疏MI信号)。当对稀疏信号进行域自适应(DA)时,可能会中断训练过程。本文提出了一种基于代理的掩蔽模块(PMM),用于掩蔽稀疏的MI信号。该模块利用剩余信号的代理与MI信号的特征向量之间产生的负相似度掩模来抑制稀疏MI信号的幅度。我们将我们提出的模块附加到传统的数据分析方法(即DJDAN, MAAN和DRDA)上,以验证在BCI竞赛IV的数据集2a上的跨学科环境下的有效性。当我们提出的模块附加到每种传统的数据分析方法时,平均准确率分别提高了4.67%,0.76%和1.72%。因此,我们证明了我们提出的模块可以强调与MI特征相关的信息。我们实现的代码可以在GitHub.1上访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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