Sun Hang, Li Changsheng, Zhang He
Department of Mechanical Engineering, Nanjing University of Science and Technology School, Nanjing, Jiangsu, China.
Front Hum Neurosci. 2023 Apr 24;17:1150316. doi: 10.3389/fnhum.2023.1150316. eCollection 2023.
The precision and reliability of electroencephalogram (EEG) data are essential for the effective functioning of a brain-computer interface (BCI). As the number of BCI acquisition channels increases, more EEG information can be gathered. However, having too many channels will reduce the practicability of the BCI system, raise the likelihood of poor-quality channels, and lead to information misinterpretation. These issues pose challenges to the advancement of BCI systems. Determining the optimal configuration of BCI acquisition channels can minimize the number of channels utilized, but it is challenging to maintain the original operating system and accommodate individual variations in channel layout. To address these concerns, this study introduces the EEG-completion-informer (EC-informer), which is based on the Informer architecture known for its effectiveness in time-series problems. By providing input from four BCI acquisition channels, the EC-informer can generate several virtual acquisition channels to extract additional EEG information for analysis. This approach allows for the direct inheritance of the original model, significantly reducing researchers' workload. Moreover, EC-informers demonstrate strong performance in damaged channel repair and poor channel identification. Using the Informer as a foundation, the study proposes the EC-informer, tailored to BCI requirements and demanding only a small number of training samples. This approach eliminates the need for extensive computing units to train an efficient, lightweight model while preserving comprehensive information about target channels. The study also confirms that the proposed model can be transferred to other operators with minimal loss, exhibiting robust applicability. The EC-informer's features enable original BCI devices to adapt to a broader range of classification algorithms and relax the operational requirements of BCI devices, which could facilitate the promotion of the use of BCI devices in daily life.
脑电图(EEG)数据的精确性和可靠性对于脑机接口(BCI)的有效运行至关重要。随着BCI采集通道数量的增加,可以收集到更多的EEG信息。然而,过多的通道会降低BCI系统的实用性,增加出现低质量通道的可能性,并导致信息误解。这些问题对BCI系统的发展构成了挑战。确定BCI采集通道的最佳配置可以减少所使用的通道数量,但要维持原始操作系统并适应通道布局的个体差异具有挑战性。为了解决这些问题,本研究引入了EEG完成信息器(EC信息器),它基于以在时间序列问题上的有效性而闻名的Informer架构。通过提供来自四个BCI采集通道的输入,EC信息器可以生成多个虚拟采集通道,以提取额外的EEG信息进行分析。这种方法允许直接继承原始模型,显著减轻研究人员的工作量。此外,EC信息器在受损通道修复和不良通道识别方面表现出强大的性能。该研究以Informer为基础,提出了针对BCI要求且仅需要少量训练样本的EC信息器。这种方法无需大量计算单元来训练一个高效、轻量级的模型,同时保留有关目标通道的全面信息。该研究还证实,所提出的模型可以以最小的损失转移到其他操作者身上,表现出强大的适用性。EC信息器的特性使原始BCI设备能够适应更广泛的分类算法,并放宽BCI设备的操作要求,这可能有助于促进BCI设备在日常生活中的使用。