Zare Lahijan Lida, Meshgini Saeed, Afrouzian Reza, Danishvar Sebelan
Biomedical Engineering Department, Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz 51666-16471, Iran.
Miyaneh Faculty of Engineering, University of Tabriz, Miyaneh 51666-16471, Iran.
Biomimetics (Basel). 2025 Aug 4;10(8):506. doi: 10.3390/biomimetics10080506.
Automated movement intention is crucial for brain-computer interface (BCI) applications. The automatic identification of movement intention can assist patients with movement problems in regaining their mobility. This study introduces a novel approach for the automatic identification of movement intention through finger tapping. This work has compiled a database of EEG signals derived from left finger taps, right finger taps, and a resting condition. Following the requisite pre-processing, the captured signals are input into the proposed model, which is constructed based on graph theory and deep convolutional networks. In this study, we introduce a novel architecture based on six deep convolutional graph layers, specifically designed to effectively capture and extract essential features from EEG signals. The proposed model demonstrates a remarkable performance, achieving an accuracy of 98% in a binary classification task when distinguishing between left and right finger tapping. Furthermore, in a more complex three-class classification scenario, which includes left finger tapping, right finger tapping, and an additional class, the model attains an accuracy of 92%. These results highlight the effectiveness of the architecture in decoding motor-related brain activity from EEG data. Furthermore, relative to recent studies, the suggested model exhibits significant resilience in noisy situations, making it suitable for online BCI applications.
自动运动意图对于脑机接口(BCI)应用至关重要。运动意图的自动识别可以帮助有运动问题的患者恢复行动能力。本研究介绍了一种通过手指敲击自动识别运动意图的新方法。这项工作编制了一个脑电图(EEG)信号数据库,该数据库来自左手手指敲击、右手手指敲击以及静息状态。经过必要的预处理后,将捕获的信号输入到基于图论和深度卷积网络构建的所提出模型中。在本研究中,我们引入了一种基于六个深度卷积图层的新颖架构,专门设计用于有效捕获和提取EEG信号的基本特征。所提出的模型表现出卓越的性能,在区分左手和右手手指敲击的二分类任务中准确率达到98%。此外,在更复杂的三分类场景中,包括左手手指敲击、右手手指敲击和另一个类别,该模型的准确率达到92%。这些结果突出了该架构在从EEG数据中解码与运动相关的大脑活动方面的有效性。此外,相对于最近的研究,所建议的模型在嘈杂情况下表现出显著的抗干扰能力,使其适用于在线BCI应用。