Institute of Cognitive Sciences and Technologies, National Research Council, Via Gian Domenico Romagnosi, 00196 Rome, Italy.
Department of Electrical Engineering and Information Technology (DIETI), University of Naples Federico II, 80125 Naples, Italy.
Sensors (Basel). 2024 Sep 21;24(18):6110. doi: 10.3390/s24186110.
This paper presents an innovative approach leveraging Neuronal Manifold Analysis of EEG data to identify specific time intervals for feature extraction, effectively capturing both class-specific and subject-specific characteristics. Different pipelines were constructed and employed to extract distinctive features within these intervals, specifically for motor imagery (MI) tasks. The methodology was validated using the Graz Competition IV datasets 2A (four-class) and 2B (two-class) motor imagery classification, demonstrating an improvement in classification accuracy that surpasses state-of-the-art algorithms designed for MI tasks. A multi-dimensional feature space, constructed using NMA, was built to detect intervals that capture these critical characteristics, which led to significantly enhanced classification accuracy, especially for individuals with initially poor classification performance. These findings highlight the robustness of this method and its potential to improve classification performance in EEG-based MI-BCI systems.
本文提出了一种创新的方法,利用 EEG 数据的神经元流形分析来识别特征提取的特定时间间隔,有效地捕获了类别特异性和个体特异性特征。构建并采用了不同的管道来提取这些间隔内的独特特征,特别是针对运动想象 (MI) 任务。该方法使用 Graz 竞赛 IV 数据集 2A(四类)和 2B(两类)运动想象分类进行验证,结果表明分类准确性的提高超过了为 MI 任务设计的最新算法。使用 NMA 构建了一个多维特征空间,用于检测捕获这些关键特征的间隔,这导致分类准确性显著提高,特别是对于最初分类性能较差的个体。这些发现突出了该方法的稳健性及其在基于 EEG 的 MI-BCI 系统中提高分类性能的潜力。