Faculty of Information Technology, Beijing University of Technology, Beijing, People's Republic of China.
Beijing Institute of Mechanical Equipment, Beijing, People's Republic of China.
J Neural Eng. 2021 Jun 4;18(4). doi: 10.1088/1741-2552/ac0489.
Achieving high precision rapid serial visual presentation (RSVP) task often requires many electrode channels to obtain more information. However, the more channels may contain more redundant information and also lead to its limited practical applications. Therefore, it is necessary to reduce the number of channels to enhance the classification performance and users experience. Furthermore, cross-subject generalization has always been one of major challenges in electroencephalography channel reduction, especially in the RSVP paradigm. Most search-based channel selection method presented in the literature are single-objective methods, the classification accuracy (ACC) is usually chosen as the only criterion.In this article, the idea of multi-objective optimization was introduced into the RSVP channel selection to minimize two objectives: classification error and the number of channels. By combining a multi-objective evolutionary algorithm for solving large-scale sparse problems and hierarchical discriminant component analysis (HDCA), a novel channel selection method for RSVP was proposed. After that, the cross-subject generalization validation through the proposed channel selection method.The proposed method achieved an average ACC of 95.41% in a public dataset, which is 3.49% higher than HDCA. The ACC was increased by 2.73% and 2.52%, respectively. Besides, the cross-subject generalization models in channel selection, namely special-16 and special-32, on untrained subjects show that the classification performance is better than the Hoffmann empirical channels.The proposed channel selection method could reduce the calibration time in the experimental preparation phase and obtain a better accuracy, which is promising application in the RSVP scenario that requires low-density electrodes.
实现高精度快速序列视觉呈现 (RSVP) 任务通常需要许多电极通道以获取更多信息。然而,更多的通道可能包含更多的冗余信息,也会导致其在实际应用中的局限性。因此,有必要减少通道数量以提高分类性能和用户体验。此外,跨被试泛化一直是脑电图通道减少的主要挑战之一,特别是在 RSVP 范式中。文献中提出的大多数基于搜索的通道选择方法都是单目标方法,分类准确性 (ACC) 通常被选为唯一标准。在本文中,将多目标优化的思想引入到 RSVP 通道选择中,以最小化两个目标:分类误差和通道数量。通过结合用于解决大规模稀疏问题的多目标进化算法和分层判别分量分析 (HDCA),提出了一种新的 RSVP 通道选择方法。之后,通过所提出的通道选择方法进行跨被试泛化验证。该方法在一个公共数据集上实现了平均 ACC 为 95.41%,比 HDCA 高 3.49%。ACC 分别提高了 2.73%和 2.52%。此外,在未训练受试者的通道选择中,即特殊-16 和特殊-32 的跨被试泛化模型表明,分类性能优于 Hoffmann 经验通道。所提出的通道选择方法可以减少实验准备阶段的校准时间,并获得更好的准确性,这在需要低密度电极的 RSVP 场景中具有广阔的应用前景。