Suppr超能文献

基于运动想象的脑机接口:信号推导与聚合函数的应用

Motor-Imagery-Based Brain-Computer Interface Using Signal Derivation and Aggregation Functions.

作者信息

Fumanal-Idocin Javier, Wang Yu-Kai, Lin Chin-Teng, Fernandez Javier, Sanz Jose Antonio, Bustince Humberto

出版信息

IEEE Trans Cybern. 2022 Aug;52(8):7944-7955. doi: 10.1109/TCYB.2021.3073210. Epub 2022 Jul 19.

Abstract

Brain-computer interface (BCI) technologies are popular methods of communication between the human brain and external devices. One of the most popular approaches to BCI is motor imagery (MI). In BCI applications, the electroencephalography (EEG) is a very popular measurement for brain dynamics because of its noninvasive nature. Although there is a high interest in the BCI topic, the performance of existing systems is still far from ideal, due to the difficulty of performing pattern recognition tasks in EEG signals. This difficulty lies in the selection of the correct EEG channels, the signal-to-noise ratio of these signals, and how to discern the redundant information among them. BCI systems are composed of a wide range of components that perform signal preprocessing, feature extraction, and decision making. In this article, we define a new BCI framework, called enhanced fusion framework, where we propose three different ideas to improve the existing MI-based BCI frameworks. First, we include an additional preprocessing step of the signal: a differentiation of the EEG signal that makes it time invariant. Second, we add an additional frequency band as a feature for the system: the sensorimotor rhythm band, and we show its effect on the performance of the system. Finally, we make a profound study of how to make the final decision in the system. We propose the usage of both up to six types of different classifiers and a wide range of aggregation functions (including classical aggregations, Choquet and Sugeno integrals, and their extensions and overlap functions) to fuse the information given by the considered classifiers. We have tested this new system on a dataset of 20 volunteers performing MI-based brain-computer interface experiments. On this dataset, the new system achieved 88.80% accuracy. We also propose an optimized version of our system that is able to obtain up to 90.76%. Furthermore, we find that the pair Choquet/Sugeno integrals and overlap functions are the ones providing the best results.

摘要

脑机接口(BCI)技术是实现人脑与外部设备通信的常用方法。BCI最流行的方法之一是运动想象(MI)。在BCI应用中,脑电图(EEG)因其非侵入性的特点,是一种非常受欢迎的脑动力学测量方法。尽管人们对BCI主题高度关注,但由于在脑电信号中执行模式识别任务存在困难,现有系统的性能仍远非理想。这种困难在于正确脑电通道的选择、这些信号的信噪比,以及如何辨别其中的冗余信息。BCI系统由执行信号预处理、特征提取和决策的各种组件组成。在本文中,我们定义了一个新的BCI框架,称为增强融合框架,我们提出了三种不同的思路来改进现有的基于MI的BCI框架。首先,我们增加了信号的一个额外预处理步骤:对脑电信号进行微分,使其具有时间不变性。其次,我们为系统添加了一个额外的频带作为特征:感觉运动节律频带,并展示了其对系统性能的影响。最后,我们深入研究了如何在系统中做出最终决策。我们建议使用多达六种不同类型的分类器和各种聚合函数(包括经典聚合、Choquet和Sugeno积分及其扩展和重叠函数)来融合所考虑分类器给出的信息。我们在一个由20名志愿者执行基于MI的脑机接口实验的数据集上测试了这个新系统。在这个数据集上,新系统的准确率达到了88.80%。我们还提出了系统的一个优化版本,其准确率能够达到90.76%。此外,我们发现Choquet/Sugeno积分对和重叠函数提供了最佳结果。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验