Neural decoding of imagined speech from EEG signals using the fusion of graph signal processing and graph learning techniques

Aref Einizade, Mohsen Mozafari, Shayan Jalilpour, Sara Bagheri, Sepideh Hajipour Sardouie
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引用次数: 2

Abstract

Imagined Speech (IS) is the imagination of speech without using the tongue or muscles. In recent studies, IS tasks are increasingly investigated for the Brain-Computer Interface (BCI) applications. Electroencephalography (EEG) signals, which record brain activity, can be used to analyze BCI-based tasks utilizing Machine Learning (ML) methods. The current paper considers decoding IS brain waves using the fusion of classical signal processing, Graph Signal Processing (GSP), and Graph Learning (GL) based features. The proposed fusion method, named GraphIS (short for a Graph-based Imagined Speech BCI decoder), is applied to the four-class classification (three classes of the imagined words, in addition to the rest state) on EEG recordings of fifteen subjects. Results show that GSP and GL-based features can highly improve the performance of classification outcomes compared to using only classical signal processing features and over the state-of-the-art Common Spatial Pattern (CSP) feature extractor by considering the spatial information of the signals as well as interactions between channels in regions of interest. The proposed GraphIS method leads to a mean accuracy of 50.10% in the studied four-class IS classification task, compared to using only one feature set with an accuracy of 47.86% and 46.10%, and also the state-of-the-art CSP with an accuracy of 47.10%. Additionally, using an EEG connectivity map of the electrode signals obtained from GL methods, we also found a strong connection in the right frontal region as well as in the left frontal regions during IS, which had not been focused on in the previous IS papers.

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基于图信号处理和图学习技术的脑电信号想象语音的神经解码
想象语言(IS)是在不使用舌头或肌肉的情况下对语言的想象。近年来,人们越来越多地研究脑机接口(BCI)应用的信息系统任务。记录大脑活动的脑电图(EEG)信号可用于利用机器学习(ML)方法分析基于bci的任务。本论文考虑使用经典信号处理、图信号处理(GSP)和基于图学习(GL)特征的融合来解码IS脑电波。该融合方法命名为GraphIS(基于图的想象语音BCI解码器的缩写),应用于15个被试的脑电记录的四类分类(除了休息状态外,还有三类想象词)。结果表明,通过考虑信号的空间信息以及感兴趣区域通道之间的相互作用,与仅使用经典信号处理特征和最先进的公共空间模式(CSP)特征提取器相比,基于GSP和gl的特征可以极大地提高分类结果的性能。本文提出的GraphIS方法在四类IS分类任务中的平均准确率为50.10%,而仅使用一个特征集的准确率分别为47.86%和46.10%,最先进的CSP方法的准确率为47.10%。此外,利用GL方法获得的电极信号的EEG连接图,我们还发现在IS期间,右侧额叶区域和左侧额叶区域都有很强的连接,这在以前的IS论文中没有得到关注。
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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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