一种新的伪影去除策略及基于空间注意力的多尺度CNN用于MI识别

IF 0.7 Q3 COMPUTER SCIENCE, THEORY & METHODS International Journal of Advanced Computer Science and Applications Pub Date : 2023-01-01 DOI:10.14569/ijacsa.2023.0140931
Duan Li, Peisen Liu, Yongquan Xia
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引用次数: 0

摘要

基于运动图像(MI)的脑机接口(BCI)是一项很有前途的技术,旨在通过捕获特定任务中的大脑信号来帮助运动障碍患者恢复运动能力。然而,利用脑电图帽采集的无创脑电图信号往往含有大量的伪影。自动有效地去除这些伪影,同时保留与任务相关的大脑成分是MI解码的关键问题。此外,多通道脑电信号包含时域、频域和空域特征。虽然深度学习在运动意象脑电图(MI-EEG)信号的特征提取和解码方面取得了较好的效果,但在MI上获得一个实现特征提取最优匹配的高性能网络,分类算法仍然是一个具有挑战性的问题。在这项研究中,我们提出了一种将新的自动伪影去除策略与基于空间注意力的多尺度CNN (SA-MSCNN)相结合的方案。该工作从数据集中的第一个主题获得独立分量分析(ICA)权重,并使用K-means聚类确定最佳特征组合,然后将其应用于其他主题以去除伪影。此外,本工作还设计了一种SA-MSCNN,其中包括能够从多个频带提取信息的多尺度卷积模块、加权空间信息的空间注意模块和减少特征信息的可分离卷积模块。这项工作使用现实世界的公共数据集(BCI competition IV数据集2a)验证了所提出模型的性能。方法平均准确率为79.83%。这项工作进行了消融实验,以证明所提出的伪像去除方法和SA-MSCNN网络的有效性,并将结果与优秀的模型和最先进的(SOTA)研究进行了比较。研究结果证实了该方法的有效性,为开发新的MI-BCI系统提供了理论和实验基础,这对帮助残疾人恢复独立生活和提高生活质量具有重要意义。
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A Novel Artifact Removal Strategy and Spatial Attention-based Multiscale CNN for MI Recognition
The brain-computer interface (BCI) based on motor imagery (MI) is a promising technology aimed at assisting individuals with motor impairments in regaining their motor abilities by capturing brain signals during specific tasks. However, non-invasive electroencephalogram (EEG) signals collected using EEG caps often contain large numbers of artifacts. Automatically and effectively removing these artifacts while preserving task-related brain components is a key issue for MI de-coding. Additionally, multi-channel EEG signals encompass temporal, frequency and spatial domain features. Although deep learning has achieved better results in extracting features and de-coding motor imagery EEG (MI-EEG) signals, obtaining a high-performance network on MI that achieves optimal matching of feature extraction, thus classification algorithms is still a challenging issue. In this study, we propose a scheme that combines a novel automatic artifact removal strategy with a spatial attention-based multiscale CNN (SA-MSCNN). This work obtained independent component analysis (ICA) weights from the first subject in the dataset and used K-means clustering to determine the best feature combination, which was then applied to other subjects for artifact removal. Additionally, this work designed an SA-MSCNN which includes multiscale convolution modules capable of extracting information from multiple frequency bands, spatial attention modules weighting spatial information, and separable convolution modules reducing feature information. This work validated the performance of the proposed model using a real-world public dataset, the BCI competition IV dataset 2a. The average accuracy of the method was 79.83%. This work conducted ablation experiments to demonstrate the effectiveness of the proposed artifact removal method and SA-MSCNN network and compared the results with outstanding models and state-of-the-art (SOTA) studies. The results confirm the effectiveness of the proposed method and provide a theoretical and experimental foundation for the development of new MI-BCI systems, which is very useful in helping people with disabilities regain their independence and improve their quality of life.
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来源期刊
CiteScore
2.30
自引率
22.20%
发文量
519
期刊介绍: IJACSA is a scholarly computer science journal representing the best in research. Its mission is to provide an outlet for quality research to be publicised and published to a global audience. The journal aims to publish papers selected through rigorous double-blind peer review to ensure originality, timeliness, relevance, and readability. In sync with the Journal''s vision "to be a respected publication that publishes peer reviewed research articles, as well as review and survey papers contributed by International community of Authors", we have drawn reviewers and editors from Institutions and Universities across the globe. A double blind peer review process is conducted to ensure that we retain high standards. At IJACSA, we stand strong because we know that global challenges make way for new innovations, new ways and new talent. International Journal of Advanced Computer Science and Applications publishes carefully refereed research, review and survey papers which offer a significant contribution to the computer science literature, and which are of interest to a wide audience. Coverage extends to all main-stream branches of computer science and related applications
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