{"title":"基于 CNN 的双模态深度学习网络,用于精细运动成像","authors":"Chenyao Wu, Yu Wang, Shuang Qiu, Huiguang He","doi":"10.1007/s11571-024-10159-0","DOIUrl":null,"url":null,"abstract":"<p>Motor imagery (MI) is an important brain-computer interface (BCI) paradigm. The traditional MI paradigm (imagining different limbs) limits the intuitive control of the outer devices, while fine MI paradigm (imagining different joint movements from the same limb) can control the mechanical arm without cognitive disconnection. However, the decoding performance of fine MI limits its application. Electroencephalogram (EEG) and functional near-infrared spectroscopy (fNIRS) are widely used in BCI systems because of their portability and easy operation. In this study, a fine MI paradigm including four classes (hand, wrist, shoulder and rest) was designed, and the data of EEG-fNIRS bimodal brain activity was collected from 12 subjects. Event-related desynchronization (ERD) from EEG signals shows a contralateral dominant phenomenon, and there is difference between the ERD of the four classes. For fNIRS signal in the time dimension, the time periods with significant difference can be observed in the activation patterns of four MI tasks. Spatially, the signal peak based brain topographic map also shows difference of these four MI tasks. The EEG signal and fNIRS signal of these four classes are distinguishable. In this study, a bimodal fusion network is proposed to improve the fine MI tasks decoding performance. The features of these two modalities are extracted separately by two feature extractors based on convolutional neural networks (CNN). The recognition performance was significantly improved by the bimodal method proposed in this study, compared with the performance of the single-modal network. The proposed method outperformed all comparison methods, and achieved a four-class accuracy of 58.96%. This paper demonstrates the feasibility of EEG and fNIRS bimodal BCI systems for fine MI, and shows the effectiveness of the proposed bimodal fusion method. This research is supposed to support fine MI-based BCI systems with theories and techniques.</p>","PeriodicalId":10500,"journal":{"name":"Cognitive Neurodynamics","volume":"11 1","pages":""},"PeriodicalIF":3.1000,"publicationDate":"2024-08-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"A bimodal deep learning network based on CNN for fine motor imagery\",\"authors\":\"Chenyao Wu, Yu Wang, Shuang Qiu, Huiguang He\",\"doi\":\"10.1007/s11571-024-10159-0\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>Motor imagery (MI) is an important brain-computer interface (BCI) paradigm. 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Spatially, the signal peak based brain topographic map also shows difference of these four MI tasks. The EEG signal and fNIRS signal of these four classes are distinguishable. In this study, a bimodal fusion network is proposed to improve the fine MI tasks decoding performance. The features of these two modalities are extracted separately by two feature extractors based on convolutional neural networks (CNN). The recognition performance was significantly improved by the bimodal method proposed in this study, compared with the performance of the single-modal network. The proposed method outperformed all comparison methods, and achieved a four-class accuracy of 58.96%. This paper demonstrates the feasibility of EEG and fNIRS bimodal BCI systems for fine MI, and shows the effectiveness of the proposed bimodal fusion method. 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引用次数: 0
摘要
运动想象(MI)是一种重要的脑机接口(BCI)范式。传统的运动想象范式(想象不同的肢体)限制了对外部设备的直观控制,而精细的运动想象范式(想象同一肢体的不同关节运动)可以在不切断认知的情况下控制机械臂。然而,精细 MI 的解码性能限制了其应用。脑电图(EEG)和功能性近红外光谱(fNIRS)因其便携性和易操作性被广泛应用于生物识别(BCI)系统。本研究设计了包括手部、腕部、肩部和静息四类的精细 MI 范式,并收集了 12 名受试者的脑电图-近红外双模态脑活动数据。脑电图信号的事件相关不同步(ERD)显示出对侧优势现象,且四个等级的ERD存在差异。对于时间维度的 fNIRS 信号,可以观察到四种 MI 任务的激活模式存在显著差异的时间段。在空间维度上,基于信号峰值的脑地形图也显示出这四种 MI 任务的差异。这四类任务的脑电图信号和 fNIRS 信号是可以区分的。本研究提出了一种双模态融合网络,以提高精细 MI 任务的解码性能。基于卷积神经网络(CNN)的两个特征提取器分别提取这两种模态的特征。与单模态网络相比,本研究提出的双模态方法明显提高了识别性能。所提出的方法优于所有比较方法,四类准确率达到 58.96%。本文证明了脑电图和 fNIRS 双模 BCI 系统用于精细 MI 的可行性,并展示了所提出的双模融合方法的有效性。该研究为基于精细 MI 的 BCI 系统提供了理论和技术上的支持。
A bimodal deep learning network based on CNN for fine motor imagery
Motor imagery (MI) is an important brain-computer interface (BCI) paradigm. The traditional MI paradigm (imagining different limbs) limits the intuitive control of the outer devices, while fine MI paradigm (imagining different joint movements from the same limb) can control the mechanical arm without cognitive disconnection. However, the decoding performance of fine MI limits its application. Electroencephalogram (EEG) and functional near-infrared spectroscopy (fNIRS) are widely used in BCI systems because of their portability and easy operation. In this study, a fine MI paradigm including four classes (hand, wrist, shoulder and rest) was designed, and the data of EEG-fNIRS bimodal brain activity was collected from 12 subjects. Event-related desynchronization (ERD) from EEG signals shows a contralateral dominant phenomenon, and there is difference between the ERD of the four classes. For fNIRS signal in the time dimension, the time periods with significant difference can be observed in the activation patterns of four MI tasks. Spatially, the signal peak based brain topographic map also shows difference of these four MI tasks. The EEG signal and fNIRS signal of these four classes are distinguishable. In this study, a bimodal fusion network is proposed to improve the fine MI tasks decoding performance. The features of these two modalities are extracted separately by two feature extractors based on convolutional neural networks (CNN). The recognition performance was significantly improved by the bimodal method proposed in this study, compared with the performance of the single-modal network. The proposed method outperformed all comparison methods, and achieved a four-class accuracy of 58.96%. This paper demonstrates the feasibility of EEG and fNIRS bimodal BCI systems for fine MI, and shows the effectiveness of the proposed bimodal fusion method. This research is supposed to support fine MI-based BCI systems with theories and techniques.
期刊介绍:
Cognitive Neurodynamics provides a unique forum of communication and cooperation for scientists and engineers working in the field of cognitive neurodynamics, intelligent science and applications, bridging the gap between theory and application, without any preference for pure theoretical, experimental or computational models.
The emphasis is to publish original models of cognitive neurodynamics, novel computational theories and experimental results. In particular, intelligent science inspired by cognitive neuroscience and neurodynamics is also very welcome.
The scope of Cognitive Neurodynamics covers cognitive neuroscience, neural computation based on dynamics, computer science, intelligent science as well as their interdisciplinary applications in the natural and engineering sciences. Papers that are appropriate for non-specialist readers are encouraged.
1. There is no page limit for manuscripts submitted to Cognitive Neurodynamics. Research papers should clearly represent an important advance of especially broad interest to researchers and technologists in neuroscience, biophysics, BCI, neural computer and intelligent robotics.
2. Cognitive Neurodynamics also welcomes brief communications: short papers reporting results that are of genuinely broad interest but that for one reason and another do not make a sufficiently complete story to justify a full article publication. Brief Communications should consist of approximately four manuscript pages.
3. Cognitive Neurodynamics publishes review articles in which a specific field is reviewed through an exhaustive literature survey. There are no restrictions on the number of pages. Review articles are usually invited, but submitted reviews will also be considered.