Brain-computer interface system with few channels and asynchronous control based on mi and ssvep dual paradigm

A technology of asynchronous control and brain-computer interface, applied in mechanical mode conversion, computer components, input/output process of data processing, etc., can solve the problem of inability to realize asynchronous control, less-channel BCI, improved classification accuracy, and poor signal quality and other problems to achieve the effect of improving classification accuracy, effectively extracting features, and improving feature extraction and classification capabilities

Active Publication Date: 2021-06-01
SOUTHEAST UNIV
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

[0008] The purpose of the present invention is to address the shortcomings of the above-mentioned background technology, and provide a brain-computer interface system with few channels and asynchronous control based on MI and SSVEP dual paradigms, and realize the multi-selection function of the BCI system through MI paradigm BCI and SSVEP paradigm BCI connected in series. Asynchronous control, solves the technical problems that the classification options of the MI paradigm in the few-channel BCI system are few, the SSVEP paradigm cannot realize asynchronous control, the signal quality of the few-channel BCI is poor, and the classification accuracy rate needs to be improved

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  • Brain-computer interface system with few channels and asynchronous control based on mi and ssvep dual paradigm
  • Brain-computer interface system with few channels and asynchronous control based on mi and ssvep dual paradigm
  • Brain-computer interface system with few channels and asynchronous control based on mi and ssvep dual paradigm

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Embodiment Construction

[0041] The technical solution of the invention will be described in detail below in conjunction with the accompanying drawings.

[0042] figure 1 For the BCI system shown in the present invention, the system includes: a spontaneous MI instruction module that the user spontaneously generates MI signal output, an SSVEP stimulation module for stimulating the user's SSVEP signal, and is used to collect the EEG that the user responds to the two paradigms of MI and SSVEP respectively. EEG signal acquisition module, MEMD analysis module for multi-variable empirical mode decomposition analysis of EEG signals, asynchronous control module composed of switch module composed of MI paradigm and multi-choice module composed of SSVEP paradigm in series, and asynchronous control module The output is the output of the BCI system.

[0043] figure 2 is a schematic diagram of the asynchronous control of the BCI system proposed by the present invention. The BCI system consists of a switch modu...

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Abstract

The invention discloses a few-channel asynchronous control brain-computer interface system based on MI and SSVEP dual paradigms, and belongs to the technical field intersecting cognitive neuroscience, information processing, and automatic control. For the BCI system with few channels of EEG signals, the system adopts the motor imagery paradigm as the switch module of the BCI system, uses the steady-state visual evoked potential paradigm as the BCI multi-selection module, and connects the two modules in series to form an asynchronous control BCI system. The variable empirical mode decomposition algorithm decomposes the few-channel EEG signal into multiple intrinsic mode functions. Based on the spectrum distribution characteristics of MI, IMF is selected as the feature to realize MI classification, and an improved canonical correlation analysis method is proposed to calculate the relationship between IMF and each SSVEP frequency template. The typical correlation coefficient of SSVEP is optimized, and the optimal typical correlation coefficient is selected to realize the classification of SSVEP, which can improve the control effect and classification accuracy of the few-channel BCI system.

Description

technical field [0001] The invention discloses a brain-computer interface system with fewer channels and asynchronous control based on dual paradigms of MI and SSVEP, and in particular relates to an asynchronous control brain-computer interface system composed of two paradigms of serial motor imagery and steady-state visual evoked potential, belonging to cognitive neuroscience. A technical field where science, information processing, and automation control intersect. Background technique [0002] Brain-Computer Interface (BCI) is an information exchange and control channel established between the brain and the external environment. People can use this channel to control external devices through brain awareness. The key to the BCI system is to accurately classify the brain's control consciousness, so as to realize different control instructions. Effective feature extraction and classification of brain signals is a key technology related to the performance indicators of BCI ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F3/01
CPCG06F3/015
Inventor 葛盛江一川刘慧
Owner SOUTHEAST UNIV
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