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基于GAF和混合模型的运动想象分类研究

吕仁杰 常文文 闫光辉 聂文超 郑磊 郭斌

电子科技大学学报2024,Vol.53Issue(6):952-960,9.
电子科技大学学报2024,Vol.53Issue(6):952-960,9.DOI:10.12178/1001-0548.2023250

基于GAF和混合模型的运动想象分类研究

Research on Motor Imagery Classification Based on GAF and Hybrid Model

吕仁杰 1常文文 2闫光辉 2聂文超 1郑磊 1郭斌3

作者信息

  • 1. 兰州交通大学电子与信息工程学院,兰州 730070
  • 2. 兰州交通大学电子与信息工程学院,兰州 730070||甘肃省媒体融合技术与传播重点实验室,兰州 730030
  • 3. 西北工业大学计算机学院,西安 710129
  • 折叠

摘要

Abstract

As a paradigm of brain-computer interface,motor imagery has a broad application prospect in the field of medical rehabilitation.Due to the non-stationarity and low signal-to-noise ratio of Electroencephalograph(EEG)signals,how to effectively extract the features of motor imagery signals and achieve accurate recognition is a key issue in the motor imagery brain-computer interface technology.Aiming at the classification and recognition problem of motor imagery brain-computer interface,this paper proposes a new method combining Gramian Angular Field(GAF)theory,Convolutional Neural Networks,and Long Short-Term Memory(LSTM).First of all,The Gramian Angular Summation Field(GASF)and the Gramian Angular Difference Field(GADF)in GAF are used respectively.GADF algorithm represents one-dimensional motor imagery EEG signals into two-dimensional images.Then,a targeted shallow Convolutional Neural Network(CNN)model is designed to realize the recognition of the image features to complete the motor imagery classification.A 4-class validation on the BCI Competition IV 2a public dataset is performed on the motor imagery task.The experimental results indicate that,in both single-subject and multi-subject scenarios,the GASF-CNN-LSTM and GADF-CNN-LSTM models exhibit significant performance improvements compared to other state-of-the-art models.Their accuracies surpass 87.66%,with the highest accuracy reaching 99.09%.Moreover,these models demonstrate strong performance when handling data from patients with motor functional disorders,further confirming the effectiveness of the models.In this paper,the time dependence and the image generation and representation technology of the corresponding features of the motor image EEG are discussed,which provides a new idea for the feature mining of the motion image EEG.

关键词

脑-机接口/运动想象/格拉姆角和场/格拉姆角差场/卷积神经网络

Key words

brain-computer interface/motor imagery/Gramian angular summation field/Gramian angular difference field/convolutional neural networks

分类

信息技术与安全科学

引用本文复制引用

吕仁杰,常文文,闫光辉,聂文超,郑磊,郭斌..基于GAF和混合模型的运动想象分类研究[J].电子科技大学学报,2024,53(6):952-960,9.

基金项目

国家自然科学基金(62366028,62466032) (62366028,62466032)

甘肃省科技重大专项(23ZDFA012) (23ZDFA012)

甘肃省科技计划项目(24JRRA256) (24JRRA256)

甘肃教育厅科技项目(甘财教 2023-25 号) (甘财教 2023-25 号)

甘肃省教育厅青年博士项目(2023QB-038) (2023QB-038)

电子科技大学学报

OA北大核心CSTPCD

1001-0548

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