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Motor Imagery EEG Classification Based on Transfer Learning and Multi-Scale Convolution Network

Zhanyuan Chang, Congcong Zhang, Chuanjiang Li

2022Micromachines22 citationsDOIOpen Access PDF

Abstract

For the successful application of brain-computer interface (BCI) systems, accurate recognition of electroencephalography (EEG) signals is one of the core issues. To solve the differences in individual EEG signals and the problem of less EEG data in classification and recognition, an attention mechanism-based multi-scale convolution network was designed; the transfer learning data alignment algorithm was then introduced to explore the application of transfer learning for analyzing motor imagery EEG signals. The data set 2a of BCI Competition IV was used to verify the designed dual channel attention module migration alignment with convolution neural network (MS-AFM). Experimental results showed that the classification recognition rate improved with the addition of the alignment algorithm and adaptive adjustment in transfer learning; the average classification recognition rate of nine subjects was 86.03%.

Topics & Concepts

Brain–computer interfaceComputer scienceMotor imageryElectroencephalographyTransfer of learningConvolution (computer science)Artificial intelligencePattern recognition (psychology)Convolutional neural networkData setArtificial neural networkInterface (matter)Set (abstract data type)Speech recognitionMachine learningPsychologyMaximum bubble pressure methodPsychiatryParallel computingBubbleProgramming languageEEG and Brain-Computer InterfacesGaze Tracking and Assistive TechnologyBlind Source Separation Techniques
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