Motor imagery EEG signal classification using upper triangle filter bank auto-encode method

•A novel UTFB method is proposed to assign higher weights to the important sub-bands.•An unsupervised ELM-AE method is proposed to compress redundant CSP features.•The experimental results on two datasets verify the performance of proposed method. In motor-imagery-based brain–computer interfaces, th...

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Vydané v:Biomedical signal processing and control Ročník 68; s. 102608
Hlavní autori: Tang, Rongnian, Li, Zibo, Xie, Xiaofeng
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Elsevier Ltd 01.07.2021
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ISSN:1746-8094, 1746-8108
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Shrnutí:•A novel UTFB method is proposed to assign higher weights to the important sub-bands.•An unsupervised ELM-AE method is proposed to compress redundant CSP features.•The experimental results on two datasets verify the performance of proposed method. In motor-imagery-based brain–computer interfaces, the frequency, and spatial information of electroencephalography signals can be used to improve the performance of motor imagery classification. However, the problem of subject-specific frequency band selection occurs frequently in spatial feature extraction. In this study, to enhance the frequency information in a spatial filter, we design an upper triangle filter bank to determine discriminative frequency components and apply the common spatial pattern to extract spatial features from sub-bands. Furthermore, an autoencoder neural network is constructed to reduce the high dimensionality of spatial features. The classification performance of the proposed method is experimentally evaluated on motor imagery datasets. The proposed method provides more discriminative features and higher classification performance in comparison with competing algorithms. This proposed filter bank method can be used to extend the other spatial and spectral processing method for motor imagery classification.
ISSN:1746-8094
1746-8108
DOI:10.1016/j.bspc.2021.102608