IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2022)

A Tensor-Based Frequency Features Combination Method for Brain–Computer Interfaces

  • Yu Pei,
  • Zhiguo Luo,
  • Hongyu Zhao,
  • Dengke Xu,
  • Weiguo Li,
  • Ye Yan,
  • Huijiong Yan,
  • Liang Xie,
  • Minpeng Xu,
  • Erwei Yin

DOI
https://doi.org/10.1109/TNSRE.2021.3125386
Journal volume & issue
Vol. 30
pp. 465 – 475

Abstract

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With the development of the brain-computer interface (BCI) community, motor imagery-based BCI system using electroencephalogram (EEG) has attracted increasing attention because of its portability and low cost. Concerning the multi-channel EEG, the frequency component is one of the most critical features. However, insufficient extraction hinders the development and application of MI-BCIs. To deeply mine the frequency information, we proposed a method called tensor-based frequency feature combination (TFFC). It combined tensor-to-vector projection (TVP), fast fourier transform (FFT), common spatial pattern (CSP) and feature fusion to construct a new feature set. With two datasets, we used different classifiers to compare TFFC with the state-of-the-art feature extraction methods. The experimental results showed that our proposed TFFC could robustly improve the classification accuracy of about 5% ( ${p} < 0.01$ ). Moreover, visualization analysis implied that the TFFC was a generalization of CSP and Filter Bank CSP (FBCSP). Also, a complementarity between weighted narrowband features (wNBFs) and broadband features (BBFs) was observed from the averaged fusion ratio. This article certificates the importance of frequency information in the MI-BCI system and provides a new direction for designing a feature set of MI-EEG.

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