4.6 Article

Feature Extraction Method Based on Filter Banks and Riemannian Tangent Space in Motor-Imagery BCI

Journal

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume 26, Issue 6, Pages 2504-2514

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2022.3146274

Keywords

Electroencephalography; Covariance matrices; Filter banks; Feature extraction; Filtering; Classification algorithms; Interference; Motor imagery; brain-computer interfaces (BCI); filter banks; Riemannian Tangent Space

Funding

  1. National Natural Science Foundation of China [62176090]
  2. Program of Introducing Talents of Discipline to Universities through the 111 Project [B17017]
  3. Shanghai Municipal Education Commission
  4. Shanghai Education Development Foundation [19SG25]
  5. Ministry of Education and Science of the Russian Federation [14.756.31.0001]
  6. Polish National Science Center [UMO-2016/20/W/NZ4/00354]

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This research proposes a fusion method combining Filter Banks and Riemannian Tangent Space (FBRTS) in multiple time windows for optimal feature extraction in multi-category motor imagery brain-computer interfaces (MI-BCIs). The experimental results demonstrate the effectiveness of the FBRTS method in addressing operational frequency band variance and noise interference, leading to improved classification accuracy.
Optimal feature extraction for multi-category motor imagery brain-computer interfaces (MI-BCIs) is a research hotspot. The common spatial pattern (CSP) algorithm is one of the most widely used methods in MI-BCIs. However, its performance is adversely affected by variance in the operational frequency band and noise interference. Furthermore, the performance of CSP is not satisfactory when addressing multi-category classification problems. In this work, we propose a fusion method combining Filter Banks and Riemannian Tangent Space (FBRTS) in multiple time windows. FBRTS uses multiple filter banks to overcome the problem of variance in the operational frequency band. It also applies the Riemannian method to the covariance matrix extracted by the spatial filter to obtain more robust features in order to overcome the problem of noise interference. In addition, we use a One-Versus-Rest support vector machine (OVR-SVM) model to classify multi-category features. We evaluate our FBRTS method using BCI competition IV dataset 2a and 2b. The experimental results show that the average classification accuracy of our FBRTS method is 77.7% and 86.9% in datasets 2a and 2b respectively. By analyzing the influence of the different numbers of filter banks and time windows on the performance of our FBRTS method, we can identify the optimal number of filter banks and time windows. Additionally, our FBRTS method can obtain more distinctive features than the filter banks common spatial pattern (FBCSP) method in two-dimensional embedding space. These results show that our proposed method can improve the performance of MI-BCIs.

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