LGHCSPJul 29, 2023

Feature Reweighting for EEG-based Motor Imagery Classification

arXiv:2308.02515v27 citationsh-index: 46
Originality Incremental advance
AI Analysis

This work addresses the challenge of noisy EEG signals for brain-computer interface applications, representing an incremental improvement in classification performance.

The paper tackled the problem of irrelevant features in EEG-based motor imagery classification by proposing a feature reweighting method, which improved classification accuracy by 9.34% and 3.82% on two datasets compared to state-of-the-art methods.

Classification of motor imagery (MI) using non-invasive electroencephalographic (EEG) signals is a critical objective as it is used to predict the intention of limb movements of a subject. In recent research, convolutional neural network (CNN) based methods have been widely utilized for MI-EEG classification. The challenges of training neural networks for MI-EEG signals classification include low signal-to-noise ratio, non-stationarity, non-linearity, and high complexity of EEG signals. The features computed by CNN-based networks on the highly noisy MI-EEG signals contain irrelevant information. Subsequently, the feature maps of the CNN-based network computed from the noisy and irrelevant features contain irrelevant information. Thus, many non-contributing features often mislead the neural network training and degrade the classification performance. Hence, a novel feature reweighting approach is proposed to address this issue. The proposed method gives a noise reduction mechanism named feature reweighting module that suppresses irrelevant temporal and channel feature maps. The feature reweighting module of the proposed method generates scores that reweight the feature maps to reduce the impact of irrelevant information. Experimental results show that the proposed method significantly improved the classification of MI-EEG signals of Physionet EEG-MMIDB and BCI Competition IV 2a datasets by a margin of 9.34% and 3.82%, respectively, compared to the state-of-the-art methods.

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