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Dual Attention Relation Network With Fine-Tuning for Few-Shot EEG Motor Imagery Classification
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Title
Dual Attention Relation Network With Fine-Tuning for Few-Shot EEG Motor Imagery Classification
Issued Date
2024-11
Citation
An, Sion. (2024-11). Dual Attention Relation Network With Fine-Tuning for Few-Shot EEG Motor Imagery Classification. IEEE Transactions on Neural Networks and Learning Systems, 35(11), 15479–15493. doi: 10.1109/TNNLS.2023.3287181
Type
Article
Author Keywords
Brain–computer interfacesmeta-learningmotor imagery (MI)electroencephalography (EEG)few-shot classification
Keywords
NEURAL-NETWORKS
ISSN
2162-237X
Abstract
Recently, motor imagery (MI) electroencephalography (EEG) classification techniques using deep learning have shown improved performance over conventional techniques. However, improving the classification accuracy on unseen subjects is still challenging due to intersubject variability, scarcity of labeled unseen subject data, and low signal-to-noise ratio (SNR). In this context, we propose a novel two-way few-shot network able to efficiently learn how to learn representative features of unseen subject categories and classify them with limited MI EEG data. The pipeline includes an embedding module that learns feature representations from a set of signals, a temporal-attention module to emphasize important temporal features, an aggregation-attention module for key support signal discovery, and a relation module for final classification based on relation scores between a support set and a query signal. In addition to the unified learning of feature similarity and a few-shot classifier, our method can emphasize informative features in support data relevant to the query, which generalizes better on unseen subjects. Furthermore, we propose to fine-tune the model before testing by arbitrarily sampling a query signal from the provided support set to adapt to the distribution of the unseen subject. We evaluate our proposed method with three different embedding modules on cross-subject and cross-dataset classification tasks using brain-computer interface (BCI) competition IV 2a, 2b, and GIST datasets. Extensive experiments show that our model significantly improves over the baselines and outperforms existing few-shot approaches. © 2024 IEEE.
URI
http://hdl.handle.net/20.500.11750/46220
DOI
10.1109/TNNLS.2023.3287181
Publisher
Institute of Electrical and Electronics Engineers
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