PL-DCP: A Pairwise Learning framework with Domain and Class Prototypes for EEG emotion recognition under unseen target conditions
Guangli Li, Canbiao Wu, Zhehao Zhou, Tuo Sun, Ping Tan, Li Zhang, Zhen Liang

TL;DR
This paper introduces PL-DCP, a novel EEG emotion recognition framework that disentangles features and uses prototypes to improve accuracy under unseen conditions, outperforming existing methods.
Contribution
The paper proposes a new pairwise learning framework with domain and class prototypes, enhancing EEG emotion recognition robustness without relying on target domain data.
Findings
Achieved 82.88% accuracy on SEED dataset
Outperformed state-of-the-art transfer learning methods
Effective in unseen target domain scenarios
Abstract
Electroencephalogram (EEG) signals serve as a powerful tool in affective Brain-Computer Interfaces (aBCIs) and play a crucial role in affective computing. In recent years, the introduction of deep learning techniques has significantly advanced the development of aBCIs. However, the current emotion recognition methods based on deep transfer learning face the challenge of the dual dependence of the model on source domain and target domain, As well as being affected by label noise, which seriously affects the performance and generalization ability of the model. To overcome this limitation, we proposes a Pairwise Learning framework with Domain and Category Prototypes for EEG emotion recognition under unseen target conditions (PL-DCP), and integrating concepts of feature disentanglement and prototype inference. Here, the feature disentanglement module extracts and decouples the emotional EEG…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
