Dynamic-Attention-based EEG State Transition Modeling for Emotion Recognition
Xinke Shen, Runmin Gan, Kaixuan Wang, Shuyi Yang, Qingzhu Zhang,, Quanying Liu, Dan Zhang, Sen Song

TL;DR
This paper introduces a novel Dynamic-Attention-based EEG model that captures neural spatiotemporal dynamics and transitions, significantly improving emotion recognition accuracy across multiple datasets.
Contribution
It proposes a new EEG modeling approach using dynamic attention weights within a contrastive learning framework, advancing emotion decoding performance.
Findings
Achieved state-of-the-art accuracy on three public datasets.
Effectively captures neural state transitions related to emotions.
Provides insights into neural dynamics underlying emotion processing.
Abstract
Electroencephalogram (EEG)-based emotion decoding can objectively quantify people's emotional state and has broad application prospects in human-computer interaction and early detection of emotional disorders. Recently emerging deep learning architectures have significantly improved the performance of EEG emotion decoding. However, existing methods still fall short of fully capturing the complex spatiotemporal dynamics of neural signals, which are crucial for representing emotion processing. This study proposes a Dynamic-Attention-based EEG State Transition (DAEST) modeling method to characterize EEG spatiotemporal dynamics. The model extracts spatiotemporal components of EEG that represent multiple parallel neural processes and estimates dynamic attention weights on these components to capture transitions in brain states. The model is optimized within a contrastive learning framework…
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