Enhancing Cross-Dataset EEG Emotion Recognition: A Novel Approach with Emotional EEG Style Transfer Network
Yijin Zhou, Fu Li, Yang Li, Youshuo Ji, Lijian Zhang, Yuanfang Chen

TL;DR
This paper introduces E$^2$STN, a novel neural network that improves cross-dataset EEG emotion recognition by transferring style features between datasets, leading to better domain adaptation and prediction accuracy.
Contribution
The paper proposes the Emotional EEG Style Transfer Network (E$^2$STN), a new method that effectively captures and transfers style features to enhance cross-dataset EEG emotion recognition.
Findings
E$^2$STN achieves state-of-the-art performance in cross-dataset tasks.
The network effectively captures style and content for improved recognition.
Experimental results validate the method's superiority over existing approaches.
Abstract
Recognizing the pivotal role of EEG emotion recognition in the development of affective Brain-Computer Interfaces (aBCIs), considerable research efforts have been dedicated to this field. While prior methods have demonstrated success in intra-subject EEG emotion recognition, a critical challenge persists in addressing the style mismatch between EEG signals from the source domain (training data) and the target domain (test data). To tackle the significant inter-domain differences in cross-dataset EEG emotion recognition, this paper introduces an innovative solution known as the Emotional EEG Style Transfer Network (ESTN). The primary objective of this network is to effectively capture content information from the source domain and the style characteristics from the target domain, enabling the reconstruction of stylized EEG emotion representations. These representations prove highly…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
