SDC-Net: A Domain Adaptation Framework with Semantic-Dynamic Consistency for Cross-Subject EEG Emotion Recognition
Jiahao Tang, Youjun Li, Xiangting Fan, Yangxuan Zheng, Siyuan Lu, Xueping Li, Peng Fang, Chenxi Li, Zi-Gang Huang

TL;DR
SDC-Net introduces a novel domain adaptation framework for EEG emotion recognition that enhances cross-subject generalization by combining data augmentation, distribution alignment, and similarity consistency learning.
Contribution
The paper proposes SDC-Net, a new domain adaptation network that employs intra-trial data augmentation, distribution alignment in RKHS, and similarity consistency to improve cross-subject EEG emotion recognition.
Findings
Achieves state-of-the-art results on SEED, SEED-IV, and FACED datasets.
Outperforms existing unsupervised domain adaptation methods.
Demonstrates robustness across cross-subject and cross-session scenarios.
Abstract
Emotion recognition based on electroencephalography (EEG) holds significant promise for affective brain-computer interfaces (aBCIs). However, its practical deployment faces challenges due to the variability within inter-subject and the scarcity of labeled data in target domains. To overcome these limitations, we propose SDC-Net, a novel Semantic-Dynamic Consistency domain adaptation network for fully label-free cross-subject EEG emotion recognition. First, we introduce a Same-Subject Same-Trial Mixup strategy that generates augmented samples through intra-trial interpolation, enhancing data diversity while explicitly preserving individual identity to mitigate label ambiguity. Second, we construct a dynamic distribution alignment module within the Reproducing Kernel Hilbert Space (RKHS), jointly aligning marginal and conditional distributions through multi-objective kernel mean…
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