Boundary-aware Prototype-driven Adversarial Alignment for Cross-Corpus EEG Emotion Recognition
arXiv cs.LG / 3/31/2026
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Key Points
- The paper addresses EEG-based emotion recognition performance drops when models are transferred across heterogeneous datasets, attributing issues to physiological variation, paradigm differences, and device inconsistencies.
- It proposes a unified Prototype-driven Adversarial Alignment (PAA) framework with three staged variants (PAA-L, PAA-C, PAA-M) that add local class-conditional alignment, contrastive semantic regularization, and finally boundary-aware refinement near decision boundaries.
- The full PAA-M configuration uses dual relation-aware classifiers and a three-stage adversarial optimization scheme to reduce class-conditional mismatch and decision boundary distortion, improving stability under label noise.
- Experiments on SEED, SEED-IV, and SEED-V under four cross-corpus protocols show state-of-the-art results with average gains of roughly 4.8%–6.7% depending on the protocol.
- The approach also transfers to a related clinical task (depression identification), suggesting robustness beyond emotion recognition in real-world heterogeneous settings, and the authors provide code on GitHub.
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