FACE: Few-shot Adapter with Cross-view Fusion for Cross-subject EEG Emotion Recognition
Journal:
arXiv
Published Date:
Mar 24, 2025
Abstract
Cross-subject EEG emotion recognition is challenged by significant
inter-subject variability and intricately entangled intra-subject variability.
Existing works have primarily addressed these challenges through domain
adaptation or generalization strategies. However, they typically require
extensive target subject data or demonstrate limited generalization performance
to unseen subjects. Recent few-shot learning paradigms attempt to address these
limitations but often encounter catastrophic overfitting during
subject-specific adaptation with limited samples. This article introduces the
few-shot adapter with a cross-view fusion method called FACE for cross-subject
EEG emotion recognition, which leverages dynamic multi-view fusion and
effective subject-specific adaptation. Specifically, FACE incorporates a
cross-view fusion module that dynamically integrates global brain connectivity
with localized patterns via subject-specific fusion weights to provide
complementary emotional information. Moreover, the few-shot adapter module is
proposed to enable rapid adaptation for unseen subjects while reducing
overfitting by enhancing adapter structures with meta-learning. Experimental
results on three public EEG emotion recognition benchmarks demonstrate FACE's
superior generalization performance over state-of-the-art methods. FACE
provides a practical solution for cross-subject scenarios with limited labeled
data.