Towards Practical Emotion Recognition: An Unsupervised Source-Free Approach for EEG Domain Adaptation
Journal:
arXiv
Published Date:
Mar 26, 2025
Abstract
Emotion recognition is crucial for advancing mental health, healthcare, and
technologies like brain-computer interfaces (BCIs). However, EEG-based emotion
recognition models face challenges in cross-domain applications due to the high
cost of labeled data and variations in EEG signals from individual differences
and recording conditions. Unsupervised domain adaptation methods typically
require access to source domain data, which may not always be feasible in
real-world scenarios due to privacy and computational constraints. Source-free
unsupervised domain adaptation (SF-UDA) has recently emerged as a solution,
enabling target domain adaptation without source data, but its application in
emotion recognition remains unexplored. We propose a novel SF-UDA approach for
EEG-based emotion classification across domains, introducing a multi-stage
framework that enhances model adaptability without requiring source data. Our
approach incorporates Dual-Loss Adaptive Regularization (DLAR) to minimize
prediction discrepancies on confident samples and align predictions with
expected pseudo-labels. Additionally, we introduce Localized Consistency
Learning (LCL), which enforces local consistency by promoting similar
predictions from reliable neighbors. These techniques together address domain
shift and reduce the impact of noisy pseudo-labels, a key challenge in
traditional SF-UDA models. Experiments on two widely used datasets, DEAP and
SEED, demonstrate the effectiveness of our method. Our approach significantly
outperforms state-of-the-art methods, achieving 65.84% accuracy when trained on
DEAP and tested on SEED, and 58.99% accuracy in the reverse scenario. It excels
at detecting both positive and negative emotions, making it well-suited for
practical emotion recognition applications.