TL;DR
This paper introduces SDA-DDA, a semi-supervised transfer learning framework that dynamically aligns distributions in EEG data to improve emotion recognition across individuals and sessions.
Contribution
The paper proposes a novel dynamic distribution alignment mechanism with pseudo-label filtering for improved EEG-based emotion recognition.
Findings
Outperforms existing methods on EEG benchmark datasets.
Enhances cross-subject and cross-session emotion recognition accuracy.
Demonstrates robustness and effectiveness in diverse scenarios.
Abstract
In this paper, we focus on the challenge of individual variability in affective brain-computer interfaces (aBCI), which employs electroencephalogram (EEG) signals to monitor and recognize human emotional states, thereby facilitating the advancement of emotion-aware technologies. The variability in EEG data across individuals poses a significant barrier to the development of effective and widely applicable aBCI models. To tackle this issue, we propose a novel transfer learning framework called Semi-supervised Domain Adaptation with Dynamic Distribution Alignment (SDA-DDA). This approach aligns the marginal and conditional probability distribution of source and target domains using maximum mean discrepancy (MMD) and conditional maximum mean discrepancy (CMMD). We introduce a dynamic distribution alignment mechanism to adjust differences throughout training and enhance adaptation.…
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