Multimodal Functional Maximum Correlation for Emotion Recognition
Deyang Zheng, Tianyi Zhang, Wenming Zheng, Shujian Yu

TL;DR
This paper introduces MFMC, a novel self-supervised learning framework that captures higher-order dependencies among multiple physiological modalities for improved emotion recognition, outperforming existing methods on benchmark datasets.
Contribution
MFMC is the first SSL approach to directly maximize higher-order multimodal dependence using a DTC objective, capturing joint interactions without pairwise contrastive losses.
Findings
MFMC achieves state-of-the-art accuracy on CEAP-360VR.
MFMC improves subject-independent accuracy on EDA signals.
MFMC performs competitively on EEG-based emotion recognition.
Abstract
Emotional states manifest as coordinated yet heterogeneous physiological responses across central and autonomic systems, posing a fundamental challenge for multimodal representation learning in affective computing. Learning such joint dynamics is further complicated by the scarcity and subjectivity of affective annotations, which motivates the use of self-supervised learning (SSL). However, most existing SSL approaches rely on pairwise alignment objectives, which are insufficient to characterize dependencies among more than two modalities and fail to capture higher-order interactions arising from coordinated brain and autonomic responses. To address this limitation, we propose Multimodal Functional Maximum Correlation (MFMC), a principled SSL framework that maximizes higher-order multimodal dependence through a Dual Total Correlation (DTC) objective. By deriving a tight sandwich bound…
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Taxonomy
TopicsEmotion and Mood Recognition · EEG and Brain-Computer Interfaces · Sentiment Analysis and Opinion Mining
