MuMTAffect: A Multimodal Multitask Affective Framework for Personality and Emotion Recognition from Physiological Signals
September 04, 2025 Β· Declared Dead Β· π Proceedings of the 3rd International Workshop on Multimodal and Responsible Affective Computing
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Authors
Meisam Jamshidi Seikavandi, Fabricio Batista Narcizo, Ted Vucurevich, Andrew Burke Dittberner, Paolo Burelli
arXiv ID
2509.04254
Category
cs.HC: Human-Computer Interaction
Citations
1
Venue
Proceedings of the 3rd International Workshop on Multimodal and Responsible Affective Computing
Last Checked
4 months ago
Abstract
We present MuMTAffect, a novel Multimodal Multitask Affective Embedding Network designed for joint emotion classification and personality prediction (re-identification) from short physiological signal segments. MuMTAffect integrates multiple physiological modalities pupil dilation, eye gaze, facial action units, and galvanic skin response using dedicated, transformer-based encoders for each modality and a fusion transformer to model cross-modal interactions. Inspired by the Theory of Constructed Emotion, the architecture explicitly separates core affect encoding (valence/arousal) from higher-level conceptualization, thereby grounding predictions in contemporary affective neuroscience. Personality trait prediction is leveraged as an auxiliary task to generate robust, user-specific affective embeddings, significantly enhancing emotion recognition performance. We evaluate MuMTAffect on the AFFEC dataset, demonstrating that stimulus-level emotional cues (Stim Emo) and galvanic skin response substantially improve arousal classification, while pupil and gaze data enhance valence discrimination. The inherent modularity of MuMTAffect allows effortless integration of additional modalities, ensuring scalability and adaptability. Extensive experiments and ablation studies underscore the efficacy of our multimodal multitask approach in creating personalized, context-aware affective computing systems, highlighting pathways for further advancements in cross-subject generalisation.
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