Mohammad Saim


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2025

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Anatomy of a Feeling: Narrating Embodied Emotions via Large Vision-Language Models
Mohammad Saim | Phan Anh Duong | Cat Luong | Aniket Bhanderi | Tianyu Jiang
Findings of the Association for Computational Linguistics: EMNLP 2025

The embodiment of emotional reactions from body parts contains rich information about our affective experiences. We propose a framework that utilizes state-of-the-art large vision language models (LVLMs) to generate Embodied LVLM Emotion Narratives (ELENA). These are well-defined, multi-layered text outputs, primarily comprising descriptions that focus on the salient body parts involved in emotional reactions. We also employ attention maps and observe that contemporary models exhibit a persistent bias towards the facial region. Despite this limitation, we observe that our employed framework can effectively recognize embodied emotions in face-masked images, outperforming baselines without any fine-tuning. ELENA opens a new trajectory for embodied emotion analysis across the modality of vision and enriches modeling in an affect-aware setting.