English

Mood as a Contextual Cue for Improved Emotion Inference

Human-Computer Interaction 2024-02-14 v1

Abstract

Psychological studies observe that emotions are rarely expressed in isolation and are typically influenced by the surrounding context. While recent studies effectively harness uni- and multimodal cues for emotion inference, hardly any study has considered the effect of long-term affect, or \emph{mood}, on short-term \emph{emotion} inference. This study (a) proposes time-continuous \emph{valence} prediction from videos, fusing multimodal cues including \emph{mood} and \emph{emotion-change} (Δ\Delta) labels, (b) serially integrates spatial and channel attention for improved inference, and (c) demonstrates algorithmic generalisability with experiments on the \emph{EMMA} and \emph{AffWild2} datasets. Empirical results affirm that utilising mood labels is highly beneficial for dynamic valence prediction. Comparing \emph{unimodal} (training only with mood labels) vs \emph{multimodal} (training with mood and Δ\Delta labels) results, inference performance improves for the latter, conveying that both long and short-term contextual cues are critical for time-continuous emotion inference.

Keywords

Cite

@article{arxiv.2402.08413,
  title  = {Mood as a Contextual Cue for Improved Emotion Inference},
  author = {Soujanya Narayana and Ibrahim Radwan and Ramanathan Subramanian and Roland Goecke},
  journal= {arXiv preprint arXiv:2402.08413},
  year   = {2024}
}

Comments

5 figures, 5 tables

R2 v1 2026-06-28T14:47:16.103Z