Seeking Subjectivity in Visual Emotion Distribution Learning
Jingyuan Yang, Jie Li, Leida Li, Xiumei Wang, Yuxuan Ding, and Xinbo, Gao

TL;DR
This paper introduces SAMNet, a novel neural network that models individual subjectivity in visual emotion distribution learning, improving prediction accuracy by simulating diverse crowd voting and emotional appraisal processes.
Contribution
The paper proposes SAMNet, which incorporates multiple subjective appraisal branches and a matching mechanism to better capture individual differences in crowd voting for visual emotion analysis.
Findings
SAMNet outperforms state-of-the-art methods on public datasets.
Ablation studies confirm the effectiveness of subjectivity modeling.
Visualization demonstrates the interpretability of the model.
Abstract
Visual Emotion Analysis (VEA), which aims to predict people's emotions towards different visual stimuli, has become an attractive research topic recently. Rather than a single label classification task, it is more rational to regard VEA as a Label Distribution Learning (LDL) problem by voting from different individuals. Existing methods often predict visual emotion distribution in a unified network, neglecting the inherent subjectivity in its crowd voting process. In psychology, the \textit{Object-Appraisal-Emotion} model has demonstrated that each individual's emotion is affected by his/her subjective appraisal, which is further formed by the affective memory. Inspired by this, we propose a novel \textit{Subjectivity Appraise-and-Match Network (SAMNet)} to investigate the subjectivity in visual emotion distribution. To depict the diversity in crowd voting process, we first propose the…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining
