Spatio-Temporal Fuzzy-oriented Multi-Modal Meta-Learning for Fine-grained Emotion Recognition
Jingyao Wang, Wenwen Qiang, Changwen Zheng, Fuchun Sun

TL;DR
This paper introduces ST-F2M, a novel meta-learning framework that effectively captures spatio-temporal heterogeneity and ambiguity in multi-modal emotion recognition, achieving superior accuracy and efficiency.
Contribution
It proposes a spatio-temporal fuzzy-oriented meta-learning approach that handles data heterogeneity and emotion ambiguity in fine-grained emotion recognition.
Findings
Outperforms state-of-the-art methods in accuracy
Demonstrates robustness and efficiency in emotion recognition
Effectively models spatial, temporal, and semantic heterogeneity
Abstract
Fine-grained emotion recognition (FER) plays a vital role in various fields, such as disease diagnosis, personalized recommendations, and multimedia mining. However, existing FER methods face three key challenges in real-world applications: (i) they rely on large amounts of continuously annotated data to ensure accuracy since emotions are complex and ambiguous in reality, which is costly and time-consuming; (ii) they cannot capture the temporal heterogeneity caused by changing emotion patterns, because they usually assume that the temporal correlation within sampling periods is the same; (iii) they do not consider the spatial heterogeneity of different FER scenarios, that is, the distribution of emotion information in different data may have bias or interference. To address these challenges, we propose a Spatio-Temporal Fuzzy-oriented Multi-modal Meta-learning framework (ST-F2M).…
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Taxonomy
TopicsFuzzy Logic and Control Systems · Emotion and Mood Recognition · Face and Expression Recognition
