135-class Emotional Facial Expression Dataset
收藏IEEE2026-04-17 收录
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The ability to perceive human facial emotions is an essential feature of various multi-modal applications, especially in the intelligent human-computer interaction (HCI) area. In recent decades, considerable efforts have been put into researching automatic facial emotion recognition (FER). However, most of the existing FER methods only focus on either basic emotions such as the seven/eight categories (e.g., happiness, anger and surprise) or abstract dimensions (valence, arousal, etc.), while neglecting the fruitful nature of emotion statements. In real-world scenarios, there is definitely a larger vocabulary for describing human inner feelings as well as their reflection on facial expressions. This dataset addresses the semantic richness issue in the FER problem, with an emphasis on the granularity of the emotion concepts. Particularly, we take inspiration from former psycho-linguistic research, which conducted a prototypicality rating study and chose 135 emotion names from hundreds of English emotion terms.Based on the 135 emotion categories, the dataset collects a large-scale 135-class FER image dataset. The paper [1] demonstrates the accessibility of prompting FER research to a fine-grained level by conducting extensive evaluations on the dataset credibility and the accompanying baseline classification model. To the best of our knowledge, this is the first dataset aimed at exploiting such a large semantic space for emotion representation in the FER problem.[1] K. Chen, X. Yang, C. Fan, W. Zhang and Y. Ding, Semantic-Rich Facial Emotional Expression Recognition, in IEEE Transactions on Affective Computing, vol. 13, no. 4, pp. 1906-1916, 1 Oct.-Dec. 2022, doi: 10.1109/TAFFC.2022.3201290.
提供机构:
Chen, Keyu



