| Literature DB >> 32294105 |
Tao Yang1, Zeyun Yang1, Guangzheng Xu1, Duoling Gao1, Ziheng Zhang1, Hui Wang1, Shiyu Liu1, Linfeng Han1, Zhixin Zhu1, Yang Tian1, Yuqi Huang1, Lei Zhao2, Kui Zhong2, Bolin Shi2, Juan Li3, Shimin Fu1, Peipeng Liang4, Michael J Banissy5, Pei Sun1,6,7.
Abstract
Perception of facial identity and emotional expressions is fundamental to social interactions. Recently, interest in age associated changes in the processing of faces has grown rapidly. Due to the lack of older faces stimuli, most previous age-comparative studies only used young faces stimuli, which might cause own-age advantage. None of the existing Eastern face stimuli databases contain face images of different age groups (e.g. older adult faces). In this study, a database that comprises images of 110 Chinese young and older adults displaying eight facial emotional expressions (Neutral, Happiness, Anger, Disgust, Surprise, Fear, Content, and Sadness) was constructed. To validate this database, each image was rated on the basis of perceived facial expressions, perceived emotional intensity, and perceived age by two different age groups. Results have shown an overall 79.08% correct identification rate in the validation. Access to the freely available database can be requested by emailing the corresponding authors.Entities:
Year: 2020 PMID: 32294105 PMCID: PMC7159817 DOI: 10.1371/journal.pone.0231304
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1An example of a rating trial.
Each selected image was rated by both young and older raters on their 1) perceived facial expression; 2) perceived level of emotional intensity and 3) perceived age of the model. The rating task was self-paced and all raters’ responses were recorded.
Basic demographic and descriptive characteristics of the two model groups (final database set).
| Older (n = 47) | Young (n = 63) | |
|---|---|---|
| 21/26 | 32/31 | |
| M = 64.60 (range 60–76, SD = 3.49) | M = 23.68 (range 18–33, SD = 4.19) |
Fig 2Examples of eight facial expressions by older (upper row) and young (lower row) models.
Fig 3Confusion matrix with example model expressions.
Columns represents perceived facial expressions by raters, and rows represents model intended expressions. Diagonal cells represents agreement between raters’ perceived expressions and model intended expressions, with deeper colours representing greater agreement (deepest colour = 100% agreement, lightest colour = 0% agreement).