An fMRI dataset in response to large-scale short natural dynamic facial expression videos

Abstract Facial expression is among the most natural methods for human beings to convey their emotional information in daily life. Although the neural mechanisms of facial expression have been extensively studied employing lab-controlled images and a small number of lab-controlled video stimuli, how...

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Bibliographic Details
Main Authors: Panpan Chen, Chi Zhang, Bao Li, Li Tong, LinYuan Wang, ShuXiao Ma, Long Cao, ZiYa Yu, Bin Yan
Format: Article
Language:English
Published: Nature Portfolio 2024-11-01
Series:Scientific Data
Online Access:https://doi.org/10.1038/s41597-024-04088-0
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Summary:Abstract Facial expression is among the most natural methods for human beings to convey their emotional information in daily life. Although the neural mechanisms of facial expression have been extensively studied employing lab-controlled images and a small number of lab-controlled video stimuli, how the human brain processes natural dynamic facial expression videos still needs to be investigated. To our knowledge, this type of data specifically on large-scale natural facial expression videos is currently missing. We describe here the natural Facial Expressions Dataset (NFED), an fMRI dataset including responses to 1,320 short (3-second) natural facial expression video clips. These video clips are annotated with three types of labels: emotion, gender, and ethnicity, along with accompanying metadata. We validate that the dataset has good quality within and across participants and, notably, can capture temporal and spatial stimuli features. NFED provides researchers with fMRI data for understanding of the visual processing of large number of natural facial expression videos.
ISSN:2052-4463