A large-scale fMRI dataset for human action recognition

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作者
Ming Zhou
Zhengxin Gong
Yuxuan Dai
Yushan Wen
Youyi Liu
Zonglei Zhen
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[1] Beijing Normal University,State Key Laboratory of Cognitive Neuroscience and Learning & IDG/McGovern Institute for Brain Research
[2] Beijing Normal University,Beijing Key Laboratory of Applied Experimental Psychology, Faculty of Psychology
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Human action recognition is a critical capability for our survival, allowing us to interact easily with the environment and others in everyday life. Although the neural basis of action recognition has been widely studied using a few action categories from simple contexts as stimuli, how the human brain recognizes diverse human actions in real-world environments still needs to be explored. Here, we present the Human Action Dataset (HAD), a large-scale functional magnetic resonance imaging (fMRI) dataset for human action recognition. HAD contains fMRI responses to 21,600 video clips from 30 participants. The video clips encompass 180 human action categories and offer a comprehensive coverage of complex activities in daily life. We demonstrate that the data are reliable within and across participants and, notably, capture rich representation information of the observed human actions. This extensive dataset, with its vast number of action categories and exemplars, has the potential to deepen our understanding of human action recognition in natural environments.
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