Multi-animal 3D social pose estimation, identification and behaviour embedding with a few-shot learning framework

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作者
Yaning Han
Ke Chen
Yunke Wang
Wenhao Liu
Zhouwei Wang
Xiaojing Wang
Chuanliang Han
Jiahui Liao
Kang Huang
Shengyuan Cai
Yiting Huang
Nan Wang
Jinxiu Li
Yangwangzi Song
Jing Li
Guo-Dong Wang
Liping Wang
Yaping Zhang
Pengfei Wei
机构
[1] Chinese Academy of Sciences,Shenzhen Key Laboratory of Neuropsychiatric Modulation and Collaborative Innovation Center for Brain Science, Shenzhen
[2] University of Chinese Academy of Sciences,Hong Kong Institute of Brain Science, Shenzhen Institute of Advanced Technology
[3] Chinese Academy of Sciences,CAS Key Laboratory of Brain Connectome and Manipulation, the Brain Cognition and Brain Disease Institute, Shenzhen Institute of Advanced Technology
[4] Chinese Academy of Sciences,Guangdong Provincial Key Laboratory of Brain Connectome and Behavior, the Brain Cognition and Brain Disease Institute, Shenzhen Institute of Advanced Technology
[5] City University of Hong Kong,Department of Neuroscience
[6] China University of Geosciences,Department of Physical Education
[7] Southern Medical University,School of Biomedical Engineering
[8] Chinese Academy of Sciences,State Key Laboratory of Genetic Resources and Evolution, Kunming Institute of Zoology
[9] Kunming Police Dog Base of the Chinese Ministry of Public Security,undefined
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摘要
The quantification of animal social behaviour is an essential step to reveal brain functions and psychiatric disorders during interaction phases. While deep learning-based approaches have enabled precise pose estimation, identification and behavioural classification of multi-animals, their application is challenged by the lack of well-annotated datasets. Here we show a computational framework, the Social Behavior Atlas (SBeA) used to overcome the problem caused by the limited datasets. SBeA uses a much smaller number of labelled frames for multi-animal three-dimensional pose estimation, achieves label-free identification recognition and successfully applies unsupervised dynamic learning to social behaviour classification. SBeA is validated to uncover previously overlooked social behaviour phenotypes of autism spectrum disorder knockout mice. Our results also demonstrate that the SBeA can achieve high performance across various species using existing customized datasets. These findings highlight the potential of SBeA for quantifying subtle social behaviours in the fields of neuroscience and ecology.
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页码:48 / 61
页数:13
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