SLEAP: A deep learning system for multi-animal pose tracking

被引:0
|
作者
Talmo D. Pereira
Nathaniel Tabris
Arie Matsliah
David M. Turner
Junyu Li
Shruthi Ravindranath
Eleni S. Papadoyannis
Edna Normand
David S. Deutsch
Z. Yan Wang
Grace C. McKenzie-Smith
Catalin C. Mitelut
Marielisa Diez Castro
John D’Uva
Mikhail Kislin
Dan H. Sanes
Sarah D. Kocher
Samuel S.-H. Wang
Annegret L. Falkner
Joshua W. Shaevitz
Mala Murthy
机构
[1] Princeton Neuroscience Institute,Department of Molecular Biology
[2] Princeton University,Department of Ecology and Evolutionary Biology
[3] Princeton University,Department of Physics
[4] Princeton University,Department of Psychology and Department of Biology
[5] Lewis–Sigler Institute for Integrative Genomics,undefined
[6] Princeton University,undefined
[7] Princeton University,undefined
[8] Center for Neural Science,undefined
[9] New York University,undefined
[10] New York University,undefined
[11] The Salk Institute for Biological Studies,undefined
[12] Department of Biomedical Engineering,undefined
[13] Johns Hopkins University School of Medicine,undefined
来源
Nature Methods | 2022年 / 19卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
The desire to understand how the brain generates and patterns behavior has driven rapid methodological innovation in tools to quantify natural animal behavior. While advances in deep learning and computer vision have enabled markerless pose estimation in individual animals, extending these to multiple animals presents unique challenges for studies of social behaviors or animals in their natural environments. Here we present Social LEAP Estimates Animal Poses (SLEAP), a machine learning system for multi-animal pose tracking. This system enables versatile workflows for data labeling, model training and inference on previously unseen data. SLEAP features an accessible graphical user interface, a standardized data model, a reproducible configuration system, over 30 model architectures, two approaches to part grouping and two approaches to identity tracking. We applied SLEAP to seven datasets across flies, bees, mice and gerbils to systematically evaluate each approach and architecture, and we compare it with other existing approaches. SLEAP achieves greater accuracy and speeds of more than 800 frames per second, with latencies of less than 3.5 ms at full 1,024 × 1,024 image resolution. This makes SLEAP usable for real-time applications, which we demonstrate by controlling the behavior of one animal on the basis of the tracking and detection of social interactions with another animal.
引用
收藏
页码:486 / 495
页数:9
相关论文
共 50 条
  • [41] Deep learning pose estimation for multi-cattle lameness detection
    Barney, Shaun
    Dlay, Satnam
    Crowe, Andrew
    Kyriazakis, Ilias
    Leach, Matthew
    [J]. SCIENTIFIC REPORTS, 2023, 13 (01)
  • [42] Pose estimation with deep learning
    Vogt, Nina
    [J]. NATURE METHODS, 2019, 16 (12) : 1205 - 1205
  • [43] Multi object pedestrian tracking based on deep learning
    Xu, Tao
    Ma, Ke
    Liu, Cai-Hua
    [J]. Jilin Daxue Xuebao (Gongxueban)/Journal of Jilin University (Engineering and Technology Edition), 2021, 51 (01): : 27 - 38
  • [44] Pose estimation with deep learning
    Nina Vogt
    [J]. Nature Methods, 2019, 16 : 1205 - 1205
  • [45] DeepPoseKit, a software toolkit for fast and robust animal pose estimation using deep learning
    Graving, Jacob M.
    Chae, Daniel
    Naik, Hemal
    Li, Liang
    Koger, Benjamin
    Costelloe, Blair R.
    Couzin, Iain D.
    [J]. ELIFE, 2019, 8
  • [46] Multi-Domain Pose Network for Multi-Person Pose Estimation and Tracking
    Guo, Hengkai
    Tang, Tang
    Luo, Guozhong
    Chen, Riwei
    Lu, Yongchen
    Wen, Linfu
    [J]. COMPUTER VISION - ECCV 2018 WORKSHOPS, PT II, 2019, 11130 : 209 - 216
  • [47] Pose Determination from Multi-View Image using Deep Learning
    Sun, Shantong
    Liu, Rongke
    Pan, Yu
    Du, Qiuchen
    Sun, Shuqiao
    Su, Han
    [J]. 2019 15TH INTERNATIONAL WIRELESS COMMUNICATIONS & MOBILE COMPUTING CONFERENCE (IWCMC), 2019, : 1494 - 1498
  • [48] Multi-Pose Face Recognition Based on Deep Learning in Unconstrained Scene
    Ruan, Shuai
    Tang, Chaowei
    Zhou, Xu
    Jin, Zhuoyi
    Chen, Shiyu
    Wen, Haotian
    Liu, Hongbin
    Tang, Dong
    [J]. APPLIED SCIENCES-BASEL, 2020, 10 (13):
  • [49] Multi-view Deep Learning for Image-based Pose Recovery
    Hong, Chaoqun
    Yu, Jun
    Xie, Yong
    Chen, Xuhui
    [J]. 2015 IEEE 16TH INTERNATIONAL CONFERENCE ON COMMUNICATION TECHNOLOGY (ICCT), 2015, : 897 - 902
  • [50] Deep learning based camera pose estimation in multi-view environment
    Charco, Jorge L.
    Vintimilla, Boris X.
    Sappa, Angel D.
    [J]. 2018 14TH INTERNATIONAL CONFERENCE ON SIGNAL IMAGE TECHNOLOGY & INTERNET BASED SYSTEMS (SITIS), 2018, : 224 - 228