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research article

LiftPose3D, a deep learning-based approach for transforming two-dimensional to three-dimensional poses in laboratory animals

Gosztolai, Adam  
•
Gunel, Semih  
•
Lobato-Rios, Victor  
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August 1, 2021
Nature Methods

LiftPose3D infers three-dimensional poses from two-dimensional data or from limited three-dimensional data. The approach is illustrated for videos of behaving Drosophila, mice, rats and macaques.

Markerless three-dimensional (3D) pose estimation has become an indispensable tool for kinematic studies of laboratory animals. Most current methods recover 3D poses by multi-view triangulation of deep network-based two-dimensional (2D) pose estimates. However, triangulation requires multiple synchronized cameras and elaborate calibration protocols that hinder its widespread adoption in laboratory studies. Here we describe LiftPose3D, a deep network-based method that overcomes these barriers by reconstructing 3D poses from a single 2D camera view. We illustrate LiftPose3D's versatility by applying it to multiple experimental systems using flies, mice, rats and macaques, and in circumstances where 3D triangulation is impractical or impossible. Our framework achieves accurate lifting for stereotypical and nonstereotypical behaviors from different camera angles. Thus, LiftPose3D permits high-quality 3D pose estimation in the absence of complex camera arrays and tedious calibration procedures and despite occluded body parts in freely behaving animals.

  • Details
  • Metrics
Type
research article
DOI
10.1038/s41592-021-01226-z
Web of Science ID

WOS:000681773000012

Author(s)
Gosztolai, Adam  
Gunel, Semih  
Lobato-Rios, Victor  
Pietro Abrate, Marco
Morales, Daniel  
Rhodin, Helge
Fua, Pascal  
Ramdya, Pavan  
Date Issued

2021-08-01

Publisher

NATURE PORTFOLIO

Published in
Nature Methods
Volume

18

Issue

8

Start page

975

End page

981

Subjects

Biochemical Research Methods

•

Biochemistry & Molecular Biology

•

drosophila

•

walking

•

coordination

•

tracking

•

objects

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
UPRAMDYA  
CVLAB  
Available on Infoscience
August 28, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/180886
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