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Automated markerless pose estimation in freely moving macaques with OpenMonkeyStudio.

Praneet C BalaBenjamin R EisenreichSeng Bum Michael YooBenjamin Yost HaydenHyun Soo ParkJan Zimmermann
Published in: Nature communications (2020)
The rhesus macaque is an important model species in several branches of science, including neuroscience, psychology, ethology, and medicine. The utility of the macaque model would be greatly enhanced by the ability to precisely measure behavior in freely moving conditions. Existing approaches do not provide sufficient tracking. Here, we describe OpenMonkeyStudio, a deep learning-based markerless motion capture system for estimating 3D pose in freely moving macaques in large unconstrained environments. Our system makes use of 62 machine vision cameras that encircle an open 2.45 m × 2.45 m × 2.75 m enclosure. The resulting multiview image streams allow for data augmentation via 3D-reconstruction of annotated images to train a robust view-invariant deep neural network. This view invariance represents an important advance over previous markerless 2D tracking approaches, and allows fully automatic pose inference on unconstrained natural motion. We show that OpenMonkeyStudio can be used to accurately recognize actions and track social interactions.
Keyphrases
  • deep learning
  • neural network
  • convolutional neural network
  • artificial intelligence
  • machine learning
  • high speed
  • big data
  • public health
  • healthcare
  • electronic health record
  • soft tissue