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research article

Learning Latent Representations of 3D Human Pose with Deep Neural Networks

Katiricioglu, Isinsu*
•
Tekin, Bugra*
•
Salzmann, Mathieu
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January 31, 2018
International Journal of Computer Vision

Most recent approaches to monocular 3D pose estimation rely on Deep Learning. They either train a Convolutional Neural Network to directly regress from an image to a 3D pose, which ignores the dependencies between human joints, or model these dependencies via a max-margin structured learning framework, which involves a high computational cost at inference time. In this paper, we introduce a Deep Learning regression architecture for structured prediction of 3D human pose from monocular images or 2D joint location heatmaps that relies on an overcomplete autoencoder to learn a high-dimensional latent pose representation and accounts for joint dependencies. We further propose an efficient Long Short-Term Memory network to enforce temporal consistency on 3D pose predictions. We demonstrate that our approach achieves state-of-the-art performance both in terms of structure preservation and prediction accuracy on standard 3D human pose estimation benchmarks.

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Type
research article
DOI
10.1007/s11263-018-1066-6
Author(s)
Katiricioglu, Isinsu*
Tekin, Bugra*
Salzmann, Mathieu
Lepetit, Vincent  
Fua, Pascal  
Date Issued

2018-01-31

Published in
International Journal of Computer Vision
Volume

126

Issue

12

Start page

1326

End page

1341

Subjects

3D human pose estimation

•

Structured prediction

•

Deep learning

Note

(*) Isinsu Katircioglu and Bugra Tekin contributed equally as co-first authors.

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CVLAB  
Available on Infoscience
January 31, 2018
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/144564
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