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research article

Real-time neural network prediction for handling two-hands mutual occlusions

Pavllo, Dario
•
Delahaye, Mathias  
•
Porssut, Thibault  
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2019
Computers & Graphics:

Hands deserve particular attention in virtual reality (VR) applications because they represent our primary means for interacting with the environment. Although marker-based motion capture works adequately for full body tracking, it is less reliable for small body parts such as hands and fingers which are often occluded when captured optically, thus leading VR professionals to rely on additional systems (e.g. inertial trackers). We present a machine learning pipeline to track hands and fingers using solely a motion capture system based on cameras and active markers. Our finger animation is performed by a predictive model based on neural networks trained on a movements dataset acquired from several subjects with a complementary capture system. We employ a two-stage pipeline that first resolves occlusions and then recovers all joint transformations. We show that our method compares favorably to inverse kinematics by inferring automatically the constraints from the data, provides a natural reconstruction of postures, and handles occlusions better than three proposed baselines.

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Type
research article
DOI
10.1016/j.cagx.2019.100011
Author(s)
Pavllo, Dario
Delahaye, Mathias  
Porssut, Thibault  
Herbelin, Bruno  
Boulic, Ronan  
Date Issued

2019

Published in
Computers & Graphics:
Volume

X2

Article Number

100011

Subjects

Virtual reality

•

Neural networks

•

Machine learning

•

Motion capture

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Inverse kinematics

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Finger tracking

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
SCI-IC-RB  
Available on Infoscience
February 23, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/185667
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