Gaussian Process Dynamical Models for Human Motion

University of Toronto

PubMed
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Abstract

We introduce Gaussian process dynamical models (GPDM) for nonlinear time series analysis, with applications to learning models of human pose and motion from high-dimensionalmotion capture data. A GPDM is a latent variable model. It comprises a low-dimensional latent space with associated dynamics, and a map from the latent space to an observation space. We marginalize out the model parameters in closed-form, using Gaussian process priors for both the dynamics and the observation mappings. This results in a non-parametric model for dynamical systems that accounts for uncertainty in the model. We demonstrate the approach, and compare four learning algorithms on human motion capture data in which each pose is…

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1,037
total citations
FWCI
52.77
Percentile
100%
References
103
Citations per year

Authors

3

Topics & keywords

Keywords
  • Gaussian process
  • Artificial intelligence
  • Latent variable
  • Computer science
  • Prior probability
  • Dynamical systems theory
  • Gaussian
  • Latent variable model
UN Sustainable Development Goals
  • Reduced inequalities
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