• DocumentCode
    3600970
  • Title

    Multilayer Joint Gait-Pose Manifolds for Human Gait Motion Modeling

  • Author

    Meng Ding ; Guolian Fan

  • Author_Institution
    Sch. of Electr. & Comput. Eng., Oklahoma State Univ., Stillwater, OK, USA
  • Volume
    45
  • Issue
    11
  • fYear
    2015
  • Firstpage
    2413
  • Lastpage
    2424
  • Abstract
    We present new multilayer joint gait-pose manifolds (multilayer JGPMs) for complex human gait motion modeling, where three latent variables are defined jointly in a low-dimensional manifold to represent a variety of body configurations. Specifically, the pose variable (along the pose manifold) denotes a specific stage in a walking cycle; the gait variable (along the gait manifold) represents different walking styles; and the linear scale variable characterizes the maximum stride in a walking cycle. We discuss two kinds of topological priors for coupling the pose and gait manifolds, i.e., cylindrical and toroidal, to examine their effectiveness and suitability for motion modeling. We resort to a topologically-constrained Gaussian process (GP) latent variable model to learn the multilayer JGPMs where two new techniques are introduced to facilitate model learning under limited training data. First is training data diversification that creates a set of simulated motion data with different strides. Second is the topology-aware local learning to speed up model learning by taking advantage of the local topological structure. The experimental results on the Carnegie Mellon University motion capture data demonstrate the advantages of our proposed multilayer models over several existing GP-based motion models in terms of the overall performance of human gait motion modeling.
  • Keywords
    Gaussian processes; gait analysis; learning (artificial intelligence); motion estimation; multilayer perceptrons; pose estimation; Carnegie Mellon University motion capture data; GP-based motion models; complex human gait motion modeling; human gait motion modeling; local topological structure; low-dimensional manifold; model learning; motion modeling; multilayer JGPM; multilayer joint gait-pose manifolds; multilayer models; simulated motion data; topologically-constrained Gaussian process latent variable model; topology-aware local learning; walking styles; Data models; Legged locomotion; Manifolds; Nonhomogeneous media; Topology; Training; Training data; Gait manifold; Gaussian process (GP) latent variable models (GPLVM); human motion modeling; joint gait-pose manifolds (JGPMs); manifold learning; pose manifold;
  • fLanguage
    English
  • Journal_Title
    Cybernetics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2168-2267
  • Type

    jour

  • DOI
    10.1109/TCYB.2014.2373393
  • Filename
    6985586