Anatomically Constrained Implicit Face Models

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  • Опубликовано: 26 окт 2024
  • Coordinate based implicit neural representations have
    gained rapid popularity in recent years as they have been
    successfully used in image, geometry and scene modeling
    tasks. In this work, we present a novel use case for such
    implicit representations in the context of learning anatomically
    constrained face models. Actor specific anatomically
    constrained face models are the state of the art in both facial
    performance capture and performance retargeting. Despite
    their practical success, these anatomical models are slow to
    evaluate and often require extensive data capture to be built.
    We propose the anatomical implicit face model; an ensemble
    of implicit neural networks that jointly learn to model
    the facial anatomy and the skin surface with high-fidelity,
    and can readily be used as a drop in replacement to conventional
    blendshape models. Given an arbitrary set of skin
    surface meshes of an actor and only a neutral shape with
    estimated skull and jaw bones, our method can recover a
    dense anatomical substructure which constrains every point
    on the facial surface. We demonstrate the usefulness of our
    approach in several tasks ranging from shape fitting, shape
    editing, and performance retargeting.
    Link to publication page: studios.disney...

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