TL;DR
Neural-GIF introduces a flexible implicit function model that animates clothed human characters across poses, capturing complex non-rigid deformations without template registration, trained on raw scans.
Contribution
It generalizes implicit shape learning for human animation, enabling detailed, pose-dependent clothing and soft tissue deformations without template-based pre-processing.
Findings
Outperforms baseline methods quantitatively and qualitatively
Reconstructs detailed complex surface geometry
Generalizes to new poses and multiple shapes
Abstract
We present Neural Generalized Implicit Functions(Neural-GIF), to animate people in clothing as a function of the body pose. Given a sequence of scans of a subject in various poses, we learn to animate the character for new poses. Existing methods have relied on template-based representations of the human body (or clothing). However such models usually have fixed and limited resolutions, require difficult data pre-processing steps and cannot be used with complex clothing. We draw inspiration from template-based methods, which factorize motion into articulation and non-rigid deformation, but generalize this concept for implicit shape learning to obtain a more flexible model. We learn to map every point in the space to a canonical space, where a learned deformation field is applied to model non-rigid effects, before evaluating the signed distance field. Our formulation allows the learning…
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