Locally Aware Piecewise Transformation Fields for 3D Human Mesh Registration
Shaofei Wang, Andreas Geiger, Siyu Tang

TL;DR
This paper introduces a novel learning-based framework using piecewise transformation fields to improve 3D human mesh registration by accurately estimating point correspondences and pose initialization, especially for extreme poses.
Contribution
The paper proposes piecewise transformation fields combined with occupancy networks to enhance pose initialization and surface reconstruction in 3D human mesh registration.
Findings
Improved registration accuracy for extreme poses.
Enhanced generalization with fewer parameters.
Better surface reconstruction quality.
Abstract
Registering point clouds of dressed humans to parametric human models is a challenging task in computer vision. Traditional approaches often rely on heavily engineered pipelines that require accurate manual initialization of human poses and tedious post-processing. More recently, learning-based methods are proposed in hope to automate this process. We observe that pose initialization is key to accurate registration but existing methods often fail to provide accurate pose initialization. One major obstacle is that, regressing joint rotations from point clouds or images of humans is still very challenging. To this end, we propose novel piecewise transformation fields (PTF), a set of functions that learn 3D translation vectors to map any query point in posed space to its correspond position in rest-pose space. We combine PTF with multi-class occupancy networks, obtaining a novel…
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