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arxiv: 1901.11461 · v1 · pith:V6JN7ERMnew · submitted 2019-01-31 · 💻 cs.CV

GEOMetrics: Exploiting Geometric Structure for Graph-Encoded Objects

classification 💻 cs.CV
keywords graphstructureobjectsgeometricmeshreconstructionadaptivedefined
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Mesh models are a promising approach for encoding the structure of 3D objects. Current mesh reconstruction systems predict uniformly distributed vertex locations of a predetermined graph through a series of graph convolutions, leading to compromises with respect to performance or resolution. In this paper, we argue that the graph representation of geometric objects allows for additional structure, which should be leveraged for enhanced reconstruction. Thus, we propose a system which properly benefits from the advantages of the geometric structure of graph encoded objects by introducing (1) a graph convolutional update preserving vertex information; (2) an adaptive splitting heuristic allowing detail to emerge; and (3) a training objective operating both on the local surfaces defined by vertices as well as the global structure defined by the mesh. Our proposed method is evaluated on the task of 3D object reconstruction from images with the ShapeNet dataset, where we demonstrate state of the art performance, both visually and numerically, while having far smaller space requirements by generating adaptive meshes

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Cited by 1 Pith paper

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  1. DeepOrganNet: On-the-Fly Reconstruction and Visualization of 3D / 4D Lung Models from Single-View Projections by Deep Deformation Network

    cs.GR 2019-07 unverdicted novelty 6.0

    DeepOrganNet reconstructs 3D/4D lung meshes from single-view 2D projections by learning smooth deformation fields from multiple templates via a deep network and trivariate tensor-product deformation.