Nuvo: Neural UV Mapping for Unruly 3D Representations
CoRR(2023)
摘要
Existing UV mapping algorithms are designed to operate on well-behaved
meshes, instead of the geometry representations produced by state-of-the-art 3D
reconstruction and generation techniques. As such, applying these methods to
the volume densities recovered by neural radiance fields and related techniques
(or meshes triangulated from such fields) results in texture atlases that are
too fragmented to be useful for tasks such as view synthesis or appearance
editing. We present a UV mapping method designed to operate on geometry
produced by 3D reconstruction and generation techniques. Instead of computing a
mapping defined on a mesh's vertices, our method Nuvo uses a neural field to
represent a continuous UV mapping, and optimizes it to be a valid and
well-behaved mapping for just the set of visible points, i.e. only points that
affect the scene's appearance. We show that our model is robust to the
challenges posed by ill-behaved geometry, and that it produces editable UV
mappings that can represent detailed appearance.
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