UVSegNet: Semantic Boundary-Aware Neural UV Parameterization for Man-Made Objects
Hairun Zhang, Ying Song

TL;DR
UVSegNet is a new framework for UV parameterization that improves texture quality and seam placement on 3D models of man-made objects.
Contribution
UVSegNet introduces a boundary-aware guided UV mapping module and cylindrical supervision for better UV parameterization.
Findings
UVSegNet improves angular distortion by 24.1% compared to Nuvo.
Seam compactness is enhanced by 60.5% with UVSegNet.
The framework outperforms baselines in texture and seam quality.
Abstract
UV parameterization is a fundamental step in building textured 3D models, but minimizing texture distortion and ensuring seams are placed along meaningful boundaries remains a challenge. This paper proposes UVSegNet, a novel semantic boundary-aware UV parameterization framework that combines part-level segmentation with geometry-aware parameterization. To address the common seam placement issues in parameterization, we introduce a boundary-aware guided UV mapping module that jointly optimizes geometric accuracy and seam layout. Furthermore, to better handle the cylindrical structures common in man-made objects, we introduce a cylindrical supervision strategy to reduce misalignment and unfolding distortion. Experiments on representative object categories show that UVSegNet outperforms other excellent baseline models in both texture quality and seam quality. Compared to Nuvo, UVSegNet…
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Taxonomy
Topics3D Shape Modeling and Analysis · Additive Manufacturing and 3D Printing Technologies · Robot Manipulation and Learning
