TopoMesh: High-Fidelity Mesh Autoencoding via Topological Unification
Guan Luo, Xiu Li, Rui Chen, Xuanyu Yi, Jing Lin, Chia-Hao Chen, Jiahang Liu, Song-Hai Zhang, Jianfeng Zhang

TL;DR
TopoMesh introduces a novel topological unification approach for mesh autoencoding, enabling explicit correspondence and improved preservation of geometric details, especially sharp features, through a shared DMC framework.
Contribution
The paper presents TopoMesh, a sparse voxel-based VAE that unifies ground-truth and predicted meshes under a shared topological framework, improving reconstruction quality.
Findings
Outperforms existing VAEs in reconstruction fidelity.
Better preservation of sharp geometric features.
Achieves explicit mesh-level correspondence.
Abstract
The dominant paradigm for high-fidelity 3D generation relies on a VAE-Diffusion pipeline, where the VAE's reconstruction capability sets a firm upper bound on generation quality. A fundamental challenge limiting existing VAEs is the representation mismatch between ground-truth meshes and network predictions: GT meshes have arbitrary, variable topology, while VAEs typically predict fixed-structure implicit fields (\eg, SDF on regular grids). This inherent misalignment prevents establishing explicit mesh-level correspondences, forcing prior work to rely on indirect supervision signals such as SDF or rendering losses. Consequently, fine geometric details, particularly sharp features, are poorly preserved during reconstruction. To address this, we introduce TopoMesh, a sparse voxel-based VAE that unifies both GT and predicted meshes under a shared Dual Marching Cubes (DMC) topological…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Generative Adversarial Networks and Image Synthesis
