Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Topology-Preserved Auto-regressive Mesh Generation in the Manner of Weaving Silk

About

Existing auto-regressive mesh generation approaches suffer from ineffective topology preservation, which is crucial for practical applications. This limitation stems from previous mesh tokenization methods treating meshes as simple collections of equivalent triangles, lacking awareness of the overall topological structure during generation. To address this issue, we propose a novel mesh tokenization algorithm that provides a canonical topological framework through vertex layering and ordering, ensuring critical geometric properties including manifoldness, watertightness, face normal consistency, and part awareness in the generated meshes. Measured by Compression Ratio and Bits-per-face, we also achieved state-of-the-art compression efficiency. Furthermore, we introduce an online non-manifold data processing algorithm and a training resampling strategy to expand the scale of trainable dataset and avoid costly manual data curation. Experimental results demonstrate the effectiveness of our approach, showcasing not only intricate mesh generation but also significantly improved geometric integrity.

Gaochao Song, Zibo Zhao, Haohan Weng, Jingbo Zeng, Rongfei Jia, Shenghua Gao• 2025

Related benchmarks

TaskDatasetResultRank
3D Mesh GenerationObjaverse
Chamfer Distance0.025
18
Mesh Tokenization3D Mesh Representation
Compression Ratio0.22
12
3D Mesh ReconstructionArtistic meshes
Chamfer Distance (L2)0.052
10
Point-cloud Conditioned 3D Mesh GenerationArtist-Mesh
Chamfer Distance (CD)49.72
6
3D Mesh GenerationDense Meshes
CD (L2)0.062
6
Point-cloud Conditioned 3D Mesh GenerationDense-Mesh
Chamfer Distance61.99
6
Showing 6 of 6 rows

Other info

Follow for update