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Neural Wavelet-domain Diffusion for 3D Shape Generation

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This paper presents a new approach for 3D shape generation, enabling direct generative modeling on a continuous implicit representation in wavelet domain. Specifically, we propose a compact wavelet representation with a pair of coarse and detail coefficient volumes to implicitly represent 3D shapes via truncated signed distance functions and multi-scale biorthogonal wavelets, and formulate a pair of neural networks: a generator based on the diffusion model to produce diverse shapes in the form of coarse coefficient volumes; and a detail predictor to further produce compatible detail coefficient volumes for enriching the generated shapes with fine structures and details. Both quantitative and qualitative experimental results manifest the superiority of our approach in generating diverse and high-quality shapes with complex topology and structures, clean surfaces, and fine details, exceeding the 3D generation capabilities of the state-of-the-art models.

Ka-Hei Hui, Ruihui Li, Jingyu Hu, Chi-Wing Fu• 2022

Related benchmarks

TaskDatasetResultRank
Unconditional 3D Shape GenerationShapeNet chairs
COV (CD)52.88
6
Shape GenerationDeepFashion3D (test)
COV CD62.34
5
Class-conditioned 3D Shape GenerationShapeNetCore airplane V2 (test)
FPD0.81
4
Class-conditioned 3D Shape GenerationShapeNetCore chair V2 (test)
FPD1.41
4
Class-conditioned 3D Shape GenerationShapeNetCore table V2 (test)
FPD1.49
4
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