cs.AI updates on arXiv.org 07月24日 13:31
Ultra3D: Efficient and High-Fidelity 3D Generation with Part Attention
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本文提出了一种名为Ultra3D的3D生成框架,通过优化稀疏体素建模过程,显著提升了3D内容生成质量,并在保持高分辨率的同时大幅加速计算速度。

arXiv:2507.17745v1 Announce Type: cross Abstract: Recent advances in sparse voxel representations have significantly improved the quality of 3D content generation, enabling high-resolution modeling with fine-grained geometry. However, existing frameworks suffer from severe computational inefficiencies due to the quadratic complexity of attention mechanisms in their two-stage diffusion pipelines. In this work, we propose Ultra3D, an efficient 3D generation framework that significantly accelerates sparse voxel modeling without compromising quality. Our method leverages the compact VecSet representation to efficiently generate a coarse object layout in the first stage, reducing token count and accelerating voxel coordinate prediction. To refine per-voxel latent features in the second stage, we introduce Part Attention, a geometry-aware localized attention mechanism that restricts attention computation within semantically consistent part regions. This design preserves structural continuity while avoiding unnecessary global attention, achieving up to 6.7x speed-up in latent generation. To support this mechanism, we construct a scalable part annotation pipeline that converts raw meshes into part-labeled sparse voxels. Extensive experiments demonstrate that Ultra3D supports high-resolution 3D generation at 1024 resolution and achieves state-of-the-art performance in both visual fidelity and user preference.

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3D建模 稀疏体素 高效计算 Ultra3D框架 扩散模型
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