StrucADT:生成结构控制的三维点云邻接扩散变压器。

IF 6.5
Zhenyu Shu, Jiajun Shen, Zhongui Chen, Xiaoguang Han, Shiqing Xin
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引用次数: 0

摘要

在三维点云生成领域,许多三维生成模型已经证明能够生成多样化和逼真的三维形状。然而,这些方法大多难以生成满足用户特定需求的可控三维点云形状,阻碍了三维点云生成的大规模应用。为了解决三维点云生成缺乏控制的挑战,我们首次提出通过包含部分存在和部分邻接关系的形状结构来控制点云的生成。我们手动标注点云形状的分割部分之间的邻接关系,从而构建一个StructureGraph表示。在此基础上,我们引入了结构可控点云生成模型StrucADT,该模型由StructureGraphNet模块提取结构感知的潜在特征,cCNF Prior模块学习由部分邻接控制的潜在特征分布,Diffusion Transformer模块根据潜在特征和部分邻接关系生成结构一致的点云形状。实验结果表明,我们的结构可控三维点云生成方法产生了高质量和多样化的点云形状,能够基于用户指定的形状结构生成可控点云,并在ShapeNet数据集上实现了最先进的可控点云生成性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
StrucADT: Generating Structure-controlled 3D Point Clouds with Adjacency Diffusion Transformer.

In the field of 3D point cloud generation, numerous 3D generative models have demonstrated the ability to generate diverse and realistic 3D shapes. However, the majority of these approaches struggle to generate controllable 3D point cloud shapes that meet user-specific requirements, hindering the large-scale application of 3D point cloud generation. To address the challenge of lacking control in 3D point cloud generation, we are the first to propose controlling the generation of point clouds by shape structures that comprise part existences and part adjacency relationships. We manually annotate the adjacency relationships between the segmented parts of point cloud shapes, thereby constructing a StructureGraph representation. Based on this StructureGraph representation, we introduce StrucADT, a novel structure-controllable point cloud generation model, which consists of StructureGraphNet module to extract structure-aware latent features, cCNF Prior module to learn the distribution of the latent features controlled by the part adjacency, and Diffusion Transformer module conditioned on the latent features and part adjacency to generate structure-consistent point cloud shapes. Experimental results demonstrate that our structure-controllable 3D point cloud generation method produces high-quality and diverse point cloud shapes, enabling the generation of controllable point clouds based on user-specified shape structures and achieving state-of-the-art performance in controllable point cloud generation on the ShapeNet dataset.

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