STRUCTURENET: Hierarchical Graph Networks for 3D Shape Generation

被引:173
作者
Mo, Kaichun [1 ]
Guerrero, Paul [2 ]
Yi, Li [1 ]
Su, Hao [3 ]
Wonka, Peter [4 ]
Mitra, Niloy [2 ,5 ]
Guibas, Leonidas J. [1 ,6 ]
机构
[1] Stanford Univ, Stanford, CA 94305 USA
[2] UCL, London, England
[3] Univ Calif San Diego, La Jolla, CA 92093 USA
[4] KAUST, Thuwal, Saudi Arabia
[5] Adobe Res, San Jose, CA USA
[6] Facebook AI Res, Menlo Pk, CA USA
来源
ACM TRANSACTIONS ON GRAPHICS | 2019年 / 38卷 / 06期
关键词
shape analysis and synthesis; graph neural networks; object structure; autoencoder; generative models; SEGMENTATION;
D O I
10.1145/3355089.3356527
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
The ability to generate novel, diverse, and realistic 3D shapes along with associated part semantics and structure is central to many applications requiring high-quality 3D assets or large volumes of realistic training data. A key challenge towards this goal is how to accommodate diverse shape variations, including both continuous deformations of parts as well as structural or discrete alterations which add to, remove from, or modify the shape constituents and compositional structure. Such object structure can typically be organized into a hierarchy of constituent object parts and relationships, represented as a hierarchy of n-ary graphs. We introduce STRUCTURENET, a hierarchical graph network which (i) can directly encode shapes represented as such n-ary graphs, (ii) can be robustly trained on large and complex shape families, and (iii) be used to generate a great diversity of realistic structured shape geometries. Technically, we accomplish this by drawing inspiration from recent advances in graph neural networks to propose an order-invariant encoding of n-ary graphs, considering jointly both part geometry and inter-part relations during network training. We extensively evaluate the quality of the learned latent spaces for various shape families and show significant advantages over baseline and competing methods. The learned latent spaces enable several structure-aware geometry processing applications, including shape generation and interpolation, shape editing, or shape structure discovery directly from un-annotated images, point clouds, or partial scans.
引用
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页数:19
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