4.7 Article

GRASS: Generative Recursive Autoencoders for Shape Structures

Journal

ACM TRANSACTIONS ON GRAPHICS
Volume 36, Issue 4, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3072959.3073637

Keywords

analysis and synthesis of shape structures; symmetry hierarchy; recursive neural network; autoencoder; generative recursive autoencoder; generative adversarial training

Funding

  1. China Scholarship Council
  2. NSFC [61572507, 61532003, 61622212]
  3. NSERC grant [611370]
  4. NSF [IIS-1528025, DMS-1546206]
  5. Google Focused Research Award
  6. Adobe corporation
  7. Qualcomm corporation
  8. Vicarious corporation
  9. Direct For Computer & Info Scie & Enginr
  10. Div Of Information & Intelligent Systems [1708553] Funding Source: National Science Foundation
  11. Direct For Computer & Info Scie & Enginr
  12. Div Of Information & Intelligent Systems [1546206, 1528025] Funding Source: National Science Foundation

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We introduce a novel neural network architecture for encoding and synthesis of 3D shapes, particularly their structures. Our key insight is that 3D shapes are effectively characterized by their hierarchical organization of parts, which reflects fundamental intra-shape relationships such as adjacency and symmetry. We develop a recursive neural net (RvNN) based autoencoder to map a flat, unlabeled, arbitrary part layout to a compact code. The code effectively captures hierarchical structures of man-made 3D objects of varying structural complexities despite being fixed-dimensional: an associated decoder maps a code back to a full hierarchy. The learned bidirectional mapping is further tuned using an adversarial setup to yield a generative model of plausible structures, from which novel structures can be sampled. Finally, our structure synthesis framework is augmented by a second trained module that produces fine-grained part geometry, conditioned on global and local structural context, leading to a full generative pipeline for 3D shapes. We demonstrate that without supervision, our network learns meaningful structural hierarchies adhering to perceptual grouping principles, produces compact codes which enable applications such as shape classification and partial matching, and supports shape synthesis and interpolation with significant variations in topology and geometry.

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