4.7 Article

GRAINS: Generative Recursive Autoencoders for INdoor Scenes

期刊

ACM TRANSACTIONS ON GRAPHICS
卷 38, 期 2, 页码 -

出版社

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3303766

关键词

3D indoor scene generation; recursive neural network; variational autoencoder

资金

  1. NSERC [611370]
  2. 973 Program of China [2015CB352502]
  3. NSFC [61332015, 61772318, 61572507, 61622212, 61532003]
  4. ISF [2366/16]
  5. China Scholarship Council
  6. Adobe

向作者/读者索取更多资源

We present a generative neural network that enables us to generate plausible 3D indoor scenes in large quantities and varieties, easily and highly efficiently. Our key observation is that indoor scene structures are inherently hierarchical. Hence, our network is not convolutional; it is a recursive neural network, or RvNN. Using a dataset of annotated scene hierarchies, we train a variational recursive autoencoder, or RvNN-VAE, which performs scene object grouping during its encoding phase and scene generation during decoding. Specifically, a set of encoders are recursively applied to group 3D objects based on support, surround, and co-occurrence relations in a scene, encoding information about objects' spatial properties, semantics, and relative positioning with respect to other objects in the hierarchy. By training a variational autoencoder (VAE), the resulting fixed-length codes roughly follow a Gaussian distribution. A novel 3D scene can be generated hierarchically by the decoder from a randomly sampled code from the learned distribution. We coin our method GRAINS, for Generative Recursive Autoencoders for INdoor Scenes. We demonstrate the capability of GRAINS to generate plausible and diverse 3D indoor scenes and compare with existing methods for 3D scene synthesis. We show applications of GRAINS including 3D scene modeling from 2D layouts, scene editing, and semantic scene segmentation via PointNet whose performance is boosted by the large quantity and variety of 3D scenes generated by our method.

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