SCAN: Learning Hierarchical Compositional Visual Concepts

Abstract

The seemingly infinite diversity of the natural world arises from a relatively small set of coherent rules, such as the laws of physics or chemistry. We conjecture that these rules give rise to regularities that can be discovered through primarily unsupervised experiences and represented as abstract concepts. If such representations are compositional and hierarchical, they can be recombined into an exponentially large set of new concepts. This paper describes SCAN (Symbol-Concept Association Network), a new framework for learning such abstractions in the visual domain. SCAN learns concepts through fast symbol association, grounding them in disentangled visual primitives that are discovered in an unsupervised manner. Unlike state of the art multimodal generative model baselines, our approach requires very few pairings between symbols and images and makes no assumptions about the form of symbol representations. Once trained, SCAN is capable of multimodal bi-directional inference, generating a diverse set of image samples from symbolic descriptions and vice versa. It also allows for traversal and manipulation of the implicit hierarchy of visual concepts through symbolic instructions and learnt logical recombination operations. Such manipulations enable SCAN to break away from its training data distribution and imagine novel visual concepts through symbolically instructed recombination of previously learnt concepts.

Cite

Text

Higgins et al. "SCAN: Learning Hierarchical Compositional Visual Concepts." International Conference on Learning Representations, 2018.

Markdown

[Higgins et al. "SCAN: Learning Hierarchical Compositional Visual Concepts." International Conference on Learning Representations, 2018.](https://mlanthology.org/iclr/2018/higgins2018iclr-scan/)

BibTeX

@inproceedings{higgins2018iclr-scan,
  title     = {{SCAN: Learning Hierarchical Compositional Visual Concepts}},
  author    = {Higgins, Irina and Sonnerat, Nicolas and Matthey, Loic and Pal, Arka and Burgess, Christopher P and Bošnjak, Matko and Shanahan, Murray and Botvinick, Matthew and Hassabis, Demis and Lerchner, Alexander},
  booktitle = {International Conference on Learning Representations},
  year      = {2018},
  url       = {https://mlanthology.org/iclr/2018/higgins2018iclr-scan/}
}