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Early Visual Concept Learning with Unsupervised Deep Learning

Machine Learning 2016-09-21 v3 Machine Learning Neurons and Cognition

Abstract

Automated discovery of early visual concepts from raw image data is a major open challenge in AI research. Addressing this problem, we propose an unsupervised approach for learning disentangled representations of the underlying factors of variation. We draw inspiration from neuroscience, and show how this can be achieved in an unsupervised generative model by applying the same learning pressures as have been suggested to act in the ventral visual stream in the brain. By enforcing redundancy reduction, encouraging statistical independence, and exposure to data with transform continuities analogous to those to which human infants are exposed, we obtain a variational autoencoder (VAE) framework capable of learning disentangled factors. Our approach makes few assumptions and works well across a wide variety of datasets. Furthermore, our solution has useful emergent properties, such as zero-shot inference and an intuitive understanding of "objectness".

Keywords

Cite

@article{arxiv.1606.05579,
  title  = {Early Visual Concept Learning with Unsupervised Deep Learning},
  author = {Irina Higgins and Loic Matthey and Xavier Glorot and Arka Pal and Benigno Uria and Charles Blundell and Shakir Mohamed and Alexander Lerchner},
  journal= {arXiv preprint arXiv:1606.05579},
  year   = {2016}
}
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