4.7 Article

Letter perception emerges from unsupervised deep learning and recycling of natural image features

Journal

NATURE HUMAN BEHAVIOUR
Volume 1, Issue 9, Pages 657-664

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41562-017-0186-2

Keywords

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Funding

  1. European Research Council [210922]
  2. University of Padova (Strategic Grant NEURAT)
  3. Marie Curie Intra European Fellowship within the 7th Framework Programme [PIEF-GA-2013-622882]

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The use of written symbols is a major achievement of human cultural evolution. However, how abstract letter representations might be learned from vision is still an unsolved problem. Here, we present a large-scale computational model of letter recognition based on deep neural networks, which develops a hierarchy of increasingly more complex internal representations in a completely unsupervised way by fitting a probabilistic, generative model to the visual input. In line with the hypothesis that learning written symbols partially recycles pre-existing neuronal circuits for object recognition, earlier processing levels in the model exploit domain-general visual features learned from natural images, while domain-specific features emerge in upstream neurons following exposure to printed letters. We show that these high-level representations can be easily mapped to letter identities even for noise-degraded images, producing accurate simulations of a broad range of empirical findings on letter perception in human observers. Our model shows that by reusing natural visual primitives, learning written symbols only requires limited, domain-specific tuning, supporting the hypothesis that their shape has been culturally selected to match the statistical structure of natural environments.

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