A Neural Algorithm of Artistic Style

2016 | journal article

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​A Neural Algorithm of Artistic Style​
Gatys, L.; Ecker, A.   & Bethge, M.​ (2016) 
Journal of Vision16(12) art. 326​.​ DOI: https://doi.org/10.1167/16.12.326 

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Authors
Gatys, Leon; Ecker, Alexander ; Bethge, Matthias
Abstract
In fine art, especially painting, humans have mastered the skill to create unique visual experiences by composing a complex interplay between the content and style of an image. The algorithmic basis of this process is unknown and there exists no artificial system with similar capabilities. Recently, a class of biologically inspired vision models called Deep Neural Networks have demonstrated near-human performance in complex visual tasks such as object and face recognition. Here we introduce an artificial system based on a Deep Neural Network that creates artistic images of high perceptual quality. The system can separate and recombine the content and style of arbitrary images, providing a neural algorithm for the creation of artistic images. In light of recent studies using fMRI and electrophysiology that have shown striking similarities between performance-optimised artificial neural networks and biological vision, our work offers a path towards an algorithmic understanding of how humans create and perceive artistic imagery. The algorithm introduces a novel class of stimuli that could be used to test specific computational hypotheses about the perceptual processing of artistic style.
Issue Date
2016
Journal
Journal of Vision 
ISSN
1534-7362

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