• Corpus ID: 14557198

Neural Style Representations and the Large-Scale Classification of Artistic Style

  title={Neural Style Representations and the Large-Scale Classification of Artistic Style},
  author={Jeremiah W. Johnson},
The artistic style of a painting is a subtle aesthetic judgment used by art historians for grouping and classifying artwork. The recently introduced `neural-style' algorithm substantially succeeds in merging the perceived artistic style of one image or set of images with the perceived content of another. In light of this and other recent developments in image analysis via convolutional neural networks, we investigate the effectiveness of a `neural-style' representation for classifying the… 

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