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Supplymentary Materials for “FontRNN: Generating Large-scale Chinese Fonts via Recurrent Neural Network”

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Supplymentary Materials for

“FontRNN: Generating Large-scale Chinese Fonts via Recurrent Neural Network”

More character images generated by our method comparing with target images are shown below.

Font

name FZJHSXJW FZSSBJW FZTLJW FZYNJW FZZJ-LPYBJW FZZJ-GBWKJW

Type ours real ours real ours real ours real ours real ours real

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“FontRNN: Generating Large-scale Chinese Fonts via Recurrent Neural