MagnusPetersen / Neural-Cellular-Automata-Image-ManipulationLinks
Artistic style transfer has been part of the quickly growing AI Art community in recent times. Pioneered by Gatys et al this class of methods allows for the transfer of a style, texture, pattern ect. to a target image. This has been made possible by the use of the expressive hidden features of large computer vision models like VGG19 to use as a …
☆29Updated 3 years ago
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