Publications

DIFF-NST: Diffusion Interleaving For deFormable Neural Style Transfer

European Conference on Computer Vision (ECCVW'24) Workshop on Vision for Art (VISART VII)

Publication date: September 29, 2024

Dan Ruta, Gemma Canet Tarres, Andrew Gilbert, Eli Shechtman, Nick Kolkin, John Collomosse

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Neural Style Transfer (NST) is the field of study applying neural techniques to modify the artistic appearance of a content image to match the style of a reference style image. Traditionally, NST methods have focused on texture-based image edits, affecting mostly low level information and keeping most image structures the same. However, style-based deformation of the content is desirable for some styles, especially in cases where the style is abstract or the primary concept of the style is in its deformed rendition of some content. With the recent introduction of diffusion models, such as Stable Diffusion, we can access far more powerful image generation techniques, enabling new possibilities. In our work, we propose using this new class of models to perform style transfer while enabling deformable style transfer, an elusive capability in previous models. We show how leveraging the priors of these models can expose new artistic controls at inference time, and we document our findings in exploring this new direction for the field of style transfer.

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