ChenDarYen/ArtFusion
ArtFusion: Controllable Arbitrary Style Transfer using Dual Conditional Latent Diffusion Models
This tool helps artists, designers, and creatives apply the distinctive style of one image onto the content of another. You provide a reference image with a desired artistic style (like an Impressionist painting or an oil texture) and a separate content image (a photo or drawing), and it generates a new image that blends the content of the first with the style of the second. It's ideal for anyone looking to experiment with artistic effects, create stylized visuals, or explore new creative directions without manual artistic skill.
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Use this if you want to transform ordinary images into unique artistic pieces by transferring specific visual styles, from brushstrokes to blurry edges, onto new content.
Not ideal if you require pixel-perfect reproductions of specific artworks, as the focus is on transferring general style characteristics rather than exact copies.
Stars
78
Forks
5
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Jul 26, 2023
Commits (30d)
0
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