daspartho/MagicMix
Implementation of MagicMix: Semantic Mixing with Diffusion Models paper
This tool helps graphic designers, marketers, and artists create unique hybrid images by blending concepts. You provide an input image to define the spatial layout and a text prompt to define the new content. The output is a new image that semantically mixes both, like turning a telephone into a bed while keeping its original form.
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Use this if you need to visually merge the structure of one image with the stylistic or conceptual elements of another, guided by a text description.
Not ideal if you need precise control over pixel-level editing or want to generate completely new images from scratch without a layout reference.
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32
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2
Language
Jupyter Notebook
License
MIT
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Last pushed
Mar 22, 2023
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