ictlab-unict/not-with-my-name
This is an official implementation for "Not with my name! Inferring artists' names of input strings employed by Diffusion Models".
This tool helps identify if an artwork was generated by an AI model that mimicked a specific artist's style. You provide an image, and it outputs whether the image appears AI-generated and, if so, which artist's style the AI likely used. This is useful for art authenticators, intellectual property lawyers, or anyone needing to verify the origin of digital art.
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Use this if you need to determine if a digital artwork was created by an AI model attempting to replicate the style of a known artist.
Not ideal if you want to generate new art, identify the artist of a human-created piece, or detect AI generation without artist attribution.
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15
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Language
Python
License
MIT
Category
Last pushed
Aug 22, 2023
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0
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