davide-coccomini/Deepfake-Detection-Challenge-DFAD2023
Implementation of the winning solution for the Media Analytics Challenge 2023.
This tool helps you determine if a given image of a face is real or a 'deepfake' generated by AI. You input an image, and it outputs a prediction stating whether the face is authentic or artificially created. This is useful for content moderators, journalists, researchers, or anyone needing to verify the authenticity of facial imagery.
No commits in the last 6 months.
Use this if you need to reliably identify deepfake images, especially those generated by various sophisticated AI models like StyleGAN or Stable Diffusion.
Not ideal if you're looking for a tool to detect deepfakes in video content or other media types beyond static images of faces.
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Jan 31, 2024
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