UKPLab/5pils
Code associated with the EMNLP 2024 Main paper: "Image, tell me your story!" Predicting the original meta-context of visual misinformation.
This project helps human fact-checkers quickly determine the true background of images circulating online, especially those used in misinformation. It takes an image that might be misleading and outputs key facts like its original date, location, source, and purpose, based on a comprehensive dataset. The tool is designed for professional fact-checkers, journalists, and researchers combatting visual misinformation.
Use this if you need to rapidly establish the original context of an image to debunk misinformation, rather than just identifying a fake.
Not ideal if your primary goal is only to detect image forgeries or inconsistencies between an image and its caption, without needing deep contextual information.
Stars
45
Forks
4
Language
Python
License
Apache-2.0
Category
Last pushed
Dec 06, 2025
Commits (30d)
0
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