Loganavter/Archivist-Project-Denoiser
An AI restoration suite for cel animation, featuring specialized Real-ESRGAN models and the physics-based degradation simulator used to train them.
This suite helps animators, archivists, and video restoration specialists bring old cel animation footage back to life. You input damaged video frames, and it intelligently cleans up common issues like film tears, chemical stains, and color shifts. The output is a restored, clearer version of the original animation, preserving its artistic intent while removing physical imperfections.
Use this if you need to restore or clean up cel animation from the 1940s-1980s that suffers from specific physical degradation.
Not ideal if you are working with live-action footage, modern digital animation, or only need general video upscaling without specific defect removal.
Stars
13
Forks
2
Language
Python
License
MIT
Category
Last pushed
Dec 28, 2025
Commits (30d)
0
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