

APISR
Overview :
APISR aims to restore and enhance low-quality, low-resolution anime images and video sources from real-world scenarios using various degradation processes. The project supports multiple upsampling factor weights, such as 2x, 4x, and provides a Gradio demo.
Target Users :
Used to enhance the quality of anime production, particularly suited for handling low-quality anime images and video sources.
Use Cases
Restore low-quality scenes in anime videos
Enhance the resolution and clarity of old anime images
Customize image quality enhancement using different upsampling factors
Features
Super-resolution restoration for anime images and video sources
Various degradation processes
Support for different upsampling factor weights
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