All Projects → AlphaAtlas → VapourSynth-Super-Resolution-Helper

AlphaAtlas / VapourSynth-Super-Resolution-Helper

Licence: MIT License
Setup scripts for ESRGAN/MXNet image/video upscaling in VapourSynth

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Scripts that automate the installation of VapourSynth and a bunch of ESRGAN/MXnet super resolution stuff. Because it's a pain to install by hand, and you can upscale with a GUI!

Check out the wiki!

WzLvUe.gif

demo2.gif

High quality video upscaling is the main use case, but images/textures are supported as well.

ONLY supports Windows. Works best with Nvidia GPUs.

Scripts under construction! Some of the project works, but the CUDA installer needs testing, and FFMPEG, batch scripts with useful presets, and some other things are still missing!

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