Skip to content

SantoshSrinivas79/rembg-greenscreen

 
 

Repository files navigation

Rembg Virtual Greenscreen Edition (Dr. Tim Scarfe)

Rembg Virtual Greenscreen Edition is a tool to create a green screen matte for videos

Video Virtual Green Screen Edition

15th Jan 2021 -- made a new YouTube explainer

  • Take any video file and convert it to an alpha matte to apply for a virtual green screen
  • It runs end-to-end non-interactively
  • You need ffmpeg installed and on your path
  • There is also a powershell script ./remove-bg.ps1 which will do the job in a manual way i.e. first create frames, then run the rembg -p ... command and then run ffmpeg to create the matte movie. This was my first approach to solve this problem but then I migrated onto just making a new version of rembg.

If you have any ideas for speeding this up further, please let us know. We have tried quite a few things at this stage and are a bit stuck on how to proceed from here. See some of the "evolution" in the Whimsical notes.

Usage;

pip install rembg-greenscreen

greenscreen -g "path/video.mp4"

Experimental parallel green screen version;

greenscreen --parallelgreenscreen "path/video.mp4" --workernodes 3 --gpubatchsize 5

The command above will produce a video.matte.mp4 in the same folder, also works with mov and avi extensions. Uses ffmpeg under the hood to stream and re-encode the frames into a grayscale matte video.

Be careful with the default parameters, my 11GB GPU is already pretty much maxed with 3 instances of the NN with 5 image gpu batches in forward pass.

You can see how much free GPU ram you have with

nvidia-smi

CLI interface

Important notes

  • Don't use VBR videos, it will run forever -- use Handbrake to convert them to CFR

References

License

  • Copyright (c) 2020-present Daniel Gatis
  • Copyright (c) 2020-present Dr. Tim Scarfe
  • Copyright (c) 2020-present Lucas Nestler (Making it go faster and more stuff running on the GPU, thanks Lucas!)

Licensed under MIT License

About

Rembg Video Virtual Green Screen Edition

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 83.2%
  • PowerShell 16.8%