Skip to content
This repository has been archived by the owner on Aug 15, 2019. It is now read-only.

deepfakes/faceswap-playground

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

11 Commits
 
 
 
 

Repository files navigation

Notice: This Repo is now in Read Only mode. Information here is likely to be increasingly outdated. Discussion about Faceswap usage should be redirected to our Forums at https://www.faceswap.dev

faceswap-playground

This repo has been opened for users playing with the project.

Sadly the project is not yet ready to use for non technical people, it will improve over time, so check for updates regularly and discuss with other.

What can you do here?

  • Discuss here about your experience of the project
  • Help people having trouble running it
  • Add guidelines and help for newcomers

If you are a more experienced user you can help by proposing solutions for a better user-experience. Ideally, the goal is to get to a release that can be used to non technical people.

Quick start

Get the code from the main 'faceswap' repo and set it up (setup section below)

The project has multiple entry points. You will have to:

  • Gather photos (or use the one provided in the training data provided below)
  • Extract faces from your raw photos
  • Train a model on your photos (or use the one provided in the training data provided below)
  • Convert your sources with the mode

Read the full instructions at https://github.com/deepfakes/faceswap/blob/master/USAGE.md

Extract

Run python faceswap.py extract -h.

Train

Run python faceswap.py train -h.

Convert

Run python faceswap.py convert -h.

Setup

Follow the directions at https://github.com/deepfakes/faceswap/blob/master/INSTALL.md

Main Requirements: Python 3.6 Opencv Tensorflow Keras

You also need an Nvidia GPU with CUDA support for best performance. Minimum is 4gb of Vram.

About

User dedicated repo for the faceswap project

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published