Home

Awesome

faceswap-GAN

Adding Adversarial loss and perceptual loss (VGGface) to deepfakes'(reddit user) auto-encoder architecture.

Updates

Date   Update
2018-08-27    Colab support: A colab notebook for faceswap-GAN v2.2 is provided.
2018-07-25    Data preparation: Add a new notebook for video pre-processing in which MTCNN is used for face detection as well as face alignment.
2018-06-29    Model architecture: faceswap-GAN v2.2 now supports different output resolutions: 64x64, 128x128, and 256x256. Default RESOLUTION = 64 can be changed in the config cell of v2.2 notebook.
2018-06-25    New version: faceswap-GAN v2.2 has been released. The main improvements of v2.2 model are its capability of generating realistic and consistent eye movements (results are shown below, or Ctrl+F for eyes), as well as higher video quality with face alignment.
2018-06-06    Model architecture: Add a self-attention mechanism proposed in SAGAN into V2 GAN model. (Note: There is still no official code release for SAGAN, the implementation in this repo. could be wrong. We'll keep an eye on it.)

Google Colab support

Here is a playground notebook for faceswap-GAN v2.2 on Google Colab. Users can train their own model in the browser.

[Update 2019/10/04] There seems to be import errors in the latest Colab environment due to inconsistent version of packages. Please make sure that the Keras and TensorFlow follow the version number shown in the requirement section below.

Descriptions

faceswap-GAN v2.2

Usage

  1. Run MTCNN_video_face_detection_alignment.ipynb to extract faces from videos. Manually move/rename the aligned face images into ./faceA/ or ./faceB/ folders.
  2. Run prep_binary_masks.ipynb to generate binary masks of training images.
    • You can skip this pre-processing step by (1) setting use_bm_eyes=False in the config cell of the train_test notebook, or (2) use low-quality binary masks generated in step 1.
  3. Run FaceSwap_GAN_v2.2_train_test.ipynb to train models.
  4. Run FaceSwap_GAN_v2.2_video_conversion.ipynb to create videos using the trained models in step 3.

Miscellaneous

Training data format

Generative adversarial networks for face swapping

1. Architecture

enc_arch3d

dec_arch3d

dis_arch3d

2. Results

The Trump/Cage images are obtained from the reddit user deepfakes' project on pastebin.com.

3. Features

Frequently asked questions and troubleshooting

1. How does it work?

2. Previews look good, but it does not transform to the output videos?

Requirements

Acknowledgments

Code borrows from tjwei, eriklindernoren, fchollet, keras-contrib and reddit user deepfakes' project. The generative network is adopted from CycleGAN. Weights and scripts of MTCNN are from FaceNet. Illustrations are from irasutoya.