Awesome
EverybodyDanceNow reproduced in pytorch
Written by Peihuan Wu, Jinghong Lin, Yutao Liao, Wei Qing and Yan Xu, including normalization and face enhancement parts.<br>
<br>
We train and evaluate on Ubuntu 16.04, so if you don't have linux environment, you can set nThreads=0
in EverybodyDanceNow_reproduce_pytorch/src/config/train_opt.py
.
Reference:
nyoki-mtl pytorch-EverybodyDanceNow
Lotayou everybody_dance_now_pytorch
Pre-trained models and source video
-
Download vgg19-dcbb9e9d.pth.crdownload here and put it in
./src/pix2pixHD/models/
<br> -
Download pose_model.pth here and put it in
./src/PoseEstimation/network/weight/
<br> -
Source video can be download from here
-
Download pre-trained vgg_16 for face enhancement here and put in
./face_enhancer/
Full process
Pose2vid network
Make source pictures
- Put source video mv.mp4 in
./data/source/
and runmake_source.py
, the label images and coordinate of head will save in./data/source/test_label_ori/
and./data/source/pose_souce.npy
(will use in step6). If you want to capture video by camera, you can directly run./src/utils/save_img.py
Make target pictures
- Rename your own target video as mv.mp4 and put it in
./data/target/
and runmake_target.py
,pose.npy
will save in./data/target/
, which contain the coordinate of faces (will use in step6).
Train and use pose2vid network
-
Run
train_pose2vid.py
and check loss and full training process in./checkpoints/
-
If you break the traning and want to continue last training, set
load_pretrain = './checkpoints/target/
in./src/config/train_opt.py
-
Run
normalization.py
rescale the label images, you can use two sample images from./data/target/train/train_label/
and./data/source/test_label_ori/
to complete normalization between two skeleton size -
Run
transfer.py
and get results in./results
Face enhancement network
Train and use face enhancement network
- Run
cd ./face_enhancer
. - Run
prepare.py
and check the results indata
directory at the root of the repo (data/face/test_sync
anddata/face/test_real
). - Run
main.py
to rain the face enhancer. Then runenhance.py
to obtain the results <br> This is comparision in original (left), generated image before face enhancement (median) and after enhancement (right). FaceGAN can learn the residual error between the real picture and the generated picture faces.
Performance of face enhancement
Gain results
cd
back to the root dir and runmake_gif.py
to create a gif out of the resulting images.
TODO
- Pose estimation
- Pose
- Face
- Hand
- pix2pixHD
- FaceGAN
- Temporal smoothing
Environments
Ubuntu 16.04 <br> Python 3.6.5 <br> Pytorch 0.4.1 <br> OpenCV 3.4.4 <br>