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[SIGGRAPH Asia 2022] VToonify: Controllable High-Resolution Portrait Video Style Transfer

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VToonify - Official PyTorch Implementation

overview.mp4

This repository provides the official PyTorch implementation for the following paper:

VToonify: Controllable High-Resolution Portrait Video Style Transfer
Shuai Yang, Liming Jiang, Ziwei Liu and Chen Change Loy
In ACM TOG (Proceedings of SIGGRAPH Asia), 2022.
Project Page | Paper | Supplementary Video | Input Data and Video Results

google colab logo Hugging Face Spaces Deque visitors

Abstract: Generating high-quality artistic portrait videos is an important and desirable task in computer graphics and vision. Although a series of successful portrait image toonification models built upon the powerful StyleGAN have been proposed, these image-oriented methods have obvious limitations when applied to videos, such as the fixed frame size, the requirement of face alignment, missing non-facial details and temporal inconsistency. In this work, we investigate the challenging controllable high-resolution portrait video style transfer by introducing a novel VToonify framework. Specifically, VToonify leverages the mid- and high-resolution layers of StyleGAN to render high-quality artistic portraits based on the multi-scale content features extracted by an encoder to better preserve the frame details. The resulting fully convolutional architecture accepts non-aligned faces in videos of variable size as input, contributing to complete face regions with natural motions in the output. Our framework is compatible with existing StyleGAN-based image toonification models to extend them to video toonification, and inherits appealing features of these models for flexible style control on color and intensity. This work presents two instantiations of VToonify built upon Toonify and DualStyleGAN for collection-based and exemplar-based portrait video style transfer, respectively. Extensive experimental results demonstrate the effectiveness of our proposed VToonify framework over existing methods in generating high-quality and temporally-coherent artistic portrait videos with flexible style controls.

Features:
High-Resolution Video (>1024, support unaligned faces) | Data-Friendly (no real training data) | Style Control

overview

Updates

  • [02/2023] Integrated to Deque Notebook.
  • [10/2022] Integrate Gradio interface into Colab notebook. Enjoy the web demo!
  • [10/2022] Integrated to 🤗 Hugging Face. Enjoy the web demo!
  • [09/2022] Input videos and video results are released.
  • [09/2022] Paper is released.
  • [09/2022] Code is released.
  • [09/2022] This website is created.

Web Demo

Integrated into Huggingface Spaces 🤗 using Gradio. Try out the Web Demo Hugging Face Spaces

Installation

Clone this repo:

git clone https://github.com/williamyang1991/VToonify.git
cd VToonify

Dependencies:

We have tested on:

  • CUDA 10.1
  • PyTorch 1.7.0
  • Pillow 8.3.1; Matplotlib 3.3.4; opencv-python 4.5.3; Faiss 1.7.1; tqdm 4.61.2; Ninja 1.10.2

All dependencies for defining the environment are provided in environment/vtoonify_env.yaml. We recommend running this repository using Anaconda (you may need to modify vtoonify_env.yaml to install PyTorch that matches your own CUDA version following https://pytorch.org/):

conda env create -f ./environment/vtoonify_env.yaml

☞ Install on Windows: williamyang1991#50 (comment) and williamyang1991#38 (comment)

☞ If you have a problem regarding the cpp extention (fused and upfirdn2d), or no GPU is available, you may refer to CPU compatible version.


(1) Inference for Image/Video Toonification

Inference Notebook

google colab logo Deque

To help users get started, we provide a Jupyter notebook found in ./notebooks/inference_playground.ipynb that allows one to visualize the performance of VToonify. The notebook will download the necessary pretrained models and run inference on the images found in ./data/.

Pre-trained Models

Pre-trained models can be downloaded from Google Drive, Baidu Cloud (access code: sigg) or Hugging Face:

BackboneModelDescription
DualStyleGANcartoonpre-trained VToonify-D models and 317 cartoon style codes
caricaturepre-trained VToonify-D models and 199 caricature style codes
arcanepre-trained VToonify-D models and 100 arcane style codes
comicpre-trained VToonify-D models and 101 comic style codes
pixarpre-trained VToonify-D models and 122 pixar style codes
illustrationpre-trained VToonify-D models and 156 illustration style codes
Toonifycartoonpre-trained VToonify-T model
caricaturepre-trained VToonify-T model
arcanepre-trained VToonify-T model
comicpre-trained VToonify-T model
pixarpre-trained VToonify-T model
Supporting model
encoder.ptPixel2style2pixel encoder to map real faces into Z+ space of StyleGAN
faceparsing.pthBiSeNet for face parsing from face-parsing.PyTorch

The downloaded models are suggested to be arranged in this folder structure.

The VToonify-D models are named with suffixes to indicate the settings, where

  • _sXXX: supports only one fixed style with XXX the index of this style.
    • _s without XXX means the model supports examplar-based style transfer
  • _dXXX: supports only a fixed style degree of XXX.
    • _d without XXX means the model supports style degrees ranging from 0 to 1
  • _c: supports color transfer.

Style Transfer with VToonify-D

✔ A quick start HERE

Transfer a default cartoon style onto a default face image ./data/077436.jpg:

python style_transfer.py --scale_image

The results are saved in the folder ./output/, where 077436_input.jpg is the rescaled input image to fit VToonify (this image can serve as the input without --scale_image) and 077436_vtoonify_d.jpg is the result.

077436_overview

Specify the content image and the model, control the style with the following options:

  • --content: path to the target face image or video
  • --style_id: the index of the style image (find the mapping between index and the style image here).
  • --style_degree (default: 0.5): adjust the degree of style.
  • --color_transfer(default: False): perform color transfer if loading a VToonify-Dsdc model.
  • --ckpt: path of the VToonify-D model. By default, a VToonify-Dsd trained on cartoon style is loaded.
  • --exstyle_path: path of the extrinsic style code. By default, codes in the same directory as --ckpt are loaded.
  • --scale_image: rescale the input image/video to fit VToonify (highly recommend).
  • --padding (default: 200, 200, 200, 200): left, right, top, bottom paddings to the eye center.

Here is an example of arcane style transfer:

python style_transfer.py --content ./data/038648.jpg \
       --scale_image --style_id 77 --style_degree 0.5 \
       --ckpt ./checkpoint/vtoonify_d_arcane/vtoonify_s_d.pt \
       --padding 600 600 600 600     # use large padding to avoid cropping the image

arcane

Specify --video to perform video toonification:

python style_transfer.py --scale_image --content ./data/YOUR_VIDEO.mp4 --video

The above style control options (--style_id, --style_degree, --color_transfer) also work for videos.

Style Transfer with VToonify-T

Specify --backbone as ''toonify'' to load and use a VToonify-T model.

python style_transfer.py --content ./data/038648.jpg \
       --scale_image --backbone toonify \
       --ckpt ./checkpoint/vtoonify_t_arcane/vtoonify.pt \
       --padding 600 600 600 600     # use large padding to avoid cropping the image

arcane2

In VToonify-T, --style_id, --style_degree, --color_transfer, --exstyle_path are not used.

As with VToonify-D, specify --video to perform video toonification.


(2) Training VToonify

Download the supporting models to the ./checkpoint/ folder and arrange them in this folder structure:

Model Description
stylegan2-ffhq-config-f.pt StyleGAN model trained on FFHQ taken from rosinality
encoder.pt Pixel2style2pixel encoder that embeds FFHQ images into StyleGAN2 Z+ latent code
faceparsing.pth BiSeNet for face parsing from face-parsing.PyTorch
directions.npy Editing vectors taken from LowRankGAN for editing face attributes
Toonify | DualStyleGAN pre-trained stylegan-based toonification models

To customize your own style, you may need to train a new Toonify/DualStyleGAN model following here.

Train VToonify-D

Given the supporting models arranged in the default folder structure, we can simply pre-train the encoder and train the whole VToonify-D by running

# for pre-training the encoder
python -m torch.distributed.launch --nproc_per_node=N_GPU --master_port=PORT train_vtoonify_d.py \
       --iter ITERATIONS --stylegan_path DUALSTYLEGAN_PATH --exstyle_path EXSTYLE_CODE_PATH \
       --batch BATCH_SIZE --name SAVE_NAME --pretrain
# for training VToonify-D given the pre-trained encoder
python -m torch.distributed.launch --nproc_per_node=N_GPU --master_port=PORT train_vtoonify_d.py \
       --iter ITERATIONS --stylegan_path DUALSTYLEGAN_PATH --exstyle_path EXSTYLE_CODE_PATH \
       --batch BATCH_SIZE --name SAVE_NAME                  # + ADDITIONAL STYLE CONTROL OPTIONS

The models and the intermediate results are saved in ./checkpoint/SAVE_NAME/ and ./log/SAVE_NAME/, respectively.

VToonify-D provides the following STYLE CONTROL OPTIONS:

  • --fix_degree: if specified, model is trained with a fixed style degree (no degree adjustment)
  • --fix_style: if specified, model is trained with a fixed style image (no examplar-based style transfer)
  • --fix_color: if specified, model is trained with color preservation (no color transfer)
  • --style_id: the index of the style image (find the mapping between index and the style image here).
  • --style_degree (default: 0.5): the degree of style.

Here is an example to reproduce the VToonify-Dsd on Cartoon style and the VToonify-D specialized for a mild toonification on the 26th cartoon style:

python -m torch.distributed.launch --nproc_per_node=8 --master_port=8765 train_vtoonify_d.py \
       --iter 30000 --stylegan_path ./checkpoint/cartoon/generator.pt --exstyle_path ./checkpoint/cartoon/refined_exstyle_code.npy \
       --batch 1 --name vtoonify_d_cartoon --pretrain      
python -m torch.distributed.launch --nproc_per_node=8 --master_port=8765 train_vtoonify_d.py \
       --iter 2000 --stylegan_path ./checkpoint/cartoon/generator.pt --exstyle_path ./checkpoint/cartoon/refined_exstyle_code.npy \
       --batch 4 --name vtoonify_d_cartoon --fix_color 
python -m torch.distributed.launch --nproc_per_node=8 --master_port=8765 train_vtoonify_d.py \
       --iter 2000 --stylegan_path ./checkpoint/cartoon/generator.pt --exstyle_path ./checkpoint/cartoon/refined_exstyle_code.npy \
       --batch 4 --name vtoonify_d_cartoon --fix_color --fix_degree --style_degree 0.5 --fix_style --style_id 26

Note that the pre-trained encoder is shared by different STYLE CONTROL OPTIONS. VToonify-D only needs to pre-train the encoder once for each DualStyleGAN model. Eight GPUs are not necessary, one can train the model with a single GPU with larger --iter.

Tips: [how to find an ideal model] we can first train a versatile model VToonify-Dsd, and navigate around different styles and degrees. After finding the ideal setting, we can then train the model specialized in that setting for high-quality stylization.

Train VToonify-T

The training of VToonify-T is similar to VToonify-D,

# for pre-training the encoder
python -m torch.distributed.launch --nproc_per_node=N_GPU --master_port=PORT train_vtoonify_t.py \
       --iter ITERATIONS --finetunegan_path FINETUNED_MODEL_PATH \
       --batch BATCH_SIZE --name SAVE_NAME --pretrain       # + ADDITIONAL STYLE CONTROL OPTION
# for training VToonify-T given the pre-trained encoder
python -m torch.distributed.launch --nproc_per_node=N_GPU --master_port=PORT train_vtoonify_t.py \
       --iter ITERATIONS --finetunegan_path FINETUNED_MODEL_PATH \
       --batch BATCH_SIZE --name SAVE_NAME                  # + ADDITIONAL STYLE CONTROL OPTION

VToonify-T only has one STYLE CONTROL OPTION:

  • --weight (default: 1,1,1,1,1,1,1,1,1,0,0,0,0,0,0,0,0,0): 18 numbers indicate how the 18 layers of the ffhq stylegan model and the finetuned model are blended to obtain the final Toonify model. Here is the --weight we use in the paper for different styles. Please refer to toonify for the details.

Here is an example to reproduce the VToonify-T model on Arcane style:

python -m torch.distributed.launch --nproc_per_node=8 --master_port=8765 train_vtoonify_t.py \
       --iter 30000 --finetunegan_path ./checkpoint/arcane/finetune-000600.pt \
       --batch 1 --name vtoonify_t_arcane --pretrain --weight 0.5 0.5 0.5 0.5 0.5 0.5 0.5 1 1 1 1 1 1 1 1 1 1 1
python -m torch.distributed.launch --nproc_per_node=8 --master_port=8765 train_vtoonify_t.py \
       --iter 2000 --finetunegan_path ./checkpoint/arcane/finetune-000600.pt \
       --batch 4 --name vtoonify_t_arcane --weight 0.5 0.5 0.5 0.5 0.5 0.5 0.5 1 1 1 1 1 1 1 1 1 1 1

(3) Results

Our framework is compatible with existing StyleGAN-based image toonification models to extend them to video toonification, and inherits their appealing features for flexible style control. With DualStyleGAN as the backbone, our VToonify is able to transfer the style of various reference images and adjust the style degree in one model.

joint.style.and.degree.control.mp4

Here are the color interpolated results of VToonify-D and VToonify-Dc on Arcane, Pixar and Comic styles.

styles.mp4

Citation

If you find this work useful for your research, please consider citing our paper:

@article{yang2022Vtoonify,
  title={VToonify: Controllable High-Resolution Portrait Video Style Transfer},
  author={Yang, Shuai and Jiang, Liming and Liu, Ziwei and Loy, Chen Change},
  journal={ACM Transactions on Graphics (TOG)},
  volume={41},
  number={6},
  articleno={203},
  pages={1--15},
  year={2022},
  publisher={ACM New York, NY, USA},
  doi={10.1145/3550454.3555437},
}

Acknowledgments

The code is mainly developed based on stylegan2-pytorch, pixel2style2pixel and DualStyleGAN.

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