PTI: Pivotal Tuning for Latent-based editing of Real Images (ACM TOG 2022)
Pivotal Tuning Inversion (PTI) enables employing off-the-shelf latent based
semantic editing techniques on real images using StyleGAN.
PTI excels in identity preserving edits, portrayed through recognizable figures —
Serena Williams and Robert Downey Jr. (top), and in handling faces which
are clearly out-of-domain, e.g., due to heavy makeup (bottom).
Description
Official Implementation of our PTI paper + code for evaluation metrics. PTI introduces an optimization mechanizem for solving the StyleGAN inversion task. Providing near-perfect reconstruction results while maintaining the high editing abilitis of the native StyleGAN latent space W. For more details, see
Recent Updates
2021.07.01: Fixed files download phase in the inference notebook. Which might caused the notebook not to run smoothly.
2021.06.29: Added support for CPU. In order to run PTI on CPU please change device
parameter under configs/global_config.py
to "cpu" instead of "cuda".
2021.06.25 : Adding mohawk edit using StyleCLIP+PTI in inference notebook. Updating documentation in inference notebook due to Google Drive rate limit reached. Currently, Google Drive does not allow to download the pretrined models using Colab automatically. Manual intervention might be needed.
Getting Started
Prerequisites
- Linux or macOS
- NVIDIA GPU + CUDA CuDNN (Not mandatory bur recommended)
- Python 3
Installation
- Dependencies:
- lpips
- wandb
- pytorch
- torchvision
- matplotlib
- dlib
- All dependencies can be installed using pip install and the package name
Pretrained Models
Please download the pretrained models from the following links.
Auxiliary Models
We provide various auxiliary models needed for PTI inversion task.
This includes the StyleGAN generator and pre-trained models used for loss computation.
Path | Description |
---|---|
FFHQ StyleGAN | StyleGAN2-ada model trained on FFHQ with 1024x1024 output resolution. |
Dlib alignment | Dlib alignment used for images preproccessing. |
FFHQ e4e encoder | Pretrained e4e encoder. Used for StyleCLIP editing. |
Note: The StyleGAN model is used directly from the official stylegan2-ada-pytorch implementation. For StyleCLIP pretrained mappers, please see StyleCLIP's official routes
By default, we assume that all auxiliary models are downloaded and saved to the directory pretrained_models
.
However, you may use your own paths by changing the necessary values in configs/path_configs.py
.
Inversion
Preparing your Data
In order to invert a real image and edit it you should first align and crop it to the correct size. To do so you should perform One of the following steps:
- Run
notebooks/align_data.ipynb
and change the "images_path" variable to the raw images path - Run
utils/align_data.py
and change the "images_path" variable to the raw images path
Weights And Biases
The project supports Weights And Biases framework for experiment tracking. For the inversion task it enables visualization of the losses progression and the generator intermediate results during the initial inversion and the Pivotal Tuning(PT) procedure.
The log frequency can be adjusted using the parameters defined at configs/global_config.py
under the "Logs" subsection.
There is no no need to have an account. However, in order to use the features provided by Weights and Biases you first have to register on their site.
Running PTI
The main training script is scripts/run_pti.py
. The script receives aligned and cropped images from paths configured in the "Input info" subscetion in
configs/paths_config.py
.
Results are saved to directories found at "Dirs for output files" under configs/paths_config.py
. This includes inversion latent codes and tuned generators.
The hyperparametrs for the inversion task can be found at configs/hyperparameters.py
. They are intilized to the default values used in the paper.
Editing
By default, we assume that all auxiliary edit directions are downloaded and saved to the directory editings
.
However, you may use your own paths by changing the necessary values in configs/path_configs.py
under "Edit directions" subsection.
Example of editing code can be found at scripts/latent_editor_wrapper.py
Inference Notebooks
To help visualize the results of PTI we provide a Jupyter notebook found in notebooks/inference_playground.ipynb
.
The notebook will download the pretrained models and run inference on a sample image found online or
on images of your choosing. It is recommended to run this in Google Colab.
The notebook demonstrates how to:
- Invert an image using PTI
- Visualise the inversion and use the PTI output
- Edit the image after PTI using InterfaceGAN and StyleCLIP
- Compare to other inversion methods
Evaluation
Currently the repository supports qualitative evaluation for reconstruction of: PTI, SG2 (W Space), e4e, SG2Plus (W+ Space).
As well as editing using InterfaceGAN and GANSpace for the same inversion methods.
To run the evaluation please see evaluation/qualitative_edit_comparison.py
. Examples of the evaluation scripts are:
Reconsturction comparison between different methods. The images order is: Original image, W+ inversion, e4e inversion, W inversion, PTI inversion
InterfaceGAN pose edit comparison between different methods. The images order is: Original, W+, e4e, W, PTI
Image per edit or several edits without comparison
Coming Soon - Quantitative evaluation and StyleCLIP qualitative evaluation
Repository structure
Credits
StyleGAN2-ada model and implementation:
https://github.com/NVlabs/stylegan2-ada-pytorch
Copyright © 2021, NVIDIA Corporation.
Nvidia Source Code License https://nvlabs.github.io/stylegan2-ada-pytorch/license.html
LPIPS model and implementation:
https://github.com/richzhang/PerceptualSimilarity
Copyright (c) 2020, Sou Uchida
License (BSD 2-Clause) https://github.com/richzhang/PerceptualSimilarity/blob/master/LICENSE
e4e model and implementation:
https://github.com/omertov/encoder4editing
Copyright (c) 2021 omertov
License (MIT) https://github.com/omertov/encoder4editing/blob/main/LICENSE
StyleCLIP model and implementation:
https://github.com/orpatashnik/StyleCLIP
Copyright (c) 2021 orpatashnik
License (MIT) https://github.com/orpatashnik/StyleCLIP/blob/main/LICENSE
InterfaceGAN implementation:
https://github.com/genforce/interfacegan
Copyright (c) 2020 genforce
License (MIT) https://github.com/genforce/interfacegan/blob/master/LICENSE
GANSpace implementation:
https://github.com/harskish/ganspace
Copyright (c) 2020 harkish
License (Apache License 2.0) https://github.com/harskish/ganspace/blob/master/LICENSE
Acknowledgments
This repository structure is based on encoder4editing and ReStyle repositories
Contact
For any inquiry please contact us at our email addresses: [email protected] or [email protected]
Citation
If you use this code for your research, please cite:
@article{roich2021pivotal,
title={Pivotal Tuning for Latent-based Editing of Real Images},
author={Roich, Daniel and Mokady, Ron and Bermano, Amit H and Cohen-Or, Daniel},
publisher = {Association for Computing Machinery},
journal={ACM Trans. Graph.},
year={2021}
}