Recently, the power of unconditional image synthesis has significantly advanced through the use of Generative Adversarial Networks (GANs). The task of inverting an image into its corresponding latent code of the trained GAN is of utmost importance as it allows for the manipulation of real images, leveraging the rich semantics learned by the network. Recognizing the limitations of current inversion approaches, in this work we present a novel inversion scheme that extends current encoder-based inversion methods by introducing an iterative refinement mechanism. Instead of directly predicting the latent code of a given image using a single pass, the encoder is tasked with predicting a residual with respect to the current estimate of the inverted latent code in a self-correcting manner. Our residual-based encoder, named ReStyle, attains improved accuracy compared to current state-of-the-art encoder-based methods with a negligible increase in inference time. We analyze the behavior of ReStyle to gain valuable insights into its iterative nature. We then evaluate the performance of our residual encoder and analyze its robustness compared to optimization-based inversion and state-of-the-art encoders.
Inference Notebook:
Animation Notebook:
Different from conventional encoder-based inversion techniques, our residual-based ReStyle scheme incorporates an iterative refinement mechanism to progressively converge to an accurate inversion of real images. For each domain, we show the input image on the left followed by intermediate inversion outputs.
Official Implementation of our ReStyle paper for both training and evaluation. ReStyle introduces an iterative refinement mechanism which can be applied over different StyleGAN encoders for solving the StyleGAN inversion task.
environment/restyle_env.yaml
.In this repository, we provide pretrained ReStyle encoders applied over the pSp and e4e encoders across various domains.
Please download the pretrained models from the following links.
Path | Description |
---|---|
FFHQ - ReStyle + pSp | ReStyle applied over pSp trained on the FFHQ dataset. |
Stanford Cars - ReStyle + pSp | ReStyle applied over pSp trained on the Stanford Cars dataset. |
LSUN Church - ReStyle + pSp | ReStyle applied over pSp trained on the LSUN Church dataset. |
AFHQ Wild - ReStyle + pSp | ReStyle applied over pSp trained on the AFHQ Wild dataset. |
Path | Description |
---|---|
FFHQ - ReStyle + e4e | ReStyle applied over e4e trained on the FFHQ dataset. |
Stanford Cars - ReStyle + e4e | ReStyle applied over e4e trained on the Stanford Cars dataset. |
LSUN Church - ReStyle + e4e | ReStyle applied over e4e trained on the LSUN Church dataset. |
AFHQ Wild - ReStyle + e4e | ReStyle applied over e4e trained on the AFHQ Wild dataset. |
LSUN Horse - ReStyle + e4e | ReStyle applied over e4e trained on the LSUN Horse dataset. |
In addition, we provide various auxiliary models needed for training your own ReStyle models from scratch.
This includes the StyleGAN generators and pre-trained models used for loss computation.
Path | Description |
---|---|
FFHQ StyleGAN | StyleGAN2 model trained on FFHQ with 1024x1024 output resolution. |
LSUN Car StyleGAN | StyleGAN2 model trained on LSUN Car with 512x384 output resolution. |
LSUN Church StyleGAN | StyleGAN2 model trained on LSUN Church with 256x256 output resolution. |
LSUN Horse StyleGAN | StyleGAN2 model trained on LSUN Horse with 256x256 output resolution. |
AFHQ Wild StyleGAN | StyleGAN-ADA model trained on AFHQ Wild with 512x512 output resolution. |
IR-SE50 Model | Pretrained IR-SE50 model taken from TreB1eN for use in our ID loss and encoder backbone on human facial domain. |
ResNet-34 Model | ResNet-34 model trained on ImageNet taken from torchvision for initializing our encoder backbone. |
MoCov2 Model | Pretrained ResNet-50 model trained using MOCOv2 for computing MoCo-based loss on non-facial domains. The model is taken from the official implementation. |
CurricularFace Backbone | Pretrained CurricularFace model taken from HuangYG123 for use in ID similarity metric computation. |
MTCNN | Weights for MTCNN model taken from TreB1eN for use in ID similarity metric computation. (Unpack the tar.gz to extract the 3 model weights.) |
Note: all StyleGAN models are converted from the official TensorFlow models to PyTorch using the conversion script from rosinality.
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
.
In order to train ReStyle on your own data, you should perform the following steps:
configs/paths_config.py
with the necessary data paths and model paths for training and inference.
dataset_paths = {
'train_data': '/path/to/train/data'
'test_data': '/path/to/test/data',
}
DATASETS
variable defined in configs/data_configs.py
. There, you should define
the source/target data paths for the train and test sets as well as the transforms to be used for training and inference.
DATASETS = {
'my_data_encode': {
'transforms': transforms_config.EncodeTransforms, # can define a custom transform, if desired
'train_source_root': dataset_paths['train_data'],
'train_target_root': dataset_paths['train_data'],
'test_source_root': dataset_paths['test_data'],
'test_target_root': dataset_paths['test_data'],
}
}
--dataset_type my_data_encode
.In this work, we use rosinality's StyleGAN2 implementation. If you wish to use your own generator trained using NVIDIA's implementation there are a few options we recommend:
.pkl
checkpoints to the supported format using the conversion script found in rosinality's implementation..pkl
checkpoints to the supported format using the conversion script created by Justin Pinkney found in dvschultz's fork. Once you have the converted .pt
files, you should be ready to use them in this repository.
The main training scripts can be found in scripts/train_restyle_psp.py
and scripts/train_restyle_e4e.py
. Each of the
two scripts will run ReStyle applied over the corresponding base inversion method.
Intermediate training results are saved to opts.exp_dir
. This includes checkpoints, train outputs, and test outputs.
Additionally, if you have tensorboard installed, you can visualize tensorboard logs in opts.exp_dir/logs
.
We currently support applying ReStyle on the pSp encoder from Richardson et al. [2020] and the e4e encoder from Tov et al. [2021].
Training ReStyle with the settings used in the paper can be done by running the following commands.
ReStyle applied over pSp:
python scripts/train_restyle_psp.py \
--dataset_type=ffhq_encode \
--encoder_type=BackboneEncoder \
--exp_dir=experiment/restyle_psp_ffhq_encode \
--workers=8 \
--batch_size=8 \
--test_batch_size=8 \
--test_workers=8 \
--val_interval=5000 \
--save_interval=10000 \
--start_from_latent_avg \
--lpips_lambda=0.8 \
--l2_lambda=1 \
--w_norm_lambda=0 \
--id_lambda=0.1 \
--input_nc=6 \
--n_iters_per_batch=5 \
--output_size=1024 \
--stylegan_weights=pretrained_models/stylegan2-ffhq-config-f.pt
ReStyle applied over e4e:
python scripts/train_restyle_e4e.py \
--dataset_type ffhq_encode \
--encoder_type ProgressiveBackboneEncoder \
--exp_dir=experiment/restyle_e4e_ffhq_encode \
--workers=8 \
--batch_size=8 \
--test_batch_size=8 \
--test_workers=8 \
--start_from_latent_avg \
--lpips_lambda=0.8 \
--l2_lambda=1 \
--delta_norm_lambda 0.0002 \
--id_lambda 0.1 \
--use_w_pool \
--w_discriminator_lambda 0.1 \
--progressive_start 20000 \
--progressive_step_every 2000 \
--input_nc 6 \
--n_iters_per_batch=5 \
--output_size 1024 \
--stylegan_weights=pretrained_models/stylegan2-ffhq-config-f.pt
ffhq_encode
), we use an IRSE-50 backbone using the flags:
--encoder_type=BackboneEncoder
for pSp--encoder_type=ProgressiveBackboneEncoder
for e4e--encoder_type=ResNetBackboneEncoder
for pSp--encoder_type=ResNetProgressiveBackboneEncoder
for e4e--id_lambda=0.1
.--id_lambda=0
and --moco_lambda=0.5
to use the MoCo-based similarity loss from Tov et al.
id_lambda
and moco_lambda
to be active simultaneously.--output_size
and --stylegan_weights
flags according to your StyleGAN generator. options/train_options.py
and options/e4e_train_options.py
for all training-specific flags. To help visualize the results of ReStyle we provide a Jupyter notebook found in notebooks/inference_playground.ipynb
.
The notebook will download the pretrained models and run inference on the images found in notebooks/images
or
on images of your choosing. It is recommended to run this in Google Colab.
We have also provided a notebook for generating interpolation videos such as those found in the project page. This notebook can be run using Google Colab here.
You can use scripts/inference_iterative.py
to apply a trained model on a set of images:
python scripts/inference_iterative.py \
--exp_dir=/path/to/experiment \
--checkpoint_path=experiment/checkpoints/best_model.pt \
--data_path=/path/to/test_data \
--test_batch_size=4 \
--test_workers=4 \
--n_iters_per_batch=5
This script will save each step's outputs in a separate sub-directory (e.g., the outputs of step i
will
be saved in /path/to/experiment/inference_results/i
).
Notes:
1024x1024
for faces, 512x384
for cars).
If you wish to save outputs resized to resolutions of 256x256
(or 256x192
for cars), you can do so by adding the flag --resize_outputs
..npy
file in a dictionary format as follows:
{
"0.jpg": [latent_step_1, latent_step_2, ..., latent_step_N],
"1.jpg": [latent_step_1, latent_step_2, ..., latent_step_N],
...
}
That is, the keys of the dictionary are the image file names and the values are lists of length N
containing the output latent of each
step where N
is the number of inference steps. Each element in the list is of shape (Kx512)
where K
is the number
of style inputs of the generator.
You can use the saved latents to perform latent space manipulations, for example.
Visualizing the intermediate outputs. Here, the intermediate outputs are saved from left to right with the input image shown on the right-hand side.
Sometimes, you may wish to save each step's outputs side-by-side instead of in separate sub-folders. This would allow one to easily see the progression in the reconstruction with each step. To save the step-by-step outputs as a single image, you can run the following:
python scripts/inference_iterative_save_coupled.py \
--exp_dir=/path/to/experiment \
--checkpoint_path=experiment/checkpoints/best_model.pt \
--data_path=/path/to/test_data \
--test_batch_size=4 \
--test_workers=4 \
--n_iters_per_batch=5
Given a trained model and generated outputs, we can compute the loss metrics on a given dataset.
These scripts receive the inference output directory and ground truth directory.
python scripts/calc_losses_on_images.py \
--mode lpips \
--output_path=/path/to/experiment/inference_results \
--gt_path=/path/to/test_images
python scripts/calc_losses_on_images.py \
--mode l2 \
--output_path=/path/to/experiment/inference_results \
--gt_path=/path/to/test_images
python scripts/calc_id_loss_parallel.py \
--output_path=/path/to/experiment/inference_results \
--gt_path=/path/to/test_images
These scripts will traverse through each sub-directory of output_path
to compute the metrics on each step's output images.
Editing results using InterFaceGAN on inversions obtained using ReStyle-e4e.
For performing edits using ReStyle-e4e, you can run the script found in editing/inference_editing.py
, as follows:
python editing/inference_editing.py \
--exp_dir=/path/to/experiment \
--checkpoint_path=/path/to/e4e_ffhq_encoder.pt \
--data_path=/path/to/test_data \
--test_batch_size=4 \
--test_workers=4 \
--n_iters_per_batch=5 \
--edit_directions=age,pose,smile \
--factor_ranges=5,5,5
This script will perform the inversion immediately followed by the latent space edit.
The results for each edit will be saved to different sub-directories in the specified experiment directory. For each image,
we save the original image followed by the inversion and the resulting edits.
We support running inference using ReStyle-e4e models on the faces domain using edit several directions
obtained via InterFaceGAN (age
, pose
, and smile
).
Image toonification results using our proposed encoder bootstrapping technique.
In the paper, we introduce an encoder bootstrapping technique that can be used to solve the image toonification task by
pairing an FFHQ-based encoder with a Toon-based encoder. Below we provide the models used to generate the results in the paper: |
Path | Description |
---|---|---|
FFHQ - ReStyle + pSp | Same FFHQ encoder as linked above. | |
Toonify - ReStyle + pSp | ReStyle applied over pSp trained for the image toonification task. | |
Toonify Generator | Toonify generator from Doron Adler and Justin Pinkney converted to Pytorch using rosinality's conversion script. |
Note that the ReStyle toonify model is trained using only real images with no paired data. More details regarding the training parameters and settings of the toonify encoder can be found here.
If you wish to run inference using these two models and the bootstrapping technique you may run the following:
python scripts/encoder_bootstrapping_inference.py \
--exp_dir=/path/to/experiment \
--model_1_checkpoint_path=/path/to/restyle_psp_ffhq_encode.pt \
--model_2_checkpoint_path=/path/to/restyle_psp_toonify.pt \
--data_path=/path/to/test_data \
--test_batch_size=4 \
--test_workers=4 \
--n_iters_per_batch=1 # one step for each encoder is typically good
Here, we output the per-step outputs side-by-side with the inverted initialization real-image on the left and the original input image on the right.
Path | Description |
---|---|
restyle-encoder | Repository root folder |
├ configs | Folder containing configs defining model/data paths and data transforms |
├ criteria | Folder containing various loss criterias for training |
├ datasets | Folder with various dataset objects |
├ docs | Folder containing images displayed in the README |
├ environment | Folder containing Anaconda environment used in our experiments |
├ licenses | Folder containing licenses of the open source projects used in this repository |
├ models | Folder containing all the models and training objects |
│ ├ e4e_modules | Folder containing the latent discriminator implementation from encoder4editing |
│ ├ encoders | Folder containing various architecture implementations including our simplified encoder architectures |
│ ├ mtcnn | MTCNN implementation from TreB1eN |
│ ├ stylegan2 | StyleGAN2 model from rosinality |
│ ├ psp.py | Implementation of pSp encoder extended to work with ReStyle |
│ └ e4e.py | Implementation of e4e encoder extended to work with ReStyle |
├ notebooks | Folder with jupyter notebook containing ReStyle inference playground |
├ options | Folder with training and test command-line options |
├ scripts | Folder with running scripts for training, inference, and metric computations |
├ training | Folder with main training logic and Ranger implementation from lessw2020 |
├ utils | Folder with various utility functions |
StyleGAN2 model and implementation:
https://github.com/rosinality/stylegan2-pytorch
Copyright (c) 2019 Kim Seonghyeon
License (MIT) https://github.com/rosinality/stylegan2-pytorch/blob/master/LICENSE
IR-SE50 model and implementations:
https://github.com/TreB1eN/InsightFace_Pytorch
Copyright (c) 2018 TreB1eN
License (MIT) https://github.com/TreB1eN/InsightFace_Pytorch/blob/master/LICENSE
Ranger optimizer implementation:
https://github.com/lessw2020/Ranger-Deep-Learning-Optimizer
License (Apache License 2.0) https://github.com/lessw2020/Ranger-Deep-Learning-Optimizer/blob/master/LICENSE
LPIPS model and implementation:
https://github.com/S-aiueo32/lpips-pytorch
Copyright (c) 2020, Sou Uchida
License (BSD 2-Clause) https://github.com/S-aiueo32/lpips-pytorch/blob/master/LICENSE
pSp model and implementation:
https://github.com/eladrich/pixel2style2pixel
Copyright (c) 2020 Elad Richardson, Yuval Alaluf
License (MIT) https://github.com/eladrich/pixel2style2pixel/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
Please Note: The CUDA files under the StyleGAN2 ops directory are made available under the Nvidia Source Code License-NC
This code borrows heavily from pixel2style2pixel and encoder4editing.
If you use this code for your research, please cite the following works:
@InProceedings{alaluf2021restyle,
author = {Alaluf, Yuval and Patashnik, Or and Cohen-Or, Daniel},
title = {ReStyle: A Residual-Based StyleGAN Encoder via Iterative Refinement},
month = {October},
booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
year = {2021}
}
@InProceedings{richardson2021encoding,
author = {Richardson, Elad and Alaluf, Yuval and Patashnik, Or and Nitzan, Yotam and Azar, Yaniv and Shapiro, Stav and Cohen-Or, Daniel},
title = {Encoding in Style: a StyleGAN Encoder for Image-to-Image Translation},
booktitle = {IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2021}
}
@article{tov2021designing,
title={Designing an Encoder for StyleGAN Image Manipulation},
author={Tov, Omer and Alaluf, Yuval and Nitzan, Yotam and Patashnik, Or and Cohen-Or, Daniel},
journal={arXiv preprint arXiv:2102.02766},
year={2021}
}