Awesome
🦙 LaMa: Resolution-robust Large Mask Inpainting with Fourier Convolutions
Official implementation by Samsung Research
by Roman Suvorov, Elizaveta Logacheva, Anton Mashikhin, Anastasia Remizova, Arsenii Ashukha, Aleksei Silvestrov, Naejin Kong, Harshith Goka, Kiwoong Park, Victor Lempitsky.
<p align="center" "font-size:30px;"> 🔥🔥🔥 <br> <b> LaMa generalizes surprisingly well to much higher resolutions (~2k❗️) than it saw during training (256x256), and achieves the excellent performance even in challenging scenarios, e.g. completion of periodic structures.</b> </p>[Project page] [arXiv] [Supplementary] [BibTeX] [Casual GAN Papers Summary]
<p align="center"> <a href="https://colab.research.google.com/github/saic-mdal/lama/blob/master//colab/LaMa_inpainting.ipynb"> <img src="https://colab.research.google.com/assets/colab-badge.svg"/> </a> <br> Try out in Google Colab </p> <p align="center"> <img src="https://raw.githubusercontent.com/senya-ashukha/senya-ashukha.github.io/master/projects/lama_21/ezgif-4-0db51df695a8.gif" /> </p> <p align="center"> <img src="https://raw.githubusercontent.com/senya-ashukha/senya-ashukha.github.io/master/projects/lama_21/gif_for_lightning_v1_white.gif" /> </p>LaMa development
(Feel free to share your paper by creating an issue)
- Amazing results paper / video / code https://github.com/saic-mdal/lama/pull/112 / by Geomagical Labs (geomagical.com)
Non-official 3rd party apps:
(Feel free to share your app/implementation/demo by creating an issue)
- https://cleanup.pictures - a simple interactive object removal tool by @cyrildiagne
- lama-cleaner by @Sanster is a self-host version of https://cleanup.pictures
- Integrated to Huggingface Spaces with Gradio. See demo: by @AK391
- Telegram bot @MagicEraserBot by @Moldoteck, code
- Auto-LaMa = DE:TR object detection + LaMa inpainting by @andy971022
- LAMA-Magic-Eraser-Local = a standalone inpainting application built with PyQt5 by @zhaoyun0071
- Hama - object removal with a smart brush which simplifies mask drawing.
Environment setup
Clone the repo:
git clone https://github.com/saic-mdal/lama.git
There are three options of an environment:
-
Python virtualenv:
virtualenv inpenv --python=/usr/bin/python3 source inpenv/bin/activate pip install torch==1.8.0 torchvision==0.9.0 cd lama pip install -r requirements.txt
-
Conda
% Install conda for Linux, for other OS download miniconda at https://docs.conda.io/en/latest/miniconda.html wget https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh bash Miniconda3-latest-Linux-x86_64.sh -b -p $HOME/miniconda $HOME/miniconda/bin/conda init bash cd lama conda env create -f conda_env.yml conda activate lama conda install pytorch torchvision torchaudio cudatoolkit=10.2 -c pytorch -y pip install pytorch-lightning==1.2.9
-
Docker: No actions are needed 🎉.
Inference <a name="prediction"></a>
Run
cd lama
export TORCH_HOME=$(pwd) && export PYTHONPATH=$(pwd)
1. Download pre-trained models
Install tool for yandex disk link extraction:
pip3 install wldhx.yadisk-direct
The best model (Places2, Places Challenge):
curl -L $(yadisk-direct https://disk.yandex.ru/d/ouP6l8VJ0HpMZg) -o big-lama.zip
unzip big-lama.zip
All models (Places & CelebA-HQ):
curl -L $(yadisk-direct https://disk.yandex.ru/d/EgqaSnLohjuzAg) -o lama-models.zip
unzip lama-models.zip
2. Prepare images and masks
Download test images:
curl -L $(yadisk-direct https://disk.yandex.ru/d/xKQJZeVRk5vLlQ) -o LaMa_test_images.zip
unzip LaMa_test_images.zip
<details>
<summary>OR prepare your data:</summary>
1) Create masks named as `[images_name]_maskXXX[image_suffix]`, put images and masks in the same folder.
- You can use the script for random masks generation.
- Check the format of the files:
image1_mask001.png image1.png image2_mask001.png image2.png
- Specify
image_suffix
, e.g..png
or.jpg
or_input.jpg
inconfigs/prediction/default.yaml
.
3. Predict
On the host machine:
python3 bin/predict.py model.path=$(pwd)/big-lama indir=$(pwd)/LaMa_test_images outdir=$(pwd)/output
OR in the docker
The following command will pull the docker image from Docker Hub and execute the prediction script
bash docker/2_predict.sh $(pwd)/big-lama $(pwd)/LaMa_test_images $(pwd)/output device=cpu
Docker cuda: TODO
4. Predict with Refinement
On the host machine:
python3 bin/predict.py refine=True model.path=$(pwd)/big-lama indir=$(pwd)/LaMa_test_images outdir=$(pwd)/output
Train and Eval
⚠️ Warning: The training is not fully tested yet, e.g., did not re-training after refactoring ⚠️
Make sure you run:
cd lama
export TORCH_HOME=$(pwd) && export PYTHONPATH=$(pwd)
Then download models for perceptual loss:
mkdir -p ade20k/ade20k-resnet50dilated-ppm_deepsup/
wget -P ade20k/ade20k-resnet50dilated-ppm_deepsup/ http://sceneparsing.csail.mit.edu/model/pytorch/ade20k-resnet50dilated-ppm_deepsup/encoder_epoch_20.pth
Places
⚠️ NB: FID/SSIM/LPIPS metric values for Places that we see in LaMa paper are computed on 30000 images that we produce in evaluation section below. For more details on evaluation data check [Section 3. Dataset splits in Supplementary] ⚠️
On the host machine:
# Download data from http://places2.csail.mit.edu/download.html
# Places365-Standard: Train(105GB)/Test(19GB)/Val(2.1GB) from High-resolution images section
wget http://data.csail.mit.edu/places/places365/train_large_places365standard.tar
wget http://data.csail.mit.edu/places/places365/val_large.tar
wget http://data.csail.mit.edu/places/places365/test_large.tar
# Unpack train/test/val data and create .yaml config for it
bash fetch_data/places_standard_train_prepare.sh
bash fetch_data/places_standard_test_val_prepare.sh
# Sample images for test and viz at the end of epoch
bash fetch_data/places_standard_test_val_sample.sh
bash fetch_data/places_standard_test_val_gen_masks.sh
# Run training
python3 bin/train.py -cn lama-fourier location=places_standard
# To evaluate trained model and report metrics as in our paper
# we need to sample previously unseen 30k images and generate masks for them
bash fetch_data/places_standard_evaluation_prepare_data.sh
# Infer model on thick/thin/medium masks in 256 and 512 and run evaluation
# like this:
python3 bin/predict.py \
model.path=$(pwd)/experiments/<user>_<date:time>_lama-fourier_/ \
indir=$(pwd)/places_standard_dataset/evaluation/random_thick_512/ \
outdir=$(pwd)/inference/random_thick_512 model.checkpoint=last.ckpt
python3 bin/evaluate_predicts.py \
$(pwd)/configs/eval2_gpu.yaml \
$(pwd)/places_standard_dataset/evaluation/random_thick_512/ \
$(pwd)/inference/random_thick_512 \
$(pwd)/inference/random_thick_512_metrics.csv
Docker: TODO
CelebA
On the host machine:
# Make shure you are in lama folder
cd lama
export TORCH_HOME=$(pwd) && export PYTHONPATH=$(pwd)
# Download CelebA-HQ dataset
# Download data256x256.zip from https://drive.google.com/drive/folders/11Vz0fqHS2rXDb5pprgTjpD7S2BAJhi1P
# unzip & split into train/test/visualization & create config for it
bash fetch_data/celebahq_dataset_prepare.sh
# generate masks for test and visual_test at the end of epoch
bash fetch_data/celebahq_gen_masks.sh
# Run training
python3 bin/train.py -cn lama-fourier-celeba data.batch_size=10
# Infer model on thick/thin/medium masks in 256 and run evaluation
# like this:
python3 bin/predict.py \
model.path=$(pwd)/experiments/<user>_<date:time>_lama-fourier-celeba_/ \
indir=$(pwd)/celeba-hq-dataset/visual_test_256/random_thick_256/ \
outdir=$(pwd)/inference/celeba_random_thick_256 model.checkpoint=last.ckpt
Docker: TODO
Places Challenge
On the host machine:
# This script downloads multiple .tar files in parallel and unpacks them
# Places365-Challenge: Train(476GB) from High-resolution images (to train Big-Lama)
bash places_challenge_train_download.sh
TODO: prepare
TODO: train
TODO: eval
Docker: TODO
Create your data
Please check bash scripts for data preparation and mask generation from CelebaHQ section, if you stuck at one of the following steps.
On the host machine:
# Make shure you are in lama folder
cd lama
export TORCH_HOME=$(pwd) && export PYTHONPATH=$(pwd)
# You need to prepare following image folders:
$ ls my_dataset
train
val_source # 2000 or more images
visual_test_source # 100 or more images
eval_source # 2000 or more images
# LaMa generates random masks for the train data on the flight,
# but needs fixed masks for test and visual_test for consistency of evaluation.
# Suppose, we want to evaluate and pick best models
# on 512x512 val dataset with thick/thin/medium masks
# And your images have .jpg extention:
python3 bin/gen_mask_dataset.py \
$(pwd)/configs/data_gen/random_<size>_512.yaml \ # thick, thin, medium
my_dataset/val_source/ \
my_dataset/val/random_<size>_512.yaml \# thick, thin, medium
--ext jpg
# So the mask generator will:
# 1. resize and crop val images and save them as .png
# 2. generate masks
ls my_dataset/val/random_medium_512/
image1_crop000_mask000.png
image1_crop000.png
image2_crop000_mask000.png
image2_crop000.png
...
# Generate thick, thin, medium masks for visual_test folder:
python3 bin/gen_mask_dataset.py \
$(pwd)/configs/data_gen/random_<size>_512.yaml \ #thick, thin, medium
my_dataset/visual_test_source/ \
my_dataset/visual_test/random_<size>_512/ \ #thick, thin, medium
--ext jpg
ls my_dataset/visual_test/random_thick_512/
image1_crop000_mask000.png
image1_crop000.png
image2_crop000_mask000.png
image2_crop000.png
...
# Same process for eval_source image folder:
python3 bin/gen_mask_dataset.py \
$(pwd)/configs/data_gen/random_<size>_512.yaml \ #thick, thin, medium
my_dataset/eval_source/ \
my_dataset/eval/random_<size>_512/ \ #thick, thin, medium
--ext jpg
# Generate location config file which locate these folders:
touch my_dataset.yaml
echo "data_root_dir: $(pwd)/my_dataset/" >> my_dataset.yaml
echo "out_root_dir: $(pwd)/experiments/" >> my_dataset.yaml
echo "tb_dir: $(pwd)/tb_logs/" >> my_dataset.yaml
mv my_dataset.yaml ${PWD}/configs/training/location/
# Check data config for consistency with my_dataset folder structure:
$ cat ${PWD}/configs/training/data/abl-04-256-mh-dist
...
train:
indir: ${location.data_root_dir}/train
...
val:
indir: ${location.data_root_dir}/val
img_suffix: .png
visual_test:
indir: ${location.data_root_dir}/visual_test
img_suffix: .png
# Run training
python3 bin/train.py -cn lama-fourier location=my_dataset data.batch_size=10
# Evaluation: LaMa training procedure picks best few models according to
# scores on my_dataset/val/
# To evaluate one of your best models (i.e. at epoch=32)
# on previously unseen my_dataset/eval do the following
# for thin, thick and medium:
# infer:
python3 bin/predict.py \
model.path=$(pwd)/experiments/<user>_<date:time>_lama-fourier_/ \
indir=$(pwd)/my_dataset/eval/random_<size>_512/ \
outdir=$(pwd)/inference/my_dataset/random_<size>_512 \
model.checkpoint=epoch32.ckpt
# metrics calculation:
python3 bin/evaluate_predicts.py \
$(pwd)/configs/eval2_gpu.yaml \
$(pwd)/my_dataset/eval/random_<size>_512/ \
$(pwd)/inference/my_dataset/random_<size>_512 \
$(pwd)/inference/my_dataset/random_<size>_512_metrics.csv
OR in the docker:
TODO: train
TODO: eval
Hints
Generate different kinds of masks
The following command will execute a script that generates random masks.
bash docker/1_generate_masks_from_raw_images.sh \
configs/data_gen/random_medium_512.yaml \
/directory_with_input_images \
/directory_where_to_store_images_and_masks \
--ext png
The test data generation command stores images in the format, which is suitable for prediction.
The table below describes which configs we used to generate different test sets from the paper. Note that we do not fix a random seed, so the results will be slightly different each time.
Places 512x512 | CelebA 256x256 | |
---|---|---|
Narrow | random_thin_512.yaml | random_thin_256.yaml |
Medium | random_medium_512.yaml | random_medium_256.yaml |
Wide | random_thick_512.yaml | random_thick_256.yaml |
Feel free to change the config path (argument #1) to any other config in configs/data_gen
or adjust config files themselves.
Override parameters in configs
Also you can override parameters in config like this:
python3 bin/train.py -cn <config> data.batch_size=10 run_title=my-title
Where .yaml file extension is omitted
Models options
Config names for models from paper (substitude into the training command):
* big-lama
* big-lama-regular
* lama-fourier
* lama-regular
* lama_small_train_masks
Which are seated in configs/training/folder
Links
- All the data (models, test images, etc.) https://disk.yandex.ru/d/AmdeG-bIjmvSug
- Test images from the paper https://disk.yandex.ru/d/xKQJZeVRk5vLlQ
- The pre-trained models https://disk.yandex.ru/d/EgqaSnLohjuzAg
- The models for perceptual loss https://disk.yandex.ru/d/ncVmQlmT_kTemQ
- Our training logs are available at https://disk.yandex.ru/d/9Bt1wNSDS4jDkQ
Training time & resources
TODO
Acknowledgments
- Segmentation code and models if form CSAILVision.
- LPIPS metric is from richzhang
- SSIM is from Po-Hsun-Su
- FID is from mseitzer
Citation
If you found this code helpful, please consider citing:
@article{suvorov2021resolution,
title={Resolution-robust Large Mask Inpainting with Fourier Convolutions},
author={Suvorov, Roman and Logacheva, Elizaveta and Mashikhin, Anton and Remizova, Anastasia and Ashukha, Arsenii and Silvestrov, Aleksei and Kong, Naejin and Goka, Harshith and Park, Kiwoong and Lempitsky, Victor},
journal={arXiv preprint arXiv:2109.07161},
year={2021}
}
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<img loading="lazy" height="50px" src="https://raw.githubusercontent.com/saic-mdal/lama-project/main/docs/img/samsung_ai.png" />
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<p style="font-weight:normal; font-size: 16pt;text-align:center"align="center" >Copyright © 2021</p>
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