Incremental Transformer Structure Enhanced Image Inpainting with Masking Positional Encoding (CVPR2022)

Overview

Incremental Transformer Structure Enhanced Image Inpainting with Masking Positional Encoding

by Qiaole Dong*, Chenjie Cao*, Yanwei Fu

Paper and Supplemental Material (arXiv)

LICENSE

Pipeline

Click to expand

The overview of our ZITS. At first, the TSR model is used to restore structures with low resolutions. Then the simple CNN based upsampler is leveraged to upsample edge and line maps. Moreover, the upsampled sketch space is encoded and added to the FTR through ZeroRA to restore the textures.

TO DO

We have updated weights of TSR!

Our project page is available at https://dqiaole.github.io/ZITS_inpainting/.

  • Releasing inference codes.
  • Releasing pre-trained moodel.
  • Releasing training codes.

Preparation

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  1. Preparing the environment:

    as there are some bugs when using GP loss with DDP (link), we strongly recommend installing Apex without CUDA extensions via torch1.9.0 for the multi-gpu training

    conda create -n train_env python=3.6
    conda activate train_env
    pip install torch==1.9.0+cu111 torchvision==0.10.0+cu111 torchaudio==0.9.0 -f https://download.pytorch.org/whl/torch_stable.html
    pip install -r requirement.txt
    git clone https://github.com/NVIDIA/apex
    cd apex
    pip install -v --disable-pip-version-check --no-cache-dir --global-option="--cpp_ext" ./
    
  2. For training, MST provide irregular and segmentation masks (download) with different masking rates. And you should define the mask file list before the training as in MST.

  3. Download the pretrained masked wireframe detection model to the './ckpt' fold: LSM-HAWP (MST ICCV2021 retrained from HAWP CVPR2020).

  4. Prepare the wireframes:

    as the MST train the LSM-HAWP in Pytorch 1.3.1 and it causes problem (link) when tested in Pytorch 1.9, we recommand to inference the lines(wireframes) with torch==1.3.1. If the line detection is not based on torch1.3.1, the performance may drop a little.

    conda create -n wireframes_inference_env python=3.6
    conda activate wireframes_inference_env
    pip install torch==1.3.1 torchvision==0.4.2
    pip install -r requirement.txt
    

    then extract wireframes with following code

    python lsm_hawp_inference.py --ckpt_path <best_lsm_hawp.pth> --input_path <input image path> --output_path <output image path> --gpu_ids '0'
    
  5. If you need to train the model, please download the pretrained models for perceptual loss, provided by LaMa:

    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
    

Eval

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Download pretrained models on Places2 here.

Link for BaiduDrive, password:qnm5

Batch Test

For batch test, you need to complete steps 3 and 4 above.

Put the pretrained models to the './ckpt' fold. Then modify the config file according to you image, mask and wireframes path.

Test on 256 images:

conda activate train_env
python FTR_inference.py --path ./ckpt/zits_places2 --config_file ./config_list/config_ZITS_places2.yml --GPU_ids '0'

Test on 512 images:

conda activate train_env
python FTR_inference.py --path ./ckpt/zits_places2_hr --config_file ./config_list/config_ZITS_HR_places2.yml --GPU_ids '0'

Single Image Test

Note: For single image test, environment 'wireframes_inference_env' in step 4 is recommended for a better line detection. This code only supports squared images (or they will be center cropped).

conda activate wireframes_inference_env
python single_image_test.py --path <ckpt_path> --config_file <config_path> \
 --GPU_ids '0' --img_path ./image.png --mask_path ./mask.png --save_path ./

Training

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⚠️ Warning: The training codes is not fully tested yet after refactoring

Training TSR

python TSR_train.py --name places2_continous_edgeline --data_path [training_data_path] \
 --train_line_path [training_wireframes_path] \
 --mask_path ['irregular_mask_list.txt', 'coco_mask_list.txt'] \
 --train_epoch 12 --validation_path [validation_data_path] \
 --val_line_path [validation_wireframes_path] \
 --valid_mask_path [validation_mask] --nodes 1 --gpus 1 --GPU_ids '0' --AMP
python TSR_train.py --name places2_continous_edgeline --data_path [training_data_path] \
 --train_line_path [training_wireframes_path] \
 --mask_path ['irregular_mask_list.txt', 'coco_mask_list.txt'] \
 --train_epoch 15 --validation_path [validation_data_path] \
 --val_line_path [validation_wireframes_path] \
 --valid_mask_path [validation_mask] --nodes 1 --gpus 1 --GPU_ids '0' --AMP --MaP

Train SSU

We recommend to use the pretrained SSU. You can also train your SSU refered to https://github.com/ewrfcas/StructureUpsampling.

Training LaMa First

python FTR_train.py --nodes 1 --gpus 1 --GPU_ids '0' --path ./ckpt/lama_places2 \
--config_file ./config_list/config_LAMA.yml --lama

Training FTR

256:

python FTR_train.py --nodes 1 --gpus 2 --GPU_ids '0,1' --path ./ckpt/places2 \
--config_file ./config_list/config_ZITS_places2.yml --DDP

256~512:

python FTR_train.py --nodes 1 --gpus 2 --GPU_ids '0,1' --path ./ckpt/places2_HR \
--config_file ./config_list/config_ZITS_HR_places2.yml --DDP

More 1K Results

Click to expand

Acknowledgments

Cite

If you found our program helpful, please consider citing:

@inproceedings{dong2022incremental,
      title={Incremental Transformer Structure Enhanced Image Inpainting with Masking Positional Encoding}, 
      author={Qiaole Dong and Chenjie Cao and Yanwei Fu},
      booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
      year={2022}
}
Owner
Qiaole Dong
Qiaole Dong
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