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Official implementations for paper: Anydoor: zero-shot object-level image customization

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AnyDoor: Zero-shot Object-level Image Customization

Xi Chen · Lianghua Huang · Yu Liu · Yujun Shen · Deli Zhao · Hengshuang Zhao

Paper PDF Project Page
The University of Hong Kong   |   Alibaba Group |   Ant Group

News

  • [2023.12.17] Release train & inference & demo code, and pretrained checkpoint.
  • [2023.12.24] 🔥 Support online demo on ModelScope and HuggingFace.
  • [Soon] Release the new version paper.
  • [On-going] Scale-up the training data and release stronger models as the foundaition model for downstream region-to-region generation tasks.
  • [On-going] Release specific-designed models for downstream tasks like virtual tryon, face swap, text and logo transfer, etc.

Installation

Install with conda:

conda env create -f environment.yaml
conda activate anydoor

or pip:

pip install -r requirements.txt

Additionally, for training, you need to install panopticapi, pycocotools, and lvis-api.

pip install git+https://github.com/cocodataset/panopticapi.git

pip install pycocotools -i https://pypi.douban.com/simple

pip install lvis

Automatic installation for Windows

Clone this git:

git clone https://github.com/sdbds/AnyDoor-for-windows

Right click on install.ps1 and Run with PowerShell. Run GUI with run_gui.ps1

Manual installation for Windows

Open CMD and clone repository:

git clone https://github.com/sdbds/AnyDoor-for-windows

Create venv, activate it and upgrade pip:

cd AnyDoor-for-windows
python -m venv venv
venv\Scripts\Activate
python.exe -m pip install --upgrade pip

Install requirements:

pip install -r requirements-windows.txt

Install torch with CUDA:

pip3 install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu118

Install xformers for CUDA:

pip3 install -U xformers --index-url https://download.pytorch.org/whl/cu118

Create path folder inside AnyDoor-for-windows folder, and download all models to the path folder!

Run the demo GUI after venv has been activated:

python run_gradio_demo.py

Download Checkpoints

Download AnyDoor checkpoint:

Note: We include all the optimizer params for Adam, so the checkpoint is big. You could only keep the "state_dict" to make it much smaller.

Download DINOv2 checkpoint and revise /configs/anydoor.yaml for the path (line 83)

Download Stable Diffusion V2.1 if you want to train from scratch.

Inference

We provide inference code in run_inference.py (from Line 222 - ) for both inference single image and inference a dataset (VITON-HD Test). You should modify the data path and run the following code. The generated results are provided in examples/TestDreamBooth/GEN for single image, and VITONGEN for VITON-HD Test.

python run_inference.py

The inferenced results on VITON-Test would be like [garment, ground truth, generation].

Noticing that AnyDoor does not contain any specific design/tuning for tryon, we think it would be helpful to add skeleton infos or warped garment, and tune on tryon data to make it better :)

Our evaluation data for DreamBooth an COCOEE coud be downloaded at Google Drive:

  • URL: [to be released]

Gradio demo

Currently, we suport local gradio demo. To launch it, you should firstly modify /configs/demo.yaml for the path to the pretrained model, and /configs/anydoor.yaml for the path to DINOv2(line 83).

Afterwards, run the script:

python run_gradio_demo.py

The gradio demo would look like the UI shown below:

  • 📢 This version requires users to annotate the mask of the target object, too coarse mask would influence the generation quality. We plan to add mask refine module or interactive segmentation modules in the demo.

  • 📢 We provide an segmentation module to refine the user annotated reference mask. We could chose to disable it by setting use_interactive_seg: False in /configs/demo.yaml.

Train

Prepare datasets

  • Download the datasets that present in /configs/datasets.yaml and modify the corresponding paths.
  • You could prepare you own datasets according to the formates of files in ./datasets.
  • If you use UVO dataset, you need to process the json following ./datasets/Preprocess/uvo_process.py
  • You could refer to run_dataset_debug.py to verify you data is correct.

Prepare initial weight

  • If your would like to train from scratch, convert the downloaded SD weights to control copy by running:
sh ./scripts/convert_weight.sh  

Start training

  • Modify the training hyper-parameters in run_train_anydoor.py Line 26-34 according to your training resources. We verify that using 2-A100 GPUs with batch accumulation=1 could get satisfactory results after 300,000 iterations.

  • Start training by executing:

sh ./scripts/train.sh  

🔥 Community Contributions

@bdsqlsz

Acknowledgements

This project is developped on the codebase of ControlNet. We appreciate this great work!

Citation

If you find this codebase useful for your research, please use the following entry.

@article{chen2023anydoor,
  title={Anydoor: Zero-shot object-level image customization},
  author={Chen, Xi and Huang, Lianghua and Liu, Yu and Shen, Yujun and Zhao, Deli and Zhao, Hengshuang},
  journal={arXiv preprint arXiv:2307.09481},
  year={2023}
}

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