This is the official implementation of the paper "Improving Diffusion Models for Authentic Virtual Try-on in the Wild".
Star ⭐ us if you like it!
- demo model
- inference code
- training code
git clone https://github.com/yisol/IDM-VTON.git
cd IDM-VTON
conda env create -f environment.yaml
conda activate idm
You can download VITON-HD dataset from VITON-HD.
After download VITON-HD dataset, move vitonhd_test_tagged.json into the test folder, and move vitonhd_train_tagged.json into the train folder.
Structure of the Dataset directory should be as follows.
train
|-- image
|-- image-densepose
|-- agnostic-mask
|-- cloth
|-- vitonhd_train_tagged.json
test
|-- image
|-- image-densepose
|-- agnostic-mask
|-- cloth
|-- vitonhd_test_tagged.json
You can download DressCode dataset from DressCode.
We provide pre-computed densepose images and captions for garments here.
We used detectron2 for obtaining densepose images, refer here for more details.
After download the DressCode dataset, place image-densepose directories and caption text files as follows.
DressCode
|-- dresses
|-- images
|-- image-densepose
|-- dc_caption.txt
|-- ...
|-- lower_body
|-- images
|-- image-densepose
|-- dc_caption.txt
|-- ...
|-- upper_body
|-- images
|-- image-densepose
|-- dc_caption.txt
|-- ...
Download pre-trained ip-adapter for sdxl(IP-Adapter/sdxl_models/ip-adapter-plus_sdxl_vit-h.bin) and image encoder(IP-Adapter/models/image_encoder) here.
git clone https://huggingface.co/h94/IP-Adapter
Move ip-adapter to ckpt/ip_adapter, and image encoder to ckpt/image_encoder
Start training using python file with arguments,
accelerate launch train_xl.py \
--gradient_checkpointing --use_8bit_adam \
--output_dir=result --train_batch_size=6 \
--data_dir=DATA_DIR
or, you can simply run with the script file.
sh train_xl.sh
Inference using python file with arguments,
accelerate launch inference.py \
--width 768 --height 1024 --num_inference_steps 30 \
--output_dir "result" \
--unpaired \
--data_dir "DATA_DIR" \
--seed 42 \
--test_batch_size 2 \
--guidance_scale 2.0
or, you can simply run with the script file.
sh inference.sh
For DressCode dataset, put the category you want to generate images via category argument,
accelerate launch inference_dc.py \
--width 768 --height 1024 --num_inference_steps 30 \
--output_dir "result" \
--unpaired \
--data_dir "DATA_DIR" \
--seed 42
--test_batch_size 2
--guidance_scale 2.0
--category "upper_body"
or, you can simply run with the script file.
sh inference.sh
Download checkpoints for human parsing here.
Place the checkpoints under the ckpt folder.
ckpt
|-- densepose
|-- model_final_162be9.pkl
|-- humanparsing
|-- parsing_atr.onnx
|-- parsing_lip.onnx
|-- openpose
|-- ckpts
|-- body_pose_model.pth
Run the following command:
python gradio_demo/app.py
Thanks ZeroGPU for providing free GPU.
Thanks IP-Adapter for base codes.
Thanks OOTDiffusion and DCI-VTON for masking generation.
Thanks SCHP for human segmentation.
Thanks Densepose for human densepose.
@article{choi2024improving,
title={Improving Diffusion Models for Authentic Virtual Try-on in the Wild},
author={Choi, Yisol and Kwak, Sangkyung and Lee, Kyungmin and Choi, Hyungwon and Shin, Jinwoo},
journal={arXiv preprint arXiv:2403.05139},
year={2024}
}
The codes and checkpoints in this repository are under the CC BY-NC-SA 4.0 license.