This is the unofficial implementation of 'SieveNet: A Unified Framework for Robust Image-Based Virtual Try-On'
Paper can be found from here
Dataset download instructions and link of dataset can be found from official repo of CP-VTON and VITON
Put dataset in data
folder
Clone the repo and install requirements through pip install -r requirements.txt
In config.py
set self.datamode='train'
and self.stage='GMM'
then run python train.py
You can observe results while traning in tensorboard as below
In config.py
set self.datamode='Train'
and self.stage='SEG'
then run python train.py
In config.py
set self.datamode='Train'
and self.stage='TOM'
then run python train.py
Please download checkpoint of all three modules from google drive and put them in checkpoints
folder
For testing, in config.py
set self.datamode='test'
For Testing of Coarse-to-Fine Warping module, Conditional Segmentation Mask generation module, and Segmentation Assisted Texture Translation module set self.stage='GMM'
, self.stage='SEG'
, and self.stage='TOM'
respectively.
Here is testing result. For Coarse-to-Fine Warping module,
For Segmentation Assisted Texture Translation module,
- Please download checkpoint of all three modules from google drive and put them in
checkpoints
folder. - Please download caffe-model from here and put the model in
pose
folder. - Generate human parsing from Self-Correction-Human-Parsing repo or from this colab demo.
SelectLIP
dataset while generating human parsing. - Set input-image's, cloth-image's, and output of human parsing image's path in config file.
- Then run
python inference.py
Output will be saved inoutputs
folder.
Please find inference code of Sievenet in 2nd part of this notebook
Some modules of this implementation is based on this repo
For generating pose keypoints, I have used learnopencv implementation of OpenPose