gilisho / AttGAN-PyTorch-for-Stains

Workshop in Machine Learning Applications for Computer Graphics, Tel-Aviv University, 2019

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AttGAN-PyTorch for Stains

Workshop in Machine Learning Applications for Computer Graphics, Tel-Aviv University, 2019.

Authors

  • Chen Barnoy
  • Gili Shohat
  • Michael Glukhman

Description

Based on a PyTorch implementation of AttGAN - Arbitrary Facial Attribute Editing: Only Change What You Want.

Teaser Test on the CelebA validating set

Custom Test on our custom set

Requirements

  • Python 3
  • PyTorch 0.4.0
  • TensorboardX
pip3 install -r requirements.txt

If you'd like to train with multiple GPUs, please install PyTorch v0.4.0 instead of v1.0.0 or above. The so-called stable version of PyTorch has a bunch of problems with regard to nn.DataParallel(). E.g. pytorch/pytorch#15716, pytorch/pytorch#16532, etc.

pip3 install --upgrade torch==0.4.0

Usage

To train an AttGAN on CelebA 128x128

CUDA_VISIBLE_DEVICES=0 \
python train.py \
--img_size 128 \
--shortcut_layers 1 \
--inject_layers 1 \
--experiment_name 128_shortcut1_inject1_none \
--gpu

To train an AttGAN on CelebA-HQ 256x256 with multiple GPUs

CUDA_VISIBLE_DEVICES=0 \
python train.py \
--data CelebA-HQ \
--img_size 256 \
--shortcut_layers 1 \
--inject_layers 1 \
--experiment_name 256_shortcut1_inject1_none_hq \
--gpu \
--multi_gpu

To visualize training details

tensorboard \
--logdir ./output

To test with single attribute editing

Test

CUDA_VISIBLE_DEVICES=0 \
python test.py \
--experiment_name 128_shortcut1_inject1_none \
--test_int 1.0 \
--gpu

To test with multiple attributes editing

Test Multi

CUDA_VISIBLE_DEVICES=0 \
python test_multi.py \
--experiment_name 128_shortcut1_inject1_none \
--test_atts Pale_Skin Male \
--test_ints 0.5 0.5 \
--gpu

Example for our case (turning off clean attribute and turning on level 1 of image dirtiness:

CUDA_VISIBLE_DEVICES=0 \
python3 test_multi.py --experiment_name 128_shortcut1_inject1_none_16000_bytype \
--test_atts Clean  Stain_Level_1 \
--test_ints -1 1 \
--gpu \
--custom_img

To test with attribute intensity control

Test Slide

CUDA_VISIBLE_DEVICES=0 \
python test_slide.py \
--experiment_name 128_shortcut1_inject1_none \
--test_att black \
--test_int_min -1.0 \
--test_int_max 1.0 \
--n_slide 10 \
--gpu

To test with your custom images (supports test.py, test_multi.py, test_slide.py)

CUDA_VISIBLE_DEVICES=0 \
python test.py \
--experiment_name 384_shortcut1_inject1_none_hq \
--test_int 1.0 \
--gpu \
--custom_img

Your custom images are supposed to be in ./data/custom and you also need an attribute list of the images ./data/list_attr_custom.txt. Please crop and resize them into square images in advance.

About

Workshop in Machine Learning Applications for Computer Graphics, Tel-Aviv University, 2019

License:MIT License


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Language:Python 100.0%