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Learning Flow-based Feature Warping for Face Frontalization with Illumination Inconsistent Supervision (ECCV 2020).

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Learning Flow-based Feature Warping For Face Frontalization with Illumination Inconsistent Supervision

The source code for our paper "Learning Flow-based Feature Warping For Face Frontalization with Illumination Inconsistent Supervision" (ECCV 2020)

network

Quick Start

Installation

Prerequisites

- python3.7
- pytorch1.5.0 + torchvision0.6.0
- CUDA
- opencv-python
- numpy
- tensorboardX
- tqdm

Conda installation

# 1. Create a conda virtual environment.
conda create -n ffwm python=3.7 anaconda
source activate ffwm

# 2. Install the pytorch 
conda install pytorch==1.5.0 torchvision==0.6.0 cudatoolkit=9.2 -c pytorch

# 3. Install dependency
pip install -r requirements.txt

# 4. Build pytorch Custom CUDA Extensions, we have tested it on pytorch1.5.0+cu92
bash setup.sh

Data Preparation

You can use the scripts in data_process to prepare your data.

The data folder is structured as follows:

dataset
    ├── multipie
    │       ├── train
    │       │     ├── images
    │       │     ├── masks
    │       │     └── landmarks.npy
    │       └── test
    │             ├── images
    │             ├── gallery_list.npy (optional)
    │             └── visual_list.npy (optional)
    └── lfw
         ├── images
         └── pairs.txt

Our test gallery_list.npy and visual_list.npy can download from GoogleDrive or BaiduNetDisk (l98p).

Testing

Download the models from GoogleDrive or BaiduNetDisk (l98p) to ./checkpoints folder or use your pretrained models. The models are structured as follows:

./checkpoints
      ├── ffwm
      │       ├── latest_net_flowNetF.pth
      │       └── latest_net_netG.pth
      ├── lightCNN_10_checkpoint.pth (pretrained)
      └── LightCNN_29Layers_checkpoint.pth (original)

Test on MultiPIE

python test_ffwm.py \
            --dataroot path/to/dataset \
            --lightcnn path/to/pretrained lightcnn \
            --preload 

Test on LFW

python test_ffwm.py \
            --datamode lfw \
            --dataroot path/to/dataset \
            --lightcnn path/to/pretrained lightcnn \
            --preload 

Training

1. Finetune LightCNN

cd lightcnn
python finetune.py \
            --save_path ../checkpoints/ \
            --dataroot path/to/dataset/multipie \
            --model_path path/to/original lightcnn \
            --preload

You can download the original LightCNN model from LightCNN. Or you can download the original and our pretrained LightCNN from GoogleDrive or BaiduNetDisk (l98p).

2. Train Forward FlowNet

python train_flow.py \
            --model flownet \
            --dataroot path/to/dataset \
            --aug \
            --preload \
            --name flownetf \
            --batch_size 6

3. Train Reverse FlowNet

python train_flow.py \
            --model flownet \
            --reverse \
            --dataroot path/to/dataset \
            --aug \
            --preload \
            --name flownetb \
            --batch_size 6

4. Train FFWM

python train_ffwm.py \
                --name ffwm  \
                --preload \
                --dataroot path/to/dataset \
                --lightcnn path/to/pretrained lightcnn 

Citation

If you find our work useful in your research or publication, please cite:

@InProceedings{wei2020ffwm,
  author = {Wei, Yuxiang and Liu, Ming and Wang, Haolin and Zhu, Ruifeng and Hu, Guosheng and Zuo, Wangmeng},
  title = {Learning Flow-based Feature Warping For Face Frontalization with Illumination Inconsistent Supervision},
  booktitle = {Proceedings of the European Conference on Computer Vision},
  year = {2020}
}
Open Source Agenda is not affiliated with "FFWM" Project. README Source: csyxwei/FFWM
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