Ml Facelit Save

Official repository of FaceLit: Neural 3D Relightable Faces (CVPR 2023)

Project README

FaceLit: Neural 3D Relightable Faces

This is the official repository of

Anurag Ranjan, Kwang Moo Yi, Rick Chang, Oncel Tuzel, FaceLit: Neural 3D Relightable Faces. CVPR 2023

arxiv webpage

https://user-images.githubusercontent.com/14334441/229917229-ab587c29-7250-46ab-9f42-12b52bb141de.mp4

Setup

conda create -f facelit/enviroment.yml
conda activate facelit

Demo

Download pretrained models

bash download_models.sh

Generate video demos.

python gen_videos.py --outdir=out --trunc=0.7 --seeds=0-3 --grid=2x2 --network=pretrained/NETWORK.pkl --light_cond=True --entangle=[camera, light, lightcam, specular, specularcam]

Training

Train with a neural rendering resolution of 64x64

python train.py --outdir==out --cfg=ffhq --data=DATA_DIR --gpus=8 --batch=32 --gamma=1 --gen_pose_cond=True --gen_light_cond=True --light_mode=[diffuse, full] --normal_reg_weight=1e-4 --neural_rendering_resolution_final=64

Fine tune with a neural rendering resolution of 128x128

python train.py --outdir==out --cfg=ffhq --data=DATA_DIR --gpus=8 --batch=32 --gamma=1 --gen_pose_cond=True --gen_light_cond=True --light_mode=[diffuse, full] --normal_reg_weight=1e-4 --neural_rendering_resolution_final=128 --resume=pretrained/NETWORK.pkl

Data Preprocessing

We use the dataset from EG3D and obtain camera parameters and illumination parameters using DECA.

Setting up DECA

git clone https://github.com/YadiraF/DECA.git
cd DECA
git checkout 022ed52
bash install_conda.sh
conda activate deca-env
bash fetch_data.sh

Apply our patch

git apply FACELIT_DIR/third_party/deca.patch

To generate deca fits, run generate_deca_fits.sh.

Evaluation

Evaluation of models requires setting up DECA (see here) and setting up Deep3DFaceRecon (see below).

Setting up Deep3DFaceRecon

Use this fork to set up Deep3DFaceRecon_pytorch.

git clone https://github.com/Xiaoming-Zhao/Deep3DFaceRecon_pytorch

To run the evaluation, run eval_metrics.sh. Note that due to randomness in the generation process, the metrics reported might vary by ±2%.

Citation

@inproceedings{ranjan2023,
  author = {Anurag Ranjan and Kwang Moo Yi and Rick Chang and Oncel Tuzel},
  title = {FaceLit: Neural 3D Relightable Faces},
  booktitle = {Proceedings of the IEEE conference on computer vision and pattern recognition},
  year = {2023}
}

Acknowledgements

This code is based on EG3D, we thank the authors for their github contribution. We also use portions of the code from GMPI.

Open Source Agenda is not affiliated with "Ml Facelit" Project. README Source: apple/ml-facelit
Stars
464
Open Issues
0
Last Commit
10 months ago
Repository

Open Source Agenda Badge

Open Source Agenda Rating