MICA - Towards Metrical Reconstruction of Human Faces
Wojciech Zielonka, Timo Bolkart, Justus Thies
Max Planck Institute for Intelligent Systems, Tübingen, Germany
Video Paper Project Website Face Tracker Dataset Supplemental Email
Installation
After cloning the repository please install the environment by using attached conda environment.yml
file with the command
conda env create -f environment.yml
. Additionally, the FLAME2020 model is needed. To obtain it please create an account at the website download the model and place it in the /data/pretrained/FLAME2020/
folder.
You can also simply run the install.sh
script:
git clone https://github.com/Zielon/MICA.git
cd MICA
./install.sh
you will be asked to provide {flame_user}
and {flame_password}
for your FLAME account in order to access the file server.
Pre-trained Models
If you decide to not use the installation script, the pretrained model can be found under the MPI-IS storage server. After downloading, please place it in the /data/pretrained/mica.tar
location. Additionally, you will need to provide models for inisghtface
:
then you need to unzip them and place in ~/.insightface/models/
. The install.sh
script does it for you.
How To Use
To use MICA you can simply run the demo.py
file. It will process all the images from demo/input/
folder and create the output destination for each subject with .ply
mesh, rendered image, and .npy
FLAME parameters.
Dataset and Training
The MICA dataset consists of eight smaller datasets for about 2300 subjects under a common FLAME topology. Read more information about how to obtain and use it under the link. To train MICA the images from all eight datasets are needed. The repository contains scripts how to generate the Arcface input images as well as the complete list of all the images used for the training. More information can be found here.
When you train from scratch for Arcface model initialization please download Glint360K and specify the path to it in the config as cfg.model.arcface_pretrained_model
.
Testing
The testing was done using two datasets, Stirling and NoW. In the model folder you can find the corresponding scripts to run testing routine, which generates the meshes. To calculate the NoW challenge error you can use the following repository.
Citation
If you use this project in your research please cite MICA:
@proceedings{MICA:ECCV2022,
author = {Zielonka, Wojciech and Bolkart, Timo and Thies, Justus},
title = {Towards Metrical Reconstruction of Human Faces},
journal = {European Conference on Computer Vision},
year = {2022}
}