Joint 3D Face Reconstruction and Dense Alignment with Position Map Regression Network
This is an official python implementation of PRN.
PRN is a method to jointly regress dense alignment and 3D face shape in an end-to-end manner. More examples on Multi-PIE and 300VW can be seen in YouTube .
The main features are:
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End-to-End our method can directly regress the 3D facial structure and dense alignment from a single image bypassing 3DMM fitting.
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Multi-task By regressing position map, the 3D geometry along with semantic meaning can be obtained. Thus, we can effortlessly complete the tasks of dense alignment, monocular 3D face reconstruction, pose estimation, etc.
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Faster than real-time The method can run at over 100fps(with GTX 1080) to regress a position map.
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Robust Tested on facial images in unconstrained conditions. Our method is robust to poses, illuminations and occlusions.
Applications
Basics(Evaluated in paper)
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Face Alignment
Dense alignment of both visible and non-visible points(including 68 key points).
And the visibility of points(1 for visible and 0 for non-visible).
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3D Face Reconstruction
Get the 3D vertices and corresponding colours from a single image. Save the result as mesh data(.obj), which can be opened with Meshlab or Microsoft 3D Builder. Notice that, the texture of non-visible area is distorted due to self-occlusion.
New:
- you can choose to output mesh with its original pose(default) or with front view(which means all output meshes are aligned)
- obj file can now also written with texture map(with specified texture size), and you can set non-visible texture to 0.
More(To be added)
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3D Pose Estimation
Rather than only use 68 key points to calculate the camera matrix(easily effected by expression and poses), we use all vertices(more than 40K) to calculate a more accurate pose.
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Depth image
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Texture Editing
Getting Started
Prerequisite
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Python 2.7 (numpy, skimage, scipy)
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TensorFlow >= 1.4
Optional:
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dlib (for detecting face. You do not have to install if you can provide bounding box information. )
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opencv2 (for showing results)
GPU is highly recommended. The run time is ~0.01s with GPU(GeForce GTX 1080) and ~0.2s with CPU(Intel(R) Xeon(R) CPU E5-2640 v4 @ 2.40GHz).
Usage
- Clone the repository
git clone https://github.com/YadiraF/PRNet
cd PRNet
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Download the PRN trained model at BaiduDrive or GoogleDrive, and put it into
Data/net-data
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Run the test code.(test AFLW2000 images)
python run_basics.py #Can run only with python and tensorflow
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Run with your own images
python demo.py -i <inputDir> -o <outputDir> --isDlib True
run
python demo.py --help
for more details. -
For Texture Editing Apps:
python demo_texture.py -i image_path_1 -r image_path_2 -o output_path
run
python demo_texture.py --help
for more details.
Training
The core idea of the paper is:
Using position map to represent face geometry&alignment information, then learning this with an Encoder-Decoder Network.
So, the training steps:
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generate position map ground truth.
the example of generating position map of 300W_LP dataset can be seen in generate_posmap_300WLP
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an encoder-decoder network to learn mapping from rgb image to position map.
the weight mask can be found in the folder
Data/uv-data
What you can custom:
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the UV space of position map.
you can change the parameterization method, or change the resolution of UV space.
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the backbone of encoder-decoder network
this demo uses residual blocks. VGG, mobile-net are also ok.
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the weight mask
you can change the weight to focus more on which part your project need more.
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the training data
if you have scanned 3d face, it's better to train PRN with your own data. Before that, you may need use ICP to align your face meshes.
FQA
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How to speed up?
a. network inference part
you can train a smaller network or use a smaller position map as input.
b. render part
you can refer to c++ version.
c. other parts like detecting face, writing obj
the best way is to rewrite them in c++.
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How to improve the precision?
a. geometry precision.
Due to the restriction of training data, the precision of reconstructed face from this demo has little detail. You can train the network with your own detailed data or do post-processing like shape-from-shading to add details.
b. texture precision.
I just added an option to specify the texture size. When the texture size > face size in original image, and render new facial image with texture mapping, there will be little resample error.
Changelog
- 2018/7/19 add training part. can specify the resolution of the texture map.
- 2018/5/10 add texture editing examples(for data augmentation, face swapping)
- 2018/4/28 add visibility of vertices, output obj file with texture map, depth image
- 2018/4/26 can output mesh with front view
- 2018/3/28 add pose estimation
- 2018/3/12 first release(3d reconstruction and dense alignment)
License
Code: under MIT license.
Trained model file: please see issue 28, thank Kyle McDonald for his answer.
Citation
If you use this code, please consider citing:
@inProceedings{feng2018prn,
title = {Joint 3D Face Reconstruction and Dense Alignment with Position Map Regression Network},
author = {Yao Feng and Fan Wu and Xiaohu Shao and Yanfeng Wang and Xi Zhou},
booktitle = {ECCV},
year = {2018}
}
Contacts
Please contact [email protected] or open an issue for any questions or suggestions.
Thanks! (β'β‘'β)
Acknowledgements
- Thanks BFM team, Xiangyu Zhu, and Anil Bas for sharing 3D data.
- Thanks Patrik Huber for sharing his work eos, which helps me a lot in studying 3D Face Reconstruction.
- Thanks the authors of 3DMMasSTN, DenseReg, 3dmm_cnn, vrn, pix2vertex, face-alignment for making their excellent works publicly available.