6D Rotation Representation for Unconstrained Head Pose Estimation (Pytorch)
Citing
If you find our work useful, please cite the paper:
@INPROCEEDINGS{9897219,
author={Hempel, Thorsten and Abdelrahman, Ahmed A. and Al-Hamadi, Ayoub},
booktitle={2022 IEEE International Conference on Image Processing (ICIP)},
title={6d Rotation Representation For Unconstrained Head Pose Estimation},
year={2022},
volume={},
number={},
pages={2496-2500},
doi={10.1109/ICIP46576.2022.9897219}}
Updates
13.09.2022
- 6DRepNet is now avaiable as pip package for even more accessable usage: pip3 install SixDRepNet
20.06.2022
- 6DRepNet has been accepted to ICIP 2022.
29.05.2022
- Simplified training script
- Updated default training configuration for more robust results
Paper
Thorsten Hempel and Ahmed A. Abdelrahman and Ayoub Al-Hamadi, "6D Rotation Representation for Unconstrained Head Pose Estimation", accepted to ICIP 2022. [ResearchGate][Arxiv]
Abstract
In this paper, we present a method for unconstrained end-to-end head pose estimation. We address the problem of ambiguous rotation labels by introducing the rotation matrix formalism for our ground truth data and propose a continuous 6D rotation matrix representation for efficient and robust direct regression. This way, our method can learn the full rotation appearance which is contrary to previous approaches that restrict the pose prediction to a narrow-angle for satisfactory results. In addition, we propose a geodesic distance-based loss to penalize our network with respect to the manifold geometry. Experiments on the public AFLW2000 and BIWI datasets demonstrate that our proposed method significantly outperforms other state-of-the-art methods by up to 20%.
Trained on 300W-LP, Test on AFLW2000 and BIWI
BIWI 70/30
Yaw | Pitch | Roll | MAE | |
HopeNet ( =1) | 3.29 | 3.39 | 3.00 | 3.23 |
FSA-Net | 2.89 | 4.29 | 3.60 | 3.60 |
TriNet | 2.93 | 3.04 | 2.44 | 2.80 |
FDN | 3.00 | 3.98 | 2.88 | 3.29 |
6DRepNet | 2.69 | 2.92 | 2.36 | 2.66 |
Fine-tuned Models
Fine-tuned models can be download from here: https://drive.google.com/drive/folders/1V1pCV0BEW3mD-B9MogGrz_P91UhTtuE_?usp=sharing
Quick Start:
Pip install:
pip3 install sixdrepnet
Example usage:
# Import SixDRepNet
from sixdrepnet import SixDRepNet
import cv2
# Create model
# Weights are automatically downloaded
model = SixDRepNet()
img = cv2.imread('/path/to/image.jpg')
pitch, yaw, roll = model.predict(img)
model.draw_axis(img, yaw, pitch, roll)
cv2.imshow("test_window", img)
cv2.waitKey(0)
Setting it up your own:
git clone https://github.com/thohemp/6DRepNet
cd 6DRepNet
Set up a virtual environment:
python3 -m venv venv
source venv/bin/activate
pip install -r requirements.txt # Install required packages
In order to run the demo scripts you need to install the face detector
pip install git+https://github.com/elliottzheng/face-detection.git@master
Camera Demo:
python ./sixdrepnet/demo.py --snapshot 6DRepNet_300W_LP_AFLW2000.pth \
--cam 0
Test/Train 3DRepNet
Preparing datasets
Download datasets:
Store them in the datasets directory.
For 300W-LP and AFLW2000 we need to create a filenamelist.
python create_filename_list.py --root_dir datasets/300W_LP
The BIWI datasets needs be preprocessed by a face detector to cut out the faces from the images. You can use the script provided here. For 7:3 splitting of the BIWI dataset you can use the equivalent script here. We set the cropped image size to 256.
Testing:
python test.py --batch_size 64 \
--dataset AFLW2000 \
--data_dir datasets/AFLW2000 \
--filename_list datasets/AFLW2000/files.txt \
--snapshot output/snapshots/1.pth \
--show_viz False
Training
Download pre-trained RepVGG model 'RepVGG-B1g2-train.pth' from here and save it in the root directory.
python sixdrepnet/train.py
Deploy models
For reparameterization the trained models into inference-models use the convert script.
python convert.py input-model.tar output-model.pth
Inference-models are loaded with the flag deploy=True
.
model = SixDRepNet(backbone_name='RepVGG-B1g2',
backbone_file='',
deploy=True,
pretrained=False)