Official Pytorch implementation of 6DRepNet: 6D Rotation representation for unconstrained head pose estimation.

Overview

PWC PWC Hugging Face Spaces

6D Rotation Representation for Unconstrained Head Pose Estimation (Pytorch)

animated

Paper

Thorsten Hempel and Ahmed A. Abdelrahman and Ayoub Al-Hamadi, "6D Rotation Representation for Unconstrained Head Pose Estimation", submitted 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

Full Range Yaw Pitch Roll MAE Yaw Pitch Roll MAE
HopeNet ( =2) N 6.47 6.56 5.44 6.16 5.17 6.98 3.39 5.18
HopeNet ( =1) N 6.92 6.64 5.67 6.41 4.81 6.61 3.27 4.90
FSA-Net N 4.50 6.08 4.64 5.07 4.27 4.96 2.76 4.00
HPE N 4.80 6.18 4.87 5.28 3.12 5.18 4.57 4.29
QuatNet N 3.97 5.62 3.92 4.50 2.94 5.49 4.01 4.15
WHENet-V N 4.44 5.75 4.31 4.83 3.60 4.10 2.73 3.48
WHENet Y/N 5.11 6.24 4.92 5.42 3.99 4.39 3.06 3.81
TriNet Y 4.04 5.77 4.20 4.67 4.11 4.76 3.05 3.97
FDN N 3.78 5.61 3.88 4.42 4.52 4.70 2.56 3.93
6DRepNet Y 3.63 4.91 3.37 3.97 3.24 4.48 2.68 3.47

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:

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/[email protected]

Camera Demo:

python demo.py  --snapshot 6DRepNet_300W_LP_AFLW2000.pth \
                --cam 0

Test/Train 3DRepNet

Preparing datasets

Download datasets:

  • 300W-LP, AFLW2000 from here.

  • BIWI (Biwi Kinect Head Pose Database) from here

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 ALFW2000 \
                --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 train.py --batch_size 64 \
                --num_epochs 30 \
                --lr 0.00001 \
                --dataset Pose_300W_LP \
                --data_dir datasets/300W_LP \
                --filename_list datasets/300W_LP/files.txt

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)

Citing

If you find our work useful, please cite the paper:

@misc{hempel20226d,
      title={6D Rotation Representation For Unconstrained Head Pose Estimation}, 
      author={Thorsten Hempel and Ahmed A. Abdelrahman and Ayoub Al-Hamadi},
      year={2022},
      eprint={2202.12555},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}
Owner
Thorsten Hempel
Computer Vision, Robotics
Thorsten Hempel
Cossim - Sharpened Cosine Distance implementation in PyTorch

Sharpened Cosine Distance PyTorch implementation of the Sharpened Cosine Distanc

Istvan Fehervari 10 Mar 22, 2022
[ICRA 2022] An opensource framework for cooperative detection. Official implementation for OPV2V.

OpenCOOD OpenCOOD is an Open COOperative Detection framework for autonomous driving. It is also the official implementation of the ICRA 2022 paper OPV

Runsheng Xu 322 Dec 23, 2022
PyTorch code for MART: Memory-Augmented Recurrent Transformer for Coherent Video Paragraph Captioning

MART: Memory-Augmented Recurrent Transformer for Coherent Video Paragraph Captioning PyTorch code for our ACL 2020 paper "MART: Memory-Augmented Recur

Jie Lei 雷杰 151 Jan 06, 2023
ARKitScenes - A Diverse Real-World Dataset for 3D Indoor Scene Understanding Using Mobile RGB-D Data

ARKitScenes This repo accompanies the research paper, ARKitScenes - A Diverse Real-World Dataset for 3D Indoor Scene Understanding Using Mobile RGB-D

Apple 371 Jan 05, 2023
FSL-Mate: A collection of resources for few-shot learning (FSL).

FSL-Mate is a collection of resources for few-shot learning (FSL). In particular, FSL-Mate currently contains FewShotPapers: a paper list which tracks

Yaqing Wang 1.5k Jan 08, 2023
Hyperparameters tuning and features selection are two common steps in every machine learning pipeline.

shap-hypetune A python package for simultaneous Hyperparameters Tuning and Features Selection for Gradient Boosting Models. Overview Hyperparameters t

Marco Cerliani 422 Jan 08, 2023
Re-implementation of the vector capsule with dynamic routing

VectorCapsule Re-implementation of the vector capsule with dynamic routing We implement the vector capsule and dynamic routing via graph neural networ

ZhenchaoTang 10 Feb 10, 2022
Convenient tool for speeding up the intern/officer review process.

icpc-app-screen Convenient tool for speeding up the intern/officer applicant review process. Eliminates the pain from reading application responses of

1 Oct 30, 2021
A script depending on VASP output for calculating Fermi-Softness.

Fermi softness calculation for Vienna Ab initio Simulation Package (VASP) Update 1.1.0: Big update: Rewrote the code. Use Bader atomic division instea

qslin 11 Nov 08, 2022
Reduce end to end training time from days to hours (or hours to minutes), and energy requirements/costs by an order of magnitude using coresets and data selection.

COResets and Data Subset selection Reduce end to end training time from days to hours (or hours to minutes), and energy requirements/costs by an order

decile-team 244 Jan 09, 2023
Can we learn gradients by Hamiltonian Neural Networks?

Can we learn gradients by Hamiltonian Neural Networks? This project was carried out as part of the Optimization for Machine Learning course (CS-439) a

2 Aug 22, 2022
A package to predict protein inter-residue geometries from sequence data

trRosetta This package is a part of trRosetta protein structure prediction protocol developed in: Improved protein structure prediction using predicte

Ivan Anishchenko 185 Jan 07, 2023
Spherical Confidence Learning for Face Recognition, accepted to CVPR2021.

Sphere Confidence Face (SCF) This repository contains the PyTorch implementation of Sphere Confidence Face (SCF) proposed in the CVPR2021 paper: Shen

Maths 70 Dec 09, 2022
An implementation of paper `Real-time Convolutional Neural Networks for Emotion and Gender Classification` with PaddlePaddle.

简介 通过PaddlePaddle框架复现了论文 Real-time Convolutional Neural Networks for Emotion and Gender Classification 中提出的两个模型,分别是SimpleCNN和MiniXception。利用 imdb_crop

8 Mar 11, 2022
50-days-of-Statistics-for-Data-Science - This repository consist of a 50-day program

50-days-of-Statistics-for-Data-Science - This repository consist of a 50-day program. All the statistics required for the complete understanding of data science will be uploaded in this repository.

komal_lamba 22 Dec 09, 2022
[cvpr22] Perturbed and Strict Mean Teachers for Semi-supervised Semantic Segmentation

PS-MT [cvpr22] Perturbed and Strict Mean Teachers for Semi-supervised Semantic Segmentation by Yuyuan Liu, Yu Tian, Yuanhong Chen, Fengbei Liu, Vasile

Yuyuan Liu 132 Jan 03, 2023
A Comparative Framework for Multimodal Recommender Systems

Cornac Cornac is a comparative framework for multimodal recommender systems. It focuses on making it convenient to work with models leveraging auxilia

Preferred.AI 671 Jan 03, 2023
Official PyTorch implementation of the paper Image-Based CLIP-Guided Essence Transfer.

TargetCLIP- official pytorch implementation of the paper Image-Based CLIP-Guided Essence Transfer This repository finds a global direction in StyleGAN

Hila Chefer 221 Dec 13, 2022
This repository is the official implementation of the Hybrid Self-Attention NEAT algorithm.

This repository is the official implementation of the Hybrid Self-Attention NEAT algorithm. It contains the code to reproduce the results presented in the original paper: https://arxiv.org/abs/2112.0

Saman Khamesian 6 Dec 13, 2022
Quantized models with python

quantized-network download .pth files to qmodels/: googlenet : https://download.

adreamxcj 2 Dec 28, 2021