Skip to content

[CVPR 2023] Robust Multiview Point Cloud Registration with Reliable Pose Graph Initialization and History Reweighting

Notifications You must be signed in to change notification settings

WHU-USI3DV/SGHR

Repository files navigation

😍 SGHR

CVPR 2023

Haiping Wang*,1, Yuan Liu*,2, Zhen Dong†,1, Yulan Guo3, Yu-Shen Liu4, Wenping Wang5 Bisheng Yang†,1

1Wuhan University    2The University of Hong Kong    3Sun Yat-sen University   
4Tsinghua University    5Texas A&M University   
*The first two authors contribute equally.    Corresponding authors.   

In this paper, we present a new method for the multiview registration of point cloud. Previous multiview registration methods rely on exhaustive pairwise registration to construct a densely-connected pose graph and apply Iteratively Reweighted Least Square (IRLS) on the pose graph to compute the scan poses. However, constructing a densely-connected graph is time-consuming and contains lots of outlier edges, which makes the subsequent IRLS struggle to find correct poses. To address the above problems, we first propose to use a neural network to estimate the overlap between scan pairs, which enables us to construct a sparse but reliable pose graph. Then, we design a novel history reweighting function in the IRLS scheme, which has strong robustness to outlier edges on the graph. In comparison with existing multiview registration methods, our method achieves $11$% higher registration recall on the 3DMatch dataset and $\sim13$% lower registration errors on the ScanNet dataset while reducing $\sim70$% required pairwise registrations. Comprehensive ablation studies are conducted to demonstrate the effectiveness of our designs.

| Paper | Poster | Video |

🆕 News

  • 2024-04-13: Online demo file, use SGHR in the EASIEST way! Just follow here.
  • 2023-05-13: An introduction video of SGHR on YouTube.
  • 2023-04-04: Release SGHR on Arxiv.
  • 2023-04-01: The code of SGHR is released.
  • 2023-02-28: SGHR is accepted by CVPR 2023! 🎉🎉

✨ Pipeline

Network

💻 Requirements

Here we offer the YOHO backbone SGHR. Thus YOHO requirements need to be met:

  • Ubuntu 14.04 or higher
  • CUDA 11.1 or higher
  • Python v3.7 or higher
  • Pytorch v1.6 or higher

Specifically, The code has been tested with:

  • Ubuntu 16.04, CUDA 11.1, python 3.7.10, Pytorch 1.7.1, GeForce RTX 2080Ti.
  • Ubuntu 20.04, CUDA 11.1, python 3.7.16, Pytorch 1.10.0, GeForce RTX 4090.

🔧 Installation

  • First, create the conda environment:

    conda create -n sghr python=3.7
    conda activate sghr
    
  • Second, intall Pytorch. We have checked version 1.7.1 and other versions can be referred to Official Set.

    conda install pytorch==1.7.1 torchvision==0.8.2 torchaudio==0.7.2 cudatoolkit=11.0 -c pytorch
    
  • Third, install other packages, here we use 0.8.0.0 version Open3d for Ubuntu 16.04:

    pip install -r requirements.txt
    
  • Optional. If you want to use SGHR on your own dataset or run the demo.py, you should install MinkowskiEngine for FCGF/YOHO:

    conda install openblas-devel -c anaconda
    git clone https://github.com/NVIDIA/MinkowskiEngine.git
    cd MinkowskiEngine
    python setup.py install --blas_include_dirs=${CONDA_PREFIX}/include --blas=openblas
    

💾 Dataset & Pretrained model

The datasets are accessible in BaiduDesk(Code:oouk) and Google Cloud:

Trainset:

Testset:

Datasets above contain the point clouds (.ply), keypoints (.txt, 5000 per point cloud), and rotation-invariant yoho-desc(.npy, extracted on the keypoints) files. Please place the data to ./data following the example data structure as:

data/
├── 3dmatch/
    └── kitchen/
        ├── PointCloud/
            ├── cloud_bin_0.ply
            ├── gt.log
            └── gt.info
        ├── yoho_desc/
            └── 0.npy
        └── Keypoints/
            └── cloud_bin_0Keypoints.txt
├── 3dmatch_train/
├── scannet/
└── ETH/

🚅 Train

You can train SGHR with the 3dmatch_train dataset downloaded above, where we offer the 32-dim rotation-invariant yoho-desc we extracted on 3dmatch_train and you can also extract 32-dim invariant yoho-desc(row-pooling on yoho-desc) yourself and save the features to '''data/3dmatch_train/<scene>/yoho_desc'''. Then, you can train SGHR with the following commond:

python Train.py

✏️ Use SGHR in the easiest way!

Use SGHR is quite simple, prepare your point cloud files and no other effort needed! Follow here.

✏️ Test

Try SGHR on the demo files by:

python demo.py --pcdir data/demo

To evalute SGHR on 3DMatch and 3DLoMatch, you can use the following commands:

# extract global features
python Test.py --dataset 3dmatch
# conduct multiview registration
python Test_cycle.py --dataset 3dmatch --rr
# visualize the registration results
python visual.py --dataset 3dmatch

To evalute SGHR on ScanNet, you can use the following commands:

python Test.py --dataset scannet
python Test_cycle.py --dataset scannet --ecdf

To evalute SGHR on ETH, you can use the following commands:

python Test.py --dataset ETH
python Test_cycle.py --dataset ETH --topk 6 --inlierd 0.2 --tau_2 0.5 --rr

💡 Citation

Please consider citing SGHR if this program benefits your project

@inproceedings{
wang2023robust,
title={Robust Multiview Point Cloud Registration with Reliable Pose Graph Initialization and History Reweighting},
author={Haiping Wang and Yuan Liu and Zhen Dong and Yulan Guo and Yu-Shen Liu and Wenping Wang and Bisheng Yang},
booktitle={Conference on Computer Vision and Pattern Recognition},
year={2023}
}

🔗 Related Projects

Take a look at our previous works on feature extraction and pairwise registration!

About

[CVPR 2023] Robust Multiview Point Cloud Registration with Reliable Pose Graph Initialization and History Reweighting

Topics

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages