EgoNN: Egocentric Neural Network for Point Cloud Based 6DoF Relocalization at the City Scale

Overview

EgonNN: Egocentric Neural Network for Point Cloud Based 6DoF Relocalization at the City Scale

Paper: EgoNN: Egocentric Neural Network for Point Cloud Based 6DoF Relocalization at the City Scale submitted to IEEE Robotics and Automation Letters (RA-L) (ArXiv)

Jacek Komorowski, Monika Wysoczanska, Tomasz Trzcinski

Warsaw University of Technology

What's new

  • [2021-10-24] Evaluation code and pretrained models released.

Our other projects

  • MinkLoc3D: Point Cloud Based Large-Scale Place Recognition (WACV 2021): MinkLoc3D
  • MinkLoc++: Lidar and Monocular Image Fusion for Place Recognition (IJCNN 2021): MinkLoc++
  • Large-Scale Topological Radar Localization Using Learned Descriptors (ICONIP 2021): RadarLoc

Introduction

The paper presents a deep neural network-based method for global and local descriptors extraction from a point cloud acquired by a rotating 3D LiDAR sensor. The descriptors can be used for two-stage 6DoF relocalization. First, a course position is retrieved by finding candidates with the closest global descriptor in the database of geo-tagged point clouds. Then, 6DoF pose between a query point cloud and a database point cloud is estimated by matching local descriptors and using a robust estimator such as RANSAC. Our method has a simple, fully convolutional architecture and uses a sparse voxelized representation of the input point cloud. It can efficiently extract a global descriptor and a set of keypoints with their local descriptors from large point clouds with tens of thousand points.

Citation

If you find this work useful, please consider citing:

Environment and Dependencies

Code was tested using Python 3.8 with PyTorch 1.9.1 and MinkowskiEngine 0.5.4 on Ubuntu 20.04 with CUDA 10.2. Note: CUDA 11.1 is not recommended as there are some issues with MinkowskiEngine 0.5.4 on CUDA 11.1.

The following Python packages are required:

  • PyTorch (version 1.9.1)
  • MinkowskiEngine (version 0.5.4)
  • pytorch_metric_learning (version 0.9.99 or above)
  • wandb

Modify the PYTHONPATH environment variable to include absolute path to the project root folder:

export PYTHONPATH=$PYTHONPATH:/home/.../Egonn

Datasets

EgoNN is trained and evaluated using the following datasets:

  • MulRan dataset: Sejong traversal is used. The traversal is split into training and evaluation part link
  • Apollo-SouthBay dataset: SunnyvaleBigLoop trajectory is used for evaluation, other 5 trajectories (BaylandsToSeafood, ColumbiaPark, Highway237, MathildaAVE, SanJoseDowntown) are used for training link
  • Kitti dataset: Sequence 00 is used for evaluation link

First, you need to download datasets:

  • For MulRan dataset you need to download ground truth data (*.csv) and LiDAR point clouds (Ouster.zip) for traversals: Sejong01 and Sejong02 (link).
  • Download Apollo-SouthBay dataset using the download link on the dataset website (link).
  • Download Kitti odometry dataset (calibration files, ground truth poses, Velodyne laser data) (link).

After loading datasets you need to generate training pickles for the network training and evaluation pickles for model evaluation.

Training pickles generation

Generating training tuples is very time consuming, as ICP is used to refine the ground truth poses between each pair of neighbourhood point clouds.

cd datasets/mulran
python generate_training_tuples.py --dataset_root <mulran_dataset_root_path>

cd ../southbay
python generate_training_tuples.py --dataset_root <apollo_southbay_dataset_root_path>
Evaluation pickles generation
cd datasets/mulran
python generate_evaluation_sets.py --dataset_root <mulran_dataset_root_path>

cd ../southbay
python generate_evaluation_sets.py --dataset_root <apollo_southbay_dataset_root_path>

cd ../kitti
python generate_evaluation_sets.py --dataset_root <kitti_dataset_root_path>

Training (training code will be released after the paper acceptance)

First, download datasets and generate training and evaluation pickles as described above. Edit the configuration file config_egonn.txt. Set dataset_folder parameter to point to the dataset root folder. Modify batch_size_limit and secondary_batch_size_limit parameters depending on available GPU memory. Default limits requires at least 11GB of GPU RAM.

To train the EgoNN model, run:

cd training

python train.py --config ../config/config_egonn.txt --model_config ../models/egonn.txt 

Pre-trained Model

EgoNN model trained (on training splits of MulRan and Apollo-SouthBay datasets) is available in weights/model_egonn_20210916_1104.pth folder.

Evaluation

To evaluate a pretrained model run below commands. Ground truth poses between different traversals in all three datasets are slightly misaligned. To reproduce results from the paper, use --icp_refine option to refine ground truth poses using ICP.

cd eval

# To evaluate on test split of Mulran dataset
python evaluate.py --dataset_root <dataset_root_path> --dataset_type mulran --eval_set test_Sejong01_Sejong02.pickle --model_config ../models/egonn.txt --weights ../weights/model_egonn_20210916_1104.pth --icp_refine

# To evaluate on test split of Apollo-SouthBay dataset
python evaluate.py --dataset_root <dataset_root_path> --dataset_type southbay --eval_set test_SunnyvaleBigloop_1.0_5.pickle --model_config ../models/egonn.txt --weights ../weights/model_egonn_20210916_1104.pth --icp_refine

# To evaluate on test split of KITTI dataset
python evaluate.py --dataset_root <dataset_root_path> --dataset_type kitti --eval_set kitti_00_eval.pickle --model_config ../models/egonn.txt --weights ../weights/model_egonn_20210916_1104.pth --icp_refine

Results

EgoNN performance...

Visualizations

Visualizations of our keypoint detector results. On the left, we show 128 keypoints with the lowest saliency uncertainty (red dots). On the right, 128 keypoints with the highest uncertainty (yellow dots).

Successful registration of point cloud pairs from KITTI dataset gathered during revisiting the same place from different directions. On the left we show keypoint correspondences (RANSAC inliers) found during 6DoF pose estimation with RANSAC. On the right we show point clouds aligned using estimated poses.

License

Our code is released under the MIT License (see LICENSE file for details).

Flexible Networks for Learning Physical Dynamics of Deformable Objects (2021)

Flexible Networks for Learning Physical Dynamics of Deformable Objects (2021) By Jinhyung Park, Dohae Lee, In-Kwon Lee from Yonsei University (Seoul,

Jinhyung Park 0 Jan 09, 2022
The code for Expectation-Maximization Attention Networks for Semantic Segmentation (ICCV'2019 Oral)

EMANet News The bug in loading the pretrained model is now fixed. I have updated the .pth. To use it, download it again. EMANet-101 gets 80.99 on the

Xia Li 李夏 663 Nov 30, 2022
Benchmarks for Model-Based Optimization

Design-Bench Design-Bench is a benchmarking framework for solving automatic design problems that involve choosing an input that maximizes a black-box

Brandon Trabucco 43 Dec 20, 2022
Gradient Inversion with Generative Image Prior

Gradient Inversion with Generative Image Prior This repository is an implementation of "Gradient Inversion with Generative Image Prior", accepted to N

MLLab @ Postech 25 Jan 09, 2023
PyTorch implementations of neural network models for keyword spotting

Honk: CNNs for Keyword Spotting Honk is a PyTorch reimplementation of Google's TensorFlow convolutional neural networks for keyword spotting, which ac

Castorini 475 Dec 15, 2022
Mahadi-Now - This Is Pakistani Just Now Login Tools

PAKISTANI JUST NOW LOGIN TOOLS Install apt update apt upgrade apt install python

MAHADI HASAN AFRIDI 19 Apr 06, 2022
Neuron class provides LNU (Linear Neural Unit), QNU (Quadratic Neural Unit), RBF (Radial Basis Function), MLP (Multi Layer Perceptron), MLP-ELM (Multi Layer Perceptron - Extreme Learning Machine) neurons learned with Gradient descent or LeLevenberg–Marquardt algorithm

Neuron class provides LNU (Linear Neural Unit), QNU (Quadratic Neural Unit), RBF (Radial Basis Function), MLP (Multi Layer Perceptron), MLP-ELM (Multi Layer Perceptron - Extreme Learning Machine) neu

Filip Molcik 38 Dec 17, 2022
AI Face Mesh: This is a simple face mesh detection program based on Artificial intelligence.

AI Face Mesh: This is a simple face mesh detection program based on Artificial Intelligence which made with Python. It's able to detect 468 different

Md. Rakibul Islam 1 Jan 13, 2022
A Tensorflow based library for Time Series Modelling with Gaussian Processes

Markovflow Documentation | Tutorials | API reference | Slack What does Markovflow do? Markovflow is a Python library for time-series analysis via prob

Secondmind Labs 24 Dec 12, 2022
Tools for manipulating UVs in the Blender viewport.

UV Tool Suite for Blender A set of tools to make editing UVs easier in Blender. These tools can be accessed wither through the Kitfox - UV panel on th

35 Oct 29, 2022
Open source implementation of "A Self-Supervised Descriptor for Image Copy Detection" (SSCD).

A Self-Supervised Descriptor for Image Copy Detection (SSCD) This is the open-source codebase for "A Self-Supervised Descriptor for Image Copy Detecti

Meta Research 68 Jan 04, 2023
Domain Adaptation with Invariant RepresentationLearning: What Transformations to Learn?

Domain Adaptation with Invariant RepresentationLearning: What Transformations to Learn? Repository Structure: DSAN |└───amazon |    └── dataset (Amazo

DMIRLAB 17 Jan 04, 2023
object recognition with machine learning on Respberry pi

Respberrypi_object-recognition object recognition with machine learning on Respberry pi line.py 建立一支與樹梅派連線的 linebot 使用此 linebot 遠端控制樹梅派拍照 config.ini l

1 Dec 11, 2021
Implementation of Invariant Point Attention, used for coordinate refinement in the structure module of Alphafold2, as a standalone Pytorch module

Invariant Point Attention - Pytorch Implementation of Invariant Point Attention as a standalone module, which was used in the structure module of Alph

Phil Wang 113 Jan 05, 2023
A PyTorch-Based Framework for Deep Learning in Computer Vision

TorchCV: A PyTorch-Based Framework for Deep Learning in Computer Vision @misc{you2019torchcv, author = {Ansheng You and Xiangtai Li and Zhen Zhu a

Donny You 2.2k Jan 09, 2023
ChatBot-Pytorch - A GPT-2 ChatBot implemented using Pytorch and Huggingface-transformers

ChatBot-Pytorch A GPT-2 ChatBot implemented using Pytorch and Huggingface-transf

ParZival 42 Dec 09, 2022
Pytorch Lightning code guideline for conferences

Deep learning project seed Use this seed to start new deep learning / ML projects. Built in setup.py Built in requirements Examples with MNIST Badges

Pytorch Lightning 1k Jan 02, 2023
Official implementation of NeuralFusion: Online Depth Map Fusion in Latent Space

NeuralFusion This is the official implementation of NeuralFusion: Online Depth Map Fusion in Latent Space. We provide code to train the proposed pipel

53 Jan 01, 2023
Pose Transformers: Human Motion Prediction with Non-Autoregressive Transformers

Pose Transformers: Human Motion Prediction with Non-Autoregressive Transformers This is the repo used for human motion prediction with non-autoregress

Idiap Research Institute 26 Dec 14, 2022
Torch implementation of SegNet and deconvolutional network

Torch implementation of SegNet and deconvolutional network

Fedor Chervinskii 5 Jul 17, 2020