Benchmark tools for Compressive LiDAR-to-map registration

Overview

Benchmark tools for Compressive LiDAR-to-map registration

This repo contains the released version of code and datasets used for our IROS 2021 paper: "Map Compressibility Assessment for LiDAR Registration [link]. If you find the code useful for your work, please cite:

@inproceedings{Chang21iros,
   author = {M.-F. Chang and W. Dong and J.G. Mangelson and M. Kaess and S. Lucey},
   title = {Map Compressibility Assessment for {LiDAR} Registration},
   booktitle = {Proc. IEEE/RSJ Intl. Conf. on Intelligent Robots andSystems, IROS},
   address = {Prague, Czech Republic},
   month = sep,
   year = {2021}
}

Environment Setup

The released codebase supports following methods:

  1. Point-to-point ICP (from open3d)
  2. Point-to-plane ICP (from open3d)
  3. FPFH (with RANSAC from open3d or Teaser++)
  4. FCGF (with RANSAC from open3d or Teaser++)
  5. D3Feat (with RANSAC from open3d or Teaser++)

To run Teaser++, please also install from https://github.com/MIT-SPARK/TEASER-plusplus (python bindings required). One can build install the environment with the following conda command:

conda create --name=benchmark  python=3.6  numpy open3d=0.12  tqdm pytorch cpuonly -c pytorch -c open3d-admin -c conda-forge 
conda activate benchmark
pip install pillow==6.0 #for visualization

Datasets

The preprocessed data can be downloaded from [link]. The following data were provided:

  1. Preprocessed KITTI scan/local map pairs
  2. Preprocessed Argoverse Tracking scan/local map pairs
  3. FCGF and D3Feat features
  4. The ground truth poses

We haved preprocessed the results from FCGF and D3Feat into pickle files. The dataset is organized as source-target pairs. The source is the input LiDAR scan and the target is the cropped local map with initial LiDAR pose.

By default, we put the data in ./data folder. Please download the corresponding files from [link] and put/symlink it in ./data. The file structure is as follows:

./data
   ├─ data_Argoverse_Tracking
   │    ├─ test_dict_maps.pickle
   │    ├─ test_list_T_gt.pickle
   │    └─ test_samples.pickle
   │ 
   ├─ data_KITTI
   │    ├─ test_dict_maps.pickle
   │    ├─ test_list_T_gt.pickle
   │    └─ test_samples.pickle
   │ 
   ├─ deep
   │    ├─ d3feat.results.pkl.Argoverse_Tracking
   │    ├─ d3feat.results.pkl.KITTI
   │    ├─ fcgf.results.pkl.Argoverse_Tracking
   │    └─ fcgf.results.pkl.KITTI
----

Usage

To run the code, simply use the following command and specify the config file name.:

python3 run_eval.py --path_cfg=configs.config

For trying out existing methods, first edit config.py to config the method list, the dataset name, and the local dataset path.

For trying out new methods, please add the registration function to tester.py and add the method configuration to method.py and the parameters to method.json.

To visualize the resulting recall curves, please run

python3 make_recall_figure_threshold.py --path_cfg=configs.config

It will generate the recall plot and error density plot in ./output_eval_{dataset_name}. Here is an expected outout:

Acknowledgement

This work was supported by the CMU Argo AI Center for Autonomous Vehicle Research. We also thank our labmates for the valuable suggestions to improve this paper.

References

  1. Teaser++
  2. Open3d
  3. KITTI Odometry Dataset
  4. Argoverse 3D Tracking 1.1
  5. FCGF
  6. D3Feat
Owner
Allie
PhD student in Robotics Institute of Carnegie Mellon University
Allie
(CVPR 2022) A minimalistic mapless end-to-end stack for joint perception, prediction, planning and control for self driving.

LAV Learning from All Vehicles Dian Chen, Philipp Krähenbühl CVPR 2022 (also arXiV 2203.11934) This repo contains code for paper Learning from all veh

Dian Chen 300 Dec 15, 2022
Source code for the plant extraction workflow introduced in the paper “Agricultural Plant Cataloging and Establishment of a Data Framework from UAV-based Crop Images by Computer Vision”

Plant extraction workflow Source code for the plant extraction workflow introduced in the paper "Agricultural Plant Cataloging and Establishment of a

Maurice Günder 0 Apr 22, 2022
A knowledge base construction engine for richly formatted data

Fonduer is a Python package and framework for building knowledge base construction (KBC) applications from richly formatted data. Note that Fonduer is

HazyResearch 386 Dec 05, 2022
Materials for upcoming beginner-friendly PyTorch course (work in progress).

Learn PyTorch for Deep Learning (work in progress) I'd like to learn PyTorch. So I'm going to use this repo to: Add what I've learned. Teach others in

Daniel Bourke 2.3k Dec 29, 2022
A collection of easy-to-use, ready-to-use, interesting deep neural network models

Interesting and reproducible research works should be conserved. This repository wraps a collection of deep neural network models into a simple and un

Aria Ghora Prabono 16 Jun 16, 2022
Faster RCNN pytorch windows

Faster-RCNN-pytorch-windows Faster RCNN implementation with pytorch for windows Open cmd, compile this comands: cd lib python setup.py build develop T

Hwa-Rang Kim 1 Nov 11, 2022
A pytorch implementation of Pytorch-Sketch-RNN

Pytorch-Sketch-RNN A pytorch implementation of https://arxiv.org/abs/1704.03477 In order to draw other things than cats, you will find more drawing da

Alexis David Jacq 172 Dec 12, 2022
A large dataset of 100k Google Satellite and matching Map images, resembling pix2pix's Google Maps dataset.

Larger Google Sat2Map dataset This dataset extends the aerial ⟷ Maps dataset used in pix2pix (Isola et al., CVPR17). The provide script download_sat2m

34 Dec 28, 2022
Incorporating Transformer and LSTM to Kalman Filter with EM algorithm

Deep learning based state estimation: incorporating Transformer and LSTM to Kalman Filter with EM algorithm Overview Kalman Filter requires the true p

zshicode 57 Dec 27, 2022
PyTorch implementation of "A Two-Stage End-to-End System for Speech-in-Noise Hearing Aid Processing"

Implementation of the Sheffield entry for the first Clarity enhancement challenge (CEC1) This repository contains the PyTorch implementation of "A Two

10 Aug 19, 2022
StyleTransfer - Open source style transfer project, based on VGG19

StyleTransfer - Open source style transfer project, based on VGG19

Patrick martins de lima 9 Dec 13, 2021
A light weight data augmentation tool for training CNNs and Viola Jones detectors

hey-daug A light weight data augmentation tool for training CNNs and Viola Jones detectors (Haar Cascades). This tool inflates your data by up to six

Jaiyam Sharma 2 Nov 23, 2019
Implementation of Kaneko et al.'s MaskCycleGAN-VC model for non-parallel voice conversion.

MaskCycleGAN-VC Unofficial PyTorch implementation of Kaneko et al.'s MaskCycleGAN-VC (2021) for non-parallel voice conversion. MaskCycleGAN-VC is the

86 Dec 25, 2022
This repo is customed for VisDrone.

Object Detection for VisDrone(无人机航拍图像目标检测) My environment 1、Windows10 (Linux available) 2、tensorflow = 1.12.0 3、python3.6 (anaconda) 4、cv2 5、ensemble

53 Jul 17, 2022
A library for finding knowledge neurons in pretrained transformer models.

knowledge-neurons An open source repository replicating the 2021 paper Knowledge Neurons in Pretrained Transformers by Dai et al., and extending the t

EleutherAI 96 Dec 21, 2022
PyTorch framework for Deep Learning research and development.

Accelerated DL & RL PyTorch framework for Deep Learning research and development. It was developed with a focus on reproducibility, fast experimentati

Catalyst-Team 29 Jul 13, 2022
Learning from graph data using Keras

Steps to run = Download the cora dataset from this link : https://linqs.soe.ucsc.edu/data unzip the files in the folder input/cora cd code python eda

Mansar Youness 64 Nov 16, 2022
Efficient training of deep recommenders on cloud.

HybridBackend Introduction HybridBackend is a training framework for deep recommenders which bridges the gap between evolving cloud infrastructure and

Alibaba 111 Dec 23, 2022
This tutorial repository is to introduce the functionality of KGTK to first-time users

Welcome to the KGTK notebook tutorial The goal of this tutorial repository is to introduce the functionality of KGTK to first-time users. The Knowledg

USC ISI I2 58 Dec 21, 2022
Civsim is a basic civilisation simulation and modelling system built in Python 3.8.

Civsim Introduction Civsim is a basic civilisation simulation and modelling system built in Python 3.8. It requires the following packages: perlin_noi

17 Aug 08, 2022