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Uncertainty-Aware Lidar Place Recognition in Novel Environments

This repository contains the code implementation used in the paper Uncertainty-Aware Lidar Place Recognition in Novel Environments (accepted at IROS2023) [arXiv].

Overview

Abstract

State-of-the-art lidar place recognition models exhibit unreliable performance when tested on environments different from their training dataset, which limits their use in complex and evolving environments. To address this issue, we investigate the task of uncertainty-aware lidar place recognition, where each predicted place must have an associated uncertainty that can be used to identify and reject incorrect predictions. We introduce a novel evaluation protocol and present the first comprehensive benchmark for this task, testing across five uncertainty estimation techniques and three large-scale datasets. Our results show that an Ensembles approach is the highest performing technique, consistently improving the performance of lidar place recognition and uncertainty estimation in novel environments, though it incurs a computational cost. Our code repository will be made publicly available upon acceptance at https://github.com/csiro-robotics/Uncertainty-LPR.

Contributions

This repository allows replication of results in the following:

  • Training one standard network and four uncertainty-aware networks (PFE, STUN, MC Dropout and Deep Ensembles) for lidar place recognition (LPR) using MinkLoc3D across 3 environments.
  • Evaluating these methods across 6 environments (1 seen and 5 novel) for a total train-eval split of 18, using a range of metrics to quantify place recognition ability and uncertainty estimation.
  • Ablation: How does the Ensemble size influence performance?
  • Ablation: In addition to MinkLoc3D, training TransLoc3D and PointNetVLAD as standard networks and evaluating as Ensembles.

Environment

Dependencies

Code was tested using Python 3.8 with PyTorch 1.9.0 and MinkowskiEngine 0.5.4 on Ubuntu 20.04 with CUDA 11.1.

The following Python packages are required:

  • PyTorch (version 1.9.0)
  • MinkowskiEngine (version 0.5.4)
  • pytorch_metric_learning (version 1.0 or above)
  • torchpack
  • tensorboard
  • pandas

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

export PYTHONPATH=$PYTHONPATH:/.../.../MinkLoc3D

Datasets

The Oxford RobotCar and NUS Inhouse datasets were introduced in PointNetVLAD: Deep Point Cloud Based Retrieval for Large-Scale Place Recognition. Oxford RobotCar was trained on point clouds collected through Oxford, U.K. NUS Inhouse consists of traversals from three different regions in Singapore - a university sector (U.S.), a residential area (R.A.) and a business district (B.D.). For the purposes of evaluating performance in novel environments, the Oxford RobotCar baseline dataset is utilised as one of the 3 training datasets, and NUS Inhouse's 3 regions are unseen in training and utilised as 3 evaluation datasets. The refined dataset trained on Oxford and Inhouse are not used in this work.

You can download training and evaluation datasets from here (alternative link).

Pickles were created following the split of the original and are available under pickles/, but can be modified and generated using generating_queries/generate_training_tuples_baseline.py and generating_queries/generate_test_sets.py.

The MulRan datasets consist of 3 traversals each of 4 different environments in South Korea - Daejeon Convention Center (DCC), the Riverside of Daejeon city, the Korea Advanced Institute of Science and Technology (KAIST) and Sejong city (Sejong). More details can be found in MulRan: Multimodal Range Dataset for Urban Place Recognition.

Similarly to InCloud, we modify the datasets by removing the ground plane, normalizing point co-ordinates between -1 and 1 and downsampling to 4096 points to mimic the pre-processing of the Oxford RobotCar and NUS Inhouse datasets. These pre-processed datasets for DCC (MulRan) and Riverside (MulRan) are available [here].

This paper trains on DCC traversals 1 and 2 and Riverside traversals 1 and 3. At evaluation, we use DCC traversal 3 and Riverside traversal 2. These pickles are available under pickles/, but can be modified and generated using generating_queries/MulRan/tuples_mulran_singleton.py and generating_queries/MulRan/test_sets_mulran.py.

After downloading datasets, please save folders oxford, inhouse_datasets and MulRan directly under data/.

Getting Started

Preprocessing

To run any bash file, please making the change to config/default.yaml:

  1. Line 5: Replace with data/ directory containing all three subfolders of datasets.

A variety of scripts have been provided for training and eval under scripts/. The following changes should be made to each of these:

  1. Line 10: Change path to your conda installation
  2. Line 11: Replace environment name with your conda environment
  3. Line 15: Replace with your Uncertainty-LPR root directory

The batch_size and batch_size_limit may need to be changed to account for available GPU memory, and can be modified directly in the bash files under scripts/. Other changes to the network architecture can be changed via the configuration files under config/eval_datasets/ or directly in the bash scripts as input arguments. See config/default.yaml for adjustable parameters.

Note: Pretrained models must be downloaded first from Gdrive and file weights is unzipped in the main folder before proceeding with the next steps. For convenience generated pickles are provided as well. You can unzip file pickles in the main folder for use.

Training

To train a standard network across a variety of configurations:

# bash scripts/train.sh <minkloc,pvlad,transloc> <oxford,dcc,riverside> <model number>
bash scripts/train.sh minkloc oxford 1

To train the uncertainty-aware methods across 3 environments:

# To train a PFE network 
# bash scripts/pfe_stun_dropout/train_pfe.sh <oxford,dcc,riverside> 
bash scripts/pfe_stun_dropout/train_pfe.sh oxford

# To train a STUN network
# bash scripts/pfe_stun_dropout/train_stun.sh <oxford,dcc,riverside> 
bash scripts/pfe_stun_dropout/train_stun.sh oxford

# To train a Dropout network
# bash scripts/pfe_stun_dropout/train_dropout.sh <oxford,dcc,riverside> 
bash scripts/pfe_stun_dropout/train_dropout.sh oxford

An Ensemble is created at evaluation time, so please train 5 standard networks across any architecture and dataset numbered 1-5.

Evaluation

To evaluate a standard model across 6 environments:

# bash scripts/eval.sh <minkloc,pvlad,transloc> <oxford,dcc,riverside> <model number>
bash scripts/eval.sh minkloc oxford 1

To evaluate the uncertainty-aware methods across 6 environments:

# To evaluate a PFE network 
# bash scripts/pfe_stun_dropout/eval_pfe.sh <oxford,dcc,riverside> 
bash scripts/pfe_stun_dropout/eval_pfe.sh oxford

# To evaluate a STUN network 
# bash scripts/pfe_stun_dropout/eval_stun.sh <oxford,dcc,riverside> 
bash scripts/pfe_stun_dropout/eval_stun.sh oxford

# To evaluate a Dropout network 
# bash scripts/pfe_stun_dropout/eval_dropout.sh <oxford,dcc,riverside> 
bash scripts/pfe_stun_dropout/eval_dropout.sh oxford

# To evaluate an Ensemble of 5 models, with standard networks numbered 1-5 in the same configuration trained and saved under weights/batch_jobs/
# bash scripts/eval_ensemble.sh <minkloc,pvlad,transloc> <oxford,dcc,riverside>
bash scripts/eval_ensemble.sh minkloc oxford

# To evaluation an Ensemble of M models, with standard networks numbered 1-M in the same configuration trained and saved under weights/batch_jobs/
# bash scripts/ablation/eval_ensemble_ablation.sh <minkloc,pvlad,transloc> <oxford,dcc,riverside> <M>
bash scripts/ablation/eval_ensemble_ablation.sh minkloc oxford 10

Pretrained Models

Pretrained models can be downloaded from from the Gdrive link provided above and should be placed under weights/. Standard, PFE, STUN and Dropout models can be evaluated as is, but to evaluate an Ensemble 5 standard models must be trained and saved under weights/batch_jobs as per the instructions above.

Architecture Method Trained on
MinkLoc3D Standard Oxford RobotCar
DCC (MulRan)
Riverside (MulRan)
PFE Oxford RobotCar
DCC (MulRan)
Riverside (MulRan)
STUN Oxford RobotCar
DCC (MulRan)
Riverside (MulRan)
Dropout Oxford RobotCar
DCC (MulRan)
Riverside (MulRan)
TransLoc3D Standard Oxford RobotCar
DCC (MulRan)
Riverside (MulRan)
PointNetVLAD Standard Oxford RobotCar
DCC (MulRan)
Riverside (MulRan)

Results are outlined in the paper Uncertainty-Aware Lidar Place Recognition in Novel Environments.

Updates

  • [2023] Intial Commit

Citation

If you find this work useful, please consider citing:

@INPROCEEDINGS{2023uncertaintylidar,
  title={Uncertainty-Aware Lidar Place Recognition in Novel Environments},
  author={Mason, Keita and Knights, Joshua and Ramezani, Milad and Moghadam, Peyman and Miller, Dimity},
  booktitle={?},
  year={2023},
  eprint={arXiv preprint arXiv:2210.01361}}

Acknowledgements

We would like to thank the authors of MinkLoc3D and InCloud for their codebases which have been used as starting points for this repository. We would also like to thank the authors of PointNetVlad and TransLoc3D for their implementations of point cloud place recognition, and the authors of PFE and STUN for their implementations of uncertainty estimation.

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📣 [IEEE IROS 2023] Official Repository of IROS 23 paper "Uncertainty-Aware Lidar Place Recognition in Novel Environments"

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