Liren Jin1, Julius Rückin1, Stefan H. Kiss2, Teresa Vidal-Calleja2, Marija Popovic1
1 University of Bonn, 2 University of Technology Sydney
This repository contains the implementation of our paper "Adaptive-Resolution Field Mapping Using Gaussian Process Fusion with Integral Kernels" accepted by RA-L + IROS2022.
git clone [email protected]:dmar-bonn/argpf_mapping.git
cd argpf_mapping
conda env create -f environment.yaml
conda activate argpf_mapping
for running mapping experiments:
python main.py -E mapping
for planning experiments:
python main.py -E planning --record_metrics
the configuration files for experimental setup can be found in config folder. Note that the slow running time is due to analysing experiment data. If the data analysis is not needed, use --test_run in commandline. For planning experiment, we record metrics after each map update to get the metrics development over mission time, which is pretty slow. You can omit record_metrics in commandline to avoid this.
Liren Jin, [email protected]
@ARTICLE{9797797,
author={Jin, Liren and Rückin, Julius and Kiss, Stefan H. and Vidal-Calleja, Teresa and Popović, Marija},
journal={IEEE Robotics and Automation Letters},
title={Adaptive-Resolution Field Mapping Using Gaussian Process Fusion With Integral Kernels},
year={2022},
volume={7},
number={3},
pages={7471-7478},
doi={10.1109/LRA.2022.3183797}}
This work has been fully funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany’s Excellence Strategy, EXC-2070 – 390732324 (PhenoRob)