This repository contains the code associated to our ICRA 2024 paper : A Probabilistic Motion Model for Skid-Steer Wheeled Mobile Robot Navigation on Off-Road Terrains.
Paper : https://arxiv.org/pdf/2402.18065.pdf
Video : https://www.youtube.com/watch?v=_rVy2aBp42c
We train Gaussian Process Regression models to predict future robot linear and angular velocity states for different terrains. The outputs of multiple models are then fused online using a convex optimization formulation allowing the motion model to generalize to different/unseen terrain conditions. The resultant mean and covariance estimates of the robot states can be used for Risk-Aware Motion Planning approaches such as Stochastic Model Predictive Control.
Begin by cloning this repository and setting up a Python virtual environment.
git clone git@github.com:RIVeR-Lab/multiterrain-gp-model.git
python3 -m venv venv
source venv/bin/activate
pip3 install -r requirments.txt
In order to evaluate and benchmark our proposed modeling method, we used the off-road navigation dataset released as a part of this paper. Begin by cloning this repository and downloading the dataset as follows. If you have troubles setting up the dataset as suggested above, you can manually download it from this link.
sudo apt-get install unzip
gdown 10YAQsaLhTnNbBER5beItwMlTBYkLmqTC
unzip -qq data.zip
rm -rf data.zip
The training of the GP/Benchmark kinematic models and their subsequent inference on a test dataset has been assembled into a single script shown below. The plots and tables in the paper were generated via running the individual components of this script.
python3 src/probabilistic_dynamics.py
If you find this code useful, please consider citing
@inproceedings{trivedi2024probabilistic,
title={A probabilistic motion model for skid-steer wheeled mobile robot navigation on off-road terrains},
author={Trivedi, Ananya and Zolotas, Mark and Abbas, Adeeb and Prajapati, Sarvesh and Bazzi, Salah and Pad{\i}r, Ta{\c{s}}kin},
booktitle={2024 IEEE International Conference on Robotics and Automation (ICRA)},
pages={12599--12605},
year={2024},
organization={IEEE}
}