AdaptiveON: Adaptive Outdoor Local Navigation Method for Stable and Reliable Actions

Jing Liang, Kasun Weerakoon, Tianrui Guan, Nare Karapetyan, Dinesh Manocha

Published in IEEE Robotics and Automation Letters, 2023

Abstract

We present a novel outdoor navigation algorithm to generate stable and efficient actions to navigate a robot to reach a goal. We use a multi-stage training pipeline and show that our approach produces policies that result in stable and reliable robot navigation on complex terrains. Based on the Proximal Policy Optimization (PPO) algorithm, we developed a novel method to achieve multiple capabilities for outdoor navigation tasks, namely alleviating the robot's drifting, keeping the robot stable on bumpy terrains, avoiding climbing on hills with steep elevation changes, and avoiding collisions. Our training process mitigates the reality (sim-to-real) gap by introducing generalized environmental and robotic parameters and training with rich features of Lidar perception in a high-fidelity Unity simulator. We evaluate our method in both simulation and real world environments using Clearpath Husky and Jackal robots. Further, we compare our method against the state-of-the-art approaches and observe that, in the real world it improves stability by at least 30.7% on uneven terrains, reduces drifting by 8.08% and decreases the elevation changes by 14.75%.


The paper is available here. Please cite our work if you found it useful,

@ARTICLE{9991054,
  author={Liang, Jing and Weerakoon, Kasun and Guan, Tianrui and Karapetyan, Nare and Manocha, Dinesh},
  journal={IEEE Robotics and Automation Letters}, 
  title={AdaptiveON: Adaptive Outdoor Local Navigation Method for Stable and Reliable Actions}, 
  year={2023},
  volume={8},
  number={2},
  pages={648-655},
  doi={10.1109/LRA.2022.3229907}}