Aerial robots are increasingly being utilized for environmental monitoring and exploration. However, a key challenge is efficiently planning paths to maximize the information value of acquired data as an initially unknown environment is explored. To address this, we propose a new approach for informative path planning based on deep reinforcement learning (RL). Combining recent advances in RL and robotic applications, our method combines tree search with an offline-learned neural network predicting informative sensing actions. We introduce several components making our approach applicable for robotic tasks with high-dimensional state and large action spaces. By deploying the trained network during a mission, our method enables sample-efficient online replanning on platforms with limited computational resources. Simulations show that our approach performs on par with existing methods while reducing runtime by 8-10x. We validate its performance using real-world surface temperature data.
@article{arxiv.2109.13570,
title = {Adaptive Informative Path Planning Using Deep Reinforcement Learning for UAV-based Active Sensing},
author = {Julius Rückin and Liren Jin and Marija Popović},
journal= {arXiv preprint arXiv:2109.13570},
year = {2022}
}
Comments
Accepted in IEEE International Conference on Robotics and Automation 2022