Swarm-LIO: Decentralized Swarm LiDAR-inertial Odometry

Abstract

Accurate self and relative state estimation are the critical preconditions for completing swarm tasks, e.g., collaborative autonomous exploration, target tracking, search and rescue. This paper proposes Swarm-LIO: a fully decentralized state estimation method for aerial swarm systems, in which each drone performs precise ego-state estimation, exchanges ego-state and mutual observation information by wireless communication, and estimates relative state with respect to (w.r.t.) the rest of UAVs, all in real-time and only based on LiDAR-inertial measurements. A novel 3D LiDAR-based drone detection, identification and tracking method is proposed to obtain observations of teammate drones. The mutual observation measurements are then tightly-coupled with IMU and LiDAR measurements to perform real-time and accurate estimation of ego-state and relative state jointly. Extensive real-world experiments show the broad adaptability to complicated scenarios, including GPS-denied scenes, degenerate scenes for camera (dark night) or LiDAR (facing a single wall). Compared with ground-truth provided by motion capture system, the result shows the centimeter-level localization accuracy which outperforms other state-of-the-art LiDAR-inertial odometry for single UAV system.


Publication
Accepted to 2023 IEEE International Conference on Robotics and Automation (ICRA)
Yunfan REN
Yunfan REN
Ph.D. candidate in Robotics🤖

My research focuses on Aerial Robots Navigation, Swarm Intelligence, and Optimal Control. My research code on GitHub has accumulated over 3.6k stars ⭐. Notable repositories include ROG-Map (★323), FAST-LIVO2 (★1.2k), and LiDAR_IMU_Init (★868).