首页 /研究 /Multi-Robot Relative Pose Estimation in SE(2) With Observability Analysis: A Comparison of Extended Kalman Filtering and Robust Pose Graph Optimization
SWARM

Multi-Robot Relative Pose Estimation in SE(2) With Observability Analysis: A Comparison of Extended Kalman Filtering and Robust Pose Graph Optimization

Gihun Shin, Hyunjae Sim, Seungwon Nam, Y. K. Kim, Kwang-Ki K. Kim

发表年份
2024
引用次数
8

摘要

In this study, we focus on multi-robot cooperative localization and the observability analysis of relative pose estimation. Cooperative localization enhances pose estimation by sharing odometry data via communication networks. When a target robot's odometry is directly shared, relative pose observability can be achieved using either range-only or bearing-only measurements, given non-zero linear velocities. However, if the target robot's odometry must be estimated, both range and bearing measurements are required for observability. We validate relative pose estimation feasibility in ground-based multi-robot systems through simulations and real-world experiments, exploring six different sensing and communication structures. In ROS/Gazebo simulations, we evaluate estimation accuracy using extended Kalman filter (EKF) and pose graph optimization (PGO) methods with various robust loss functions and sliding window batch sizes. Hardware experiments with two Turtlebot3 robots equipped with UWB modules further demonstrate the practicality of decentralized relative pose estimation without inter-robot communication. The results show that estimation accuracy decreases by only 0 to 8% compared to setups utilizing inter-robot communication, underscoring the effectiveness of our proposed methods.

关键词

ObservabilityPoseKalman filterArtificial intelligenceComputer scienceRobotExtended Kalman filterGraphComputer visionMoving horizon estimation

相关论文

查看 SWARM 分类全部论文