ROSep 10, 2021

Error State Extended Kalman Filter Multi-Sensor Fusion for Unmanned Aerial Vehicle Localization in GPS and Magnetometer Denied Indoor Environments

arXiv:2109.04908v1
Originality Synthesis-oriented
AI Analysis

It addresses localization for UAVs in GPS-denied indoor environments, which is an incremental improvement on existing sensor fusion methods.

This paper tackled UAV indoor navigation without GPS or magnetometers by using an error state extended Kalman filter for multi-sensor fusion, achieving validation against ground truth data and demonstrating stabilization in a position control loop.

This paper addresses the issues of unmanned aerial vehicle (UAV) indoor navigation, specifically in areas where GPS and magnetometer sensor measurements are unavailable or unreliable. The proposed solution is to use an error state extended Kalman filter (ES -EKF) in the context of multi-sensor fusion. Its implementation is adapted to fuse measurements from multiple sensor sources and the state model is extended to account for sensor drift and possible calibration inaccuracies. Experimental validation is performed by fusing IMU data obtained from the PixHawk 2.1 flight controller with pose measurements from LiDAR Cartographer SLAM, visual odometry provided by the Intel T265 camera and position measurements from the Pozyx UWB indoor positioning system. The estimated odometry from ES-EKF is validated against ground truth data from the Optitrack motion capture system and its use in a position control loop to stabilize the UAV is demonstrated.

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