Graph-Based vs. Error State Kalman Filter-Based Fusion of 5G and Inertial Data for MAV Indoor Pose Estimation

被引:1
作者
Kabiri, Meisam [1 ]
Cimarelli, Claudio [1 ]
Bavle, Hriday [1 ]
Sanchez-Lopez, Jose Luis [1 ]
Voos, Holger [1 ,2 ]
机构
[1] Univ Luxembourg, Interdisciplinary Ctr Secur Reliabil & Trust SnT, Luxembourg, Luxembourg
[2] Univ Luxembourg, Dept Engn, Fac Sci Technol & Med FSTM, Luxembourg, Luxembourg
关键词
5G Time of Arrival (ToA); Inertial Measurement Unit (IMU); Indoor localization; Pose Graph Optimization (PGO); Error State Kalman Filter (ESKF); Sensor fusion; Micro Aerial Vehicles (MAV); LOCALIZATION;
D O I
10.1007/s10846-024-02111-5
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
5G New Radio Time of Arrival (ToA) data has the potential to revolutionize indoor localization for micro aerial vehicles (MAVs). However, its performance under varying network setups, especially when combined with IMU data for real-time localization, has not been fully explored so far. In this study, we develop an Error State Kalman Filter (ESKF) and a Pose Graph Optimization (PGO) approach to address this gap. We systematically evaluate the performance of the derived approaches for real-time MAV localization in realistic scenarios with 5G base stations in Line-Of-Sight (LOS), demonstrating the potential of 5G technologies in this domain. In order to experimentally test and compare our localization approaches, we augment the EuRoC MAV benchmark dataset for visual-inertial odometry with simulated yet highly realistic 5G ToA measurements. Our experimental results comprehensively assess the impact of varying network setups, including varying base station numbers and network configurations, on ToA-based MAV localization performance. The findings show promising results for seamless and robust localization using 5G ToA measurements, achieving an accuracy of 15 cm throughout the entire trajectory within a graph-based framework with five 5G base stations, and an accuracy of up to 34 cm in the case of ESKF-based localization. Additionally, we measure the run time of both algorithms and show that they are both fast enough for real-time implementation.
引用
收藏
页数:27
相关论文
共 42 条
[21]  
Kaess M, 2011, IEEE INT CONF ROBOT
[22]   Neural Network Fingerprinting and GNSS Data Fusion for Improved Localization in 5G [J].
Klus, Roman ;
Talvitie, Jukka ;
Valkama, Mikko .
2021 INTERNATIONAL CONFERENCE ON LOCALIZATION AND GNSS (ICL-GNSS), 2021,
[23]   Error State Extended Kalman Filter Multi-Sensor Fusion for Unmanned Aerial Vehicle Localization in GPS and Magnetometer Denied Indoor Environments [J].
Markovic, Lovro ;
Kovac, Marin ;
Milijas, Robert ;
Car, Marko ;
Bogdan, Stjepan .
2022 INTERNATIONAL CONFERENCE ON UNMANNED AIRCRAFT SYSTEMS (ICUAS), 2022, :184-190
[24]  
Mascaro R, 2018, IEEE INT CONF ROBOT, P1421
[25]  
Mendrzik R, 2018, IEEE GLOB COMM CONF
[26]   On the Performance of AoA-Based Localization in 5G Ultra-Dense Networks [J].
Menta, Estifanos Yohannes ;
Malm, Nicolas ;
Jantti, Riku ;
Ruttik, Kalle ;
Costa, Mario ;
Leppanen, Kari .
IEEE ACCESS, 2019, 7 :33870-33880
[27]   A multi-state constraint Kalman filter for vision-aided inertial navigation [J].
Mourikis, Anastasios I. ;
Roumeliotis, Stergios I. .
PROCEEDINGS OF THE 2007 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION, VOLS 1-10, 2007, :3565-+
[28]   ORB-SLAM2: An Open-Source SLAM System for Monocular, Stereo, and RGB-D Cameras [J].
Mur-Artal, Raul ;
Tardos, Juan D. .
IEEE TRANSACTIONS ON ROBOTICS, 2017, 33 (05) :1255-1262
[29]   Efficient Joint DOA and TOA Estimation for Indoor Positioning With 5G Picocell Base Stations [J].
Pan, Mengguan ;
Liu, Peng ;
Liu, Shengheng ;
Qi, Wangdong ;
Huang, Yongming ;
You, Xiaohu ;
Jia, Xinghua ;
Li, Xiaodong .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2022, 71
[30]  
Panich S., 2010, J. Math. Stat, V6