Title :
Invariant Information Local Sub-map Filter (IILSF) for efficient simultaneous localisation and mapping of large environments
Author :
Ihemadu, O.C. ; Naeem, Wasif ; Ferguson, R.S. ; Jing Deng
Author_Institution :
Energy, Power & Intell. Control, Queen´s Univ. of Belfast, Belfast, UK
Abstract :
This paper presents an Invariant Information Local Sub-map Filter (IILSF) as a technique for consistent Simultaneous Localisation and Mapping (SLAM) in a large environment. It harnesses the benefits of sub-map technique to improve the consistency and efficiency of Extended Kalman Filter (EKF) based SLAM. The IILSF makes use of invariant information obtained from estimated locations of features in independent sub-maps, instead of incorporating every observation directly into the global map. Then the global map is updated at regular intervals. Applying this technique to the EKF based SLAM algorithm: (a) reduces the computational complexity of maintaining the global map estimates and (b) simplifies transformation complexities and data association ambiguities usually experienced in fusing sub-maps together. Simulation results show that the method was able to accurately fuse local map observations to generate an efficient and consistent global map, in addition to significantly reducing computational cost and data association ambiguities.
Keywords :
Kalman filters; SLAM (robots); nonlinear filters; EKF; Extended Kalman Filter; IILSF; SLAM; computational cost; data association; invariant information local submap filter; simultaneous localisation and mapping of large environments; submap technique; Computational complexity; Covariance matrices; Equations; Mathematical model; Simultaneous localization and mapping; Vectors; Absolute map filter; Frame of reference; Invariant Information; Transformation model and decoupling;
Conference_Titel :
Robot Motion and Control (RoMoCo), 2013 9th Workshop on
Conference_Location :
Kuslin
Print_ISBN :
978-1-4673-5510-0
DOI :
10.1109/RoMoCo.2013.6614622