Title :
A random set formulation for Bayesian SLAM
Author :
Mullane, John ; Vo, Ba-Ngu ; Adams, Martin D. ; Wijesoma, Wijerupage Sardha
Author_Institution :
Sch. of Electr. & Electron. Eng., Nanyang Technol. Univ., Singapore
Abstract :
This paper presents an alternative formulation for the Bayesian feature-based simultaneous localisation and mapping (SLAM) problem, using a random finite set approach. For a feature based map, SLAM requires the joint estimation of the vehicle location and the map. The map itself involves the joint estimation of both the number of features and their states (typically in a 2D Euclidean space), as an a priori unknown map is completely unknown in both landmark location and number. In most feature based SLAM algorithms, so-called dasiafeature managementpsila algorithms as well as data association hypotheses along with extended Kalman filters are used to generate the joint posterior estimate. This paper, however, presents a recursive filtering algorithm which jointly propagates both the estimate of the number of landmarks, their corresponding states, and the vehicle pose state, without the need for explicit feature management and data association algorithms. Using a finite set-valued joint vehicle-map state and set-valued measurements, the first order statistic of the set, called the intensity, is propagated via the probability hypothesis density (PHD) filter, from which estimates of the map and vehicle can be jointly extracted. Assuming a mildly non-linear Gaussian system, an extended-Kalman Gaussian Mixture implementation of the recursion is then tested for both feature-based robotic mapping (known location) and SLAM. Results from the experiments show promising performance for the proposed SLAM framework, especially in environments of high spurious measurements.
Keywords :
Gaussian processes; Kalman filters; SLAM (robots); mobile robots; path planning; random processes; recursive filters; sensor fusion; ´feature management´ algorithms; Bayesian feature-based localisation problem; Bayesian feature-based mapping problem; data association hypotheses; extended Kalman filters; extended-Kalman Gaussian mixture; finite set-valued joint vehicle-map state; probability hypothesis density filter; random finite set approach; recursive filtering algorithm; robotic mapping; Bayesian methods; Feature extraction; Joints; Measurement uncertainty; Sensors; Time measurement; Vehicles;
Conference_Titel :
Intelligent Robots and Systems, 2008. IROS 2008. IEEE/RSJ International Conference on
Conference_Location :
Nice
Print_ISBN :
978-1-4244-2057-5
DOI :
10.1109/IROS.2008.4650815