0 500 1000 1500 2000 2500
0
0.02
0.04
0.06
0.08
0.1
0.12
0.14
Time (s)
Error (rads)
EKF Orientation Error
0 500 1000 1500 2000 2500
0
0.02
0.04
0.06
0.08
0.1
0.12
0.14
Time (s)
Error (rads)
(b) UKF Orientation Error
Figure 4: (a) Orientation error for EKF-SLAM as the
back-end in HybridSLAM (b) Orientation error for UKF-
SLAM as the back-end in HybridSLAM.
0
0.2
0.4
0.6
0.8
1.00
UKF vs. EKF
HybridSLAM
Using UKF-SLAM
Average RMS Positon Error (m)
HybridSLAM
Using EKF-SLAM
Figure 5: A comparison between EKF-SLAM and UKF-
SLAM in a HybridSLAM algorithm.
5 CONCLUSIONS
In this paper, the performance of HybridSLAM
strategy is examined using two different versions of
Kalman filter as the back-end algorithm to fuse local
map into a global map. Results show that with a use
of UKF-SLAM, Root Mean Square (RMS) position
and orientation errors decrease substantially in
comparison with EKF-SLAM. Applying Unscented
Kalman Filter (UKF) allows the state distribution to
be propagated analytically through the third order
linearization of a non-linear system. The
performance of proposed method is compared with a
standard HybridSLAM and accuracy of the process
is examined through 20 iterations. In addition,
simulations and results show that for a non-linear
motion, the use of UKF-SLAM would drastically
increase accuracy of the estimation for a long
trajectory specified in a loop closing case.
REFERENCES
Monjazeb, A., Sasiadek, J. Z., Necsulescu, D.,
Autonomous navigation among large number of
nearby 2011, landmarks using FastSLAM and EKF-
SLAM; a comparative study, Proc. of 16
th
International Conference on Methods and Models in
Automation and Robotics, pp. 369-374, Miedzyzdroje,
Poland.
Brooks, A., Bailey, T., 2009, HybridSLAM: Combining
FastSLAM and EKF-SLAM for reliable mapping,
Springer Tracts in Advanced Robotics, Volume 57, pp.
647-661.
Sasiadek, J. Z., Monjazeb, A., Necsulescu, D., 2008,
Navigation of an autonomous mobile robot using
EKF-SLAM and FastSLAM, Proc. of 16
th
Mediterranean Conference on Control and
Automation, pp. 517-522, Ajaccio, France.
Durrant-Whyte H., Bailey T., 2006, Simultaneous
localization and mapping (SLAM): Part I the essential
algorithms, IEEE Robatics and Automation Magazine,
Vol. 13, No. 2, pp. 99-108, June.
Thrun, S., Montemerlo, M., Koller, D., Wegbreit, B.,
Nieto, J., Nebot, E., 2004, FastSLAM: an efficient
solution to the simultaneous localization and mapping
problem with unknown data association, Journal of
Machine Learning Research.
Julier, S. J., Uhlmann, J. K., 2004, Unscented filtering and
nonlinear estimation, Proceedings of IEEE Journal,
Vol. 92, Issue 3, pp. 401-422, March.
Vander Merwe, R., Wan, E., Julier, S., 2004, Sigma-point
Kalman Filters for nonlinear estimation and sensor-
fusion: Applications to integrated navigation”,
Proceedings of the AIAA Guidance, Navigation and
Control Conference, Providence, Rhode Island,
August.
Williams, S. B., Dissanayake, G., Durrant-Whyte, H.,
2002, An Efficient Approach to the Simultaneous
Localisation and Mapping Problem”, Proceedings of
the 2002 IEEE International Conference on Robotics
& Automation, Washington DC.
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