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http://dx.doi.org/10.5369/JSST.2019.28.3.146

Sliding Window Filtering for Ground Moving Targets with Cross-Correlated Sensor Noises  

Song, Il Young (Department of Sensor Systems, Hanwha Corporation Defense R&D Center)
Song, Jin Mo (Department of Sensor Systems, Hanwha Corporation Defense R&D Center)
Jeong, Woong Ji (Department of Sensor Systems, Hanwha Corporation Defense R&D Center)
Gong, Myoung Sool (Department of Sensor Systems, Hanwha Corporation Defense R&D Center)
Publication Information
Journal of Sensor Science and Technology / v.28, no.3, 2019 , pp. 146-151 More about this Journal
Abstract
This paper reports a sliding window filtering approach for ground moving targets with cross-correlated sensor noise and uncertainty. In addition, the effect of uncertain parameters during a tracking error on the model performance is considered. A distributed fusion sliding window filter is also proposed. The distributed fusion filtering algorithm represents the optimal linear combination of local filters under the minimum mean-square error criterion. The derivation of the error cross-covariances between the local sliding window filters is the key to the proposed method. Simulation results of the motion of the ground moving target a demonstrate high accuracy and computational efficiency of the distributed fusion sliding window filter.
Keywords
Distributed fusion; Fusion formula; Kalman filter; Multi-sensor; Sliding window;
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1 N. Roy, W. Burgard, D. Fox, and S. Thrun, "Coastal navigation mobile robot navigation with uncertainty in dynamic environments," In Proc. of the ICRA, 1999.
2 M. Ribo, S. Brahim-Belhouari, and L. Pronzato, "Motion planning for the precise location of a mobile robot," In Proc. of European Control Conf., Brussels, Belgium, 1997..
3 E. Song, Y. Zhu, J. Zhou and Z. You, "Optimal Kalman filtering fusion with cross-correlated sensor noises," Automatica, Vol. 43, pp. 1450-1456, 2007.   DOI
4 W. H. Kwon, P. S. Kim, and P. Park, "A Receding Horizon Kalman FIR filter for linear continuous-time systems," IEEE Trans. on Automatic Control, Vol. 44, No. 11, 2115-2120, 1999.   DOI
5 D. Y. Kim and V. Shin, "Optimal Receding Horizon Filter for Continuous-Time Nonlinear Stochastic Systems," Proc. 6th WSEAS Inter. Conf. on Signal Processing, Dallas, Texas, USA, pp. 112-116, 2007.
6 D. Y. Kim, V. Shin, "An Optimal Receding Horizon FIR Filter for Continuous-Time Linear Systems," Proceedings Intern. Conf. "SICE-ICCAS", Busan, Korea, pp. 263-265, 2006.
7 J. P. Laumond, Robot Motion Planning and Control, Springer-Verlag, Berlin, 1998.
8 W. Burgard, D. Fox, and S. Thrun, "Active mobile robot localization by entropy minimization," in Proc. of the Second Euromicro Workshop on Advanced Mobile robots, 1997.
9 V. Shin, Y. Lee and T-S. Choi, "Generalized Millman's formula and its applications for estimation problems," Signal Processing, Vol. 86, No.2, pp. 257-266, 2006.   DOI
10 W. H. Kwon, K. S. Lee, and O. K. Kwon, "Optimal FIR filters for time-varying state-space models," IEEE Trans. on Aerospace and Electronic Systems, Vol. 26, pp. 1011-1021, 1990.   DOI
11 Zhou, J., Zhu, Y., You, Z. and E. Song., "An efficient algorithm for optimal linear estimation fusion in decentralized multisensory systems," IEEE Trans. Syst., Man, Cybern., Vol. 36, No. 5, pp. 1000-1009, 2006.   DOI
12 A. Mutambara, Decentralized Estimation and Control for. In: Multisensor Systems. CRC Press, 1998.q
13 V.Shin, G.Shevlyakov, K.Kim, "A New Fusion Formula and Its Application to Continuous-Time Linear Systems with Multisensor Environment," Computational Statistics & Data Analysis, Vol. 52, Issue 2, pp. 840-854, 2007.   DOI
14 Y. J. Kanayama, Y. Kimura, F. Miyazaki and T. Noguchi, "A stable tracking control method for an autonomous mobile robot," In Proc. IEEE Int. Conf. Ground moving target. Autom. pp. 384-389, 1990.
15 J. E. Normey-Rico, J. Gomez-Ortega, E. F. Camacho, "A Smith-predictor-based generalized predictive controller for mobile robot path-tracking," Control Engineering Practice, Vol.7, Issue 6, pp. 729-740, 1999.   DOI
16 V. S. Pugachev and I. N. Sinitsyn, Stochastic Differential Systems: Analysis and Filtering, John Wiley & Songs, N.Y., 1987.