The Open Mathematics Journal
2015, 8 : 1-6Published online 2015 March 20. DOI: 10.2174/1874117701508010001
Publisher ID: TOMATJ-8-1
Mobile Position Tracking in Three Dimensions using Kalman and Lainiotis Filters
Department of Computer
Science and Biomedical Informatics, University of Thessaly, 2-4 Papasiopoulou
str., P.O. 35100 Lamia, Greece.
ABSTRACT
In this paper we present two time invariant models mobile position tracking in three dimensions, which describe the movement in x-axis, y-axis and z-axis simultaneously or separately, provided that there exist measurements for the three axes. We present the time invariant filters as well as the steady state filters: the classical Kalman Filter and Lainiotis Filter and the Join Kalman Lainiotis Filter, which consists of the parallel usage of the two classical filters. Various implementations are proposed and compared with respect to their behavior and to their computational burden: all time invariant and steady state filters have the same behavior using both the proposed models but have different computational burden.