DocumentCode :
87859
Title :
Mobile Tracking Based on Fractional Integration
Author :
Nakib, Amir ; Daachi, B. ; Dakkak, M. ; Siarry, Patrick
Author_Institution :
Lab. Images, Signaux et Syst. Intelligents, Univ. de Paris-Est Creteil, Créteil, France
Volume :
13
Issue :
10
fYear :
2014
fDate :
Oct. 2014
Firstpage :
2306
Lastpage :
2319
Abstract :
While the static indoor geo-location of mobile terminals (MTs) has been extensively studied in the last decade, the prediction of the trajectory of an MT is still a major problem when designing mobile location (tracking) systems (TSs). In fact, Global Positioning System (GPS) works quite well in outdoor conditions and relatively unobstructed spaces, but falls short in many urban conditions and other realistic use cases. It is important to augment mobile geo-location architectures with a prediction dimension to deal with distortions caused by obstacles, and ultimately produce a more accurate positioning system. Different prediction approaches have been proposed in the literature, the most common is based on prediction filters such as linear predictors (LPs), Kalman filters (KFs), and particle filters (PFs). In this paper, we take the prediction one step further by using digital fractional integration (DFI) to predict the actual trajectory of MTs. We evaluate the performance of our proposed DFI prediction in two indoor trajectory scenarios inspired by typical user mobility patterns in typical indoor conditions (museum visit and hospital doctor walk). To illustrate the efficiency of the proposed method in particularly noisy environments, we consider two other MT trajectory scenarios, namely spiral and sinusoidal trajectories. Experimental results show a significant performance improvement over most common predictors in the relevant literature, particularly in noisy cases. Extensive study of short-archive principle using 5, 10, and 25 previous estimated positions, showed the benefit of using DFI operator with only the most recent locations of an MT.
Keywords :
Global Positioning System; indoor radio; mobile radio; radio tracking; telecommunication terminals; DFI prediction; GPS; Global Positioning System; KFs; Kalman filters; LPs; MT trajectory; PFs; TSs; digital fractional integration; indoor conditions; linear predictors; mobile geo-location architectures; mobile location system; mobile terminals; mobile tracking system; outdoor conditions; particle filters; prediction dimension; short-archive principle; sinusoidal trajectory; spiral trajectory; static indoor geo-location; user mobility patterns; Correlation; Kalman filters; Mobile communication; Mobile computing; Noise measurement; Target tracking; Trajectory; Algorithm/protocol design and analysis; Applications; Approximation; Communication/Networking and Information Technology; Computer Syst; Computer Systems Organization; Computing Methodologies; Correlation and regression analysis; General; Indoor location; Iterative methods; Kalman filter; Linear approximation; Mathematics of Computing; Mobile Computing; Mobile environments; Numerical Analysis; Probability and Statistics; Robust regression; Roots of Nonlinear Equations; Signal processing systems; Special-Purpose and Application-Based Systems; Time series analysis; Wavelets and fractals; digital fractional integration; mobile location; path tracking; prediction filters;
fLanguage :
English
Journal_Title :
Mobile Computing, IEEE Transactions on
Publisher :
ieee
ISSN :
1536-1233
Type :
jour
DOI :
10.1109/TMC.2013.37
Filename :
6477049
Link To Document :
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