DocumentCode :
16754
Title :
Indoor Positioning Using Efficient Map Matching, RSS Measurements, and an Improved Motion Model
Author :
Zampella, Francisco ; Jimenez Ruiz, Antonio Ramon ; Seco Granja, Fernando
Author_Institution :
Centre for Autom. & Robot., UPM, Madrid, Spain
Volume :
64
Issue :
4
fYear :
2015
fDate :
Apr-15
Firstpage :
1304
Lastpage :
1317
Abstract :
Unlike outdoor positioning, there is no unique solution to obtain the position of a person inside a building or in Global Navigation Satellite System (GNSS)-denied areas. Typical implementations indoor rely on dead reckoning or beacon-based positioning, but a robust estimation must combine several techniques to overcome their own drawbacks. In this paper, we present an indoor positioning system based on foot-mounted pedestrian dead reckoning (PDR) with an efficient map matching, received signal strength (RSS) measurements, and an improved motion model that includes the estimation of the turn rate bias. The system was implemented using a two-level structure with a low-level PDR filter and a high-level particle filter (PF) to include all the measurements. After studying the effect of the step displacement on the PFs proposed in the literature, we concluded that a new state with the turn rate bias (a nonobservable state in PDR) is needed to correctly estimate the error growth and, in the long term, correct the position and heading estimation. Additionally, the wall crossing detection of map matching was optimized as matrix operations, and a room grouping algorithm was proposed as a way to accelerate the process, achieving real-time execution with more than 100 000 particles in a building with more than 600 wall segments. We also include a basic path-loss model to use RSS measurements that allows a better initialization of the filter, fewer particles, and faster convergence, without the need for an extensive calibration. The inclusion of the map matching algorithm lowers the error level of the RSS-PDR positioning, from 1.9 to 0.75 m, 90% of the time. The system is tested in several trajectories to show the improvement in the estimated positioning, the time to convergence, and the required number of particles
Keywords :
matrix algebra; particle filtering (numerical methods); satellite navigation; GNSS; PDR filter; PF; RSS measurements; dead reckoning; extensive calibration; foot mounted pedestrian dead reckoning; global navigation satellite system; high-level particle filter; indoor positioning system; indoor rely; map matching algorithm; matrix operations; motion model; outdoor positioning; received signal strength; robust estimation; room grouping algorithm; wall crossing detection; Atmospheric measurements; Buildings; Estimation; Loss measurement; Particle measurements; Position measurement; Time measurement; Foot-mounted pedestrian dead reckoning (PRD); Indoor Positioning; Map Matching; RSS; foot mounted Pedestrian Dead Reckoning; indoor positioning; map matching; particle filter; particle filter (PF); received signal strength (RSS);
fLanguage :
English
Journal_Title :
Vehicular Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9545
Type :
jour
DOI :
10.1109/TVT.2015.2391296
Filename :
7008540
Link To Document :
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