DocumentCode :
1271922
Title :
Accurate Pedestrian Indoor Navigation by Tightly Coupling Foot-Mounted IMU and RFID Measurements
Author :
Ruiz, Antonio Ramón Jiménez ; Granja, Fernando Seco ; Honorato, José Carlos Prieto ; Rosas, Jorge I Guevara
Author_Institution :
Centre for Autom. & Robot. (CAR), UPM, Madrid, Spain
Volume :
61
Issue :
1
fYear :
2012
Firstpage :
178
Lastpage :
189
Abstract :
We present a new method to accurately locate persons indoors by fusing inertial navigation system (INS) techniques with active RFID technology. A foot-mounted inertial measuring units (IMUs)-based position estimation method, is aided by the received signal strengths (RSSs) obtained from several active RFID tags placed at known locations in a building. In contrast to other authors that integrate IMUs and RSS with a loose Kalman filter (KF)-based coupling (by using the residuals of inertial- and RSS-calculated positions), we present a tight KF-based INS/RFID integration, using the residuals between the INS-predicted reader-to-tag ranges and the ranges derived from a generic RSS path-loss model. Our approach also includes other drift reduction methods such as zero velocity updates (ZUPTs) at foot stance detections, zero angular-rate updates (ZARUs) when the user is motionless, and heading corrections using magnetometers. A complementary extended Kalman filter (EKF), throughout its 15-element error state vector, compensates the position, velocity and attitude errors of the INS solution, as well as IMU biases. This methodology is valid for any kind of motion (forward, lateral or backward walk, at different speeds), and does not require an offline calibration for the user gait. The integrated INS+RFID methodology eliminates the typical drift of IMU-alone solutions (approximately 1% of the total traveled distance), resulting in typical positioning errors along the walking path (no matter its length) of approximately 1.5 m.
Keywords :
Kalman filters; inertial navigation; magnetometers; nonlinear filters; position measurement; radiofrequency identification; KF-based INS-RFID integration technique; RFID measurement technology; RSS path-loss model; active RFID tags; drift reduction methods; error state vector; extended Kalman filter; foot stance detections; foot-mounted inertial measuring units; inertial navigation system; magnetometers; pedestrian indoor navigation; position estimation method; received signal strengths; tightly coupling foot-mounted IMU; zero angular-rate updates; zero velocity updates; Buildings; Estimation; Foot; Position measurement; RFID tags; Dead reckoning; Kalman filters; RFID tags; inertial navigation; position measurement;
fLanguage :
English
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9456
Type :
jour
DOI :
10.1109/TIM.2011.2159317
Filename :
5953513
Link To Document :
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