Title :
Particle filtering and information fusion of innovative location and tracking device targeting GPS hostile environments
Author :
Owusu, Robert K A
Author_Institution :
Math. Modelling & Appl. IT Dept., Danish Innovation Inst. (DII) - Pera Innovation Network, Lyngby
Abstract :
An approximate particle filter and sensor fusion solution in pedestrian tracking for integrating a global position system (GPS) and dead reckoning (DR) from a Stochastic Bayesian perspective for State Space Models is proposed. It is assumed that estimates obtained from the GPS receiver are correct if the GPS quality is good. Therefore estimates from the GPS receiver serves as a primary input into the integrated system whenever both the GPS receiver is on and the signal quality is good. The Suboptimal estimation technique for the DR sensor is based on particle filtering. The DR module takes inputs from an accelerometer based pedometer and a particle filtering method is used for estimating the state of the DR sensor. A sensor fusion model incorporating an exponential smoothing-based smoother/filter/predictor is finally used to integrate the DR sensor and the GPS receiver. The output of the sensor fusion algorithm is constructed as a function of the GPS receiver and DR sensor. At any state, higher weight is assigned to the sensor with minimum error. GPS positioning is weighted more heavily as long as the GPS parameters (DOP, number of satellites, signal quality) indicates good and reliable performance.
Keywords :
Bayes methods; Global Positioning System; inertial navigation; particle filtering (numerical methods); sensor fusion; smoothing methods; stochastic processes; target tracking; GPS quality; accelerometer based pedometer; dead reckoning; exponential smoothing based smoother-filter-predictor; global position system; hostile environments; information fusion; location device; particle filtering; pedestrian tracking; sensor fusion; state space models; stochastic Bayesian approach; suboptimal estimation technique; tracking device; Bayesian methods; Dead reckoning; Global Positioning System; Information filtering; Information filters; Particle filters; Particle tracking; Sensor fusion; Stochastic systems; Target tracking; Extended Kalman Particle Filter (EKPF); Global Positioning System (GPS); Inertial Navigation System (INS); Linear/Non-Gaussian; Nonlinear Bayesian Particle Filter; Particle Filter (PF); Sequential Monte Carlo (SMC); Wiener-Kalman Filter (KF); dead reckoning (DR); nonlinear Bayesian tracking; pedestrian tracking; sensor fusion;
Conference_Titel :
Applied Sciences on Biomedical and Communication Technologies, 2008. ISABEL '08. First International Symposium on
Conference_Location :
Aalborg
Print_ISBN :
978-1-4244-2647-8
Electronic_ISBN :
978-1-4244-2648-5
DOI :
10.1109/ISABEL.2008.4712588