Assessing the fundamental performance limitationsin Bayesian filtering can be carried out using the parametricCram´er-Rao bound (CRB). The parametric CRB puts a lowerbound on mean square error (MSE) matrix conditioned on aspecific state trajectory realization. In this work, we derive theparametric CRB for state-space models, where the measurementequation is modeled by a Gaussian process regression.These models appear, for instance in proximity report-basedpositioning, where proximity reports are obtained by hardthresholding of received signal strength (RSS) measurements, thatare modeled through Gaussian process regression. The proposedparametric CRB is evaluated on selected state trajectories andfurther compared with the positioning perform...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
Sequential Bayesian estimation is the process of recursively estimating the state of a dynamical sys...
The Kalman filter computes the minimum variance state estimate as a linear function of measurements ...
Assessing the fundamental performance limitationsin Bayesian filtering can be carried out using the ...
Posterior Cramér-Rao bounds (CRBs) are derived for the estimation performance of three Gaussian proc...
Wepropose a modified Bayesian Cramér-Rao lower bound (BCRLB) for nonlinear tracking applications wh...
Parametric Cramer-Rao lower bounds (CRLBs) are given for discrete-time systems with non-zero process...
The posterior Cramér-Rao bound on the mean square error in tracking the bearing, bearing rate, and ...
Maneuvering target tracking is a challenging problem for sensor systems because of the unpredictabil...
This paper presents an approach to tracking persons using Gaus-sian Processes (GP) and Particle Filt...
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
Generally, there is no analytic solution to object tracking problems in non-linear non-Gaussian sce...
Estimation of unknown parameters is considered as one of the major research areas in statistical sig...
In this article, an event-triggered particle filtering method is presented to estimate the states of...
A clustering similarity particle filter based on state trajectory consistency is presented for the m...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
Sequential Bayesian estimation is the process of recursively estimating the state of a dynamical sys...
The Kalman filter computes the minimum variance state estimate as a linear function of measurements ...
Assessing the fundamental performance limitationsin Bayesian filtering can be carried out using the ...
Posterior Cramér-Rao bounds (CRBs) are derived for the estimation performance of three Gaussian proc...
Wepropose a modified Bayesian Cramér-Rao lower bound (BCRLB) for nonlinear tracking applications wh...
Parametric Cramer-Rao lower bounds (CRLBs) are given for discrete-time systems with non-zero process...
The posterior Cramér-Rao bound on the mean square error in tracking the bearing, bearing rate, and ...
Maneuvering target tracking is a challenging problem for sensor systems because of the unpredictabil...
This paper presents an approach to tracking persons using Gaus-sian Processes (GP) and Particle Filt...
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
Generally, there is no analytic solution to object tracking problems in non-linear non-Gaussian sce...
Estimation of unknown parameters is considered as one of the major research areas in statistical sig...
In this article, an event-triggered particle filtering method is presented to estimate the states of...
A clustering similarity particle filter based on state trajectory consistency is presented for the m...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
Sequential Bayesian estimation is the process of recursively estimating the state of a dynamical sys...
The Kalman filter computes the minimum variance state estimate as a linear function of measurements ...