In this paper, a factor graph approach is employed to investigate the recursive filtering problem for conditionally linear Gaussian state-space models. First, we derive a new factor graph for the considered filtering problem; then, we show that applying the sum-product rule to our graphical model results in both known and novel filtering techniques. In particular, we prove that: 1) marginalized particle filtering can be interpreted as a form of forward only message passing over the devised graph; 2) novel filtering methods can be easily developed by exploiting the graph structure and/or simplifying probabilistic messages
Multi-target filtering aims at tracking an unknown num-ber of targets from a set of observations. Th...
The potential use of the marginalized particle filter for nonlinear system identification is investi...
for performing inference in non-linear non-Gaussian state-space models. The class of “Rao-Blackwelli...
In this paper, a factor graph approach is employed to investigate the recursive filtering problem fo...
In this paper, the fixed-lag smoothing problem for conditionally linear Gaussian state-space models ...
In this manuscript a novel online technique for Bayesian filtering, dubbed turbo filtering, is illus...
In this manuscript, a general method for deriving filtering algorithms that involve a network of int...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
The particle filter offers a general numerical tool to approximate the posterior density function fo...
Abstract. The marginalized particle filter is a powerful combination of the particle filter and the ...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fi...
Abstract — The particle filter offers a general numerical tool to approximate the posterior density ...
In this paper we are concerned with nonlinear systems subject to a conditionally linear, Gaussian su...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Sequential Monte Carlo (SMC) methods, such as the particle filter, are by now one of the standard co...
Multi-target filtering aims at tracking an unknown num-ber of targets from a set of observations. Th...
The potential use of the marginalized particle filter for nonlinear system identification is investi...
for performing inference in non-linear non-Gaussian state-space models. The class of “Rao-Blackwelli...
In this paper, a factor graph approach is employed to investigate the recursive filtering problem fo...
In this paper, the fixed-lag smoothing problem for conditionally linear Gaussian state-space models ...
In this manuscript a novel online technique for Bayesian filtering, dubbed turbo filtering, is illus...
In this manuscript, a general method for deriving filtering algorithms that involve a network of int...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
The particle filter offers a general numerical tool to approximate the posterior density function fo...
Abstract. The marginalized particle filter is a powerful combination of the particle filter and the ...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fi...
Abstract — The particle filter offers a general numerical tool to approximate the posterior density ...
In this paper we are concerned with nonlinear systems subject to a conditionally linear, Gaussian su...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Sequential Monte Carlo (SMC) methods, such as the particle filter, are by now one of the standard co...
Multi-target filtering aims at tracking an unknown num-ber of targets from a set of observations. Th...
The potential use of the marginalized particle filter for nonlinear system identification is investi...
for performing inference in non-linear non-Gaussian state-space models. The class of “Rao-Blackwelli...