In this paper, Bayesian nonlinear filtering is considered from the viewpoint of information geometry and a novel filtering method is proposed based on information geometric optimization. Under the Bayesian filtering framework, we derive a relationship between the nonlinear characteristics of filtering and the metric tensor of the corresponding statistical manifold. Bayesian joint distributions are used to construct the statistical manifold. In this case, nonlinear filtering can be converted to an optimization problem on the statistical manifold and the adaptive natural gradient descent method is used to seek the optimal estimate. The proposed method provides a general filtering formulation and the Kalman filter, the Extended Kalman filter (...
International audienceThis paper shows the applicability of recently-developed Gaussian nonlinear fi...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
Using Kalman techniques, it is possible to perform optimal estimation in linear Gaussian state-space...
In this paper, Bayesian nonlinear filtering is considered from the viewpoint of information geometry...
The measurement update stage in the nonlinear filtering is considered in the viewpoint of informatio...
Information geometry enables a deeper understanding of the methods of statistical inference. In this...
Information geometry enables a deeper understanding of the methods of statistical inference. In this...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed ...
International audienceWe propose a new nonlinear Bayesian filtering algorithm where the prediction s...
Many nonlinear parameter estimation problems can be described by the class of curved exponential fam...
Bayesian state estimation is a flexible framework to address relevant problems at the heart of exist...
This paper develops information geometric representations for nonlinear filters in continuous time. ...
AbstractFor many nonlinear dynamic systems, the choice of nonlinear Bayesian filtering algorithms is...
This paper deals with the update step of Gaussian MAP filtering. In this framework, we seek a Gaussi...
International audienceThis paper shows the applicability of recently-developed Gaussian nonlinear fi...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
Using Kalman techniques, it is possible to perform optimal estimation in linear Gaussian state-space...
In this paper, Bayesian nonlinear filtering is considered from the viewpoint of information geometry...
The measurement update stage in the nonlinear filtering is considered in the viewpoint of informatio...
Information geometry enables a deeper understanding of the methods of statistical inference. In this...
Information geometry enables a deeper understanding of the methods of statistical inference. In this...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed ...
International audienceWe propose a new nonlinear Bayesian filtering algorithm where the prediction s...
Many nonlinear parameter estimation problems can be described by the class of curved exponential fam...
Bayesian state estimation is a flexible framework to address relevant problems at the heart of exist...
This paper develops information geometric representations for nonlinear filters in continuous time. ...
AbstractFor many nonlinear dynamic systems, the choice of nonlinear Bayesian filtering algorithms is...
This paper deals with the update step of Gaussian MAP filtering. In this framework, we seek a Gaussi...
International audienceThis paper shows the applicability of recently-developed Gaussian nonlinear fi...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
Using Kalman techniques, it is possible to perform optimal estimation in linear Gaussian state-space...