We propose an analytic moment-based filter for nonlinear stochastic dynamic systems modeled by Gaussian processes. Exact expressions for the expected value and the covariance matrix are provided for both the prediction step and the filter step, where an additional Gaussian assumption is exploited in the latter case. Our filter does not require further approximations. In particular, it avoids finite-sample approximations. We compare the filter to a variety of Gaussian filters, that is, the EKF, the UKF, and the recent GP-UKF proposed by Ko et al. (2007)
State estimation for nonlinear systems generally requires approximations of the system or the probab...
We formulate probabilistic numerical approximations to solutions of ordinary differential equations ...
We consider a generalization of the Gauss-Hermite filter (GHF), where the filter density is represen...
We propose an analytic moment-based filter for nonlinear stochastic dynamic systems modeled by Gauss...
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
Abstract—We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear ...
We propose a deterministic recursive algorithm for approximate Bayesian filtering. The proposed filt...
This work studies the problem of stochastic dynamic filtering and state propagation with complex bel...
We present a general probabilistic perspective on Gaussian filtering and smoothing. This allows us t...
In this paper we develop and analyze real-time and accurate filters for nonlinear filtering problems...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
In this paper, a new version of the quadrature Kalman filter (QKF) is developed theoretically and te...
A nonlinear filtering method is developed for continuous-time nonlinear systems with observations/me...
In nonlinear filtering, special types of Gaussian mixture filters are a straightforward extension of...
State estimation for nonlinear systems generally requires approximations of the system or the probab...
We formulate probabilistic numerical approximations to solutions of ordinary differential equations ...
We consider a generalization of the Gauss-Hermite filter (GHF), where the filter density is represen...
We propose an analytic moment-based filter for nonlinear stochastic dynamic systems modeled by Gauss...
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
Abstract—We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear ...
We propose a deterministic recursive algorithm for approximate Bayesian filtering. The proposed filt...
This work studies the problem of stochastic dynamic filtering and state propagation with complex bel...
We present a general probabilistic perspective on Gaussian filtering and smoothing. This allows us t...
In this paper we develop and analyze real-time and accurate filters for nonlinear filtering problems...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
In this paper, a new version of the quadrature Kalman filter (QKF) is developed theoretically and te...
A nonlinear filtering method is developed for continuous-time nonlinear systems with observations/me...
In nonlinear filtering, special types of Gaussian mixture filters are a straightforward extension of...
State estimation for nonlinear systems generally requires approximations of the system or the probab...
We formulate probabilistic numerical approximations to solutions of ordinary differential equations ...
We consider a generalization of the Gauss-Hermite filter (GHF), where the filter density is represen...