© 1991-2012 IEEE. In this paper, we propose a non-parametric method for state estimation of high-dimensional nonlinear stochastic dynamical systems, which evolve according to gradient flows with isotropic diffusion. We combine diffusion maps, a manifold learning technique, with a linear Kalman filter and with concepts from Koopman operator theory. More concretely, using diffusion maps, we construct data-driven virtual state coordinates, which linearize the system model. Based on these coordinates, we devise a data-driven framework for state estimation using the Kalman filter. We demonstrate the strengths of our method with respect to both parametric and non-parametric algorithms in three tracking problems. In particular, applying the approa...
We revisit the problem of estimating the parameters of a partially observed diffusion process, consi...
In this paper, we derive the EM algorithm for nonlinear state space models. We show how this algorit...
We establish a full relationship between Kalman filtering and Amari's natural gradient in statistica...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Abstract. This paper presents a nonparametric statistical modeling method for quantifying uncertaint...
Real-time state estimation of dynamical systems is a fundamental task in signal processing and contr...
International audienceWe consider the problem of estimating parameters and unobserved trajectories i...
We present two generalizations of the popular diffusion maps algorithm. The first generalization rep...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
Filtering and identification problems of partially observable stochastic dynamical systems has been ...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
In this work, we present a new differentially-constrained machine learning model, termed Evolving Ga...
In this paper, the authors utilise the neural network technique and the Kalman filter algorithm to a...
The Kalman filter (KF) is a celebrated signal processing algorithm, implementing optimal state estim...
The Kalman filter (KF) is a celebrated signal processing algorithm, implementing optimal state estim...
We revisit the problem of estimating the parameters of a partially observed diffusion process, consi...
In this paper, we derive the EM algorithm for nonlinear state space models. We show how this algorit...
We establish a full relationship between Kalman filtering and Amari's natural gradient in statistica...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Abstract. This paper presents a nonparametric statistical modeling method for quantifying uncertaint...
Real-time state estimation of dynamical systems is a fundamental task in signal processing and contr...
International audienceWe consider the problem of estimating parameters and unobserved trajectories i...
We present two generalizations of the popular diffusion maps algorithm. The first generalization rep...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
Filtering and identification problems of partially observable stochastic dynamical systems has been ...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
In this work, we present a new differentially-constrained machine learning model, termed Evolving Ga...
In this paper, the authors utilise the neural network technique and the Kalman filter algorithm to a...
The Kalman filter (KF) is a celebrated signal processing algorithm, implementing optimal state estim...
The Kalman filter (KF) is a celebrated signal processing algorithm, implementing optimal state estim...
We revisit the problem of estimating the parameters of a partially observed diffusion process, consi...
In this paper, we derive the EM algorithm for nonlinear state space models. We show how this algorit...
We establish a full relationship between Kalman filtering and Amari's natural gradient in statistica...