This paper presents a robust particle filter approach able to handle a set-valued specification of the probability measures modelling the uncertainty structure of tracking problems. This method returns robust bounds on a quantity of interest compatibly with the infinite number of uncertain distributions specified. The importance particles are drawn and propagated only once, and the bound computation is realised by inexpensively tuning the importance weights. Furthermore, the uncertainty propagation is realised efficiently by employing an intrusive polynomial algebra technique. The developed method is finally applied to the computation of a debris-satellite collision probability in a scenario characterised by severe uncertainty
Space situational awareness, the ability to accurately characterize and predict the state of the spa...
The paper presents an approach to the design of an optimal collision avoidance maneuver under model ...
Due to uncertainty in target locations, stochastic models are implemented to provide a representatio...
This paper introduces a robust Bayesian particle filter that can handle epistemic uncertainty in the...
The problem of space debris tracking can be viewed as an example of Bayesian filtering. Examples of ...
An approach for space object tracking utilizing particle filters is presented. New meth-ods are deve...
Bayesian filtering is a popular class of estimation algorithms for addressing the space object track...
International audienceTrajectory estimation during atmospheric reentry of ballistic objects such as ...
In recent years, particle filtering has become a powerful tool for tracking signals and time-varying...
For many problems in the field of tracking or even the wider area of filtering the a posteriori desc...
The state of a dynamical system and its uncertainty, as defined by its probability density function ...
In this paper we address the problem of nonlinear filtering in the presence of integer uncertainty. ...
Abstract – For many problems in the field of track-ing or even the wider area of filtering the a pos...
In this work, we introduce two particle filters of linear complexity in the number of particles that...
In this dissertation we address nonlinear techniques in filtering,estimation, and detection that ari...
Space situational awareness, the ability to accurately characterize and predict the state of the spa...
The paper presents an approach to the design of an optimal collision avoidance maneuver under model ...
Due to uncertainty in target locations, stochastic models are implemented to provide a representatio...
This paper introduces a robust Bayesian particle filter that can handle epistemic uncertainty in the...
The problem of space debris tracking can be viewed as an example of Bayesian filtering. Examples of ...
An approach for space object tracking utilizing particle filters is presented. New meth-ods are deve...
Bayesian filtering is a popular class of estimation algorithms for addressing the space object track...
International audienceTrajectory estimation during atmospheric reentry of ballistic objects such as ...
In recent years, particle filtering has become a powerful tool for tracking signals and time-varying...
For many problems in the field of tracking or even the wider area of filtering the a posteriori desc...
The state of a dynamical system and its uncertainty, as defined by its probability density function ...
In this paper we address the problem of nonlinear filtering in the presence of integer uncertainty. ...
Abstract – For many problems in the field of track-ing or even the wider area of filtering the a pos...
In this work, we introduce two particle filters of linear complexity in the number of particles that...
In this dissertation we address nonlinear techniques in filtering,estimation, and detection that ari...
Space situational awareness, the ability to accurately characterize and predict the state of the spa...
The paper presents an approach to the design of an optimal collision avoidance maneuver under model ...
Due to uncertainty in target locations, stochastic models are implemented to provide a representatio...