The problem of space debris tracking can be viewed as an example of Bayesian filtering. Examples of such filters include the classic Kalman filter, together with nonlinear variants such as the extended and unscented Kalman filters, and the computationally more expensive particle filters. The purpose of this paper is to show with a careful choice of coordinate system, the uncertainty in the space debris tracking problem can often be formulated in terms of a multivariate normal distribution, and hence filtering can be carried out using the Kalman Filter or one of its variant
Consider analysis is an estimation technique that emerged in the 1960s to account for errors in syst...
Angle-only tracking estimates range and range rate from measured angle information by maneuvering th...
An algorithm with frame correlative detection and Kalman filtering tracking was proposed to detect t...
The problem of tracking space debris from a sequence of observations can be viewed as an example of ...
As new optical sensors come online, increasing numbers of optical observations become available for ...
The space debris tracking problem from a series of angles-only observations can be viewed as an exam...
International audienceTrajectory estimation during atmospheric reentry of ballistic objects such as ...
Filtering involves predicting the future state of a space object in orbit about the earth given obse...
This paper introduces a robust Bayesian particle filter that can handle epistemic uncertainty in the...
This paper presents a robust particle filter approach able to handle a set-valued specification of t...
Consider a space object in orbit about the earth and suppose a sequence of angles only measurements ...
An approach for space object tracking utilizing particle filters is presented. New meth-ods are deve...
An increased concern in space situational awareness has resulted from the rise in space debris and i...
In this paper we present methods for multimodel filtering of space object states based on the theory...
Bayesian filtering is a popular class of estimation algorithms for addressing the space object track...
Consider analysis is an estimation technique that emerged in the 1960s to account for errors in syst...
Angle-only tracking estimates range and range rate from measured angle information by maneuvering th...
An algorithm with frame correlative detection and Kalman filtering tracking was proposed to detect t...
The problem of tracking space debris from a sequence of observations can be viewed as an example of ...
As new optical sensors come online, increasing numbers of optical observations become available for ...
The space debris tracking problem from a series of angles-only observations can be viewed as an exam...
International audienceTrajectory estimation during atmospheric reentry of ballistic objects such as ...
Filtering involves predicting the future state of a space object in orbit about the earth given obse...
This paper introduces a robust Bayesian particle filter that can handle epistemic uncertainty in the...
This paper presents a robust particle filter approach able to handle a set-valued specification of t...
Consider a space object in orbit about the earth and suppose a sequence of angles only measurements ...
An approach for space object tracking utilizing particle filters is presented. New meth-ods are deve...
An increased concern in space situational awareness has resulted from the rise in space debris and i...
In this paper we present methods for multimodel filtering of space object states based on the theory...
Bayesian filtering is a popular class of estimation algorithms for addressing the space object track...
Consider analysis is an estimation technique that emerged in the 1960s to account for errors in syst...
Angle-only tracking estimates range and range rate from measured angle information by maneuvering th...
An algorithm with frame correlative detection and Kalman filtering tracking was proposed to detect t...