The multi-target tracking filter under the Bayesian framework has strict requirements on the prior information of the target, such as detection probability density, clutter density, and target initial position information. This paper proposes a novel robust measurement-driven cardinality balance multi-target multi-Bernoulli filter (RMD-CBMeMBer) for solving the multiple targets tracking problem when the detection probability density is unknown, the background clutter density is unknown, and the target’s prior position information is lacking. In RMD-CBMeMBer filtering, the target state is first extended, so that the extended target state includes detection probability, kernel state, and indicators of target and clutter. Secondly, the detecti...
This paper develops a robust extended-target multisensor multitarget multi-Bernoulli (ET-MS-MeMBer) ...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
It is difficult to build accurate model for measurement noise covariance in complex backgrounds. For...
The cardinality balanced multi-target multi-Bernoulli (CBMeMBer) filter developed recently has been ...
A measurement-driven multi-target multi-Bernoulli (MeMBer) filter which modifies the MeMBer filter b...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
In Bayesian multi-target filtering knowledge of parameters such as clutter intensity and detection p...
The existing multiple model hypothesis density filter can estimate the number and state of maneuveri...
In Bayesian multi-target filtering knowledge of parameters such as clutter intensity and sensor fiel...
By integrating the cardinality balanced multitarget multi-Bernoulli (CBMeMBer) filter with the inter...
In Bayesian multi-target filtering knowledge of parameters such as clutter intensity and sensor fiel...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...
It is shown analytically that the multi-target multi- Bernoulli (MeMBer) recursion, proposed by Mahl...
This paper addresses extended multi-target tracking in clutter, i.e. tracking targets that may produ...
Multiple target tracking (MTT) is a challenging task that aims to estimate the number of targets and...
This paper develops a robust extended-target multisensor multitarget multi-Bernoulli (ET-MS-MeMBer) ...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
It is difficult to build accurate model for measurement noise covariance in complex backgrounds. For...
The cardinality balanced multi-target multi-Bernoulli (CBMeMBer) filter developed recently has been ...
A measurement-driven multi-target multi-Bernoulli (MeMBer) filter which modifies the MeMBer filter b...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
In Bayesian multi-target filtering knowledge of parameters such as clutter intensity and detection p...
The existing multiple model hypothesis density filter can estimate the number and state of maneuveri...
In Bayesian multi-target filtering knowledge of parameters such as clutter intensity and sensor fiel...
By integrating the cardinality balanced multitarget multi-Bernoulli (CBMeMBer) filter with the inter...
In Bayesian multi-target filtering knowledge of parameters such as clutter intensity and sensor fiel...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...
It is shown analytically that the multi-target multi- Bernoulli (MeMBer) recursion, proposed by Mahl...
This paper addresses extended multi-target tracking in clutter, i.e. tracking targets that may produ...
Multiple target tracking (MTT) is a challenging task that aims to estimate the number of targets and...
This paper develops a robust extended-target multisensor multitarget multi-Bernoulli (ET-MS-MeMBer) ...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
It is difficult to build accurate model for measurement noise covariance in complex backgrounds. For...