AbstractAn improved particle filtering (IPF) is presented to perform maneuvering target tracking in dense clutter. The proposed filter uses several efficient variance reduction methods to combat particle degeneracy, low mode prior probabilities and measurement-origin uncertainty. Within the framework of a hybrid state estimation, each particle samples a discrete mode from its posterior distribution and the continuous state variables are approximated by a multivariate Gaussian mixture that is updated by an unscented Kalman filtering (UKF). The uncertainty of measurement origin is solved by Monte Carlo probabilistic data association method where the distribution of interest is approximated by particle filtering and UKF. Correct data associati...
This paper considers the problem of joint maneuvering target tracking and classification. Based on t...
This paper presents a novel single target particle filter with spawn model and particle labeling app...
A particle filter (PF) is a recursive numerical technique which uses random sampling to approximate ...
AbstractAn improved particle filtering (IPF) is presented to perform maneuvering target tracking in ...
In this paper we compare three different sequential estimation algorithms for tracking a single move...
In this paper we compare three different sequential estimation algorithms for tracking a single move...
In a typical surveillance situation the number and the trajectories of targets are a priori unknown....
In this paper we compare three different sequential estimation algorithms for tracking a single move...
International audienceDetect and tracking of maneuvering target is a complicated dynamic state estim...
The multiple maneuvering target tracking algorithm based on a particle filter is addressed. The equi...
In this paper we propose an online tracking algorithm for multiple manoeuvring targets using variabl...
International audienceModern military targets as aircraft are able to perform high maneuvers due to ...
The problem of data association for target tracking in a cluttered environment is discussed. In orde...
This paper considers the problem of joint maneuvering target tracking and classification. Based on ...
This paper considers the problem of joint maneuvering target tracking and classification. Based on t...
This paper presents a novel single target particle filter with spawn model and particle labeling app...
A particle filter (PF) is a recursive numerical technique which uses random sampling to approximate ...
AbstractAn improved particle filtering (IPF) is presented to perform maneuvering target tracking in ...
In this paper we compare three different sequential estimation algorithms for tracking a single move...
In this paper we compare three different sequential estimation algorithms for tracking a single move...
In a typical surveillance situation the number and the trajectories of targets are a priori unknown....
In this paper we compare three different sequential estimation algorithms for tracking a single move...
International audienceDetect and tracking of maneuvering target is a complicated dynamic state estim...
The multiple maneuvering target tracking algorithm based on a particle filter is addressed. The equi...
In this paper we propose an online tracking algorithm for multiple manoeuvring targets using variabl...
International audienceModern military targets as aircraft are able to perform high maneuvers due to ...
The problem of data association for target tracking in a cluttered environment is discussed. In orde...
This paper considers the problem of joint maneuvering target tracking and classification. Based on ...
This paper considers the problem of joint maneuvering target tracking and classification. Based on t...
This paper presents a novel single target particle filter with spawn model and particle labeling app...
A particle filter (PF) is a recursive numerical technique which uses random sampling to approximate ...