This paper develops a novel approach for multi-target tracking, called box-particle intensity filter (box-iFilter). The approach is able to cope with unknown clutter, false alarms and estimates the unknown number of targets. Further more, it is capable of dealing with three sources of uncertainty: stochastic, set-theoretic and data association uncertainty. The box-iFilter reduces the number of particles significantly, which improves the runtime considerably. The low particle number enables this approach to be used for distributed computing. A box-particle is a random sample that occupies a small and controllable rectangular region of non-zero volume. Manipulation of boxes utilizes the methods from the field of interval analysis. Our studies...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
Distributed target tracking is a significant technique and is widely used in many applications. Comb...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
Resulting from the synergy between the sequential Monte Carlo (SMC) method [1] and interval analysis...
Resulting from the synergy between the sequential Monte Carlo (SMC) method [1] and interval analysis...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
This paper develops a box-particle implementation of cardinalized probability hypothesis density fil...
This chapter presents a new approach combining the Bayesian framework with interval methods. When th...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This paper focuses on real-time tracking of multiple extended targets in clutter based on labeled mu...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...
This paper presents a novel method for solving nonlinear filtering problems. This approach is partic...
Extended objects generate a variable number of multiple measurements. In contrast with point targets...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
Distributed target tracking is a significant technique and is widely used in many applications. Comb...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
Resulting from the synergy between the sequential Monte Carlo (SMC) method [1] and interval analysis...
Resulting from the synergy between the sequential Monte Carlo (SMC) method [1] and interval analysis...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
This paper develops a box-particle implementation of cardinalized probability hypothesis density fil...
This chapter presents a new approach combining the Bayesian framework with interval methods. When th...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This paper focuses on real-time tracking of multiple extended targets in clutter based on labeled mu...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...
This paper presents a novel method for solving nonlinear filtering problems. This approach is partic...
Extended objects generate a variable number of multiple measurements. In contrast with point targets...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
Distributed target tracking is a significant technique and is widely used in many applications. Comb...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...