This paper presents a novel method for solving nonlinear filtering problems. This approach is particularly appealing in practical situations involving imprecise stochastic measurements, thus resulting in very broad posterior densities. It relies on the concept of a box particle, which occupies a small and controllable rectangular region having a non-zero volume in the state space. Key advantages of the box particle filter (Box-PF) against the standard particle filter (PF) are in its reduced computational complexity and its suitability for distributed filtering. Indeed, in some applications where the sequential importance resampling (SIR) PF may require thousands of particles to achieve an accurate and reliable performance, the Box-PF can re...
This paper develops a novel approach for multi-target tracking, called box-particle intensity filter...
A introduction to particle filtering is discussed starting with an overview of Bayesian inference fr...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...
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 work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
In the resampling procedure of traditional box particle filtering, selected box particles are divide...
In this work, a novel approach to nonlinear non-Gaussian state estimation problems is presented base...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This chapter presents a new approach combining the Bayesian framework with interval methods. When th...
This paper develops a box-particle implementation of cardinalized probability hypothesis density fil...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
This paper develops a novel approach for multi-target tracking, called box-particle intensity filter...
A introduction to particle filtering is discussed starting with an overview of Bayesian inference fr...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...
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 work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
This paper develops a novel approach for multitarget tracking, called box-particle probability hypot...
In the resampling procedure of traditional box particle filtering, selected box particles are divide...
In this work, a novel approach to nonlinear non-Gaussian state estimation problems is presented base...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This chapter presents a new approach combining the Bayesian framework with interval methods. When th...
This paper develops a box-particle implementation of cardinalized probability hypothesis density fil...
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stocha...
This work develops a novel estimation approach for nonlinear dynamic stochastic systems by combining...
This paper develops a novel approach for multi-target tracking, called box-particle intensity filter...
A introduction to particle filtering is discussed starting with an overview of Bayesian inference fr...
As a generalized particle filtering, the box-particle filter (Box-PF) has a potential to process the...