The problem addressed in this paper is information theoretic sensor control for recursive Bayesian multi-object state-space estimation using random finite sets. The proposed algorithm is formulated in the framework of partially observed Markov decision processes where the reward function associated with different sensor actions is computed via the Renyi or alpha divergence between the multi-object prior and the multi-object posterior densities. The proposed algorithm in implemented via the sequential Monte Carlo method. The paper then presents a case study where the problem is to localise an unknown number of sources using a controllable moving sensor which provides range-only detections. Four sensor control reward functions are compared in...
The dynamic tracking of objects is, in general, concerned with state estimation using imperfect data...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
A novel sensor control solution is presented, formulated within a Multi-Bernoulli-based multi-target...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
In multi-object stochastic systems, the issue of sensor management is a theoretically and computatio...
Principled and novel multi-object tracking algorithms are proposed, that have the ability to optimal...
Abstract — This paper presents a novel and mathematically rigorous Bayes recursion for tracking a ta...
The aim of multi-object tracking is the estimation of the number of objects and their individual sta...
International audienceIn this paper, we consider the problem of scheduling an agile sensor to perfor...
The objective of multi-object estimation is to simultaneously estimate the number of objects and the...
The context is sensor control for multi-object Bayes filtering in the framework of partially observe...
Multitarget tracking is one of the most important applications of sensor networks, yet it is an extr...
This paper presents a novel and mathematically rigorous Bayes’ recursion for tracking a target that ...
Multi-object estimation refers to applications where there are unknown number of objects with unknow...
Multitarget tracking is the process of jointly determining the number of targets present and their s...
The dynamic tracking of objects is, in general, concerned with state estimation using imperfect data...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
A novel sensor control solution is presented, formulated within a Multi-Bernoulli-based multi-target...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
In multi-object stochastic systems, the issue of sensor management is a theoretically and computatio...
Principled and novel multi-object tracking algorithms are proposed, that have the ability to optimal...
Abstract — This paper presents a novel and mathematically rigorous Bayes recursion for tracking a ta...
The aim of multi-object tracking is the estimation of the number of objects and their individual sta...
International audienceIn this paper, we consider the problem of scheduling an agile sensor to perfor...
The objective of multi-object estimation is to simultaneously estimate the number of objects and the...
The context is sensor control for multi-object Bayes filtering in the framework of partially observe...
Multitarget tracking is one of the most important applications of sensor networks, yet it is an extr...
This paper presents a novel and mathematically rigorous Bayes’ recursion for tracking a target that ...
Multi-object estimation refers to applications where there are unknown number of objects with unknow...
Multitarget tracking is the process of jointly determining the number of targets present and their s...
The dynamic tracking of objects is, in general, concerned with state estimation using imperfect data...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
A novel sensor control solution is presented, formulated within a Multi-Bernoulli-based multi-target...