WeA05 Plumeria 2 - Estimation Problems I (Regular Session): no. WeA05.3The fusion estimation is investigated in this paper for two-sensor discrete-time stochastic systems. A finite-horizon optimal linear estimator is designed for each sensor to generate local estimates with a nonuniform estimation rate. Then, a fusion rule with matrix weights in the linear minimum variance sense is designed for each sensor to fuse local estimates from itself and the other sensors. The proposed algorithm reduces to the one that can be used to design asynchronous fusion estimators with uncorrelated measurement noises. Finally, the effectiveness of the proposed results is illustrated by a simulation example of a maneuvering target tracking system
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kal...
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kal...
This paper concentrates on tracking multiple targets using an asynchronous network of sensors with d...
This paper studies the fusion estimation problem of a class of multisensor multirate systems with ob...
Abstract – In this paper, we first present a general data model for discretized asynchronous multise...
The centralized fusion estimation problem for discrete-time vectorial tessarine signals in multiple ...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
A new fusion strategy is introduced in this article to estimate state for multi-rate multi-sensor sy...
ABSTRACT. In this paper we consider the question of optimal fusion of sensor data in discrete time. ...
In this paper we consider state estimation of a discrete time linear system using multiple sensors, ...
[[abstract]]An algorithm denoted as Kalman filter-based fusion algorithm for estimation problems is ...
In this paper, we study the distributed fusion estimation problem for linear time-varying systems an...
The authors presented recent results on a general sensor fusion problem, where the underlying sensor...
This paper addresses the encoding–decoding-based fusion estimation problem for a class of systems wi...
This paper proposed a mini-max fusion strategy in distributed multi-sensor system, which aims to min...
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kal...
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kal...
This paper concentrates on tracking multiple targets using an asynchronous network of sensors with d...
This paper studies the fusion estimation problem of a class of multisensor multirate systems with ob...
Abstract – In this paper, we first present a general data model for discretized asynchronous multise...
The centralized fusion estimation problem for discrete-time vectorial tessarine signals in multiple ...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
A new fusion strategy is introduced in this article to estimate state for multi-rate multi-sensor sy...
ABSTRACT. In this paper we consider the question of optimal fusion of sensor data in discrete time. ...
In this paper we consider state estimation of a discrete time linear system using multiple sensors, ...
[[abstract]]An algorithm denoted as Kalman filter-based fusion algorithm for estimation problems is ...
In this paper, we study the distributed fusion estimation problem for linear time-varying systems an...
The authors presented recent results on a general sensor fusion problem, where the underlying sensor...
This paper addresses the encoding–decoding-based fusion estimation problem for a class of systems wi...
This paper proposed a mini-max fusion strategy in distributed multi-sensor system, which aims to min...
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kal...
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kal...
This paper concentrates on tracking multiple targets using an asynchronous network of sensors with d...