Target tracking using observations from multiple sensors can achieve better estimation performance than a single sensor. The most famous estimation tool in target tracking is Kalman filter. There are several mathematical approaches to combine the observations of multiple sensors by use of Kalman filter. An important issue in applying a proper approach is computational complexity. In this paper, four data fusion algorithms based on Kalman filter are considered including three centralized and one decentralized methods. Using MATLAB, computational loads of these methods are compared while number of sensors increases. The results show that inverse covariance method has the best computational performance if the number of sensors is above 20. For...
Track-to-track fusion aims at combining locally preprocessed information of individual sensors optim...
The use of state space techniques to track targets using measurements from multiple sensors is consi...
Constraints can provide additional aids to a multi-sensor integrated navigation system and hence can...
Target tracking using observations from multiple sensors can achieve better estimation performance t...
[[abstract]]An algorithm denoted as Kalman filter-based fusion algorithm for estimation problems is ...
The purpose of a tracking algorithm is to associate data measured by one or more (moving) sensors to...
AbstractTarget tracking is the technique of maintaining state estimates of one or more targets over ...
In this dissertation, three problems in the area of tracking, track-to-track fusion and surveillance...
International audienceIn multisensor tracking systems, the state fusion also known as track to track...
Sensor fusion is a method of integrating signals from multiple sources. It allows extracting informa...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
A review of some estimation basics is followed by illustrative applications of Kalman filters for s...
In this paper, the two commonly used algorithms for association namely the Nearest Neighbour (NN) an...
International audienceThis paper addresses the problem of multi-sensor fusion and estimation for a s...
Abstract: This paper proposes a data fusion algorithm of nonlinear multisensor dynamic systems of sy...
Track-to-track fusion aims at combining locally preprocessed information of individual sensors optim...
The use of state space techniques to track targets using measurements from multiple sensors is consi...
Constraints can provide additional aids to a multi-sensor integrated navigation system and hence can...
Target tracking using observations from multiple sensors can achieve better estimation performance t...
[[abstract]]An algorithm denoted as Kalman filter-based fusion algorithm for estimation problems is ...
The purpose of a tracking algorithm is to associate data measured by one or more (moving) sensors to...
AbstractTarget tracking is the technique of maintaining state estimates of one or more targets over ...
In this dissertation, three problems in the area of tracking, track-to-track fusion and surveillance...
International audienceIn multisensor tracking systems, the state fusion also known as track to track...
Sensor fusion is a method of integrating signals from multiple sources. It allows extracting informa...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
A review of some estimation basics is followed by illustrative applications of Kalman filters for s...
In this paper, the two commonly used algorithms for association namely the Nearest Neighbour (NN) an...
International audienceThis paper addresses the problem of multi-sensor fusion and estimation for a s...
Abstract: This paper proposes a data fusion algorithm of nonlinear multisensor dynamic systems of sy...
Track-to-track fusion aims at combining locally preprocessed information of individual sensors optim...
The use of state space techniques to track targets using measurements from multiple sensors is consi...
Constraints can provide additional aids to a multi-sensor integrated navigation system and hence can...