The sensor scheduling problem can be formulated as a controlled hidden Markov model and this paper solves the problem when the state, observation and action spaces are continuous. This general case is important as it is the natural framework for many applications. The aim is to minimise the variance of the estimation error of the hidden state w.r.t. the action sequence. We present a novel simulation-based method that uses a stochastic gradient algorithm to find optimal actions. © 2007 Elsevier Ltd. All rights reserved
Abstract-The increasing use of smart sensors that can dynamically adapt their observations has creat...
We consider a sensor scheduling problem for estimating Gaussian random variables under an energy con...
Many problems in Artificial Intelligence and Reinforcement Learning assume that the environment of a...
The sensor scheduling problem can be formulated as a controlled hidden Markov model and this paper s...
Abstract — Sensor scheduling has been a topic of interest to the target tracking community for some ...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
Many problems in control and signal processing can be formulated as sequential decision problems for...
Real world surveillance applications include heterogeneous sensors, which trade off performance (e.g...
We consider sensor scheduling as the optimal observ-ability problem for partially observable Markov ...
Abstract-In this paper, we present a receding horizon solution to the problem of optimal scheduling ...
Consider a set of sensors estimating the state of a process in which only one of these sensors can o...
Abstract — This paper introduces a new approach to solve sensor management problems. Classically sen...
ABSTRACT. In this paper, we consider an optimal sensor scheduling problem in continuous time. This p...
Optimal sensor scheduling with applications to networked estimation and control systems is considere...
International audienceThis paper introduces a new approach to solve sensor management problems. Clas...
Abstract-The increasing use of smart sensors that can dynamically adapt their observations has creat...
We consider a sensor scheduling problem for estimating Gaussian random variables under an energy con...
Many problems in Artificial Intelligence and Reinforcement Learning assume that the environment of a...
The sensor scheduling problem can be formulated as a controlled hidden Markov model and this paper s...
Abstract — Sensor scheduling has been a topic of interest to the target tracking community for some ...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
Many problems in control and signal processing can be formulated as sequential decision problems for...
Real world surveillance applications include heterogeneous sensors, which trade off performance (e.g...
We consider sensor scheduling as the optimal observ-ability problem for partially observable Markov ...
Abstract-In this paper, we present a receding horizon solution to the problem of optimal scheduling ...
Consider a set of sensors estimating the state of a process in which only one of these sensors can o...
Abstract — This paper introduces a new approach to solve sensor management problems. Classically sen...
ABSTRACT. In this paper, we consider an optimal sensor scheduling problem in continuous time. This p...
Optimal sensor scheduling with applications to networked estimation and control systems is considere...
International audienceThis paper introduces a new approach to solve sensor management problems. Clas...
Abstract-The increasing use of smart sensors that can dynamically adapt their observations has creat...
We consider a sensor scheduling problem for estimating Gaussian random variables under an energy con...
Many problems in Artificial Intelligence and Reinforcement Learning assume that the environment of a...