This paper addresses an estimation problem for hidden Markov models (HMMs) with unknown parameters, where the underlying Markov chain is observed by multiple sensors. The sensors communicate their binary-quantized measurements to a remote fusion centre over noisy fading wireless channels under an average sum transmit power constraint. The fusion centre minimizes the expected state estimation error based on received (possibly erroneous) quantized measurements to determine the optimal quantizer thresholds and transmit powers for the sensors, called the optimal policy, while obtaining strongly consistent parameter estimates using a recursive maximum likelihood (ML) estimation algorithm. The problem is formulated as an adaptive Markov decision ...
We consider the problem of distributed estimation under the Bayesian criterion and explore the desig...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
The problem of distributed parameter estimation from binary quantized observations is studied when t...
This paper addresses an estimation problem for hidden Markov models (HMMs) with unknown parameters, ...
This paper investigates an optimal quantizer design problem for multisensor estimation of a hidden M...
This paper is concerned with dynamic quantizer design for state estimation of hidden Markov models (...
In this paper, we address the problem of designing power efficient quantizers for state estimation o...
Abstract—This paper considers the state estimation of hidden Markov models by sensor networks. The o...
This paper considers the state estimation of hidden Markov models by sensor networks. The objective ...
Quantiser design for a nonlinear filter is considered in the context of a decentralised estimation s...
This paper considers the state estimation of hidden Markov models(HMMs) in a network of sensors whic...
This paper considers the state estimation of hidden Markov models by sensor networks. The objective...
This paper considers state estimation of hidden Markov models by sensor networks. By employing feedb...
This paper investigates the optimal transmission strategy for remote state estimation over multiple ...
The hidden Markov model (HMM) is widely used to model processes in several real world applications, ...
We consider the problem of distributed estimation under the Bayesian criterion and explore the desig...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
The problem of distributed parameter estimation from binary quantized observations is studied when t...
This paper addresses an estimation problem for hidden Markov models (HMMs) with unknown parameters, ...
This paper investigates an optimal quantizer design problem for multisensor estimation of a hidden M...
This paper is concerned with dynamic quantizer design for state estimation of hidden Markov models (...
In this paper, we address the problem of designing power efficient quantizers for state estimation o...
Abstract—This paper considers the state estimation of hidden Markov models by sensor networks. The o...
This paper considers the state estimation of hidden Markov models by sensor networks. The objective ...
Quantiser design for a nonlinear filter is considered in the context of a decentralised estimation s...
This paper considers the state estimation of hidden Markov models(HMMs) in a network of sensors whic...
This paper considers the state estimation of hidden Markov models by sensor networks. The objective...
This paper considers state estimation of hidden Markov models by sensor networks. By employing feedb...
This paper investigates the optimal transmission strategy for remote state estimation over multiple ...
The hidden Markov model (HMM) is widely used to model processes in several real world applications, ...
We consider the problem of distributed estimation under the Bayesian criterion and explore the desig...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
The problem of distributed parameter estimation from binary quantized observations is studied when t...