We consider the problem of estimating vector-valued variables from noisy “relative” measurements. The measurement model can be expressed in terms of a graph, whose nodes correspond to the variables being estimated and the edges to noisy measurements of the difference between the two variables. This type of measurement model appears in several sensor network problems, such as sensor localization and time synchronization. We consider the optimal estimate for the unknown variables obtained by applying the classical Best Linear Unbiased Estimator, which achieves the minimum variance among all linear unbiased estimators.We propose a new algorithm to compute the optimal estimate in an iterative manner, the Overlapping Subgraph Estimator algorithm...
This note defines the problem of least-squares distributed estimation from relative and absolute mea...
In this technical note we consider the problem of distributed discrete-time state estimation over se...
In this paper, we address the problem of simultaneous classification and estimation of hidden parame...
Abstract — The paper considers the algorithm NLU for dis-tributed (vector) parameter estimation in s...
The main aim of the paper is to develop a distributed algorithm for optimal node activation in a sen...
Important applications in robotic and sensor networks require distributed algorithms to solve the so...
Distributed estimators for sensor networks are discussed. The considered problem is on how to track ...
This paper deals with the distributed estimation problem in a relative sensing network. Each node is...
Abstract — We examine distributed time-synchronization in mobile ad-hoc and sensor networks. The pro...
Abstract—A statistical framework is introduced for a broad class of problems involving synchronizati...
A distributed estimation algorithm for sensor networks is proposed. A noisy time-varying signal is j...
Abstract — In this work we address the problem of optimal estimating the position of each agent in a...
A distributed estimation algorithm for sensor networks is proposed. A noisy time-varying signal is j...
Abstract — In this work we address the problem of optimal estimating the position of each agent in a...
100 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Next, we study another import...
This note defines the problem of least-squares distributed estimation from relative and absolute mea...
In this technical note we consider the problem of distributed discrete-time state estimation over se...
In this paper, we address the problem of simultaneous classification and estimation of hidden parame...
Abstract — The paper considers the algorithm NLU for dis-tributed (vector) parameter estimation in s...
The main aim of the paper is to develop a distributed algorithm for optimal node activation in a sen...
Important applications in robotic and sensor networks require distributed algorithms to solve the so...
Distributed estimators for sensor networks are discussed. The considered problem is on how to track ...
This paper deals with the distributed estimation problem in a relative sensing network. Each node is...
Abstract — We examine distributed time-synchronization in mobile ad-hoc and sensor networks. The pro...
Abstract—A statistical framework is introduced for a broad class of problems involving synchronizati...
A distributed estimation algorithm for sensor networks is proposed. A noisy time-varying signal is j...
Abstract — In this work we address the problem of optimal estimating the position of each agent in a...
A distributed estimation algorithm for sensor networks is proposed. A noisy time-varying signal is j...
Abstract — In this work we address the problem of optimal estimating the position of each agent in a...
100 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Next, we study another import...
This note defines the problem of least-squares distributed estimation from relative and absolute mea...
In this technical note we consider the problem of distributed discrete-time state estimation over se...
In this paper, we address the problem of simultaneous classification and estimation of hidden parame...