Abstract-Sensor fusion methods combine noisy measurements of common variables observed by several sensors, typically by averaging information matrices and vectors of the measurements. Some sensors may have also observed exclusive variables on their own. Examples include robots exploring different areas or cameras observing different parts of the scene in map merging or multi-target tracking scenarios. Iteratively averaging exclusive information is not efficient, since only one sensor provides the data, and the remaining ones echo this information. This paper proposes a method to average the information matrices and vectors associated only to the common variables. Sensors use this averaged common information to locally estimate the exclusive...
Let us consider a parameter estimation for linear model where the ensemble of N sensors acquire enou...
In distributed estimation, several sensor nodes provide estimates of the same underlying dynamic pro...
International audienceThis note presents an efficient distributed approach for computing a spatial a...
Abstract: This work is an extension to a companion paper describing consensus-tracking for networked...
This paper presents a new solution for statistical fusion of multi-sensor information acquired from ...
A configuration with heterogeneous sensors using different measurement approaches most likely overco...
The appeal of distributed sensing and computation is matched by the formidable challenges it present...
© 2013 Massachusetts Institute of Technology. This paper presents algorithms to distributively appro...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
Abstract—This paper presents an approach to distributively approximate the continuous probability di...
Abstract We consider a network of distributed sensors, where each sensor takes a linear measurement...
We study a new variant of consensus problems, termed 'local average consensus', in networks of agent...
In a spatially distributed network of sensors or mobile agents it is often required to compute the a...
This paper considers fusion of dimension-reduced estimates in a decentralized sensor network. The be...
The concept of consensus filters for sensor fusion is not an entirely new proposition but one with a...
Let us consider a parameter estimation for linear model where the ensemble of N sensors acquire enou...
In distributed estimation, several sensor nodes provide estimates of the same underlying dynamic pro...
International audienceThis note presents an efficient distributed approach for computing a spatial a...
Abstract: This work is an extension to a companion paper describing consensus-tracking for networked...
This paper presents a new solution for statistical fusion of multi-sensor information acquired from ...
A configuration with heterogeneous sensors using different measurement approaches most likely overco...
The appeal of distributed sensing and computation is matched by the formidable challenges it present...
© 2013 Massachusetts Institute of Technology. This paper presents algorithms to distributively appro...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
Abstract—This paper presents an approach to distributively approximate the continuous probability di...
Abstract We consider a network of distributed sensors, where each sensor takes a linear measurement...
We study a new variant of consensus problems, termed 'local average consensus', in networks of agent...
In a spatially distributed network of sensors or mobile agents it is often required to compute the a...
This paper considers fusion of dimension-reduced estimates in a decentralized sensor network. The be...
The concept of consensus filters for sensor fusion is not an entirely new proposition but one with a...
Let us consider a parameter estimation for linear model where the ensemble of N sensors acquire enou...
In distributed estimation, several sensor nodes provide estimates of the same underlying dynamic pro...
International audienceThis note presents an efficient distributed approach for computing a spatial a...