Distributed detection with conditionally dependent observations is known to be a challenging problem in decentralized inference. This paper attempts to make progress on this problem by proposing a new framework for distributed detection that builds on a hierarchical conditional independence model. Through the introduction of a hidden variable that induces conditional independence among the sensor observations, the proposed model unifies distributed detection with dependent or independent observations. This new framework allows us to identify several classes of distributed detection problems with dependent observations whose optimal decision rules resemble the ones for the independent case. The new framework induces a decoupling effect on th...
In distributed detection, there does not exist an automatic way of generating optimal decision strat...
In this paper, we consider a binary decentralized detection problem where the local sensor observati...
Distributed detection with dependent observations is always a challenging problem. The problem of de...
Distributed detection with conditionally dependent observations is known to be a challenging problem...
Fellow, IEEE Distributed detection with conditionally dependent observations is known to be a challe...
Distributed detection with conditionally dependent observations is known to be a challenging problem...
In this paper, we present a unifying framework for distributed detection with dependent or independe...
Without the conditional independence assumption, the problem of distributed detection becomes intrac...
This paper deals with distributed detection using a tandem network with conditionally dependent obse...
Distributed detection with dependent observations is always a challenging problem. In this paper, we...
This dissertation begins with a tutorial survey which discusses many of the important topics associa...
In this paper, basic results on distributed detection are reviewed. In particular, we consider the p...
This paper analyzes the problem of distributed detection in a sensor network of binary sensors. In p...
Caption title. "October, 1988."Includes bibliographical references.Research supported by the MIT Lin...
Wyner\u27s common information was originally defined for a pair of dependent discrete random variabl...
In distributed detection, there does not exist an automatic way of generating optimal decision strat...
In this paper, we consider a binary decentralized detection problem where the local sensor observati...
Distributed detection with dependent observations is always a challenging problem. The problem of de...
Distributed detection with conditionally dependent observations is known to be a challenging problem...
Fellow, IEEE Distributed detection with conditionally dependent observations is known to be a challe...
Distributed detection with conditionally dependent observations is known to be a challenging problem...
In this paper, we present a unifying framework for distributed detection with dependent or independe...
Without the conditional independence assumption, the problem of distributed detection becomes intrac...
This paper deals with distributed detection using a tandem network with conditionally dependent obse...
Distributed detection with dependent observations is always a challenging problem. In this paper, we...
This dissertation begins with a tutorial survey which discusses many of the important topics associa...
In this paper, basic results on distributed detection are reviewed. In particular, we consider the p...
This paper analyzes the problem of distributed detection in a sensor network of binary sensors. In p...
Caption title. "October, 1988."Includes bibliographical references.Research supported by the MIT Lin...
Wyner\u27s common information was originally defined for a pair of dependent discrete random variabl...
In distributed detection, there does not exist an automatic way of generating optimal decision strat...
In this paper, we consider a binary decentralized detection problem where the local sensor observati...
Distributed detection with dependent observations is always a challenging problem. The problem of de...