We consider distributed detection in a clustered wireless sensor network (WSN) deployed randomly in a large field for the purpose of intrusion detection. The WSN is modeled by a homogeneous Poisson point process. The sensor nodes (SNs) compute local decisions about the intruder’s presence and send them to the cluster heads (CHs). A stochastic geometry framework is employed to derive the optimal cluster-based fusion rule (OCR), which is a weighted average of the local decision sum of each cluster. Interestingly, this structure reduces the effect of false alarm on the detection performance. Moreover, a generalized likelihood ratio test (GLRT) for cluster-based fusion (GCR) is developed to handle the case of unknown intruder’s parameters. Simu...
For a wireless sensor network (WSN) with a large number of sensors, a decision fusion rule using the...
We design, analyze, and optimize distributed detection and estimation algorithms in a large, shared-...
Abstract − In a clustered, multi-hop sensor network, a large number of inexpensive, geographically-d...
We consider distributed detection in a clustered wireless sensor network (WSN) deployed randomly in ...
In this paper we consider the distributed detection of intruders in clustered wireless sensor networ...
In this paper we investigate fusion rules for distributed detection in large random clustered-wirele...
For a wireless sensor network (WSN) with a random number of sensors, we propose a decision fusion r...
For a wireless sensor network (WSN) with a random number of sensors, we propose a decision fusion ru...
In this paper, we tackle decision fusion for distributed detection in a randomly-deployed clustered ...
This thesis addresses the problem of detection of an unknown binary event. In particular, we conside...
We consider the problem of soft decision fusion in a bandwidth-constrained wireless sensor network (...
We consider the problem of distributed soft decision fusion in a bandwidth-constrained spatially unc...
This thesis addresses the problem of detection of an unknown binary event. In particular, we conside...
We investigate decentralized detection in clustered sensor networks with hierarchical multi-level fu...
We consider the problem of distributed soft decision fusion in a bandwidth-constrained spatially unc...
For a wireless sensor network (WSN) with a large number of sensors, a decision fusion rule using the...
We design, analyze, and optimize distributed detection and estimation algorithms in a large, shared-...
Abstract − In a clustered, multi-hop sensor network, a large number of inexpensive, geographically-d...
We consider distributed detection in a clustered wireless sensor network (WSN) deployed randomly in ...
In this paper we consider the distributed detection of intruders in clustered wireless sensor networ...
In this paper we investigate fusion rules for distributed detection in large random clustered-wirele...
For a wireless sensor network (WSN) with a random number of sensors, we propose a decision fusion r...
For a wireless sensor network (WSN) with a random number of sensors, we propose a decision fusion ru...
In this paper, we tackle decision fusion for distributed detection in a randomly-deployed clustered ...
This thesis addresses the problem of detection of an unknown binary event. In particular, we conside...
We consider the problem of soft decision fusion in a bandwidth-constrained wireless sensor network (...
We consider the problem of distributed soft decision fusion in a bandwidth-constrained spatially unc...
This thesis addresses the problem of detection of an unknown binary event. In particular, we conside...
We investigate decentralized detection in clustered sensor networks with hierarchical multi-level fu...
We consider the problem of distributed soft decision fusion in a bandwidth-constrained spatially unc...
For a wireless sensor network (WSN) with a large number of sensors, a decision fusion rule using the...
We design, analyze, and optimize distributed detection and estimation algorithms in a large, shared-...
Abstract − In a clustered, multi-hop sensor network, a large number of inexpensive, geographically-d...