The problem of optimal data fusion in the sense of the Neyman- Pearson (N-P) test in a centralized fusion center is considered. The fusion center receives data from various distributed sensors. Each sensor implements a N-P test individually and independently of the other sensors. Due to limitations in channel capacity, the sensors transmit their decision instead of raw data. In addition to their decisions, the sensors may transmit one or more bits of quality information. The optimal, in the N-P sense, decision scheme at the fusion center is derived and it is seen that an improvement in the performance of the system beyond that of the most reliable sensor is feasible, even without quality information, for a system of three or more sensors. I...
Abstract- In this paper, we consider a binary distributed detection system in which a system of mult...
Since there has been an increasing interest in the areas of Internet of Things (IoT) and artificial ...
This article is a brief introduction to statistical decision theory. It provides background for unde...
The problem of decision fusion in distributed sensor system is considered. Distributed sensors pass ...
The problem of distributed detection involving N sensors is considered. The configuration of sensors...
The problem of decision fusion in distributed sensor systems is considered. Distributed sensors pass...
In this study, the authors study binary decision fusion over a shared Rayleigh fading channel with m...
In this study, the authors study binary decision fusion over a shared Rayleigh fading channel with m...
The problem of optimal data fusion in multiple detection systems is studied in the case where traini...
In a traditional communication system, a single sensor such as a radar or a sonar is used to detect ...
Abstract- The problem of decision fusion has been studied for distributed sensor systems in the past...
A distributed sensor network deployed to detect a binary event using a hard decision fusion scheme i...
In this paper, we propose a two-layer sensor fusion scheme for multiple hypotheses multisensor syste...
This chapter deals with a distributed version of the binary-hypothesis test which formalizes the cas...
In engineering design, it was shown by von Neumann that a reliable system can be built using unrelia...
Abstract- In this paper, we consider a binary distributed detection system in which a system of mult...
Since there has been an increasing interest in the areas of Internet of Things (IoT) and artificial ...
This article is a brief introduction to statistical decision theory. It provides background for unde...
The problem of decision fusion in distributed sensor system is considered. Distributed sensors pass ...
The problem of distributed detection involving N sensors is considered. The configuration of sensors...
The problem of decision fusion in distributed sensor systems is considered. Distributed sensors pass...
In this study, the authors study binary decision fusion over a shared Rayleigh fading channel with m...
In this study, the authors study binary decision fusion over a shared Rayleigh fading channel with m...
The problem of optimal data fusion in multiple detection systems is studied in the case where traini...
In a traditional communication system, a single sensor such as a radar or a sonar is used to detect ...
Abstract- The problem of decision fusion has been studied for distributed sensor systems in the past...
A distributed sensor network deployed to detect a binary event using a hard decision fusion scheme i...
In this paper, we propose a two-layer sensor fusion scheme for multiple hypotheses multisensor syste...
This chapter deals with a distributed version of the binary-hypothesis test which formalizes the cas...
In engineering design, it was shown by von Neumann that a reliable system can be built using unrelia...
Abstract- In this paper, we consider a binary distributed detection system in which a system of mult...
Since there has been an increasing interest in the areas of Internet of Things (IoT) and artificial ...
This article is a brief introduction to statistical decision theory. It provides background for unde...