This thesis treats the problem of joint (simultaneous) detection and estimation which arises when estimation of signal parameters is desired but signal presence is uncertain. In general, a joint detection and estimation algorithm cannot simultaneously achieve optimal detection and optimal estimation performance. There is therefore a need to have a methodology for quantifying the performance tradeoffs between detection and estimation. This thesis provides such a methodology. We develop a theory for optimal simultaneous decisions for a finite set of intermediate and terminal decision states. This theory specifies simultaneous decision rules which minimize the worst case decision error probability under an inequality constraint on the probabil...
Ankara : The Department of Electrical and Electronics Engineering and the Graduate School of Enginee...
Adding noise to inputs of some suboptimal detectors or estimators can improve their performance unde...
The problem of optimal data fusion in multiple detection systems is studied in the case where traini...
An optimal decision framework is proposed for joint detection and decoding when the prior informatio...
We consider a well defined joint detection and parameter estimation problem. By combining the Baysia...
Adding noise to inputs of some suboptimal detectors or estimators can improve their performance unde...
Distributed detection with dependent observations is always a challenging problem. In this paper, we...
In this letter, joint optimization of signal structures and detectors is studied for binary communic...
This paper considers adaptive detection and estimation in the presence of useful signal and interfer...
Abstract—A receiver in a two-node system is required to make a decision of relevance as to received ...
We address two problems of distributed detection of a weak signal from dependent observations. In th...
This paper deals with the problem of discriminating samples that contain only noise from samples tha...
This dissertation begins with a tutorial survey which discusses many of the important topics associa...
This paper deals with the problem of discriminating samples that contain only noise from samples tha...
The error bound is a typical measure of the limiting performance of all filters for the given sensor...
Ankara : The Department of Electrical and Electronics Engineering and the Graduate School of Enginee...
Adding noise to inputs of some suboptimal detectors or estimators can improve their performance unde...
The problem of optimal data fusion in multiple detection systems is studied in the case where traini...
An optimal decision framework is proposed for joint detection and decoding when the prior informatio...
We consider a well defined joint detection and parameter estimation problem. By combining the Baysia...
Adding noise to inputs of some suboptimal detectors or estimators can improve their performance unde...
Distributed detection with dependent observations is always a challenging problem. In this paper, we...
In this letter, joint optimization of signal structures and detectors is studied for binary communic...
This paper considers adaptive detection and estimation in the presence of useful signal and interfer...
Abstract—A receiver in a two-node system is required to make a decision of relevance as to received ...
We address two problems of distributed detection of a weak signal from dependent observations. In th...
This paper deals with the problem of discriminating samples that contain only noise from samples tha...
This dissertation begins with a tutorial survey which discusses many of the important topics associa...
This paper deals with the problem of discriminating samples that contain only noise from samples tha...
The error bound is a typical measure of the limiting performance of all filters for the given sensor...
Ankara : The Department of Electrical and Electronics Engineering and the Graduate School of Enginee...
Adding noise to inputs of some suboptimal detectors or estimators can improve their performance unde...
The problem of optimal data fusion in multiple detection systems is studied in the case where traini...