ABSTRACT. A number of methods have been developed to analyze the response of the linear phased array radar. These perform remarkably well when the number of sources is known, but in cases where a determination of this number is required, problems are often encountered. These problems can be resolved by a Bayesian approach. Here, a linear phased-array consisting of equally spaced elements is considered. Analytic ex-pressions for the posterior probability distribution over source positions and amplitudes, and the corresponding Hessians are derived. These are integrated to give the evidence for each model order. Tests using model data showed that performance at the second level of inference is critically determined by the accuracy of position ...
Abstract—In this paper, we develop an adaptive waveform de-sign method for target tracking under a f...
Special attention has been given to “super-decisive” methods of spectral estimation [1–15] in the li...
The Bayesian inference framework for design introduced in Chan and Goggans [ Using Bayesian inferenc...
Detection of moving objects and definition of their position in space is an important task of radar ...
Abstract. This paper introduces and investigates the family of aperture distributions whose members ...
Abstract—Optimization and parameter estimation techniques have been employed for many years as a met...
This paper is focused on simultaneous target detection and angle estimation with a multichannel phas...
Signal strength information is a standard output of a modern radar system. Provided the amplitude of...
We consider robust and computationally efficient maximum likelihood algorithms for estimating the pa...
In this paper, a theoretical expression of the optimum non-Gaussian radar detector is derived from t...
191 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2008.In this thesis, we present a ...
As an emerging research topic in the last few years, MIMO radar problems have been studied by a few ...
This dissertation discusses three applications of statistical signal processing to estimation of sig...
We derive the expression of an optimum non-Gaussian radar detector from the non-Gaussian spherically...
International audienceThe problem considered is the estimation of a finite number of cisoids embedde...
Abstract—In this paper, we develop an adaptive waveform de-sign method for target tracking under a f...
Special attention has been given to “super-decisive” methods of spectral estimation [1–15] in the li...
The Bayesian inference framework for design introduced in Chan and Goggans [ Using Bayesian inferenc...
Detection of moving objects and definition of their position in space is an important task of radar ...
Abstract. This paper introduces and investigates the family of aperture distributions whose members ...
Abstract—Optimization and parameter estimation techniques have been employed for many years as a met...
This paper is focused on simultaneous target detection and angle estimation with a multichannel phas...
Signal strength information is a standard output of a modern radar system. Provided the amplitude of...
We consider robust and computationally efficient maximum likelihood algorithms for estimating the pa...
In this paper, a theoretical expression of the optimum non-Gaussian radar detector is derived from t...
191 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2008.In this thesis, we present a ...
As an emerging research topic in the last few years, MIMO radar problems have been studied by a few ...
This dissertation discusses three applications of statistical signal processing to estimation of sig...
We derive the expression of an optimum non-Gaussian radar detector from the non-Gaussian spherically...
International audienceThe problem considered is the estimation of a finite number of cisoids embedde...
Abstract—In this paper, we develop an adaptive waveform de-sign method for target tracking under a f...
Special attention has been given to “super-decisive” methods of spectral estimation [1–15] in the li...
The Bayesian inference framework for design introduced in Chan and Goggans [ Using Bayesian inferenc...