International audienceWe derive the expression of an optimum non-Gaussian radar detector from the non-Gaussian spherically invariant random process (SIRP) clutter model and a bayesian estimator of the SIRP characteristic density. SIRP modelizes non-Gaussian process as a complex Gaussian process whose variance, the so-called texture, is itself a positive random variable (r.v.). After performing a bayesian estimation of the texture probability density function (PDF) from reference clutter cells we derive the so-called bayesian optimum radar detector (BORD) without any knowledge about the clutter statistics. We also derive the asymptotic expression of BORD (in law convergence), the so-called asymptotic BORD, as well as its theoretical performa...
This paper considers the problem of adaptive radar detection in Gaussian clutter with unknown spectr...
In this paper we consider the problem of adaptive radar detection in Gaussian disturbance with unkno...
This paper presents a detailed theoretical analysis of a recently introduced covariance matrix estim...
International audienceWe derive the expression of an optimum non-Gaussian radar detector from the no...
We derive the expression of an optimum non-Gaussian radar detector from the non-Gaussian spherically...
In this paper, a theoretical expression of the optimum non-Gaussian radar detector is derived from t...
International audienceIn this paper detection performances of the Bayesian Optimum Radar Detector (B...
International audienceIn this paper, we study the adaptive version of the asymptotical Bayesian Opti...
In this paper, we study the adaptive version of the asymptot-ical Bayesian Optimum Radar Detector (B...
For a long time, radar echoes coming from the various returns of the transmitted signal on many obje...
Abstract — In this paper, an expression of the optimum non-Gaussian radar detector is derived from t...
In this paper, we use the theory of generalized likelihood ra-tio tests (GLRT) to study the adaptive...
International audienceIn this paper, we use the theory of generalized likelihood ratio tests (GLRT) ...
International audienceAt low grazing angle and/or high resolution radar, sea clutter is not Gaussian...
The area of research dedicated to the design and optimisation of radar detection schemes is a consta...
This paper considers the problem of adaptive radar detection in Gaussian clutter with unknown spectr...
In this paper we consider the problem of adaptive radar detection in Gaussian disturbance with unkno...
This paper presents a detailed theoretical analysis of a recently introduced covariance matrix estim...
International audienceWe derive the expression of an optimum non-Gaussian radar detector from the no...
We derive the expression of an optimum non-Gaussian radar detector from the non-Gaussian spherically...
In this paper, a theoretical expression of the optimum non-Gaussian radar detector is derived from t...
International audienceIn this paper detection performances of the Bayesian Optimum Radar Detector (B...
International audienceIn this paper, we study the adaptive version of the asymptotical Bayesian Opti...
In this paper, we study the adaptive version of the asymptot-ical Bayesian Optimum Radar Detector (B...
For a long time, radar echoes coming from the various returns of the transmitted signal on many obje...
Abstract — In this paper, an expression of the optimum non-Gaussian radar detector is derived from t...
In this paper, we use the theory of generalized likelihood ra-tio tests (GLRT) to study the adaptive...
International audienceIn this paper, we use the theory of generalized likelihood ratio tests (GLRT) ...
International audienceAt low grazing angle and/or high resolution radar, sea clutter is not Gaussian...
The area of research dedicated to the design and optimisation of radar detection schemes is a consta...
This paper considers the problem of adaptive radar detection in Gaussian clutter with unknown spectr...
In this paper we consider the problem of adaptive radar detection in Gaussian disturbance with unkno...
This paper presents a detailed theoretical analysis of a recently introduced covariance matrix estim...