International audienceIn classical detection framework, the parameter space is usually discretized, so that in reality received parameter dependent signals are never perfectly aligned with the signal model under test: it leads to the off-grid signal mismatch. In a Gaussian adaptive context (i.e. the noise covariance is unknown), Kelly GLRT and AMF detectors are well established techniques that can suffer severe performance degradation in presence of this kind of mismatch. We propose here to use adaptive subspace detectors to solve this issue, a suitable sub-space (that coincides with the Discrete Prolate Spheroidal Sequences basis when the signal model is that of sinusoids in noise) is proposed that offers robust performance. The interest l...
In this paper a multichannel subspace detector is proposed based on a separable spatio-temporal line...
Adaptive detection of signals embedded in correlated Gaussian noise has been an active field of rese...
Signal detection in certain noise environments fits naturally into a statistical hypothesis testing ...
International audienceIn classical detection framework, the parameter space is usually discretized, ...
This paper is devoted to the performance analysis of the detectors proposed in the companion paper w...
We consider the problem of adaptive signal detection in the presence of Gaussian noise with unknown...
Matched subspace detectors generalize the matched filter by accommodating signals that are only cons...
This paper addresses the problem of detecting multiple point-like targets in the presence of steerin...
This paper addresses the problem of detecting multidimensional subspace signals, which model range-s...
Includes bibliographical references.In this paper, we use the theory of generalized likelihood ratio...
We address adaptive detection of Swerling 2 pulse trains by an array of antennas. The disturbance is...
Adaptive detection of signals embedded in correlated Gaussian noise has been an active field of rese...
We address the problem of matched subspace detection in the presence of arbitrary noise and interfer...
Abstract—We consider the problem of detecting a subspace signal in white Gaussian noise when the noi...
This paper considers adaptive detection and estimation in the presence of useful signal and interfer...
In this paper a multichannel subspace detector is proposed based on a separable spatio-temporal line...
Adaptive detection of signals embedded in correlated Gaussian noise has been an active field of rese...
Signal detection in certain noise environments fits naturally into a statistical hypothesis testing ...
International audienceIn classical detection framework, the parameter space is usually discretized, ...
This paper is devoted to the performance analysis of the detectors proposed in the companion paper w...
We consider the problem of adaptive signal detection in the presence of Gaussian noise with unknown...
Matched subspace detectors generalize the matched filter by accommodating signals that are only cons...
This paper addresses the problem of detecting multiple point-like targets in the presence of steerin...
This paper addresses the problem of detecting multidimensional subspace signals, which model range-s...
Includes bibliographical references.In this paper, we use the theory of generalized likelihood ratio...
We address adaptive detection of Swerling 2 pulse trains by an array of antennas. The disturbance is...
Adaptive detection of signals embedded in correlated Gaussian noise has been an active field of rese...
We address the problem of matched subspace detection in the presence of arbitrary noise and interfer...
Abstract—We consider the problem of detecting a subspace signal in white Gaussian noise when the noi...
This paper considers adaptive detection and estimation in the presence of useful signal and interfer...
In this paper a multichannel subspace detector is proposed based on a separable spatio-temporal line...
Adaptive detection of signals embedded in correlated Gaussian noise has been an active field of rese...
Signal detection in certain noise environments fits naturally into a statistical hypothesis testing ...