We investigate the potential of k-nearest neighbor (KNN) based decision algorithms to detect a coherent signal in presence of non-Gaussian clutter, modeled in terms of a K-distributed spherically-invariant random vector (SIRV), plus thermal noise. The decision rule is fed by commonly used statistics, i.e., modified adaptive coherence estimator (ACE) and Kelly's statistics. The performance assessment shows that KNN based detectors can achieve intermediate performance between the modified ACE and Kelly's detectors for low signal-to-clutter ratio (SCR) values, and close to the latter for higher SCR values. A sensitivity analysis to possible mismatches of the clutter covariance matrix and/or the shape parameter of the K-distribution is also per...
Knowledge-based radar detection for space-time adaptive processing applications is addressed. At the...
International audienceIn the context of radar detection, the clutter covariance matrix estimation is...
This paper deals with radar detection of spatially-distributed targets embedded in Gaussian noise wi...
A k-nearest neighbors (KNN) approach to the design of radar detectors is investigated. The idea is t...
The paper shows the non CFAR characteristic of the Asymptotically Optimum Detector (AOD), when appli...
New results are presented for coherent detection of radar signals with random parameters in correlat...
The detection of signals with unknown parameters in correlated K-distributed noise, using the gene...
The problem of robust radar detection is addressed from a machine learning inspired perspective. In ...
This paper considers the problem of adaptive radar detection in Gaussian clutter with unknown spectr...
This paper deals with the problem of coherent radar detection of targets embedded in clutter modeled...
Space-time adaptive processing (STAP) is an important airborne radar technique used to improve targe...
This paper presents a unique false alarm mitigation approach for nonhomogeneous clutter, which is pr...
This paper addresses adaptive detection of range spread targets in the presence of thermal noise, ja...
ii We examine the problem of determining a decision threshold for the binary hy-pothesis test that n...
in this paper we address polarimetric adaptive detection of targets embedded in compound-Gaussian cl...
Knowledge-based radar detection for space-time adaptive processing applications is addressed. At the...
International audienceIn the context of radar detection, the clutter covariance matrix estimation is...
This paper deals with radar detection of spatially-distributed targets embedded in Gaussian noise wi...
A k-nearest neighbors (KNN) approach to the design of radar detectors is investigated. The idea is t...
The paper shows the non CFAR characteristic of the Asymptotically Optimum Detector (AOD), when appli...
New results are presented for coherent detection of radar signals with random parameters in correlat...
The detection of signals with unknown parameters in correlated K-distributed noise, using the gene...
The problem of robust radar detection is addressed from a machine learning inspired perspective. In ...
This paper considers the problem of adaptive radar detection in Gaussian clutter with unknown spectr...
This paper deals with the problem of coherent radar detection of targets embedded in clutter modeled...
Space-time adaptive processing (STAP) is an important airborne radar technique used to improve targe...
This paper presents a unique false alarm mitigation approach for nonhomogeneous clutter, which is pr...
This paper addresses adaptive detection of range spread targets in the presence of thermal noise, ja...
ii We examine the problem of determining a decision threshold for the binary hy-pothesis test that n...
in this paper we address polarimetric adaptive detection of targets embedded in compound-Gaussian cl...
Knowledge-based radar detection for space-time adaptive processing applications is addressed. At the...
International audienceIn the context of radar detection, the clutter covariance matrix estimation is...
This paper deals with radar detection of spatially-distributed targets embedded in Gaussian noise wi...