In this work a novel target detector is proposed that is nonparametric in terms of conditional probability density function (pdf) estimation and parametric with respect to the target strength of the additive model it relies upon. The variable bandwidth kernel density estimator is employed to estimate the conditional pdfs, whereas the target strength is estimated via the Maximum Likelihood approach. Experimental results over real hyperspectral data show that the detector succeeds in detecting target objects embedded in a complex background and in providing reasonable estimates for the target strengths
Over the past few years, hyperspectral data exploitation aimed at detecting spectral anomalies with...
For better performance of hyperspectral target detectors, the prior target spectrum is expected to b...
This paper develops a hybrid target detector that incorporates structured backgrounds and physics ba...
In this work a novel target detector is proposed that is nonparametric in terms of conditional proba...
This work presents a novel target detector that combines a nonparametric approach for conditional pr...
The generalized likelihood ratio test (GLRT) is here combined with the nonparametric approach to der...
Target detection experiments with a novel non-parametric detector are carried out exploiting the ava...
This letter presents a scheme for detecting global anomalies, in which a likelihood ratio test based...
International audienceIn this work, a novel target detector for hyperspectral imagery is developed. ...
Recent studies on global anomaly detection (AD) in hyperspectral images have focused on non-parametr...
Anomaly detection (AD) in remotely sensed hyperspectral images has been proven to be valuable in man...
International audienceIn hyperspectral imaging the replacement model where a target, if present, par...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
The goal of this research is to develop a new algorithm for the detection of subpixel scale target m...
<p>Hyperspectral target detection is an approach which tries to locate targets in a hyperspectral im...
Over the past few years, hyperspectral data exploitation aimed at detecting spectral anomalies with...
For better performance of hyperspectral target detectors, the prior target spectrum is expected to b...
This paper develops a hybrid target detector that incorporates structured backgrounds and physics ba...
In this work a novel target detector is proposed that is nonparametric in terms of conditional proba...
This work presents a novel target detector that combines a nonparametric approach for conditional pr...
The generalized likelihood ratio test (GLRT) is here combined with the nonparametric approach to der...
Target detection experiments with a novel non-parametric detector are carried out exploiting the ava...
This letter presents a scheme for detecting global anomalies, in which a likelihood ratio test based...
International audienceIn this work, a novel target detector for hyperspectral imagery is developed. ...
Recent studies on global anomaly detection (AD) in hyperspectral images have focused on non-parametr...
Anomaly detection (AD) in remotely sensed hyperspectral images has been proven to be valuable in man...
International audienceIn hyperspectral imaging the replacement model where a target, if present, par...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
The goal of this research is to develop a new algorithm for the detection of subpixel scale target m...
<p>Hyperspectral target detection is an approach which tries to locate targets in a hyperspectral im...
Over the past few years, hyperspectral data exploitation aimed at detecting spectral anomalies with...
For better performance of hyperspectral target detectors, the prior target spectrum is expected to b...
This paper develops a hybrid target detector that incorporates structured backgrounds and physics ba...