International audienceAnomaly Detection methods are used when there is not enough information about the target to detect. These methods search for pixels in the image with spectral characteristics that differ from the background. The most widespread detection test, the RX-detector, is based on the Mahalanobis distance and on the background statistical characterization through the mean vector and the covariance matrix. Although non-Gaussian distributions have already been introduced for background modeling in Hyperspectral Imaging, the parameters estimation is still performed using the Maximum Likelihood Estimates for Gaussian distribution. This paper describes robust estimation procedures more suitable for non-Gaussian environment. Therefor...
In remote sensing, hyperspectral sensors are effectively used for target detection and recognition b...
Anomaly detection algorithms for hyperspectral imagery (HSI) are an important first step in the anal...
In this paper, we investigate the constant false-alarm rate (CFAR) property of the RX anomaly detect...
International audienceAnomaly Detection methods are used when there is not enough information about ...
Anomaly Detection methods are used when there is not enough information about the target to detect. ...
International audienceAnomaly detection methods are devoted to target detection schemes in which no ...
International audienceWhen accounting for heterogeneity and non-Gaussianity of real hyperspectral da...
This paper deals with hyperspectral detection in impulsive and/or non homogeneous background context...
Abstract—Anomaly detection methods are devoted to target detection schemes in which no a priori info...
Print ISBN: 978-1-4577-1003-2International audienceThis paper deals with hyperspectral detection in ...
International audienceCovariance matrix estimation is fundamental for anomaly detection, especially ...
Detecting targets with unknown spectral signatures in hyperspectral imagery has been proven to be a ...
When accounting for heterogeneity and non-Gaussianity of real hyperspectral data, elliptical distrib...
<p>With recent advances in hyperspectral imaging sensors, subtle and concealed targets that cannot b...
Standard anomaly detectors and classifiers assume data to be uncorrelated and homogeneous, which is ...
In remote sensing, hyperspectral sensors are effectively used for target detection and recognition b...
Anomaly detection algorithms for hyperspectral imagery (HSI) are an important first step in the anal...
In this paper, we investigate the constant false-alarm rate (CFAR) property of the RX anomaly detect...
International audienceAnomaly Detection methods are used when there is not enough information about ...
Anomaly Detection methods are used when there is not enough information about the target to detect. ...
International audienceAnomaly detection methods are devoted to target detection schemes in which no ...
International audienceWhen accounting for heterogeneity and non-Gaussianity of real hyperspectral da...
This paper deals with hyperspectral detection in impulsive and/or non homogeneous background context...
Abstract—Anomaly detection methods are devoted to target detection schemes in which no a priori info...
Print ISBN: 978-1-4577-1003-2International audienceThis paper deals with hyperspectral detection in ...
International audienceCovariance matrix estimation is fundamental for anomaly detection, especially ...
Detecting targets with unknown spectral signatures in hyperspectral imagery has been proven to be a ...
When accounting for heterogeneity and non-Gaussianity of real hyperspectral data, elliptical distrib...
<p>With recent advances in hyperspectral imaging sensors, subtle and concealed targets that cannot b...
Standard anomaly detectors and classifiers assume data to be uncorrelated and homogeneous, which is ...
In remote sensing, hyperspectral sensors are effectively used for target detection and recognition b...
Anomaly detection algorithms for hyperspectral imagery (HSI) are an important first step in the anal...
In this paper, we investigate the constant false-alarm rate (CFAR) property of the RX anomaly detect...