For better performance of hyperspectral target detectors, the prior target spectrum is expected to be accurate and consistent with the target spectrum in the hyperspectral image to be detected. The existing hyperspectral target detection algorithms usually assume that the prior target spectrum is highly reliable. However, the label obtained is not always precise in practice, and pixels of the same object may have quite different spectra. Since it is hard to acquire a highly reliable prior target spectrum in some application scenarios, we propose a Bayesian constrained energy minimization (B-CEM) method for hyperspectral target detection. Instead of the point estimation of the target spectrum, we infer the posterior distribution of the true ...
In recent years, the literature of hyperspectral target detection has seen the growth of a well-defi...
A refined energy constrained minimization method is developed for target detection in hyperspectral ...
This dissertation presents unsupervised spectral target detection and classification from a statisti...
Constrained energy minimization (CEM) has shown effective in hyperspectral target detection. It line...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
Abstract—Exploiting hyperspectral imagery without prior in-formation is a challenge. Under this circ...
With high-resolution spatial information and continuous spectrum information, hyperspectral remote s...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
Spectra collected by hyperspectral sensors over samples of the same material are not deterministic q...
Target detection of hyperspectral image has always been a hot research topic, especially due to its ...
International audienceIn this work, a novel target detector for hyperspectral imagery is developed. ...
In this study, a target detection algorithm was proposed for using hyperspectral imagery. The propos...
Hyperspectral target detection is widely used in both military and civilian fields. In practical app...
Hyperspectral remote sensing data can be used for civil and military applications to robustly de...
When accounting for heterogeneity and non-Gaussianity of real hyperspectral data, elliptical distrib...
In recent years, the literature of hyperspectral target detection has seen the growth of a well-defi...
A refined energy constrained minimization method is developed for target detection in hyperspectral ...
This dissertation presents unsupervised spectral target detection and classification from a statisti...
Constrained energy minimization (CEM) has shown effective in hyperspectral target detection. It line...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
Abstract—Exploiting hyperspectral imagery without prior in-formation is a challenge. Under this circ...
With high-resolution spatial information and continuous spectrum information, hyperspectral remote s...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
Spectra collected by hyperspectral sensors over samples of the same material are not deterministic q...
Target detection of hyperspectral image has always been a hot research topic, especially due to its ...
International audienceIn this work, a novel target detector for hyperspectral imagery is developed. ...
In this study, a target detection algorithm was proposed for using hyperspectral imagery. The propos...
Hyperspectral target detection is widely used in both military and civilian fields. In practical app...
Hyperspectral remote sensing data can be used for civil and military applications to robustly de...
When accounting for heterogeneity and non-Gaussianity of real hyperspectral data, elliptical distrib...
In recent years, the literature of hyperspectral target detection has seen the growth of a well-defi...
A refined energy constrained minimization method is developed for target detection in hyperspectral ...
This dissertation presents unsupervised spectral target detection and classification from a statisti...