This paper proposes a fully unsupervised anomaly detection strategy in hyperspectral imagery based on mixture learning. Anomaly detection is conducted by adopting a Gaussian mixture model (GMM) to describe the statistics of the background in hyperspectral data. One of the key tasks in the application of mixture models is the specification in advance of the number of GMM components, the determination of which is essential and strongly affects detection performance. In this work, GMM parameters estimation was performed through a variation of the well-known expectation maximization (EM) algorithm that was developed within a Bayesian framework. Specifically, the adopted mixture learning technique incorporates a built-in mechanism for automatica...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
This thesis explores the problem of unsupervised selection of a set of spectral wavebands in a hyper...
The studies on hyperspectral target detection until now, has been treated in two approaches. Anomaly...
We propose an anomaly detection method that uses Gaussian mixture models for characterizing the scen...
Anomaly detectors reveal the presence of objects/materials in a multi/hyperspectral image simply sea...
Cataloged from PDF version of thesis.Includes bibliographical references (leaves 59-67).Thesis (M.S....
The background dictionary used in the hyperspectral images anomaly detection based on low-rank and s...
Anomaly detection (AD) in remotely sensed hyperspectral images has been proven to be valuable in man...
Spectra collected by hyperspectral sensors over samples of the same material are not deterministic q...
Increasing spectral and spatial resolution of new-generation remotely sensed images necessitate the ...
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
Anomaly Detection methods are used when there is not enough information about the target to detect. ...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
Anomaly detection is an active research topic in hyperspectral remote sensing and has been applied i...
Automatic anomaly detection has previously been implemented on hyperspectral images by use of differ...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
This thesis explores the problem of unsupervised selection of a set of spectral wavebands in a hyper...
The studies on hyperspectral target detection until now, has been treated in two approaches. Anomaly...
We propose an anomaly detection method that uses Gaussian mixture models for characterizing the scen...
Anomaly detectors reveal the presence of objects/materials in a multi/hyperspectral image simply sea...
Cataloged from PDF version of thesis.Includes bibliographical references (leaves 59-67).Thesis (M.S....
The background dictionary used in the hyperspectral images anomaly detection based on low-rank and s...
Anomaly detection (AD) in remotely sensed hyperspectral images has been proven to be valuable in man...
Spectra collected by hyperspectral sensors over samples of the same material are not deterministic q...
Increasing spectral and spatial resolution of new-generation remotely sensed images necessitate the ...
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
Anomaly Detection methods are used when there is not enough information about the target to detect. ...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
Anomaly detection is an active research topic in hyperspectral remote sensing and has been applied i...
Automatic anomaly detection has previously been implemented on hyperspectral images by use of differ...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
This thesis explores the problem of unsupervised selection of a set of spectral wavebands in a hyper...
The studies on hyperspectral target detection until now, has been treated in two approaches. Anomaly...