This thesis explores the problem of unsupervised selection of a set of spectral wavebands in a hyperspectral sensor for a surveillance task. Selecting a subset of wavebands for surveillance has the advantage of reducing data throughput and hence network bandwidth requirements, computational complexity for processing the data and storage requirements in a ground-station. For the sensor designer, Signal-To-Noise Ratio and other sensor-band improvements can be made on those bands deemed critical for the surveillance task. In chapters 3 and 4, we propose the use of locally correlated high-dimensional Gaussian Mixture models to account for band overlap where maximum likelihood estimates of the parameters of such a model are provided using the SA...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
We propose an anomaly detection method that uses Gaussian mixture models for characterizing the scen...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...
Hyperspectral sensors are delivering a data cube consisting of hundreds of images gathered in adjace...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...
Hyperspectral data offer refined spectral discrimination of ground targets, but come at a substantia...
Band selection, as a special case of the feature selection problem, tries to remove redundant bands ...
Due to recent technological advances in capturing and processing devices, hyperspectral imaging is b...
We investigate band selection for hyperspectral image classification. Mutual information (MI) measur...
Hyperspectral remote sensing data can be used for civil and military applications to robustly detect...
Constrained energy minimization (CEM) has shown effective in hyperspectral target detection. It line...
One of the major challenges in hyperspectral imaging (HSI) is the selection of the most informative ...
Abstract—In this paper, a band selection technique for hyperspectral image data is proposed. Supervi...
Variable environmental conditions cause different spectral responses of scene endmembers. Ignoring t...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
We propose an anomaly detection method that uses Gaussian mixture models for characterizing the scen...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...
Hyperspectral sensors are delivering a data cube consisting of hundreds of images gathered in adjace...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...
Hyperspectral data offer refined spectral discrimination of ground targets, but come at a substantia...
Band selection, as a special case of the feature selection problem, tries to remove redundant bands ...
Due to recent technological advances in capturing and processing devices, hyperspectral imaging is b...
We investigate band selection for hyperspectral image classification. Mutual information (MI) measur...
Hyperspectral remote sensing data can be used for civil and military applications to robustly detect...
Constrained energy minimization (CEM) has shown effective in hyperspectral target detection. It line...
One of the major challenges in hyperspectral imaging (HSI) is the selection of the most informative ...
Abstract—In this paper, a band selection technique for hyperspectral image data is proposed. Supervi...
Variable environmental conditions cause different spectral responses of scene endmembers. Ignoring t...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
We propose an anomaly detection method that uses Gaussian mixture models for characterizing the scen...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...