<p>This dissertation presents methods and associated performance bounds for spectral image processing tasks such as reconstruction and target detection, which are useful in a variety of applications such as astronomical imaging, biomedical imaging and remote sensing. The key idea behind our spectral image processing methods is the fact that important information in a spectral image can often be captured by low-dimensional manifolds embedded in high-dimensional spectral data. Based on this key idea, our work focuses on the reconstruction of spectral images from <italic>photon-limited</italic>, and distorted observations. </p><p>This dissertation presents a partition-based, maximum penalized likelihood method that recovers spectral images fro...
Traditional spectral imagers require 2-dimensional detectors. We present a new method to im-plement ...
This paper investigates the efficiency of spectral metrics when used in spectral screening of hypers...
In recent years, the literature of hyperspectral target detection has seen the growth of a well-defi...
In this thesis, we develop a class of novel spectral imaging techniques that enable capabilities bey...
Hyperspectral imaging requires handling a large amount of multidimensional spectral information. Hyp...
In this paper we present a class of detection filters based on variations of the spectral screening....
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
This dissertation focuses on the development of high-quality image reconstruction methods from a lim...
Spectral imaging systems capture spectral and spatial information from a scene to produce a spectral...
Compressive spectral imaging is a technique that reconstructs the three-dimensional (3D) spectral da...
Spectral imaging, the simultaneous imaging and spectroscopy of a radiating scene, is a fundamental d...
International audienceIn the past years, one common way of enhancing the spatial resolution of a hyp...
Compressed Sensing (CS) theory is progressively gaining more interest over scientists of different f...
International audienceCompressive spectral imagers reduce the number of sampled pixels by coding and...
Traditional spectral imagers require 2-dimensional detectors. We present a new method to im-plement ...
This paper investigates the efficiency of spectral metrics when used in spectral screening of hypers...
In recent years, the literature of hyperspectral target detection has seen the growth of a well-defi...
In this thesis, we develop a class of novel spectral imaging techniques that enable capabilities bey...
Hyperspectral imaging requires handling a large amount of multidimensional spectral information. Hyp...
In this paper we present a class of detection filters based on variations of the spectral screening....
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
This dissertation focuses on the development of high-quality image reconstruction methods from a lim...
Spectral imaging systems capture spectral and spatial information from a scene to produce a spectral...
Compressive spectral imaging is a technique that reconstructs the three-dimensional (3D) spectral da...
Spectral imaging, the simultaneous imaging and spectroscopy of a radiating scene, is a fundamental d...
International audienceIn the past years, one common way of enhancing the spatial resolution of a hyp...
Compressed Sensing (CS) theory is progressively gaining more interest over scientists of different f...
International audienceCompressive spectral imagers reduce the number of sampled pixels by coding and...
Traditional spectral imagers require 2-dimensional detectors. We present a new method to im-plement ...
This paper investigates the efficiency of spectral metrics when used in spectral screening of hypers...
In recent years, the literature of hyperspectral target detection has seen the growth of a well-defi...