Compressive spectral imaging is a rapidly growing area yielding higher performance novel spectral imagers than conventional ones. Inspired by compressed sensing theory, compressive spectral imagers aim to reconstruct the spectral images from compressive measurements using sparse signal recovery algorithms. In this paper, first, the image formation model and a sparsity-based reconstruction approach are presented for compressive photon-sieve spectral imager. Then the reconstruction performance of the approach is analyzed using different sparsity priors. In the system, a coded aperture is used for modulation and a photon-sieve for dispersion. In the measurements, coded and blurred images of spectral bands are superimposed. Simulation results s...
The coded aperture snapshot spectral imager (CASSI) is an optical architecture that captures spectra...
Spectral imaging systems capture spectral and spatial information from a scene to produce a spectral...
<p>This dissertation describes two computational sensors that were used to demonstrate applications ...
We develop a new compressive spectral imaging modality that utilizes a coded aperture and a photon-s...
We develop an efficient and adaptive sparse reconstruction approach for the recovery of spectral ima...
Compressive spectral imaging is a technique that reconstructs the three-dimensional (3D) spectral da...
This paper describes a single-shot spectral imaging approach based on the concept of compressive sen...
The coded aperture snapshot spectral imager (CASSI) is an optical architecture that captures spectra...
Compressive imaging is an emerging field which allows one to acquire far fewer measurements of a sce...
Compressive imaging is an emerging field which allows one to acquire far fewer measurements of a sce...
Hyperspectral imaging typically produces huge data volume that demands enormous computational resour...
An iterative algorithm is used to reconstruct the spectra of light passing through a scanning Michel...
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
In this paper, a convolution sparse coding method based on global structure characteristics and spec...
The coded aperture snapshot spectral imager (CASSI) is an optical architecture that captures spectra...
Spectral imaging systems capture spectral and spatial information from a scene to produce a spectral...
<p>This dissertation describes two computational sensors that were used to demonstrate applications ...
We develop a new compressive spectral imaging modality that utilizes a coded aperture and a photon-s...
We develop an efficient and adaptive sparse reconstruction approach for the recovery of spectral ima...
Compressive spectral imaging is a technique that reconstructs the three-dimensional (3D) spectral da...
This paper describes a single-shot spectral imaging approach based on the concept of compressive sen...
The coded aperture snapshot spectral imager (CASSI) is an optical architecture that captures spectra...
Compressive imaging is an emerging field which allows one to acquire far fewer measurements of a sce...
Compressive imaging is an emerging field which allows one to acquire far fewer measurements of a sce...
Hyperspectral imaging typically produces huge data volume that demands enormous computational resour...
An iterative algorithm is used to reconstruct the spectra of light passing through a scanning Michel...
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
In this paper, a convolution sparse coding method based on global structure characteristics and spec...
The coded aperture snapshot spectral imager (CASSI) is an optical architecture that captures spectra...
Spectral imaging systems capture spectral and spatial information from a scene to produce a spectral...
<p>This dissertation describes two computational sensors that were used to demonstrate applications ...