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Dictionary learning for hyperspectral video compressive sensing

Publication ,  Conference
Carin, L
Published in: Frontiers in Optics, FIO 2012
January 1, 2012

Blind compressive sensing (CS) is considered for reconstruction of hyperspectral data imaged by a coded aperture camera. The measurements are manifested as a superposition of the coded wavelengthdependent data, with the ambient three-dimensional hyperspectral datacube mapped to a two-dimensional measurement. The hyperspectral datacube is recovered using a Bayesian implementation of blind CS. Several demonstration experiments are presented, including measurements performed using a coded aperture snapshot spectral imager (CASSI) camera. The proposed approach is capable of efficiently reconstructing large hyperspectral datacubes, including hyperspectral video. Comparisons are made between the proposed algorithm and other techniques employed in compressive sensing, dictionary learning and matrix factorization. © OSA 2012.

Duke Scholars

Published In

Frontiers in Optics, FIO 2012

DOI

Publication Date

January 1, 2012
 

Citation

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Carin, L. (2012). Dictionary learning for hyperspectral video compressive sensing. In Frontiers in Optics, FIO 2012. https://doi.org/10.1364/fio.2012.fm4c.5
Carin, L. “Dictionary learning for hyperspectral video compressive sensing.” In Frontiers in Optics, FIO 2012, 2012. https://doi.org/10.1364/fio.2012.fm4c.5.
Carin L. Dictionary learning for hyperspectral video compressive sensing. In: Frontiers in Optics, FIO 2012. 2012.
Carin, L. “Dictionary learning for hyperspectral video compressive sensing.” Frontiers in Optics, FIO 2012, 2012. Scopus, doi:10.1364/fio.2012.fm4c.5.
Carin L. Dictionary learning for hyperspectral video compressive sensing. Frontiers in Optics, FIO 2012. 2012.

Published In

Frontiers in Optics, FIO 2012

DOI

Publication Date

January 1, 2012