Block-based spectral image reconstruction for compressive spectral imaging using smoothness on graphs

Author(s)Florez-Ospina, Juan F.
Author(s)Alrushud, Abdullah K. M.
Author(s)Lau, Daniel L.
Author(s)Arce, Gonzalo R.
Date Accessioned2022-03-30T14:31:01Z
Date Available2022-03-30T14:31:01Z
Publication Date2022-02-17
DescriptionThis article was originally published in Optics Express. The version of record is available at: https://doi.org/10.1364/OE.445938en_US
AbstractA novel reconstruction method for compressive spectral imaging is designed by assuming that the spectral image of interest is sufficiently smooth on a collection of graphs. Since the graphs are not known in advance, we propose to infer them from a panchromatic image using a state-of-the-art graph learning method. Our approach leads to solutions with closed-form that can be found efficiently by solving multiple sparse systems of linear equations in parallel. Extensive simulations and an experimental demonstration show the merits of our method in comparison with traditional methods based on sparsity and total variation and more recent methods based on low-rank minimization and deep-based plug-and-play priors. Our approach may be instrumental in designing efficient methods based on deep neural networks and covariance estimation.en_US
SponsorThis material is based upon work supported by the National Science Foundation under Grants NSF 1815992 and NSF 1816003.en_US
CitationJuan F. Florez-Ospina, Abdullah K. M. Alrushud, Daniel L. Lau, and Gonzalo R. Arce, "Block-based spectral image reconstruction for compressive spectral imaging using smoothness on graphs," Opt. Express 30, 7187-7209 (2022)en_US
ISSN1094-4087
URLhttps://udspace.udel.edu/handle/19716/30729
Languageen_USen_US
PublisherOptics Expressen_US
TitleBlock-based spectral image reconstruction for compressive spectral imaging using smoothness on graphsen_US
TypeArticleen_US
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