Spectro-spatial hyperspectral image reconstruction from interferometric acquisitions
In the last decade, novel hyperspectral cameras have been developed with particularly desirable characteristics of compactness and short acquisition time, retaining their potential to obtain spectral/spatial resolution competitive with respect to traditional cameras. However, a computational effort...
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Zusammenfassung: | In the last decade, novel hyperspectral cameras have been developed with
particularly desirable characteristics of compactness and short acquisition
time, retaining their potential to obtain spectral/spatial resolution
competitive with respect to traditional cameras. However, a computational
effort is required to recover an interpretable data cube. In this work we focus
our attention on imaging spectrometers based on interferometry, for which the
raw acquisition is an image whose spectral component is expressed as an
interferogram. Previous works have focused on the inversion of such acquisition
on a pixel-by-pixel basis within a Bayesian framework, leaving behind critical
information on the spatial structure of the image data cube. In this work, we
address this problem by integrating a spatial regularization for image
reconstruction, showing that the combination of spectral and spatial
regularizers leads to enhanced performances with respect to the pixelwise case.
We compare our results with Plug-and-Play techniques, as its strategy to inject
a set of denoisers from the literature can be implemented seamlessly with our
physics-based formulation of the optimization problem. |
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DOI: | 10.48550/arxiv.2310.01898 |