Online Deconvolution for Industrial Hyperspectral Imaging Systems
Author(s) -
Yingying Song,
ElHadi Djermoune,
Jie Chen,
Cédric Richard,
David Brie
Publication year - 2019
Publication title -
siam journal on imaging sciences
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.944
H-Index - 71
ISSN - 1936-4954
DOI - 10.1137/18m1177640
Subject(s) - hyperspectral imaging , deconvolution , computer science , artificial intelligence , blind deconvolution , computer vision , imaging science , wiener deconvolution , remote sensing , algorithm , geology
This paper proposes a hyperspectral image deconvolution algorithm for the online restoration of hyperspectral images as provided by wiskbroom and pushbroom scanning systems. We introduce a least-mean-squares (LMS)-based framework accounting for the convolution kernel noncausality and including nonquadratic (zero attracting and piecewise constant) regularization terms. This results in the so-called sliding block regularized LMS (SBR-LMS), which maintains a linear complexity compatible with real-time processing in industrial applications. A model for the algorithm mean and mean-squares transient behavior is derived and the stability condition is studied. Experiments are conducted to assess the role of each hyper-parameter. A key feature of the proposed SBR-LMS is that it outperforms standard approaches in low SNR scenarios such as ultra-fast scanning.
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