Multispectral Snapshot Demosaicing Via Non-Convex Matrix Completion

Giancarlo A. Antonucci,Simon Vary,David Humphreys,Robert A. Lamb, Jonathan Piper,Jared Tanner

2019 IEEE Data Science Workshop (DSW)(2019)

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摘要
Snapshot mosaic multispectral imagery acquires an under-sampled data cube by acquiring a single spectral measurement per spatial pixel. Sensors which acquire p frequencies, therefore, suffer from severe 1/p undersampling of the full data cube. We show that the missing entries can be accurately imputed using non-convex techniques from sparse approximation and matrix completion initialised with traditional demosaicing algorithms. In particular, we observe the peak signal-to-noise ratio can typically be improved by 2 dB to 5 dB over current state-of-the-art methods when simulating a p = 16 mosaic sensor measuring both high and low altitude urban and rural scenes as well as ground-based scenes.
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关键词
Snapshot multispectral imaging,Sparse approximation,Compressed sensing,Matrix completion,Demosaicing
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