Deep learning denoising by dimension reduction: Application to the ORION-B line cubes
Lucas Einig (IRAM), J\'er\^ome Pety (IRAM, LERMA (UMR\_8112)), Antoine, Roueff (IM2NP), Paul Vandame, Jocelyn Chanussot, Maryvonne Gerin, Jan H., Orkisz, Pierre Palud (CRIStAL, LERMA), Miriam Garcia Santa-Maria, Victor de, Souza Magalhaes, Ivana Be\v{s}li\'c, S\'ebastien Bardeau

TL;DR
This paper introduces a novel denoising method based on dimension reduction tailored for astronomical spectral data cubes, effectively enhancing low SNR regions while preserving high SNR signals, demonstrated on ORION-B line cubes.
Contribution
It adapts autoassociative neural networks for astronomical data, accounting for the unique statistical independence of spectral channels, improving denoising performance over existing methods.
Findings
Increased SNR in low-signal regions
Preserved spectral shape in high SNR voxels
Outperformed the state-of-the-art ROHSA algorithm
Abstract
Context. The availability of large bandwidth receivers for millimeter radio telescopes allows the acquisition of position-position-frequency data cubes over a wide field of view and a broad frequency coverage. These cubes contain much information on the physical, chemical, and kinematical properties of the emitting gas. However, their large size coupled with inhomogenous signal-to-noise ratio (SNR) are major challenges for consistent analysis and interpretation.Aims. We search for a denoising method of the low SNR regions of the studied data cubes that would allow to recover the low SNR emission without distorting the signals with high SNR.Methods. We perform an in-depth data analysis of the 13 CO and C 17 O (1 -- 0) data cubes obtained as part of the ORION-B large program performed at the IRAM 30m telescope. We analyse the statistical properties of the noise and the evolution of the…
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