Inferring the dust emission at submillimeter and millimeter wavelengths using neural networks
D. Paradis, C. M\'eny, A. Noriega-Crespo, K. Demyk, I. Ristorcelli,, and N. Ysard

TL;DR
This paper uses supervised deep learning to predict high-resolution dust emission maps at submillimeter and millimeter wavelengths, surpassing the resolution of Planck data and applicable to various Galactic and extragalactic environments.
Contribution
It introduces a neural network model trained on Herschel data to produce dust emission maps at 37'' resolution, extending analysis capabilities beyond existing observational limits.
Findings
Neural network accurately reproduces dust emission maps across diverse environments.
Predicted spectral index close to 1 suggests a flattened dust emission spectrum at long wavelengths.
Model performs well on both Galactic and extragalactic data.
Abstract
The Planck mission provided all-sky dust emission maps in the submm to mm range at an angular resolution of 5'. In addition, some specific sources can be observed at long wavelengths and higher resolution using ground-based telescopes. These observations are limited to small scales and require extensive data processing before they become available for scientific analysis. They also suffer from extended emission filtering. At present, we are still unable to fully understand the emissivity variations observed in different astrophysical environments at long wavelengths. It is therefore challenging to estimate any dust emission in the submm-mm at a better resolution than the 5' from Planck. In this analysis, based on supervised deep learning algorithms, we produced dust emission predictions in the two Planck bands centered at 850 mic and 1.38 mm, at the Herschel resolution (37''). Herschel…
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Taxonomy
TopicsSpectroscopy and Laser Applications
