Supervised machine learning on Galactic filaments Revealing the filamentary structure of the Galactic interstellar medium
A. Zavagno, F.-X. Dup\'e, S. Bensaid, E. Schisano, G. Li Causi, M., Gray, S. Molinari, D. Elia, J.-C. Lambert, M. Brescia, D. Arzoumanian, D., Russeil, G. Riccio, and S. Cavuoti

TL;DR
This study demonstrates that supervised machine learning, specifically UNet-based networks, can effectively identify and reveal filamentary structures across the entire Galactic plane, including previously undetected low-contrast filaments.
Contribution
We developed a UNet-based image segmentation method trained on filament skeletons to detect Galactic filaments, revealing new low-contrast structures.
Findings
The method classifies 2 to 7 times more pixels as filaments than input skeletons.
It detects low-contrast, previously unseen filaments.
The approach is robust and optimizes filament recovery.
Abstract
Context. Filaments are ubiquitous in the Galaxy, and they host star formation. Detecting them in a reliable way is therefore key towards our understanding of the star formation process. Aims. We explore whether supervised machine learning can identify filamentary structures on the whole Galactic plane. Methods. We used two versions of UNet-based networks for image segmentation.We used H2 column density images of the Galactic plane obtained with Herschel Hi-GAL data as input data. We trained the UNet-based networks with skeletons (spine plus branches) of filaments that were extracted from these images, together with background and missing data masks that we produced. We tested eight training scenarios to determine the best scenario for our astrophysical purpose of classifying pixels as filaments. Results. The training of the UNets allows us to create a new image of the Galactic…
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Taxonomy
TopicsSpectroscopy and Laser Applications · Atmospheric Ozone and Climate · Astrophysics and Star Formation Studies
