Filament identification became a key step to tackling fundamental problems in various fields of Astronomy. Nevertheless, existing filament identification algorithms are critically user-dependent and require individual parametrization. In this study, we aimed at adapting the neural networks approach to elaborate the best model for filament identification that would not require fine-tuning for a given astronomical map. First, we created training samples based on the most commonly used maps of the interstellar medium obtained by Planck and Herschel space telescopes and the atomic hydrogen all-sky survey HI4PI. We used the Rolling Hough Transform, a widely used algorithm for filament identification, to produce training outputs. In the next step...
Context. Filamentary structures appear to be ubiquitous in the interstellar medium. Being able to de...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
Astronomy is always in a quest of revealing the mysteries of our Universe. There is a vast amount of...
Context. Filaments are ubiquitous in the Galaxy, and they host star formation. Detecting them in a r...
International audienceContext. Filaments are ubiquitous in the Galaxy, and they host star formation....
Understanding star formation is key to understand galaxy evolution. Observations collected in the He...
We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classification)...
We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classification)...
We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classificatio...
Globular clusters (GCs) have been at the heart of many longstanding questions in many sub-fields of ...
International audienceIn the first two papers of this series (Rhea et al. 2020b; Rhea et al. 2021), ...
International audienceIn the first paper of this series, we demonstrated that neural networks can ro...
15 pages, 11 figures, 5 tablesContext. Filamentary structures appear to be ubiquitous in the interst...
International audienceABSTRACT Imaging the cosmic 21 cm signal will map out the first billion years ...
Context. Both simulations and observations of the interstellar medium show that the study of the rel...
Context. Filamentary structures appear to be ubiquitous in the interstellar medium. Being able to de...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
Astronomy is always in a quest of revealing the mysteries of our Universe. There is a vast amount of...
Context. Filaments are ubiquitous in the Galaxy, and they host star formation. Detecting them in a r...
International audienceContext. Filaments are ubiquitous in the Galaxy, and they host star formation....
Understanding star formation is key to understand galaxy evolution. Observations collected in the He...
We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classification)...
We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classification)...
We present an innovative method called FilExSeC (Filaments Extraction, Selection and Classificatio...
Globular clusters (GCs) have been at the heart of many longstanding questions in many sub-fields of ...
International audienceIn the first two papers of this series (Rhea et al. 2020b; Rhea et al. 2021), ...
International audienceIn the first paper of this series, we demonstrated that neural networks can ro...
15 pages, 11 figures, 5 tablesContext. Filamentary structures appear to be ubiquitous in the interst...
International audienceABSTRACT Imaging the cosmic 21 cm signal will map out the first billion years ...
Context. Both simulations and observations of the interstellar medium show that the study of the rel...
Context. Filamentary structures appear to be ubiquitous in the interstellar medium. Being able to de...
With increased adoption of supervised deep learning methods for processing and analysis of cosmologi...
Astronomy is always in a quest of revealing the mysteries of our Universe. There is a vast amount of...