In this work, we present a machine learning (ML) clustering algorithm for the classification of the interstellar medium (ISM) main components (HII regions, supernova remnants (SNR) and diffuse ionize gas (DIG) regions). We study the ISM components of the NGC 300 galaxy from MUSE integral field spectroscopy observations. These observations give us an ISM spatial resolution of a few parsecs. In order to disentangle this complex ISM, we apply an unsupervised Bayesian Gaussian Mixture Model algorithm to a data set of spaxel-by-spaxel main strong emission lines. Our method produces an automatic and unbiased detection of the main components of the ISM combining the spatial and spectral information
In this paper, we discuss an application of machine-learning-based methods to the identification of ...
Context. The two currently largest all-sky photometric datasets, WISE and SuperCOSMOS, have been rec...
The application of machine learning (ML) techniques to simulated cosmological data aids in the devel...
Understanding the structure and physical properties of the Interstellar Medium (ISM) in galaxies, es...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
International audienceContext. We map the interstellar medium (ISM) including the diffuse interstell...
In this work, I investigate the possibility of finding a data-driven solution to the problem of auto...
International audienceIn the first two papers of this series (Rhea et al. 2020b; Rhea et al. 2021), ...
Galaxies host a wide array of internal stellar components, which need to be decomposed accurately in...
International audienceDiagnostic diagrams of emission-line ratios have been used extensively to cate...
In Astrophysics, the identification of candidate Globular Clusters through deep, wide-field, single ...
My presentation highlights the compatibility of remote sensing and astronomy methods. Here I discuss...
This thesis explores the use of state-of-the-art computational analysis techniques in astronomy. Thi...
In this paper, we discuss an application of machine-learning-based methods to the identification of ...
In this paper, we discuss an application of machine-learning-based methods to the identification of ...
Context. The two currently largest all-sky photometric datasets, WISE and SuperCOSMOS, have been rec...
The application of machine learning (ML) techniques to simulated cosmological data aids in the devel...
Understanding the structure and physical properties of the Interstellar Medium (ISM) in galaxies, es...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
International audienceContext. We map the interstellar medium (ISM) including the diffuse interstell...
In this work, I investigate the possibility of finding a data-driven solution to the problem of auto...
International audienceIn the first two papers of this series (Rhea et al. 2020b; Rhea et al. 2021), ...
Galaxies host a wide array of internal stellar components, which need to be decomposed accurately in...
International audienceDiagnostic diagrams of emission-line ratios have been used extensively to cate...
In Astrophysics, the identification of candidate Globular Clusters through deep, wide-field, single ...
My presentation highlights the compatibility of remote sensing and astronomy methods. Here I discuss...
This thesis explores the use of state-of-the-art computational analysis techniques in astronomy. Thi...
In this paper, we discuss an application of machine-learning-based methods to the identification of ...
In this paper, we discuss an application of machine-learning-based methods to the identification of ...
Context. The two currently largest all-sky photometric datasets, WISE and SuperCOSMOS, have been rec...
The application of machine learning (ML) techniques to simulated cosmological data aids in the devel...