International audienceIn the first two papers of this series (Rhea et al. 2020b; Rhea et al. 2021), we demonstrated the dynamism of machine learning applied to optical spectral analysis by using neural networks to extract kinematic parameters and emission-line ratios directly from the spectra observed by the SITELLE instrument located at the Canada-France-Hawai'i Telescope. In this third installment, we develop a framework using a convolutional neural network trained on synthetic spectra to determine the number of line-of-sight components present in the SN3 filter (656-683nm) spectral range of SITELLE. We compare this methodology to standard practice using Bayesian Inference. Our results demonstrate that a neural network approach returns mo...
International audienceABSTRACT Imaging the cosmic 21 cm signal will map out the first billion years ...
In the framework of the European VO-Tech project, we are implementing new machine learning methods s...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...
International audienceIn the first paper of this series, we demonstrated that neural networks can ro...
We describe the first paper in a series of works in which we explore the application of different ma...
Integral field spectroscopy (IFS) surveys are changing how we study galaxies and are creating vastly...
International audienceDiagnostic diagrams of emission-line ratios have been used extensively to cate...
With the advent of new spectroscopic surveys from ground and space, observing up to hundreds of mill...
Context. The future deployment of the Square Kilometer Array (SKA) will lead to a massive influx of ...
We present a new approach based on Supervised Machine Learning algorithms to infer key physical prop...
The H II region oxygen abundance is a key observable for studying chemical properties of galaxies. D...
Classification of intermediate redshift (z = 0.3–0.8) emission line galaxies as star-forming galaxie...
Classification of intermediate redshift (z = 0.3-0.8) emission line galaxies as star-forming galaxie...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
International audienceImaging the cosmic 21 cm signal will map out the first billion years of our Un...
International audienceABSTRACT Imaging the cosmic 21 cm signal will map out the first billion years ...
In the framework of the European VO-Tech project, we are implementing new machine learning methods s...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...
International audienceIn the first paper of this series, we demonstrated that neural networks can ro...
We describe the first paper in a series of works in which we explore the application of different ma...
Integral field spectroscopy (IFS) surveys are changing how we study galaxies and are creating vastly...
International audienceDiagnostic diagrams of emission-line ratios have been used extensively to cate...
With the advent of new spectroscopic surveys from ground and space, observing up to hundreds of mill...
Context. The future deployment of the Square Kilometer Array (SKA) will lead to a massive influx of ...
We present a new approach based on Supervised Machine Learning algorithms to infer key physical prop...
The H II region oxygen abundance is a key observable for studying chemical properties of galaxies. D...
Classification of intermediate redshift (z = 0.3–0.8) emission line galaxies as star-forming galaxie...
Classification of intermediate redshift (z = 0.3-0.8) emission line galaxies as star-forming galaxie...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
International audienceImaging the cosmic 21 cm signal will map out the first billion years of our Un...
International audienceABSTRACT Imaging the cosmic 21 cm signal will map out the first billion years ...
In the framework of the European VO-Tech project, we are implementing new machine learning methods s...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...