The identification of an emission line is unambiguous when multiple spectral features are clearly visible in the same spectrum. However, in many cases, only one line is detected, making it difficult to correctly determine the redshift. We developed a freely available unsupervised machine-learning algorithm based on unbiased topology (UMLAUT) that can be used in a very wide variety of contexts, including the identification of single emission lines. To this purpose, the algorithm combines different sources of information, such as the apparent magnitude, size and color of the emitting source, and the equivalent width and wavelength of the detected line. In each specific case, the algorithm automatically identifies the most relevant ones (i.e.,...
We describe the first paper in a series of works in which we explore the application of different ma...
Four different methods for automated identification of emission lines in calibration (are) spectra a...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
The Identification of redshifted spectral lines is unequivocal when multiple lines with high S/N rat...
Future surveys focusing on understanding the nature of dark energy (e.g., Euclid and WFIRST) will co...
The advent of large instantaneous bandwidth receivers and high spectral resolution spectro...
International audienceThe advent of large instantaneous bandwidth receivers and high spectral resolu...
[Context]: The volume of data generated by astronomical surveys is growing rapidly. Traditional anal...
Massive spectroscopic surveys targeting tens of millions of stars and galaxies are starting to domin...
International audienceDealing with large databases of galaxy spectra is a good example of a new prob...
The multiplexing capability of slitless spectroscopy is a powerful asset in creating large spectrosc...
We briefly review the various machine learning methods and discuss how they can be used in efficient...
The identification of spectral lines can be a tedious process requiring the interrogation of large s...
International audienceIn the first paper of this series, we demonstrated that neural networks can ro...
International audienceOne of the main difficulties to analyze modern spectroscopic datasets is due t...
We describe the first paper in a series of works in which we explore the application of different ma...
Four different methods for automated identification of emission lines in calibration (are) spectra a...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
The Identification of redshifted spectral lines is unequivocal when multiple lines with high S/N rat...
Future surveys focusing on understanding the nature of dark energy (e.g., Euclid and WFIRST) will co...
The advent of large instantaneous bandwidth receivers and high spectral resolution spectro...
International audienceThe advent of large instantaneous bandwidth receivers and high spectral resolu...
[Context]: The volume of data generated by astronomical surveys is growing rapidly. Traditional anal...
Massive spectroscopic surveys targeting tens of millions of stars and galaxies are starting to domin...
International audienceDealing with large databases of galaxy spectra is a good example of a new prob...
The multiplexing capability of slitless spectroscopy is a powerful asset in creating large spectrosc...
We briefly review the various machine learning methods and discuss how they can be used in efficient...
The identification of spectral lines can be a tedious process requiring the interrogation of large s...
International audienceIn the first paper of this series, we demonstrated that neural networks can ro...
International audienceOne of the main difficulties to analyze modern spectroscopic datasets is due t...
We describe the first paper in a series of works in which we explore the application of different ma...
Four different methods for automated identification of emission lines in calibration (are) spectra a...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...