Current large-scale astrophysical experiments produce unprecedented amounts of rich and diverse data. This creates a growing need for fast and flexible automated data inspection methods. Deep learning algorithms can capture and pick up subtle variations in rich data sets and are fast to apply once trained. Here, we study the applicability of an unsupervised and probabilistic deep learning framework, the Probabilistic Autoencoder (PAE), to the detection of peculiar objects in galaxy spectra from the SDSS survey. Different to supervised algorithms, this algorithm is not trained to detect a specific feature or type of anomaly, instead it learns the complex and diverse distribution of galaxy spectra from training data and identifies outliers wi...
This work develops two new statistical techniques for astronomical problems: a star / galaxy separa...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
New time-domain surveys, such as the Rubin Observatory Legacy Survey of Space and Time (LSST), will ...
Every field of Science is undergoing unprecedented changes in the discovery process, and Astronomy h...
Astronomical outliers, such as unusual, rare or unknown types of astronomical objects or phenomena, ...
Masters of ScienceObservations that push the boundaries have historically fuelled scientific breakth...
Optical spectra contain a wealth of information about the physical properties and formation historie...
Optical spectra of galaxies and quasars from large cosmological surveys are used to measure redshift...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...
This thesis was carried out in two parts. The stellar spectral data was used from the Gaia-ESO surve...
>Magister Scientiae - MScWe are fast moving into an era where data will be the primary driving facto...
Among the many challenges posed by the huge data volumes produced by the new generation of astronomi...
I present an unsupervised machine learning technique that automatically segments and labels galaxies...
We present a catalogue of galaxy photometric redshifts for the Sloan Digital Sky Survey (SDSS) Data ...
Identification of anomalous light curves within time-domain surveys is often challenging. In additio...
This work develops two new statistical techniques for astronomical problems: a star / galaxy separa...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
New time-domain surveys, such as the Rubin Observatory Legacy Survey of Space and Time (LSST), will ...
Every field of Science is undergoing unprecedented changes in the discovery process, and Astronomy h...
Astronomical outliers, such as unusual, rare or unknown types of astronomical objects or phenomena, ...
Masters of ScienceObservations that push the boundaries have historically fuelled scientific breakth...
Optical spectra contain a wealth of information about the physical properties and formation historie...
Optical spectra of galaxies and quasars from large cosmological surveys are used to measure redshift...
This thesis explores four projects applying supervised deep learning to help answer astrophysical qu...
This thesis was carried out in two parts. The stellar spectral data was used from the Gaia-ESO surve...
>Magister Scientiae - MScWe are fast moving into an era where data will be the primary driving facto...
Among the many challenges posed by the huge data volumes produced by the new generation of astronomi...
I present an unsupervised machine learning technique that automatically segments and labels galaxies...
We present a catalogue of galaxy photometric redshifts for the Sloan Digital Sky Survey (SDSS) Data ...
Identification of anomalous light curves within time-domain surveys is often challenging. In additio...
This work develops two new statistical techniques for astronomical problems: a star / galaxy separa...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
New time-domain surveys, such as the Rubin Observatory Legacy Survey of Space and Time (LSST), will ...