Abstract
Classification of stars and galaxies is a well-known astronomical problem that has been treated using different approaches, most of them relying on morphological information. In this paper, we tackle this issue using the low-resolution spectra from narrow-band photometry, provided by the Physics of the Accelerating Universe survey. We find that, with the photometric fluxes from the 40 narrow-band filters and without including morphological information, it is possible to separate stars and galaxies to very high precision, 98.4 per cent purity with a completeness of 98.8 per cent for objects brighter than I = 22.5. This precision is obtained with a convolutional neural network as a classification algorithm, applied to the objects’ spectra. We have also applied the method to the ALHAMBRA photometric survey and we provide an updated classification for its Gold sample. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000336599Publication status
publishedExternal links
Journal / series
Monthly Notices of the Royal Astronomical SocietyVolume
Pages / Article No.
Publisher
Oxford University PressSubject
methods: data analysis; techniques: photometricOrganisational unit
03928 - Refregier, Alexandre / Refregier, Alexandre
03928 - Refregier, Alexandre / Refregier, Alexandre
Notes
It was possible to publish this article open access thanks to a Swiss National Licence with the publisher.More
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