Automated star–galaxy segregation using spectral and integrated band data for TAUVEX/ASTROSAT satellite data pipeline
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Date
2009-10-13
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Publisher
New Astronomy
Abstract
We employ an Artificial Neural Network (ANN) based technique to develop a pipeline for automated segregation
of stars from the galaxies to be observed by Tel-Aviv University Ultra-Violet Experiment (TAUVEX).
We use synthetic spectra of stars from UVBLUE library and selected International Ultraviolet
Explorer (IUE) low-resolution spectra for galaxies in the ultraviolet (UV) region from 1250 to 3220 Å as
the training set and IUE low-resolution spectra for both the stars and the galaxies as the test set. All
the data sets have been pre-processed to get band integrated fluxes so as to mimic the observations of
the TAUVEX UV imager. We also perform the ANN based segregation scheme using the full length spectral
features (which will also be useful for the ASTROSAT mission). Our results suggest that, in the case of the
non-availability of full spectral features, the limited band integrated features can be used to segregate the
two classes of objects; although the band data classification is less accurate than the full spectral data
classification.
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Keywords
Methods: data analysis, Astronomical data bases: miscellaneous, Space vehicles: instruments, Stars: fundamental parameters, Ultraviolet: general