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SpecPro: An Interactive IDL Program for Viewing and Analyzing Astronomical Spectra

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 Added by Daniel Masters
 Publication date 2011
  fields Physics
and research's language is English




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We present an interactive IDL program for viewing and analyzing astronomical spectra in the context of modern imaging surveys. SpecPros interactive design lets the user simultaneously view spectroscopic, photometric, and imaging data, allowing for rapid object classification and redshift determination. The spectroscopic redshift can be determined with automated cross-correlation against a variety of spectral templates or by overlaying common emission and absorption features on the 1-D and 2-D spectra. Stamp images as well as the spectral energy distribution (SED) of a source can be displayed with the interface, with the positions of prominent photometric features indicated on the SED plot. Results can be saved to file from within the interface. In this paper we discuss key program features and provide an overview of the required data formats.



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