Photometric Cross-Calibration of the SDSS Stripe 82 Standard Stars catalogue with Gaia EDR3, and Comparison with Pan-STARRS1, DES, CFIS and GALEX catalogues
Karun Thanjavur (1), \v{Z}eljko Ivezi\'c (2), Sahar S. Allam (3),, Douglas L. Tucker (3), J. Allyn Smith (4), and Stephen Gwyn (5) ((1), Department of Physics, Astronomy, University of Victoria, Victoria, BC,, Canada, (2) Department of Astronomy, the DiRAC Institute

TL;DR
This paper enhances the SDSS Stripe 82 Standard Stars Catalog by incorporating Gaia EDR3 data to improve photometric accuracy and consistency across multiple surveys, providing a highly calibrated resource for future astronomical research.
Contribution
The authors develop a new calibration method using Gaia EDR3 to significantly reduce photometric errors and spatial zeropoint variations in the SDSS Stripe 82 catalog, surpassing previous calibration standards.
Findings
Random errors reduced to <0.01 mag for bright stars.
Spatial zeropoint variations are <=0.01 mag RMS.
Identified minor biases in Gaia EDR3 photometry.
Abstract
We extend the SDSS Stripe 82 Standard Stars Catalog with post-2007 SDSS imaging data. This improved version lists averaged SDSS ugriz photometry for nearly a million stars brighter than r~22 mag. With 2-3x more measurements per star, random errors are 1.4-1.7x smaller than in the original catalog, and about 3x smaller than for individual SDSS runs. Random errors in the new catalog are ~< 0.01 mag for stars brighter than 20.0, 21.0, 21.0, 20.5, and 19.0 mag in u, g, r, i, and z-bands, respectively. We achieve this error threshold by using the Gaia Early Data Release 3 (EDR3) Gmag photometry to derive gray photometric zeropoint corrections, as functions of R.A. and Declination, for the SDSS catalog, and use the Gaia BP-RP colour to derive corrections in the ugiz bands, relative to the r-band. The quality of the recalibrated photometry, tested against Pan-STARRS1, DES, CFIS and GALEX…
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