Difference image photometry with bright variable backgrounds
E. Kerins (1), M.J. Darnley (2), J.P. Duke (2), A. Gould (3), C. Han, (4), A. Newsam (2), B.-G. Park (5), R. Street (6) ((1) Univ. Manchester,, UK, (2) Liverpool JMU, UK, (3) Ohio State Univ., USA, (4) Chungbuk National, Univ, Korea, (5) KASI, Korea, (6) Las Cumbres Observatory

TL;DR
This paper improves difference image photometry in high surface brightness regions like M31 by separating background and PSF matching, leading to more accurate variable star and transient light curves.
Contribution
It introduces a method that combines careful background alignment with optimal PSF matching, enhancing DIA performance in crowded, bright fields.
Findings
Significant noise reduction in difference images.
Variable star light curves recovered within ~10 arcseconds of M31 nucleus.
Method is simple, fast, and suitable for real-time pipelines.
Abstract
Over the last two decades the Andromeda Galaxy (M31) has been something of a test-bed for methods aimed at obtaining accurate time-domain relative photometry within highly crowded fields. Difference imaging methods, originally pioneered towards M31, have evolved into sophisticated methods, such as the Optimal Image Subtraction (OIS) method of Alard & Lupton (1998), that today are most widely used to survey variable stars, transients and microlensing events in our own Galaxy. We show that modern difference image (DIA) algorithms such as OIS, whilst spectacularly successful towards the Milky Way bulge, may perform badly towards high surface brightness targets such as the M31 bulge. Poor results can occur in the presence of common systematics which add spurious flux contributions to images, such as internal reflections, scattered light or fringing. Using data from the Angstrom Project…
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