Palomar Gattini-IR: Survey overview, data processing system, on-sky performance and first results
Kishalay De, Matthew J. Hankins, Mansi M. Kasliwal, Anna M., Moore, Eran O. Ofek, Scott M. Adams, Michael C. B. Ashley and, Aliya-Nur Babul, Ashot Bagdasaryan, Kevin B. Burdge, Jill Burnham, and Richard G. Dekany, Alexander Declacroix, Antony Galla, Tim, Greffe, David Hale

TL;DR
Palomar Gattini-IR is a wide-field near-infrared survey that captures transient events and variables with high accuracy, providing new insights into dust-obscured phenomena in the local universe.
Contribution
This paper introduces the Palomar Gattini-IR system, detailing its design, data processing, and initial results, highlighting its unprecedented wide field of view in near-infrared astronomy.
Findings
Achieved median 5σ depth of 15.7 AB mag in J-band
Produced real-time data products with 4-hour delay
Identified various transients and variables in initial survey data
Abstract
(Abridged) Palomar Gattini-IR is a new wide-field, near-infrared robotic time domain survey operating at Palomar Observatory. Using a 30 cm telescope mounted with a H2RG detector, Gattini-IR achieves a field of view of 25 sq. deg. with a pixel scale of 8.7" in J-band. Here, we describe the system design, survey operations, data processing system and on-sky performance of Palomar Gattini-IR. As a part of the nominal survey, Gattini-IR scans square degrees of the sky every night to a median 5 depth of AB mag outside the Galactic plane. The survey covers square degrees of the sky visible from Palomar with a median cadence of 2 days. A real-time data processing system produces stacked science images from dithered raw images taken on sky, together with PSF-fit source catalogs and transient candidates identified from subtractions within a median…
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