Detecting Strongly-Lensed Supernovae in Wide-field Space Telescope Imaging via Deep Learning
Fawad Kirmani, Arjun Karki, Steve Rodney, Kyle Lackey, Varsha P. Kulkarni, John R. Rose, and Justin Pierel

TL;DR
This paper proposes a deep learning approach to identify strongly-lensed supernovae in space telescope images by analyzing the distorted shapes of transients, enabling detection without relying on brightness magnification.
Contribution
The study introduces a neural network trained on simulated data to detect doubly-imaged SNe based on shape distortions, a novel method for identifying lensed SNe in wide-field space surveys.
Findings
Achieved 99% recall on simulated lensed SNe
Successfully distinguished lensed from unlensed SNe with high accuracy
Effective in identifying lensed SNe using single difference images
Abstract
Gravitationally lensed supernovae (SNe) are extremely rare and fade quickly; as a result, they are challenging to detect. To identify lensed SNe in large imaging datasets, current surveys primarily rely on the {\it magnification} effect of gravitational lensing -- searching for transients that appear brighter than expected \cite{c3}. In this work, we present a proof-of-concept study that uses a deep neural network to classify previously detected transients. Instead of relying on magnification, this network aims to identify doubly-imaged SNe with small separations ( arcsec) based on the {\it distorted shape} of the transient object. This proposed method is most applicable to space-based imaging surveys from wide-field imaging observatories such as the upcoming Roman Space Telescope. To train and test our network, we use archival Hubble Space Telescope (HST) imaging surveys. Due to…
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Taxonomy
TopicsGamma-ray bursts and supernovae · CCD and CMOS Imaging Sensors · Astronomy and Astrophysical Research
