Detecting optical transients using artificial neural networks and reference images from different surveys
Katarzyna Ward\k{e}ga, Adam Zadro\.zny, Martin Beroiz, Richard, Camuccio, Mario C. D\'iaz

TL;DR
This paper introduces neural network-based methods for rapid, autonomous detection of optical transients by comparing current and reference sky images, enhancing follow-up efficiency for gravitational wave counterparts.
Contribution
It presents a novel neural network architecture for comparing images from different surveys to detect optical transients automatically.
Findings
Networks successfully trained on simulated data and tested on real images.
Autonomous detection replaces traditional human-inspected difference imaging.
Method enables rapid follow-up of transient events.
Abstract
To search for optical counterparts to gravitational waves, it is crucial to develop an efficient follow-up method that allows for both a quick telescopic scan of the event localization region and search through the resulting image data for plausible optical transients. We present a method to detect these transients based on an artificial neural network. We describe the architecture of two networks capable of comparing images of the same part of the sky taken by different telescopes. One image corresponds to the epoch in which a potential transient could exist; the other is a reference image of an earlier epoch. We use data obtained by the Dr. Cristina V. Torres Memorial Astronomical Observatory and archival reference images from the Sloan Digital Sky Survey. We trained a convolutional neural network and a dense layer network on simulated source samples and tested the trained networks on…
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