Toward automated detection of light echoes in synoptic surveys: considerations on the application of the Deep Convolutional Neural Networks
Xiaolong Li, Federica B.Bianco, Gregory Dobler, Roee Partoush, Armin, Rest, Tatiana Acero-Cuellar, Riley Clarke, Willow Fox Fortino, Somayeh, Khakpash, and Ming Lian

TL;DR
This paper explores the application of deep convolutional neural networks, specifically YOLO, for automated detection of light echoes in large astronomical surveys, aiming to replace manual inspection.
Contribution
It demonstrates the feasibility of using AI object detection frameworks to identify light echoes in astronomical images, highlighting challenges and future steps.
Findings
AI can achieve human-level detection performance
Challenges include class imbalance and label incompleteness
Potential for automated light echo detection in large surveys
Abstract
Light Echoes (LEs) are the reflections of astrophysical transients off of interstellar dust. They are fascinating astronomical phenomena that enable studies of the scattering dust as well as of the original transients. LEs, however, are rare and extremely difficult to detect as they appear as faint, diffuse, time-evolving features. The detection of LEs still largely relies on human inspection of images, a method unfeasible in the era of large synoptic surveys. The Vera C. Rubin Observatory Legacy Survey of Space and Time, LSST, will generate an unprecedented amount of astronomical imaging data at high spatial resolution, exquisite image quality, and over tens of thousands of square degrees of sky: an ideal survey for LEs. However, the Rubin data processing pipelines are optimized for the detection of point-sources and will entirely miss LEs. Over the past several years, Artificial…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Astronomical Observations and Instrumentation · Advanced Optical Sensing Technologies
