A Computer Vision Approach To Identify Einstein Rings And Arcs
Chien-Hsiu Lee (Subaru Telescope, NAOJ)

TL;DR
This paper introduces a computer vision method using the circle Hough transform to automatically identify Einstein rings in large astronomical survey data, facilitating the discovery of these rare gravitational lensing phenomena.
Contribution
The work presents a novel automated approach combining pre-selection of lens candidates with circle detection, enabling efficient identification of Einstein rings in big data surveys.
Findings
High completeness in detecting Einstein rings
Successfully applied to multiple large sky surveys
Operates solely on JPEG images without pre-processing
Abstract
Einstein rings are rare gem of the strong lensing phenomena. Unlike doubly or quadruply lensed systems, the ring images can be used to probe the underlying lens gravitational potential at every position angle, putting much tighter constraints on the lens mass profile. In addition, the magnified background source also enable us to probe high-z galaxies with enhanced spatial resolution and higher S/N, which is otherwise not possible for un-lensed galaxy studies. Despite their usefulness, only a handful of Einstein rings have been reported so far, mainly by serendipitous discoveries or visual inspections of hundred thousands of massive galaxies or galaxy clusters. With the on-going and forth-coming large area surveys such as Large Synoptic Survey Telescope, visual inspection to discover Einstein rings is very difficult, and an automated approach to identify ring pattern in the big data to…
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See pages 1-last of pasa.pdf
