Detection of Strongly Lensed Arcs in Galaxy Clusters with Transformers
Peng Jia, Ruiqi Sun, Nan Li, Yu Song, Runyu Ning, Hongyan Wei, Rui Luo

TL;DR
This paper introduces a transformer-based framework for detecting strongly lensed arcs in galaxy clusters, leveraging simulated training data to achieve high accuracy and recall in both simulated and real astronomical images.
Contribution
The study presents a novel transformer-based detection algorithm trained on simulated data, effectively identifying strongly lensed arcs in large-scale sky survey images.
Findings
Achieved 99.63% accuracy in simulated data detection
Attained 90.32% recall rate for lensed arc detection
Successfully detected almost all arcs in real observational images
Abstract
Strong lensing in galaxy clusters probes properties of dense cores of dark matter halos in mass, studies the distant universe at flux levels and spatial resolutions otherwise unavailable, and constrains cosmological models independently. The next-generation large scale sky imaging surveys are expected to discover thousands of cluster-scale strong lenses, which would lead to unprecedented opportunities for applying cluster-scale strong lenses to solve astrophysical and cosmological problems. However, the large dataset challenges astronomers to identify and extract strong lensing signals, particularly strongly lensed arcs, because of their complexity and variety. Hence, we propose a framework to detect cluster-scale strongly lensed arcs, which contains a transformer-based detection algorithm and an image simulation algorithm. We embed prior information of strongly lensed arcs at…
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Taxonomy
TopicsAdvanced Fluorescence Microscopy Techniques · Adaptive optics and wavefront sensing · CCD and CMOS Imaging Sensors
MethodsTest
