HOLISMOKES XV. Search for strong gravitational lenses combining ground-based and space-based imaging
A. Melo, R. Ca\~nameras, S. Schuldt, S. H. Suyu, Irham T. Andika, S. Bag, S. Taubenberger

TL;DR
This paper introduces a machine learning approach that combines high-resolution space-based and lower-resolution ground-based images to improve the detection of galaxy-scale gravitational lenses, simulating future survey strategies.
Contribution
It presents a novel multi-resolution image integration method using ResNet architectures for gravitational lens detection, demonstrating improved performance over single-instrument models.
Findings
Combined image models achieve higher true-positive rates.
Multi-resolution approach outperforms single-resolution models.
Potential to discover ~100,000 lenses with future surveys.
Abstract
In the past, researchers have mostly relied on single-resolution images from individual telescopes to detect gravitational lenses. We propose a search for galaxy-scale lenses that, for the first time, combines high-resolution single-band images (in our case the Hubble Space Telescope, HST) with lower-resolution multi-band images (in our case Legacy survey, LS) using machine learning. This methodology aims to simulate the operational strategies that will be employed by future missions, such as combining the images of Euclid and the Rubin Observatory's Legacy Survey of Space and Time (LSST). To compensate for the scarcity of lensed galaxy images for network training, we have generated mock lenses by superimposing arc features onto HST images, saved the lens parameters, and replicated the lens system in the LS images. We test four architectures based on ResNet-18: (1) using single-band HST…
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