Euclid: Finding strong gravitational lenses in the Early Release Observations using convolutional neural networks
B. C. Nagam (1, 2), J. A. Acevedo Barroso (3), J. Wilde (4), I. T. Andika (5, 6), A. Manj\'on-Garc\'ia (7), R. Pearce-Casey (8), D. Stern (9), J. W. Nightingale (10), L. A. Moustakas (9), K. McCarthy (9), E. Moravec (11), L. Leuzzi (12, 13), K. Rojas (14), S. Serjeant (8)

TL;DR
This paper demonstrates the use of convolutional neural networks to efficiently identify strong gravitational lens candidates in Euclid's Early Release Observations, significantly reducing manual inspection efforts and confirming a new lens system.
Contribution
The study extends CNN analysis to the entire Euclid ERO dataset, identifying thousands of candidates and confirming a new gravitational lens through spectroscopic and lens modeling methods.
Findings
Identified 8,469 lens candidates using CNNs.
Reduced candidates to 97 through visual inspection.
Confirmed a new gravitational lens system with spectroscopic and lens modeling evidence.
Abstract
The Early Release Observations (ERO) from Euclid have detected several new galaxy-galaxy strong gravitational lenses, with the all-sky survey expected to find 170,000 new systems, greatly enhancing studies of dark matter, dark energy, and constraints on the cosmological parameters. As a first step, visual inspection of all galaxies in one of the ERO fields (Perseus) was carried out to identify candidate strong lensing systems and compared to the predictions from Convolutional Neural Networks (CNNs). However, the entire ERO data set is too large for expert visual inspection. In this paper, we therefore extend the CNN analysis to the whole ERO data set, using different CNN architectures and methodologies. Using five CNN architectures, we identified 8,469 strong gravitational lens candidates from IE-band cutouts of 13 Euclid ERO fields, narrowing them to 97 through visual inspection,…
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