Euclid Quick Data Release (Q1). Searching for giant gravitational arcs in galaxy clusters with mask region-based convolutional neural networks
Euclid Collaboration: L. Bazzanini (1, 2), G. Angora (3, 1), P. Bergamini (4, 2), M. Meneghetti (2, 5), P. Rosati (1, 2), A. Acebron (6, 7), C. Grillo (4, 7), M. Lombardi (4, 2), R. Ratta (1), M. Fogliardi (1), G. Di Rosa (1), D. Abriola (4), M. D'Addona (3, 8), G. Granata (9

TL;DR
This paper introduces a deep learning framework using Mask R-CNNs to automatically detect and segment gravitational arcs in Euclid survey data, significantly aiding the analysis of strong lensing in galaxy clusters.
Contribution
The authors develop and validate a novel deep learning model trained on realistic simulated data for efficient, automated detection of gravitational arcs in wide-field survey images.
Findings
Achieves 76% precision and 58% recall in arc detection
Recovers 66% of arcs in real Euclid Q1 data
Processes images rapidly, enabling scalable analysis
Abstract
Strong gravitational lensing (SL) by galaxy clusters is a powerful probe of their inner mass distribution and a key test bed for cosmological models. However, the detection of SL events in wide-field surveys such as Euclid requires robust, automated methods capable of handling the immense data volume generated. In this work, we present an advanced deep learning (DL) framework based on mask region-based convolutional neural networks (Mask R-CNNs), designed to autonomously detect and segment bright, strongly-lensed arcs in Euclid's multi-band imaging of galaxy clusters. The model is trained on a realistic simulated data set of cluster-scale SL events, constructed by injecting mock background sources into Euclidised Hubble Space Telescope images of 10 massive lensing clusters, exploiting their high-precision mass models constructed with extensive spectroscopic data. The network is trained…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Gamma-ray bursts and supernovae
