Searching for galaxy-scale strong-lenses in galaxy clusters with deep networks -- I: methodology and network performance
G. Angora, P. Rosati, M. Meneghetti, M. Brescia, A. Mercurio, C., Grillo, P. Bergamini, A. Acebron, G. Caminha, M. Nonino, L. Tortorelli, L., Bazzanini, E. Vanzella

TL;DR
This paper develops deep learning methods to identify galaxy-galaxy strong lensing systems in galaxy clusters using HST data, achieving high accuracy and generalization in classification performance.
Contribution
It introduces a novel deep learning approach trained on realistic simulations to detect galaxy-scale strong lenses in cluster environments, improving detection efficiency.
Findings
Networks achieve 85%-95% purity and completeness.
High stability with fluctuations within 2%-4%.
Effective generalization to real HST data.
Abstract
Galaxy-scale strong lenses in galaxy clusters provide a unique tool to investigate their inner mass distribution and the sub-halo density profiles in the low-mass regime, which can be compared with the predictions from cosmological simulations. We search for galaxy-galaxy strong-lensing systems in HST multi-band imaging of galaxy cluster cores from the CLASH and HFF programs by exploring the classification capabilities of deep learning techniques. Convolutional neural networks are trained utilising highly-realistic simulations of galaxy-scale strong lenses injected into the HST cluster fields around cluster members. To this aim, we take advantage of extensive spectroscopic information on member galaxies in 16 clusters and the accurate knowledge of the deflection fields in half of these from high-precision strong lensing models. Using observationally-based distributions, we sample…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Adaptive optics and wavefront sensing · Advanced Fluorescence Microscopy Techniques
