When Spectral Modeling Meets Convolutional Networks: A Method for Discovering Reionization-era Lensed Quasars in Multi-band Imaging Data
Irham Taufik Andika, Knud Jahnke, Arjen van der Wel, Eduardo, Ba\~nados, Sarah E. I. Bosman, Frederick B. Davies, Anna-Christina Eilers,, Anton Timur Jaelani, Chiara Mazzucchelli, Masafusa Onoue, and Jan-Torge, Schindler

TL;DR
This paper presents a novel deep learning-based method combining spectral modeling and spatial geometry analysis to efficiently identify reionization-era lensed quasars in large multi-band imaging surveys.
Contribution
It introduces an integrated approach using expanded spectral parameters and a new spatial veto criterion within a CNN framework for lens detection.
Findings
Identified 36 new lens candidates in survey data.
Demonstrated effectiveness of combined spectral and spatial analysis.
Showed potential for automated detection in large datasets.
Abstract
Over the last two decades, around 300 quasars have been discovered at , yet only one has identified as being strongly gravitationally lensed. We explore a new approach -- enlarging the permitted spectral parameter space, while introducing a new spatial geometry veto criterion -- which is implemented via image-based deep learning. We first apply this approach to a systematic search for reionization-era lensed quasars, using data from the Dark Energy Survey, the Visible and Infrared Survey Telescope for Astronomy Hemisphere Survey, and the Wide-field Infrared Survey Explorer.Our search method consists of two main parts: (i) the preselection of the candidates based on their spectral energy distributions (SEDs) using catalog-level photometry and (ii) relative probabilities calculation of the candidates being a lens or some contaminant, utilizing a convolutional neural network…
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Taxonomy
TopicsRadio Astronomy Observations and Technology
