Using Convolutional Neural Networks to Search for Strongly Lensed Quasars in KiDS DR5
Zizhao He, Rui Li, Yiping Shu, Crescenzo Tortora, Xinzhong Er, Raoul, Canameras, Stefan Schuldt, Nicola R. Napolitano, Bharath Chowdhary N, Qihang, Chen, Nan Li, Haicheng Feng, Limeng Deng, Guoliang Li, L.V.E. Koopmans and, Andrej Dvornik

TL;DR
This paper presents a CNN-based method for efficiently identifying strongly lensed quasars in large survey data, achieving high recall and low false positive rates, and resulting in a catalog of 229 candidates from KiDS DR5.
Contribution
The authors developed and applied a CNN approach to detect SL-QSO in large-scale survey data, significantly improving automation and candidate identification accuracy.
Findings
Identified 229 SL-QSO candidates in KiDS DR5.
Achieved a false positive rate of approximately 0.05%.
Recall of 81.25% on confirmed lensed quasars.
Abstract
Gravitationally strongly lensed quasars (SL-QSO) offer invaluable insights into cosmological and astrophysical phenomena. With the data from ongoing and next-generation surveys, thousands of SL-QSO systems can be discovered expectedly, leading to unprecedented opportunities. However, the challenge lies in identifying SL-QSO from enormous datasets with high recall and purity in an automated and efficient manner. Hence, we developed a program based on a Convolutional Neural Network (CNN) for finding SL-QSO from large-scale surveys and applied it to the Kilo-degree Survey Data Release 5 (KiDS DR5). Our approach involves three key stages: firstly, we pre-selected ten million bright objects (with -band ), excluding stars from the dataset; secondly, we established realistic training and test sets to train and fine-tune the CNN, resulting in the identification of 4195…
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Taxonomy
TopicsStatistics Education and Methodologies · Astronomical Observations and Instrumentation · Multidisciplinary Science and Engineering Research
