Automation of finding strong gravitational lenses in the Kilo Degree Survey with U-DenseLens (DenseLens + Segmentation)

Bharath Chowdhary Nagam*, Léon V E Koopmans*, Edwin A Valentijn, Gijs Verdoes Kleijn, Jelte T A de Jong, Nicola Napolitano, Rui Li, Crescenzo Tortora, Valerio Busillo, Yue Dong

*Corresponding author voor dit werk

Onderzoeksoutput: VoordrukAcademic

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Samenvatting

In the context of upcoming large-scale surveys like Euclid, the necessity for the automation of strong lens detection is essential. While existing machine learning pipelines heavily rely on the classification probability (P), this study intends to address the importance of integrating additional metrics, such as Information Content (IC) and the number of pixels above the segmentation threshold, to alleviate the false positive rate in unbalanced data-sets. In this work, we introduce a segmentation algorithm (U-Net) as a supplementary step in the established strong gravitational lens identification pipeline (Denselens), which primarily utilizes P$_{\rm mean}$ and IC$_{\rm mean}$ parameters for the detection and ranking. The results demonstrate that the inclusion of segmentation enables significant reduction of false positives by approximately 25 per cent in the final sample extracted from DenseLens, without compromising the identification of strong lenses. The main objective of this study is to automate the strong lens detection process by integrating these three metrics. To achieve this, a decision tree-based selection process is introduced, applied to the Kilo Degree Survey (KiDS) data. This process involves rank-ordering based on classification scores, filtering based on Information Content, and segmentation score. Additionally, the study presents 14 newly discovered strong lensing candidates identified by the U-Denselens network using the KiDS DR4 data.
Originele taal-2English
Aantal pagina's16
DOI's
StatusSubmitted - 24-jan.-2025

Publicatie series

NaamArXiv
UitgeverijCornell University Press
ISSN van geprinte versie2331-8422

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