We present a new sample of galaxy-scale strong gravitational lens candidates, selected from 904 deg2 of Data Release 4 of the Kilo-Degree Survey, i.e. the `Lenses in the Kilo-Degree Survey' (LinKS) sample. We apply two convolutional neural networks (ConvNets) to {˜ }88 000 colour-magnitude-selected luminous red galaxies yielding a list of 3500 strong lens candidates. This list is further downselected via human inspection. The resulting LinKS sample is composed of 1983 rank-ordered targets classified as `potential lens candidates' by at least one inspector. Of these, a high-grade subsample of 89 targets is identified with potential strong lenses by all inspectors. Additionally, we present a collection of another 200 strong lens candidates discovered serendipitously from various previous ConvNet runs. A straightforward application of our procedure to future Euclid or Large Synoptic Survey Telescope data can select a sample of ˜3000 lens candidates with less than 10 per cent expected false positives and requiring minimal human intervention.

LinKS: discovering galaxy-scale strong lenses in the Kilo-Degree Survey using convolutional neural networks / Petrillo, C E; Tortora, C; Vernardos, G; Koopmans, L V E; Verdoes kleijn, G; Bilicki, M; Napolitano, N R; Chatterjee, S; Covone, G; Dvornik, A; Erben, T; Getman, F; Giblin, B; Heymans, C; De jong, J T A; Kuijken, K; Schneider, P; Shan, H; Spiniello, Chiara; Wright, A H. - In: MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY. - ISSN 0035-8711. - 484:3(2019), pp. 3879-3896. [10.1093/mnras/stz189]

LinKS: discovering galaxy-scale strong lenses in the Kilo-Degree Survey using convolutional neural networks

Napolitano, N R;Covone, G;
2019

Abstract

We present a new sample of galaxy-scale strong gravitational lens candidates, selected from 904 deg2 of Data Release 4 of the Kilo-Degree Survey, i.e. the `Lenses in the Kilo-Degree Survey' (LinKS) sample. We apply two convolutional neural networks (ConvNets) to {˜ }88 000 colour-magnitude-selected luminous red galaxies yielding a list of 3500 strong lens candidates. This list is further downselected via human inspection. The resulting LinKS sample is composed of 1983 rank-ordered targets classified as `potential lens candidates' by at least one inspector. Of these, a high-grade subsample of 89 targets is identified with potential strong lenses by all inspectors. Additionally, we present a collection of another 200 strong lens candidates discovered serendipitously from various previous ConvNet runs. A straightforward application of our procedure to future Euclid or Large Synoptic Survey Telescope data can select a sample of ˜3000 lens candidates with less than 10 per cent expected false positives and requiring minimal human intervention.
2019
LinKS: discovering galaxy-scale strong lenses in the Kilo-Degree Survey using convolutional neural networks / Petrillo, C E; Tortora, C; Vernardos, G; Koopmans, L V E; Verdoes kleijn, G; Bilicki, M; Napolitano, N R; Chatterjee, S; Covone, G; Dvornik, A; Erben, T; Getman, F; Giblin, B; Heymans, C; De jong, J T A; Kuijken, K; Schneider, P; Shan, H; Spiniello, Chiara; Wright, A H. - In: MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY. - ISSN 0035-8711. - 484:3(2019), pp. 3879-3896. [10.1093/mnras/stz189]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/741565
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