Euclid preparation XXXIII. Characterization of convolutional neural networks for the identification of galaxy-galaxy strong-lensing events

dc.contributor.authorLeuzzi L.
dc.contributor.authorMeneghetti M.
dc.contributor.authorAngora G.
dc.contributor.authorMetcalf R. B.
dc.contributor.authorMoscardini L.
dc.contributor.authorRosati P.
dc.contributor.authorBergamini P.
dc.contributor.authorCalura F.
dc.contributor.authorClement B.
dc.contributor.authorGavazzi R.
dc.contributor.authorGentile F.
dc.contributor.authorLochner M.
dc.contributor.authorGrillo C.
dc.contributor.authorVernardos G.
dc.contributor.authorAghanim N.
dc.contributor.authorAmara A.
dc.contributor.authorAmendola L.
dc.contributor.authorAuricchio N.
dc.contributor.authorBodendorf C.
dc.contributor.authorBonino D.
dc.contributor.authorBranchini E.
dc.contributor.authorBrescia M.
dc.contributor.authorBrinchmann J.
dc.contributor.authorCamera S.
dc.contributor.authorCapobianco V.
dc.contributor.authorCarbone C.
dc.contributor.authorCarretero J.
dc.contributor.authorCastellano M.
dc.contributor.authorCavuoti S.
dc.contributor.authorCimatti A.
dc.contributor.authorCledassou R.
dc.contributor.authorCongedo G.
dc.contributor.authorConselice C. J.
dc.contributor.authorConversi L.
dc.contributor.authorCopin Y.
dc.contributor.authorCorcione L.
dc.contributor.authorCourbin F.
dc.contributor.authorCropper M.
dc.contributor.authorDa Silva A.
dc.contributor.authorDegaudenzi H.
dc.contributor.authorDinis J.
dc.contributor.authorDubath F.
dc.contributor.authorDupac X.
dc.contributor.authorDusini S.
dc.contributor.authorFarrens S.
dc.contributor.authorFerriol S.
dc.contributor.authorFrailis M.
dc.contributor.authorFranceschi E.
dc.contributor.authorFumana M.
dc.contributor.authorGaleotta S.
dc.contributor.authorGillis B.
dc.contributor.authorGiocoli C.
dc.contributor.authorGrazian A.
dc.contributor.authorGrupp F.
dc.contributor.authorGuzzo L.
dc.contributor.authorHaugan S. V. H.
dc.contributor.authorHolmes W.
dc.contributor.authorHormuth F.
dc.contributor.authorHornstrup A.
dc.contributor.authorHudelot P.
dc.contributor.authorJahnke K.
dc.contributor.authorKuemmel M.
dc.contributor.authorKermiche S.
dc.contributor.authorKiessling A.
dc.contributor.authorKitching T.
dc.contributor.authorKunz M.
dc.contributor.authorKurki-Suonio H.
dc.contributor.authorLilje P. B.
dc.contributor.authorLloro I.
dc.contributor.authorMaiorano E.
dc.contributor.authorMansutti O.
dc.contributor.authorMarggraf O.
dc.contributor.authorMarkovic K.
dc.contributor.authorMarulli F.
dc.contributor.authorMassey R.
dc.contributor.authorMedinaceli E.
dc.contributor.authorMei S.
dc.contributor.authorMelchior M.
dc.contributor.authorMellier Y.
dc.contributor.authorMerlin E.
dc.contributor.authorMeylan G.
dc.contributor.authorMoresco M.
dc.contributor.authorMunari E.
dc.contributor.authorNiemi S. -M.
dc.contributor.authorNightingale J. W.
dc.contributor.authorNutma T.
dc.contributor.authorPadilla C.
dc.contributor.authorPaltani S.
dc.contributor.authorPasian F.
dc.contributor.authorPedersen K.
dc.contributor.authorPettorino V.
dc.contributor.authorPires S.
dc.contributor.authorPolenta G.
dc.contributor.authorPoncet M.
dc.contributor.authorRaison F.
dc.contributor.authorRenzi A.
dc.contributor.authorRhodes J.
dc.contributor.authorRiccio G.
dc.contributor.authorRomelli E.
dc.contributor.authorRoncarelli M.
dc.contributor.authorRossetti E.
dc.contributor.authorSaglia R.
dc.contributor.authorSapone D.
dc.contributor.authorSartoris B.
dc.contributor.authorSchneider P.
dc.contributor.authorSecroun A.
dc.contributor.authorSeidel G.
dc.contributor.authorSerrano S.
dc.contributor.authorSirignano C.
dc.contributor.authorSirri G.
dc.contributor.authorStanco L.
dc.contributor.authorTallada-Crespi P.
dc.contributor.authorTaylor A. N.
dc.contributor.authorTereno I.
dc.contributor.authorToledo-Moreo R.
dc.contributor.authorTorradeflot F.
dc.contributor.authorTutusaus I.
dc.contributor.authorValenziano L.
dc.contributor.authorVassallo T.
dc.contributor.authorWang Y.
dc.contributor.authorWeller J.
dc.contributor.authorZamorani G.
dc.contributor.authorZoubian J.
dc.contributor.authorAndreon S.
dc.contributor.authorBardelli S.
dc.contributor.authorBoucaud A.
dc.contributor.authorBozzo E.
dc.contributor.authorColodro-Conde C.
dc.contributor.authorDi Ferdinando D.
dc.contributor.authorFarina M.
dc.contributor.authorFarinelli R.
dc.contributor.authorGracia-Carpio J.
dc.contributor.authorKeihaenen E.
dc.contributor.authorLindholm V.
dc.contributor.authorMaino D.
dc.contributor.authorMauri N.
dc.contributor.authorNeissner C.
dc.contributor.authorSchirmer M.
dc.contributor.authorScottez V.
dc.contributor.authorTenti M.
dc.contributor.authorTramacere A.
dc.contributor.authorVeropalumbo A.
dc.contributor.authorZucca E.
dc.contributor.authorAkrami Y.
dc.contributor.authorAllevato V.
dc.contributor.authorBaccigalupi C.
dc.contributor.authorBallardini M.
dc.contributor.authorBernardeau F.
dc.contributor.authorBiviano A.
dc.contributor.authorBorgani S.
dc.contributor.authorBorlaff A. S.
dc.contributor.authorBretonniere H.
dc.contributor.authorBurigana C.
dc.contributor.authorCabanac R.
dc.contributor.authorCappi A.
dc.contributor.authorCarvalho C. S.
dc.contributor.authorCasas S.
dc.contributor.authorCastignani G.
dc.contributor.authorCastro T.
dc.contributor.authorChambers K. C.
dc.contributor.authorCooray A. R.
dc.contributor.authorCoupon J.
dc.contributor.authorCourtois H. M.
dc.contributor.authorDavini S.
dc.contributor.authorde la Torre S.
dc.contributor.authorDe Lucia G.
dc.contributor.authorDesprez G.
dc.contributor.authorDi Domizio S.
dc.contributor.authorDole H.
dc.contributor.authorEscartin Vigo J. A.
dc.contributor.authorEscoffier S.
dc.contributor.authorFerrero I.
dc.contributor.authorGabarra L.
dc.contributor.authorGanga K.
dc.contributor.authorGarcia-Bellido J.
dc.contributor.authorGaztanaga E.
dc.contributor.authorGeorge K.
dc.contributor.authorGozaliasl G.
dc.contributor.authorHildebrandt H.
dc.contributor.authorHook I.
dc.contributor.authorHuertas-Company M.
dc.contributor.authorJoachimi B.
dc.contributor.authorKajava J. J. E.
dc.contributor.authorKansal V.
dc.contributor.authorKirkpatrick C. C.
dc.contributor.authorLegrand L.
dc.contributor.authorLoureiro A.
dc.contributor.authorMagliocchetti M.
dc.contributor.authorMainetti G.
dc.contributor.authorMaoli R.
dc.contributor.authorMartinelli M.
dc.contributor.authorMartinet N.
dc.contributor.authorMartins C. J. A. P.
dc.contributor.authorMatthew S.
dc.contributor.authorMaurin L.
dc.contributor.authorMonaco P.
dc.contributor.authorMorgante G.
dc.contributor.authorNadathur S.
dc.contributor.authorNucita A. A.
dc.contributor.authorPatrizii L.
dc.contributor.authorPopa V.
dc.contributor.authorPorciani C.
dc.contributor.authorPotter D.
dc.contributor.authorPontinen M.
dc.contributor.authorReimberg P.
dc.contributor.authorSanchez A. G.
dc.contributor.authorSakr Z.
dc.contributor.authorSchneider A.
dc.contributor.authorSereno M.
dc.contributor.authorSimon P.
dc.contributor.authorSpurio Mancini A.
dc.contributor.authorStadel J.
dc.contributor.authorSteinwagner J.
dc.contributor.authorTeyssier R.
dc.contributor.authorValiviita J.
dc.contributor.authorViel M.
dc.contributor.authorZinchenko I. A.
dc.contributor.authorDominguez Sanchez H.
dc.contributor.organizationfi=Tuorlan observatorio|en=Tuorla Observatory|
dc.contributor.organization-code1.2.246.10.2458963.20.90670098848
dc.converis.publication-id387086903
dc.converis.urlhttps://research.utu.fi/converis/portal/Publication/387086903
dc.date.accessioned2025-08-28T03:36:35Z
dc.date.available2025-08-28T03:36:35Z
dc.description.abstractForthcoming imaging surveys will increase the number of known galaxy-scale strong lenses by several orders of magnitude. For this to happen, images of billions of galaxies will have to be inspected to identify potential candidates. In this context, deep-learning techniques are particularly suitable for finding patterns in large data sets, and convolutional neural networks (CNNs) in particular can efficiently process large volumes of images. We assess and compare the performance of three network architectures in the classification of strong-lensing systems on the basis of their morphological characteristics. In particular, we implemented a classical CNN architecture, an inception network, and a residual network. We trained and tested our networks on different subsamples of a data set of 40 000 mock images whose characteristics were similar to those expected in the wide survey planned with the ESA mission Euclid, gradually including larger fractions of faint lenses. We also evaluated the importance of adding information about the color difference between the lens and source galaxies by repeating the same training on single- and multiband images. Our models find samples of clear lenses with greater than or similar to 90% precision and completeness. Nevertheless, when lenses with fainter arcs are included in the training set, the performance of the three models deteriorates with accuracy values of similar to 0.87 to similar to 0.75, depending on the model. Specifically, the classical CNN and the inception network perform similarly in most of our tests, while the residual network generally produces worse results. Our analysis focuses on the application of CNNs to high-resolution space-like images, such as those that the Euclid telescope will deliver. Moreover, we investigated the optimal training strategy for this specific survey to fully exploit the scientific potential of the upcoming observations. We suggest that training the networks separately on lenses with different morphology might be needed to identify the faint arcs. We also tested the relevance of the color information for the detection of these systems, and we find that it does not yield a significant improvement. The accuracy ranges from similar to 0.89 to similar to 0.78 for the different models. The reason might be that the resolution of the Euclid telescope in the infrared bands is lower than that of the images in the visual band.
dc.identifier.eissn1432-0746
dc.identifier.jour-issn0004-6361
dc.identifier.olddbid210891
dc.identifier.oldhandle10024/193918
dc.identifier.urihttps://www.utupub.fi/handle/11111/56647
dc.identifier.urlhttps://www.aanda.org/articles/aa/full_html/2024/01/aa47244-23/aa47244-23.html
dc.identifier.urnURN:NBN:fi-fe2025082786765
dc.language.isoen
dc.okm.affiliatedauthorKajava, Jari
dc.okm.discipline115 Astronomy and space scienceen_GB
dc.okm.discipline115 Avaruustieteet ja tähtitiedefi_FI
dc.okm.internationalcopublicationinternational co-publication
dc.okm.internationalityInternational publication
dc.okm.typeA1 ScientificArticle
dc.publisherEDP Sciences
dc.publisher.countryFranceen_GB
dc.publisher.countryRanskafi_FI
dc.publisher.country-codeFR
dc.relation.articlenumberA68
dc.relation.doi10.1051/0004-6361/202347244
dc.relation.ispartofjournalAstronomy and Astrophysics
dc.relation.volume681
dc.source.identifierhttps://www.utupub.fi/handle/10024/193918
dc.titleEuclid preparation XXXIII. Characterization of convolutional neural networks for the identification of galaxy-galaxy strong-lensing events
dc.year.issued2024

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