TY - JOUR
T1 - The impact of human expert visual inspection on the discovery of strong gravitational lenses
AU - lenseuclid
AU - Rojas, Karina
AU - Collett, Thomas E.
AU - Ballard, Daniel
AU - Magee, Mark R.
AU - Birrer, Simon
AU - Buckley-Geer, Elizabeth
AU - Chan, James H.~H.
AU - Clément, Benjamin
AU - Diego, José M.
AU - Gentile, Fabrizio
AU - González, Jimena
AU - Joseph, Rémy
AU - Mastache, Jorge
AU - Schuldt, Stefan
AU - Tortora, Crescenzo
AU - Verdugo, Tomás
AU - Verma, Aprajita
AU - Daylan, Tansu
AU - Millon, Martin
AU - Jackson, Neal
AU - Dye, Simon
AU - Melo, Alejandra
AU - Mahler, Guillaume
AU - Ogando, Ricardo L.~C.
AU - Courbin, Frédéric
AU - Fritz, Alexander
AU - Herle, Aniruddh
AU - Acevedo Barroso, Javier A.
AU - Cañameras, Raoul
AU - Cornen, Claude
AU - Dhanasingham, Birendra
AU - Glazebrook, Karl
AU - Martinez, Michael N.
AU - Ryczanowski, Dan
AU - Savary, Elodie
AU - Góis-Silva, Filipe
AU - Arturo Ureña-López, L.
AU - Wiesner, Matthew P.
AU - Wilde, Joshua
AU - Valim Calçada, Gabriel
AU - Cabanac, Rémi
AU - Pan, Yue
AU - Sierra, Isaac
AU - Despali, Giulia
AU - Cavalcante-Gomes, Micaele V.
AU - Macmillan, Christine
AU - Maresca, Jacob
AU - Grudskaia, Aleksandra
AU - O'Donnell, Jackson H.
AU - Paic, Eric
PY - 2023/8/1
Y1 - 2023/8/1
N2 - We investigate the ability of human ‘expert’ classifiers to identify strong gravitational lens candidates in Dark Energy Survey like imaging. We recruited a total of 55 people that completed more than 25 per cent of the project. During the classification task, we present to the participants 1489 images. The sample contains a variety of data including lens simulations, real lenses, non-lens examples, and unlabelled data. We find that experts are extremely good at finding bright, well-resolved Einstein rings, while arcs with g-band signal to noise less than ∼25 or Einstein radii less than ∼1.2 times the seeing are rarely recovered. Very few non-lenses are scored highly. There is substantial variation in the performance of individual classifiers, but they do not appear to depend on the classifier’s experience, confidence or academic position. These variations can be mitigated with a team of 6 or more independent classifiers. Our results give confidence that humans are a reliable pruning step for lens candidates, providing pure and quantifiably complete samples for follow-up studies.
AB - We investigate the ability of human ‘expert’ classifiers to identify strong gravitational lens candidates in Dark Energy Survey like imaging. We recruited a total of 55 people that completed more than 25 per cent of the project. During the classification task, we present to the participants 1489 images. The sample contains a variety of data including lens simulations, real lenses, non-lens examples, and unlabelled data. We find that experts are extremely good at finding bright, well-resolved Einstein rings, while arcs with g-band signal to noise less than ∼25 or Einstein radii less than ∼1.2 times the seeing are rarely recovered. Very few non-lenses are scored highly. There is substantial variation in the performance of individual classifiers, but they do not appear to depend on the classifier’s experience, confidence or academic position. These variations can be mitigated with a team of 6 or more independent classifiers. Our results give confidence that humans are a reliable pruning step for lens candidates, providing pure and quantifiably complete samples for follow-up studies.
KW - gravitational lensing: strong
KW - Astrophysics - Astrophysics of Galaxies
KW - Astrophysics - Cosmology and Nongalactic Astrophysics
U2 - 10.1093/mnras/stad1680
DO - 10.1093/mnras/stad1680
M3 - Article
SN - 1365-2966
VL - 523
SP - 4413
EP - 4430
JO - MNRAS
JF - MNRAS
IS - 3
ER -