16–18 mai 2022
LAPP, Annecy
Fuseau horaire Europe/Paris

Cluster detection on LSST DC2 simulated images with Yolo neural network

Non programmé
15m
Auditorium (LAPP, Annecy)

Auditorium

LAPP, Annecy

Orateur

Kirill Grishin (Universite de Paris)

Description

The distribution of galaxy clusters, the largest gravitationally bound structures in the Universe, helps us to estimate fundamental constants and constrain different cosmological models. With the expected development and commissioning of astronomical instruments, such as LSST, in the next decade, the depth of imaging data for a significant area of the sky will allow us to select nearly complete samples of galaxy clusters at redshifts up to z~1.3. To test the cluster detection technique that works directly with the reduced images, we have applied the convolutional neural network Yolo v3, trained on SDSS color images for redMaPPer clusters, to precomputed color images for LSST DC2 simulation. In order to reach performance similar to that one for SDSS images we used the same filter set and color scheme for DC2 cutouts. Our results demonstrate that Yolo is well transferable and can give reliable results even applied to datasets different from those it was trained on.

Auteurs principaux

Kirill Grishin (Universite de Paris) Simona Mei

Co-auteur

Stéphane Ilic (Observatoire de Paris - LERMA)

Documents de présentation

Aucun document.