Object classification with Convolutional Neural Networks: from KiDS to Euclid
/ Authors
G. Kleijn, C. A. Marocico, Y. Mzayek, M. Pontinen, M. Granvik, O. Williams, J. D. Jong, T. Saifollahi, L. Wang, B. Margalef-Bentabol
and 4 more authors
/ Abstract
Large-scale imaging surveys have grown about 1000 times faster than the number of astronomers in the last 3 decades. Using Artificial Intelligence instead of astronomer's brains for interpretative tasks allows astronomers to keep up with the data. We give a progress report on using Convolutional Neural Networks (CNNs) to classify three classes of rare objects (galaxy mergers, strong gravitational lenses and asteroids) in the Kilo-Degree Survey (KiDS) and the Euclid Survey.