International audienceWe present the first reconstruction of dark matter maps from weak lensing observational data using deep learning. We train a convolution neural network with a U-Net-based architecture on over 3.6 × 10^5 simulated data realizations with non-Gaussian shape noise and with cosmological parameters varying over a broad prior distribution. We interpret our newly created dark energy survey science verification (DES SV) map as an approximation of the posterior mean P(κ|γ) of the convergence given observed shear. Our DeepMass^1 method is substantially more accurate than existing mass-mapping methods. With a validation set of 8000 simulated DES SV data realizations, compared to Wiener filtering with a fixed power spectrum, the De...
Mapping the underlying density field, including non-visible dark matter, using weak gravitational le...
ABSTRACT We present reconstructed convergence maps, mass maps, from the Dark Energy Survey ...
International audienceMapping the underlying density field, including non-visible dark matter, using...
International audienceWe present the first reconstruction of dark matter maps from weak lensing obse...
The standard model of cosmology has been remarkably successful at describing our Universe. It can ac...
International audienceWe present reconstructed convergence maps, \textit{mass maps}, from the Dark E...
Mapping the underlying density field, including non-visible dark matter, using weak gravitational le...
In many cosmological inference problems, the likelihood (the probability of the observed data as a f...
Mapping the underlying density field, including non-visible dark matter, using weak gravitational le...
ABSTRACT We present reconstructed convergence maps, mass maps, from the Dark Energy Survey ...
International audienceMapping the underlying density field, including non-visible dark matter, using...
International audienceWe present the first reconstruction of dark matter maps from weak lensing obse...
The standard model of cosmology has been remarkably successful at describing our Universe. It can ac...
International audienceWe present reconstructed convergence maps, \textit{mass maps}, from the Dark E...
Mapping the underlying density field, including non-visible dark matter, using weak gravitational le...
In many cosmological inference problems, the likelihood (the probability of the observed data as a f...
Mapping the underlying density field, including non-visible dark matter, using weak gravitational le...
ABSTRACT We present reconstructed convergence maps, mass maps, from the Dark Energy Survey ...
International audienceMapping the underlying density field, including non-visible dark matter, using...