International audienceWith a single training image and using wavelet phase harmonic augmentation, we present polarized Cosmic Microwave Background (CMB) foreground marginalization in a high-dimensional likelihood-free (Bayesian) framework. We demonstrate robust foreground removal using only a single frequency of simulated data for a BICEP-like sky patch. Using Moment Networks, we estimate the pixel-level posterior probability for the underlying {E, B} signal and validate the statistical model with a quantile-type test using the estimated marginal posterior moments. The Moment Networks use a hierarchy of U-Net convolutional neural networks. This work validates such an approach in the most difficult limiting case: pixel-level, noise-free, hig...
Next-generation cosmic microwave background (CMB) surveys will map the microwave sky with unpreceden...
We use Bayesian component estimation methods to examine the prospects for large-scale polarized map ...
We investigate the performance of the parametric maximum likelihood component separation method in t...
International audienceWith a single training image and using wavelet phase harmonic augmentation, we...
International audienceDetection of B-mode polarization of the cosmic microwave background (CMB) radi...
Detection of B-mode polarization of the cosmic microwave background (CMB) radiation is one of the fr...
The cosmic microwave background (CMB) is a significant source of knowledge about the origin and evol...
The polarization of the cosmic microwave background (CMB) can be split into two coordinate independe...
We study the effects of astrophysical foregrounds on the ability of Cosmic Microwave Background B-mo...
We investigate the performance of a simple Bayesian fitting approach to correct the cosmic microwave...
Detecting the imprint of inflationary gravitational waves on the B-mode polarization of the cosmic m...
Over the last few years, Neural Networks (NN) indicate favorable characterizations in accuracy and p...
One of the fundamental problems in extracting the cosmic microwave background signal (CMB) from mill...
We present a formalism for performance forecasting and optimization of future cosmic microwave backg...
We present a Bayesian parametric component separation method for polarised microwave sky maps. We so...
Next-generation cosmic microwave background (CMB) surveys will map the microwave sky with unpreceden...
We use Bayesian component estimation methods to examine the prospects for large-scale polarized map ...
We investigate the performance of the parametric maximum likelihood component separation method in t...
International audienceWith a single training image and using wavelet phase harmonic augmentation, we...
International audienceDetection of B-mode polarization of the cosmic microwave background (CMB) radi...
Detection of B-mode polarization of the cosmic microwave background (CMB) radiation is one of the fr...
The cosmic microwave background (CMB) is a significant source of knowledge about the origin and evol...
The polarization of the cosmic microwave background (CMB) can be split into two coordinate independe...
We study the effects of astrophysical foregrounds on the ability of Cosmic Microwave Background B-mo...
We investigate the performance of a simple Bayesian fitting approach to correct the cosmic microwave...
Detecting the imprint of inflationary gravitational waves on the B-mode polarization of the cosmic m...
Over the last few years, Neural Networks (NN) indicate favorable characterizations in accuracy and p...
One of the fundamental problems in extracting the cosmic microwave background signal (CMB) from mill...
We present a formalism for performance forecasting and optimization of future cosmic microwave backg...
We present a Bayesian parametric component separation method for polarised microwave sky maps. We so...
Next-generation cosmic microwave background (CMB) surveys will map the microwave sky with unpreceden...
We use Bayesian component estimation methods to examine the prospects for large-scale polarized map ...
We investigate the performance of the parametric maximum likelihood component separation method in t...