Litcius/Paper detail

Single frequency CMB B-mode inference with realistic foregrounds from a single training image

Niall Jeffrey, François Boulanger, Benjamin D Wandelt, Bruno Regaldo-Saint Blancard, Erwan Allys, François Levrier

2021Monthly Notices of the Royal Astronomical Society Letters18 citationsDOIOpen Access PDF

Abstract

ABSTRACT With 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, highly non-Gaussian dust foregrounds with a single training image at a single frequency. For a real CMB experiment, a small number of representative sky patches would provide the training data required for full cosmological inference. These results enable robust likelihood-free, simulation-based parameter, and model inference for primordial B-mode detection using observed CMB polarization data.

Topics & Concepts

Cosmic microwave backgroundPhysicsSkyArtificial intelligenceWaveletConvolutional neural networkInferenceRobustness (evolution)Polarization (electrochemistry)Pattern recognition (psychology)PlanckMoment (physics)Image (mathematics)Cosmic background radiationArtificial neural networkAstrophysicsComputer scienceComputer visionPosterior probabilityStatistical modelSIGNAL (programming language)Statistical hypothesis testingLimitingMetric (unit)Training (meteorology)Cosmology and Gravitation TheoriesRadio Astronomy Observations and TechnologyGalaxies: Formation, Evolution, Phenomena