Polarized CMB recovery with sparse component separation
Jerome Bobin, Florent Sureau, Jean-Luc Starck

TL;DR
This paper introduces PolGMCA, a new sparsity-based component separation method for polarized CMB maps, improving accuracy and reducing foreground contamination in full-sky microwave simulations.
Contribution
The paper presents PolGMCA, a novel sparsity-driven algorithm tailored for polarized CMB map recovery, enhancing previous methods by handling component correlation and noise-foreground trade-offs.
Findings
Achieves precise polarized CMB map recovery in simulations
Reduces foreground residuals compared to standard methods
Performs well in challenging regions like the galactic center
Abstract
The polarization modes of the cosmological microwave background are an invaluable source of information for cosmology, and a unique window to probe the energy scale of inflation. Extracting such information from microwave surveys requires disentangling between foreground emissions and the cosmological signal, which boils down to solving a component separation problem. Component separation techniques have been widely studied for the recovery of CMB temperature anisotropies but quite rarely for the polarization modes. In this case, most component separation techniques make use of second-order statistics to discriminate between the various components. More recent methods, which rather emphasize on the sparsity of the components in the wavelet domain, have been shown to provide low-foreground, full-sky estimate of the CMB temperature anisotropies. Building on sparsity, the present paper…
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