Non-parametric maximum likelihood component separation for CMB polarization data
Cl\'ement Leloup, Josquin Errard, Radek Stompor

TL;DR
This paper introduces a non-parametric maximum likelihood method for separating CMB polarization signals from foregrounds, requiring minimal assumptions and improving the detection of large-scale B modes in upcoming experiments.
Contribution
It proposes a novel minimally informed non-parametric approach based on maximum likelihood for component separation in CMB polarization data, relaxing many traditional assumptions.
Findings
The method effectively recovers CMB B modes with fewer assumptions.
Performance comparable to parametric methods in simulations.
Applicable to future CMB experiments with complex foregrounds.
Abstract
Mitigation of the impact of foreground contributions to measurements of Cosmic Microwave Background (CMB) polarization is a crucial step in modern CMB data analysis and is of particular importance for a detection of large-scale CMB modes. A large variety of techniques, based on different assumptions and aiming at either a full component separation or merely cleaning the foreground signals from the CMB maps, have been described in the literature. In this work, we consider this problem within a unified framework based on the maximum likelihood principle, under the assumption that the signal at each frequency can be represented as a linear mixture of sky templates. We discuss the impact of various additional assumptions on the final outcome of the procedure. We find that the component separation problem can be fully solved in two specific situations: when we either know the frequency…
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Taxonomy
TopicsBlind Source Separation Techniques · Radio Astronomy Observations and Technology · GNSS positioning and interference
