Sparse component separation for accurate CMB map estimation
J. Bobin, J.-L. Starck, F. Sureau, S. Basak

TL;DR
This paper introduces a novel sparse modeling approach called L-GMCA for accurately separating the CMB from foreground signals in multi-wavelength data, accounting for instrument and emission variability, leading to cleaner CMB maps.
Contribution
The paper presents a new sparsity-based component separation method that models spatial and spectral variations, improving the accuracy of CMB map estimation over existing techniques.
Findings
L-GMCA effectively reduces foreground contamination in simulated Planck data.
The method accounts for beam variability and spectral variations across pixels.
Numerical experiments demonstrate high efficiency in CMB map recovery.
Abstract
The Cosmological Microwave Background (CMB) is of premier importance for the cosmologists to study the birth of our universe. Unfortunately, most CMB experiments such as COBE, WMAP or Planck do not provide a direct measure of the cosmological signal; CMB is mixed up with galactic foregrounds and point sources. For the sake of scientific exploitation, measuring the CMB requires extracting several different astrophysical components (CMB, Sunyaev-Zel'dovich clusters, galactic dust) form multi-wavelength observations. Mathematically speaking, the problem of disentangling the CMB map from the galactic foregrounds amounts to a component or source separation problem. In the field of CMB studies, a very large range of source separation methods have been applied which all differ from each other in the way they model the data and the criteria they rely on to separate components. Two main…
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