Bibcode
Martínez González, M. J.; Asensio Ramos, A.; Carroll, T. A.; Kopf, M.; Ramírez Vélez, J. C.; Semel, M.
Bibliographical reference
Astronomy and Astrophysics, Volume 486, Issue 2, 2008, pp.637-646
Advertised on:
8
2008
Journal
Citations
55
Refereed citations
40
Description
Aims: Our main objective is to develop a denoising strategy to increase
the signal to noise ratio of individual spectral lines of stellar
spectropolarimetric observations. Methods: We use a multivariate
statistics technique called Principal Component Analysis. The
cross-product matrix of the observations is diagonalized to obtain the
eigenvectors in which the original observations can be developed. This
basis is such that the first eigenvectors contain the greatest variance.
Assuming that the noise is uncorrelated a denoising is possible by
reconstructing the data with a truncated basis. We propose a method to
identify the number of eigenvectors for an efficient noise filtering.
Results: Numerical simulations are used to demonstrate that an
important increase of the signal to noise ratio per spectral line is
possible using PCA denoising techniques. It can be also applied for
detection of magnetic fields in stellar atmospheres. We analyze the
relation between PCA and commonly used techniques like line addition and
least-squares deconvolution. Moreover, PCA is very robust and easy to
compute.
Related projects
Magnetism, Polarization and Radiative Transfer in Astrophysics
Magnetic fields pervade all astrophysical plasmas and govern most of the variability in the Universe at intermediate time scales. They are present in stars across the whole Hertzsprung-Russell diagram, in galaxies, and even perhaps in the intergalactic medium. Polarized light provides the most reliable source of information at our disposal for the
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