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6 - Signal separation in cosmology

Published online by Cambridge University Press:  11 April 2011

M. P. Hobson
Affiliation:
Astrophysics Group, Cavendish Laboratory, JJ Thomson Avenue, Cambridge CB3 0HE, UK
M. A. J. Ashdown
Affiliation:
Astrophysics Group, Cavendish Laboratory, JJ Thomson Avenue, Cambridge CB3 0HE, UK
V. Stolyarov
Affiliation:
Astrophysics Group, Cavendish Laboratory, JJ Thomson Avenue, Cambridge CB3 0HE, UK
Michael P. Hobson
Affiliation:
University of Cambridge
Andrew H. Jaffe
Affiliation:
Imperial College of Science, Technology and Medicine, London
Andrew R. Liddle
Affiliation:
University of Sussex
Pia Mukherjee
Affiliation:
University of Sussex
David Parkinson
Affiliation:
University of Sussex
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Summary

Signal separation is a common task in cosmological data analysis. The basic problem is simple to state: a number of signals are mixed together in some manner, either known or unknown, to produce some observed data. The object of signal separation is to infer the underlying signals given the observations.

A large number of techniques have been developed to attack this problem. The approaches adopted depend most crucially on the assumptions made regarding the nature of the signals and how they are mixed. Often methods are split into two broad classes: so-called blind and non-blind methods. Non-blind methods can be applied in cases where we know how the signals were mixed. Conversely, blind methods assume no knowledge of how the signals were mixed, and rely on assumptions about the statistical properties of the signals to make the separation. There are some techniques that straddle the two classes, which we shall refer to as ‘semi-blind’ methods. They assume partial knowledge of how the signals are mixed, or that the mixing properties of some signals are known and those of others are not.

There is a large literature in the field of signal processing about signal separation, using Bayesian techniques or otherwise. For any cosmological signal separation problem, it is almost always the case that someone has already attempted to solve an analogous problem in the signal processing literature. Readers who encounter a problem of this type, which is not already addressed in the cosmological literature, are encouraged to look further afield for existing solutions.

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Publisher: Cambridge University Press
Print publication year: 2009

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