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A&A 436, 741-755 (2005)
DOI: 10.1051/0004-6361:20041997
Least-squares methods with Poissonian noise: Analysis and comparison with the Richardson-Lucy algorithm
R. Vio1, 2, J. Bardsley3 and W. Wamsteker21 Chip Computers Consulting s.r.l., Viale Don L. Sturzo 82, S. Liberale di Marcon, 30020 Venice, Italy
e-mail: robertovio@tin.it
2 ESA-VILSPA, Apartado 50727, 28080 Madrid, Spain
e-mail: willem.wamsteker@esa.int
3 Department of Mathematical Sciences, The University of Montana, Missoula, MT 59812-0864, USA
e-mail: bardsleyj@mso.umt.edu
(Received 12 September 2004 / Accepted 28 February 2005)
Abstract
It is well-known that the noise associated with the
collection of an astronomical image by a CCD camera is largely
Poissonian. One would expect, therefore, that computational
approaches that incorporate this a priori information will be more
effective than those that do not. The Richardson-Lucy (RL)
algorithm, for example, can be viewed as a maximum-likelihood (ML)
method for image deblurring when the data noise is assumed to be
Poissonian. Least-squares (LS) approaches, on the other hand,
are based on the assumption that the noise is Gaussian with fixed
variance across pixels, which is rarely accurate. Given this, it
is surprising that in many cases results obtained using LS
techniques are relatively insensitive to whether the noise is
Poissonian or Gaussian. Furthermore, in the presence of Poisson
noise, results obtained using LS techniques are often comparable
with those obtained by the RL algorithm. We seek an explanation of
these phenomena via an examination of the regularization
properties of particular LS algorithms. In addition, a careful
analysis of the RL algorithm yields an explanation as to why it is
more effective than LS approaches for star-like objects, and why
it provides similar reconstructions for extended objects. Finally
a comparative convergence analysis of the two algorithms is
carried out, with a section devoted to the convergence properties
of the RL algorithm. Numerical results are presented throughout
the paper. The subject treated in
this paper is not purely academic. In comparison with many ML
algorithms, the LS algorithms are much easier to use and to
implement, are computationally more efficient, and are more
flexible regarding the incorporation of constraints on the
solution. Consequently, if little to no improvement is gained in
the use of an ML approach over an LS algorithm, the latter will
often be the preferred approach.
Key words: methods: data analysis -- methods: statistical -- techniques: image processing
© ESO 2005
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