Title of article :
Wavelet methods for inverting the Radon transform with noisy data
Author/Authors :
Nam-Yong Lee، نويسنده , , Brendan Lucier، نويسنده , , B.J.
، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Because the Radon transform is a smoothing transform,
any noise in the Radon data becomes magnified when the inverse
Radon transform is applied. Among the methods used to deal
with this problem is the wavelet–vaguelette decomposition (WVD)
coupled with wavelet shrinkage, as introduced by Donoho. We extend
several results of Donoho and others here. First, we introduce
a new sufficient condition on wavelets to generate aWVD. For
a general homogeneous operator, which class includes the Radon
transform, we show that a variant of Donoho’s method for solving
inverse problems can be derived as the exact minimizer of a variational
problem that uses a Besov norm as the smoothing functional.
We give a new proof of the rate of convergence of wavelet shrinkage
that allows us to estimate rather sharply the best shrinkage parameter
needed to recover an image from noise-corrupted data.
We conduct tomographic reconstruction computations that support
the hypothesis that near-optimal shrinkage parameters can be
derived if one can estimate only two Besov-space parameters about
an image . Both theoretical and experimental results indicate that
our choice of shrinkage parameters yields uniformly better results
than Kolaczyk’s variant of Donoho’s method and the classical filtered
backprojection method.
Keywords :
Positron emission tomography , Radon transform , Variational problems , Wavelet shrinkage , wavelets.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING