Title of article :
A New SURE Approach to Image Denoising: Interscale Orthonormal Wavelet Thresholding
Author/Authors :
Florian Luisier، نويسنده , , Thierry Blu and Michael Unser، نويسنده , , Michael Unser، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
This paper introduces a new approach to orthonormal
wavelet image denoising. Instead of postulating a
statistical model for the wavelet coefficients, we directly parametrize
the denoising process as a sum of elementary nonlinear
processes with unknown weights.We then minimize an estimate of
the mean square error between the clean image and the denoised
one. The key point is that we have at our disposal a very accurate,
statistically unbiased, MSE estimate—Stein’s unbiased risk estimate—
that depends on the noisy image alone, not on the clean one.
Like the MSE, this estimate is quadratic in the unknown weights,
and its minimization amounts to solving a linear system of equations.
The existence of this a priori estimate makes it unnecessary
to devise a specific statistical model for the wavelet coefficients.
Instead, and contrary to the custom in the literature, these coefficients
are not considered random anymore. We describe an
interscale orthonormal wavelet thresholding algorithm based on
this new approach and show its near-optimal performance—both
regarding quality and CPU requirement—by comparing it with
the results of three state-of-the-art nonredundant denoising
algorithms on a large set of test images. An interesting fallout
of this study is the development of a new, group-delay-based,
parent–child prediction in a wavelet dyadic tree.
Keywords :
image denoising , interscale dependencies , orthonormalwavelet transform , Stein’s unbiased risk estimate (SURE)minimization.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING