Mahmud Hasan and Mahmoud R. El-Sakka, "Structural Similarity
Optimized Wiener Filter: A Smart Way to Fight Image Noise",
International Conference on Image Analysis and Recognition,
ICIAR'2015, LNCS 9164, pp. 60-68, Springer-Verlag Berlin
Heidelberg, July 2015, Niagara Falls, Canada.
Abstract
Wiener filter is widely used for image denoising and
restoration. It is alternatively known as the minimum mean
square error filter or the least square error filter, since
the objective function used in Wiener filter is an age-old
benchmark called the Mean Square Error (MSE). Wiener filter
tries to approximate the degraded image so that its objective
function is optimized. Although MSE is considered to be a
robust measurement metric to assess the closeness between two
images, recent studies show that MSE can sometimes be
misleading whereas the Structural Similarity (SSIM) can be
an acceptable alternative. In spite of having this misleading
natured objective function, Wiener filter is being heavily
used as a fundamental component in many image denoising and
restoration algorithms such as in current state-of-the-art of
image denoising- BM3D. In this study, we explored the problem
with the objective function of Wiener filter. We then
improved the Wiener filter by optimizing it for SSIM. Our
proposed method is tested using the standard performance
evaluation methods. Experimental results show that the
proposed SSIM optimized Wiener filter can achieve
significantly better denoising (and restoration) as compared
to its original MSE optimized counterpart. Finally, we
discussed the potentials of using our improved Wiener filter
inside BM3D in order to eventually improve BM3D's denoising performance.