Title of article :
Image Denoising Based on Wavelets and Multifractals for Singularity Detection
Author/Authors :
J. Zhong and R. Ning، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
This paper presents a very efficient algorithm for
image denoising based on wavelets and multifractals for singularity
detection. A challenge of image denoising is how to preserve
the edges of an image when reducing noise. By modeling the intensity
surface of a noisy image as statistically self-similar multifractal
processes and taking advantage of the multiresolution analysis
with wavelet transform to exploit the local statistical self-similarity
at different scales, the pointwise singularity strength value
characterizing the local singularity at each scale was calculated.
By thresholding the singularity strength, wavelet coefficients at
each scale were classified into two categories: the edge-related
and regular wavelet coefficients and the irregular coefficients.
The irregular coefficients were denoised using an approximate
minimum mean-squared error (MMSE) estimation method, while
the edge-related and regular wavelet coefficients were smoothed
using the fuzzy weighted mean (FWM) filter aiming at preserving
the edges and details when reducing noise. Furthermore, to make
the FWM-based filtering more efficient for noise reduction at
the lowest decomposition level, the MMSE-based filtering was
performed as the first pass of denoising followed by performing
the FWM-based filtering. Experimental results demonstrated that
this algorithm could achieve both good visual quality and high
PSNR for the denoised images.
Keywords :
Fuzzy logic filtering , singularity detection , Multifractals , wavelet transform (WT).
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING