2007 IEEE International Conference on Image Processing - San Antonio, Texas, U.S.A. - September 16-19, 2007

Technical Program

Paper Detail

Paper:TA-P8.7
Session:Image and Video Restoration and Enhancement II
Time:Tuesday, September 18, 09:50 - 12:30
Presentation: Poster
Title: LOCALLY ADAPTIVE WAVELET-BASED IMAGE DENOISING USING THE GRAM-CHARLIER PRIOR FUNCTION
Authors: S. M. Mahbubur Rahman; Concordia University 
 M. Omair Ahmad; Concordia University 
 M. N. S. Swamy; Concordia University 
Abstract: Statistical estimation techniques for the wavelet-based image denoising use suitable probability density function (PDFs) as prior functions for the image coefficients. Due to the intrascale dependency of the local neighboring image wavelet coefficients, the prior functions are assumed to be stationary. In this paper, it is shown that the stationary Gram-Charlier (GC) PDF models the image coefficients better than the traditional ones, such as the stationary Gaussian and stationary generalized Gaussian PDFs. A Bayesian wavelet-based maximum a posteriori estimator is then developed by using the proposed GC prior function. Experimental results on standard images show that the proposed estimator provides a denoising performance, which is better than that of several existing denoising methods in terms of signal-to-noise ratio and visual quality.



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