Title of article :
Statistical Wavelet-based Image Denoising using Scale Mixture of Normal Distributions with Adaptive Parameter Estimation
Author/Authors :
Saeedzarandi, M Intelligent Data Processing Laboratory (IDPL) - Department of Electrical Engineering - Shahid Bahonar University of Kerman , Nezamabadi-pour, H Intelligent Data Processing Laboratory (IDPL) - Department of Electrical Engineering - Shahid Bahonar University of Kerman , Saryazdi, S Intelligent Data Processing Laboratory (IDPL) - Department of Electrical Engineering - Shahid Bahonar University of Kerman
Abstract :
Removing noise from images is a challenging problem in digital image processing. This paper presents an image denoising method based on a maximum a posteriori (MAP) density function estimator, which is implemented in the wavelet domain because of its energy compaction property. The performance of the MAP estimator depends on the proposed model for noise-free wavelet coefficients. Thus in the wavelet based image denoising, selecting a proper model for wavelet coefficients is very important. In this paper, we model wavelet coefficients in each sub-band by heavy-tail distributions that are from scale mixture of normal distribution family. The parameters of distributions are estimated adaptively to model the correlation between the coefficient amplitudes, so the intra-scale dependency of wavelet coefficients is also considered. The denoising results confirm the effectiveness of the proposed method.
Keywords :
Image denoising , Wavelet transform , MAP estimator , Heavy-tail distributions , Scale , mixture of normal distributions
Journal title :
Astroparticle Physics