| Literature DB >> 26628926 |
Dong Cui1, Minmin Liu2, Lei Hu3, Keju Liu2, Yongxin Guo1, Qing Jiao1.
Abstract
The wavelet-domain Hidden Markov Tree Model can properly describe the dependence and correlation of fundus angiographic images' wavelet coefficients among scales. Based on the construction of the fundus angiographic images Hidden Markov Tree Models and Gaussian Mixture Models, this paper applied expectation-maximum algorithm to estimate the wavelet coefficients of original fundus angiographic images and the Bayesian estimation to achieve the goal of fundus angiographic images denoising. As is shown in the experimental result, compared with the other algorithms as mean filter and median filter, this method effectively improved the peak signal to noise ratio of fundus angiographic images after denoising and preserved the details of vascular edge in fundus angiographic images.Entities:
Keywords: Fundus images; HIDDEN Markov Tree Model (HMT Model); image denoising; wavelet transform
Year: 2015 PMID: 26628926 PMCID: PMC4645835 DOI: 10.2174/1874120701509010194
Source DB: PubMed Journal: Open Biomed Eng J ISSN: 1874-1207
PSNR values of image denoised by various methods.
| WGN σ | 0.05 | 0.1 | |
|---|---|---|---|
| Noisy image | 20.1583 | 13.9004 | |
| The traditional method | Mean filter | 23.0227 | 19.5613 |
| Median filter | 25.4856 | 22.4482 | |
| The wavelet method | Soft threshold | 25.8712 | 21.9881 |
| HMT | 28.9977 | 25.8841 | |