会议专题

Bayesian Wavelet-Based Image Denoising Using Markov Random Field Models

This paper presents a Bayesian denoising method based on Markov Random Field (MRF) models in wavelet domain in order to improve the image denoising performance and reduce the computational complexity. The computations of the initial mask, optimal mask and shrinkage factor of the wavelet coefficient are the core of this method. To obtain the appropriate initial mask, a simple two-state Gaussian mixture model is constructed and an estimation method of the initial mask based on the maximum a posteriori (MAP) criterion is proposed. Based on this initial mask, an optimal mask is obtained. To reduce the computational complexity of the optimal mask, a simple optimization method, the iterated conditional modes (ICM) method is adopted. A Bayesian wavelet shrinkage factor is derived based on this optical mask. Under this framework, the computational complexity of the denoising method can be reduced. Simulation results demonstrate our proposed method has a good denoising performance while reducing the computational complexity.

image denoising wavelet bayesian estimation markov random field

Yanqiu Cui Tao Zhang Shuang Xu Houjie Li

College of Electromechanical & Information Engineering Dalian Nationalities University Dalian, China

国际会议

The 2010 International Conference on Computer Application and System Modeling(2010计算机应用与系统建模国际会议 ICCASM 2010)

太原

英文

611-614

2010-10-22(万方平台首次上网日期,不代表论文的发表时间)