Image Denoising Based on BEMD and PDE
Image processing is an important area in the information industry. A crucial research is how to filter noise caused by the nature, system and processing of transfers and so on. The noise mixed with the useful images or signals and brings the researchers lots of troubles. In many research areas related, such as target detecting and tracking, edge detecting and image registration, image denoising is the first step of process and the effect of it is very important to the following processes. In this paper, we proposed an image denoising method using partial differential equation and bi-dimensional empirical mode decomposition. The bi-dimensional empirical mode decomposition transforms the image into intrinsic mode function and residue. Different components of the intrinsic mode functions present different frequency of the image. The different with the classic method of partial differential equation denoising is that we use partial differential equation of the intrinsic mode functions to filter noise. Finally, we reconstruct the image with the filtered intrinsic mode functions and residue. The experiments show the reliability of our algorithm.
Image Denoising Bi-dimensional Empirical Mode Decomposition Intrinsic Mode Function Partial Differential Equation
Jia Liu Caicheng Shi Meiguo Gao
Beijing Institute of Technology Beijing,China
国际会议
上海
英文
110-112
2011-03-11(万方平台首次上网日期,不代表论文的发表时间)