Feng Qian-jin, Chen Wu-fan
Key Lab for Medical Image Processing of PLA, College of Biomedical Engineering, Southern Medical University, Guangzhou 510515, China.
Nan Fang Yi Ke Da Xue Xue Bao. 2006 May;26(5):579-83.
A fuzzy Markov random field (FMRF) model is established and a new algorithm based on FMRF for image segmentation proposed in this paper. This algorithm simultaneously deals with the fuzziness and randomness for effective acquisition of the prior knowledge of the images. A conventional Markov random field (CMRF) serves as a bridge between the FMRF, obviously a generalization of the CMRF, and the original images. The FMRF degenerates into the CMRF when no fuzziness is considered. The segmentation results are obtained by fuzzifying the image, updating the membership of prior FMRF based on the maximum posteriori criteria, and defuzzifying the image according to the maximum membership principle. The proposed algorithm can effectively filter the noise and eliminate partial volume effect when processing the degraded image to ensure more accurate image segmentation.
本文建立了一种模糊马尔可夫随机场(FMRF)模型,并提出了一种基于FMRF的图像分割新算法。该算法同时处理模糊性和随机性,以有效获取图像的先验知识。传统马尔可夫随机场(CMRF)作为FMRF(显然是CMRF的推广)与原始图像之间的桥梁。当不考虑模糊性时,FMRF退化为CMRF。通过对图像进行模糊化、基于最大后验准则更新先验FMRF的隶属度以及根据最大隶属度原则对图像进行去模糊化来获得分割结果。该算法在处理退化图像时能够有效滤除噪声并消除部分容积效应,以确保更准确的图像分割。