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基于MRF场的侧扫声呐图像分割方法
引用本文:阳凡林,独知行,李家彪,吴自银,初凤友.基于MRF场的侧扫声呐图像分割方法[J].海洋学报,2006,28(4):43-48.
作者姓名:阳凡林  独知行  李家彪  吴自银  初凤友
作者单位:1.国家海洋局海底科学重点实验室, 浙江, 杭州, 310012;国家海洋局, 第二海洋研究所, 浙江, 杭州, 310012;山东科技大学, 基础地理信息与数字化重点实验室, 山东, 青岛, 266510
基金项目:中国科学院资助项目;山东省重点实验室基金
摘    要:为了利用侧扫声呐进行水下目标自动探测和识别,首先必须将声呐图像分为目标高亮区、海底混响区和目标阴影区.由于声呐图像有强背景噪声,传统的图像分割方法显得无能为力,故采用基于MRF场的图像分割方法来准确地分割.根据侧扫声呐目标的成像特点,建立了分割的约束条件;利用阴影与目标的灰度均值比很小这一特点进行初始分割,然后根据分割后目标与阴影的宽度差来剔除虚假目标,由初始分割的结果求得MRF模型初始参数,再采用迭代条件估计得到最终的模型参数和准确的分割结果.由于考虑了相邻像素间的依赖关系,具有抗噪性强、分割效果好的优点,从理论上说是合理的.实测数据分析也证明了这种算法的优越性.

关 键 词:马尔可夫随机场    侧扫声呐    图像    分割
文章编号:0253-4193(2006)04-0043-06
收稿时间:07 21 2005 12:00AM
修稿时间:2005-07-212005-11-11

Side-scan sonar imagery segmentation based on Markov random field model
YANG Fan-lin,DU Zhi-xing,LI Jia-biao,WU Zi-yin and CHU Feng-you.Side-scan sonar imagery segmentation based on Markov random field model[J].Acta Oceanologica Sinica (in Chinese),2006,28(4):43-48.
Authors:YANG Fan-lin  DU Zhi-xing  LI Jia-biao  WU Zi-yin and CHU Feng-you
Institution:1. Key Laboratory of Submarine Geosciences of State Oceanic Administration, Hangzhou 310012, China; 2. Second Institute of Oceanography, State Oceanic Administration, Hangzhou 310012, China; 3. Key laboratory of Geomatics and Digital Technology, Shandong University of Science and Technology, Qingdao 266510,China
Abstract:Side-scan sonar image(SSI) must be segmented into regions of shadow,sea-bottom-reverberation,and object-highlight before underwater object can automatically be detected and recognized.Because strong background noises exist,traditional algorithms of image segmenting are useless.The algorithm based on Markov random field model is introduced.The segmentation can be constrained by the aprior information,according to the characteristics of object on the SSI.Furthermore,it is highlight intensity in an object area and lowlight intensity in a shadow area,so the ratio of shadow intensity to object intensity is very small.The SSI can be initially segmented by the three aprior information.After the initial segmentation has been completed,a false objects can be detected through the characteristic that the difference between the widths of object and shadow is close to one.And then,an MRF model parameter can be solved with the least square,and an noise parameter can be calculated with the maximum likelihood approach.Finally,the segmentation can be accomplished with the ICE method.The MRF model provides a reliable method for obtaining this underlying label field through incorporating pixel dependencies into the segmentation model.This is rational and robust.It has few influences when strong speckle noise exists.This fine result is obtained through the real SSI.
Keywords:MRF  side-scan sonar  image  segmentation
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