首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Automatic Determination of Number of Homogenous Regions in SAR Images Utilizing Splitting and Merging Based on a Reversible Jump MCMC Algorithm
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Automatic Determination of Number of Homogenous Regions in SAR Images Utilizing Splitting and Merging Based on a Reversible Jump MCMC Algorithm

机译:基于可逆跳跃MCMC算法的分割合并自动确定SAR图像中均匀区域数量

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摘要

This paper presents an algorithm dealing with initial segmentation of speckled Synthetic Aperture Radar (SAR) intensity images in order to automatically determine the number of homogeneous regions. Taking this problem into account, segmentation procedure utilizing splitting and merging is designed, iteratively. The proposed approach is based upon Bayesian inference, a maximum likelihood gamma distribution parameter estimator, and a Reversible Jump Markov Chain Monte Carlo (RJMCMC) algorithm. By using of image splitting operation, SAR image is partitioned into finite regions iteratively, until all individual regions are coherent. Then each region is assigned a unique label to indicate the class to which the homogeneous region belongs. The intensities of pixels in each coherent region are assumed to satisfy identical and independent gamma distribution. Then an RJMCMC scheme is designed to simulate the posterior distribution in order to estimate the number of components and delineate an initial segmentation. Thus, the main purpose of this research is to define the number of homogeneous regions rather than a perfect segmentation, i.e. model outputs can be served for unsupervised segmentation methodologies as prior information. The results obtained from Radarsat-1/2 of SAR intensity images show that the proposed algorithm is both capable and reliable in defining the accurate number of homogeneous regions in a wide variety of SAR intensity images, comprising a high level of speckle noise.
机译:本文提出了一种算法来处理斑点合成孔径雷达(SAR)强度图像的初始分割,以便自动确定均匀区域的数量。考虑到此问题,迭代地设计了利用拆分和合并的分割程序。所提出的方法基于贝叶斯推断,最大似然伽玛分布参数估计器和可逆跳跃马尔可夫链蒙特卡罗(RJMCMC)算法。通过使用图像分割操作,SAR图像被迭代地划分为有限区域,直到所有单个区域都连贯为止。然后,为每个区域分配一个唯一的标签,以指示同质区域所属的类别。假设每个相干区域中的像素强度满足相同且独立的伽马分布。然后,设计了一个RJMCMC方案来模拟后验分布,以估计分量的数量并描绘出初始分割。因此,这项研究的主要目的是定义同质区域的数量而不是完美的分割,即模型输出可以作为先验信息用于无监督分割方法。从SAR强度图像的Radarsat-1 / 2获得的结果表明,所提出的算法在定义包括高水平斑点噪声的各种SAR强度图像中,能够准确准确地定义均匀区域的数量。

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