Sar图像的局部参数估计与无监督分割

H. Quelle, J. Boucher, W. Pieczynski
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引用次数: 10

摘要

1. 摘要本文主要研究SAR图像的无监督统计分割问题。然而,这里开发的方法是一种通用的参数估计技术,可以用于大多数类型的图像。我们采用上下文方法,其中每个像素从其邻域的测量进行分类。在这种方法中,以前的统计问题是估计分布混合物的组成部分。我们在以前的一些研究中表明,当考虑平稳随机场时,扫描电镜很好地适应了这种框架下的问题。在本文中,我们提出了一种新的分布混合估计器,其中先验可以依赖于所考虑像素的位置。这使得它在非平稳情况下是有效的。我们描述了一些基于平稳或非平稳随机场采样的合成图像的情况,在这些情况下,基于我们算法估计的参数的上下文方法比基于SEM算法估计的参数的相同方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Parameter Estimation and Unsupervised Segmentation of Sar Images
1. Abstract Our work deals with the unsupervised statistical segmentation of SAR images. However the method here developped is a general parameter estimation technique and can be used for most types of images. We adopt a contextual method in which each pixel is classified from the measurements taken in its neighborhood. In this approach the previous statistical problem is the estimation of components of a distribution mixture. We showed in some previous studies that the SEM is well adapted to the problem in this frame, when stationary random fields are considered. In this paper we present a new distribution mixture estimator in which priors can depend on the position of the considered pixel. This makes it valid in the non-stationary case. We describe some situations, based on synthetic images sampled by stationary or non stationary random fields, in which the contextual method based on parameters estimated by our algorithm is more efficient than the same method based on parameters estimated by the SEM algorithm.
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