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Unsupervised classification of radar images using hidden Markov chains and hidden Markov random fields

机译:使用隐马尔可夫链和隐马尔可夫随机场对雷达图像进行无监督分类

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摘要

Due to the enormous quantity of radar images acquired by satellites and through shuttle missions, there is an evident need for efficient automatic analysis tools. This paper describes unsupervised classification of radar images in the framework of hidden Markov models and generalized mixture estimation. Hidden Markov chain models, applied to a Hilbert-Peano scan of the image, constitute a fast and robust alternative to hidden Markov random field models for spatial regularization of image analysis problems, even though the latter provide a finer and more intuitive modeling of spatial relationships. We here compare the two approaches and show that they can be combined in a way that conserves their respective advantages. We also describe how the distribution families and parameters of classes with constant or textured radar reflectivity can be determined through generalized mixture estimation. Sample results obtained on real and simulated radar images are presented.
机译:由于卫星和航天飞机任务采集的雷达图像数量巨大,因此显然需要高效的自动分析工具。本文在隐马尔可夫模型和广义混合估计的框架下描述了雷达图像的无监督分类。应用于图像的Hilbert-Peano扫描的隐马尔可夫链模型,构成了用于图像分析问题的空间正则化的隐马尔可夫随机场模型的快速而健壮的替代方法,即使后者提供了更精细,更直观的空间关系建模。我们在这里比较这两种方法,并表明可以以保留各自优点的方式将它们组合在一起。我们还描述了如何通过广义混合估计来确定具有恒定或纹理雷达反射率的类的分布族和参数。给出了在真实和模拟雷达图像上获得的样本结果。

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