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Multiscale segmentation of SAR imagery

机译:SAR图像的多尺度分割

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Abstract: In this paper, we propose an efficient multiscale approach for the segmentation of natural clutter, specifically grass and forest, in synthetic aperture radar (SAR) imagery. This method exploits the coherent nature of SAR sensors. In particular, we exploit the characteristic statistical differences in imagery of different clutter types, as a function of scale, due to radar speckle. We employ a recently introduced class of multiscale stochastic processes that provide a powerful framework for describing random processes and fields that evolve in scale. We build models representative of each category of clutter of interest (i.e., grass and forest), and use these models to segment the imagery into these two clutter classes. The scale- autoregressive nature of the models allows extremely efficient calculation of the relative likelihoods of different clutter classifications for windows of SAR imagery, and we use these likelihoods as the basis for classifying image pixels and for accurately estimating forest-grass boundaries. We evaluate the performance of the technique by testing it on 0.3 meter SAR data gathered with the Lincoln Laboratory millimeter-wave SAR. !8
机译:摘要:在本文中,我们提出了一种有效的多尺度方法,用于在合成孔径雷达(SAR)图像中分割自然杂波,尤其是草皮和森林。这种方法利用了SAR传感器的相干特性。特别是,由于雷达散斑,我们利用不同杂波类型的图像中的特征统计差异作为比例的函数。我们采用了最近引入的一类多尺度随机过程,该过程提供了一个强大的框架来描述随机过程和规模演化的领域。我们建立了代表感兴趣杂波的每种类别(即草和森林)的模型,并使用这些模型将图像划分为这两个杂波类。模型的比例自回归性质允许对SAR图像窗口的不同杂波分类的相对可能性进行极其有效的计算,并且我们将这些可能性用作对图像像素进行分类和准确估计林草边界的基础。我们通过在使用Lincoln Laboratory毫米波SAR收集的0.3米SAR数据上进行测试来评估该技术的性能。 !8

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