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Utilisation of contour criteria in micro-segmentation of SAR images

机译:轮廓标准在SAR图像微分割中的应用

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摘要

The segmentation of SAR (Synthetic Aperture Radar) images is greatly complicated by the presence of coherent speckle. To carry out this process a hierarchical segmentation algorithm based on stepwise optimization is used. It starts with each individual pixel as a segment and then sequentially merges the segment pair that minimizes the criterion. In a hypothesis testing approach, we show how the stepwise merging criterion is derived from the probability model of image regions. The Ward criterion is derived from the Gaussian additive noise model. A new criterion is derived from the multiplicative speckle noise model of SAR images. The first merging steps produce micro-regions. With standard merging criteria, the high noise level of SAR images results in the production of micro-regions that have unreliable mean and variance values and irregular shapes. If the micro-segments are not correctly delimited then the following steps will merge segments from different fields. In examining the evolution of the initial segments, we see that the merging should take into account spatial aspects. In particular, the segment contours should have good shapes. We present three measures based on contour shapes, using the perimeter, the area and the boundary length of segments. These measures are combined with the SAR criterion in order to guide correctly the segment merging process. The new criterion produces good micro-segmentation of SAR images. The criterion is also used in the following merges to produce larger segments. This is illustrated by synthetic and real image results.
机译:由于存在相干斑点,SAR(合成孔径雷达)图像的分割变得非常复杂。为了执行此过程,使用了基于逐步优化的分层分割算法。它从每个单独的像素作为一个片段开始,然后顺序合并该片段对,以最小化标准。在假设检验方法中,我们展示了如何从图像区域的概率模型中得出逐步合并标准。 Ward准则是从高斯加性噪声模型得出的。从SAR图像的散斑噪声模型中得出了一个新的标准。最初的合并步骤产生了微区域。使用标准的合并标准,SAR图像的高噪声水平会导致产生具有不可靠的均值和方差值以及不规则形状的微区域。如果微段未正确定界,则以下步骤将合并来自不同字段的段。在检查初始段的演变时,我们看到合并应该考虑到空间方面。分段轮廓尤其应具有良好的形状。我们使用轮廓的周长,面积和边界长度提出了三种基于轮廓形状的度量。这些措施与SAR准则结合在一起,以正确地指导分段合并过程。新标准可产生良好的SAR图像微分段。该准则还用于以下合并中以产生更大的段。这由合成和真实图像结果说明。

著录项

  • 来源
    《International journal of remote sensing》 |2004年第17期|p.3497-3512|共16页
  • 作者

    J.-M. BEAULIEU;

  • 作者单位

    Computer Science Department, Pouliot Building, Laval University, Quebec City, Quebec, G1K 7P4, Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遥感技术;
  • 关键词

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