Pseudo-convex Contour Criterion for Hierarchical Segmentation of SAR Images

Jean-Marie Beaulieu
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引用次数: 4

Abstract

The hierarchical segmentation of SAR (Synthetic Aperture Radar) images is greatly complicated by the presence of coherent speckle. We are exploring the utilization of spatial constraints and contour shapes in order to improve the segmentation results. With standard merging criterion, the high noise level of SAR images results in the production of regions that have variable mean and variance values and irregular shapes. If the first 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. Particularly, the segment contours should have good shapes. In this paper, we examine how the pseudo-convex envelope of a region can be used to evaluate the region contour. We present a pseudo-convex measure adapted to the geometry of image lattice. We show how the pseudo-convex envelope can be calculated. We present measures comparing contour shapes and using the perimeter, the area and the boundary length of segments. We use a hierarchical segmentation algorithm based upon stepwise optimization. A stepwise merging criterion is derived from the multiplicative speckle noise model. The shape measures are combined with the merging criterion in order to guide correctly the segment merging process. The new criterion produces good segmentation of SAR images. This is illustrated by synthetic and real image results.
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SAR图像分层分割的伪凸轮廓准则
合成孔径雷达(SAR)图像的分层分割由于相干散斑的存在而变得非常复杂。我们正在探索利用空间约束和轮廓形状来改善分割结果。在标准的合并准则下,SAR图像的高噪声水平导致生成的区域均值和方差值不稳定,形状不规则。如果第一个段没有正确分隔,那么接下来的步骤将合并来自不同字段的段。在检查初始部分的演变时,我们看到合并应该考虑到空间方面。特别是,线段轮廓应该有良好的形状。在本文中,我们研究了如何使用区域的伪凸包络来评估区域轮廓。提出了一种适用于图像点阵几何的伪凸测度。我们展示了如何计算伪凸包络。我们提出的措施比较轮廓形状和使用周长,面积和边界长度的部分。我们使用了一种基于逐步优化的分层分割算法。从乘性散斑噪声模型中导出了分步合并准则。将形状度量与合并准则相结合,以正确指导线段合并过程。该准则对SAR图像的分割效果良好。合成图像和实像结果说明了这一点。
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