SAR图像的超像素是通过最小化统计模型和基于平均强度的能量比

Jilan Feng, Y. Pi, Jianyu Yang
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引用次数: 2

摘要

基于超像素的SAR图像分类方法可以有效地利用SAR图像中的上下文信息,从而获得鲁棒性强的分类结果。超像素生成的准确性对后续分类阶段的性能影响很大。本文根据SAR图像的特点,提出了一种基于能量最小化的SAR图像超像元生成方法。能量函数由两部分组成。根据SAR图像的统计特性定义数据项,利用平均强度比定义正则化项。然后利用基于图割的能量最小化方法进行能量最小化,实现超像素生成。在合成和真实SAR图像数据上的实验结果验证了该方法的良好性能。与几种超像素方法相比,该方法能更有效地处理散斑噪声,对SAR图像具有更好的适用性。
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SAR image superpixels by minimizing a statistical model and ratio of mean intensity based energy
Superpixel based SAR image classification methods can take advantage of the contextual information in SAR images effectively, leading to robust classification results. The accuracy of superpixel generation has great impact on the performance of the following classification stage. In this paper, based on the property of SAR images, an energy minimizing based superpixel generation approach is proposed for SAR images. The energy function is composed of two parts. The data term is defined according to the statistical characteristic of SAR images, and the regularization term is defined by using the ratio of mean intensity. Then the superpixel generation is performed by energy minimizing with graph cut based energy minimization method. Experimental results on both synthetic and real SAR image data verify the good performance of the proposed approach. Compared with several superpixel approaches, the proposed approach can deal with speckle noise more effectively, resulting in better applicability for SAR images.
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