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Unsupervised multi-class segmentation of SAR images using triplet Markov fields models based on edge penalty

机译:基于边缘罚分的三重态马尔可夫场模型对SAR图像进行无监督的多类分割

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摘要

Non-Gaussian triplet Markov random fields (TMF) model is suitable for dealing with multi-class segmentation of nonstationary and non-Gaussian synthetic aperture radar (SAR) images. However, the segmentation of SAR images utilizing this model still fails to resolve the misclassifications due to the inaccuracy of edge location. In this paper, we propose a new unsupervised multi-class segmentation algorithm by fusing the traditional energy function of TMF model with the principle of edge penalty. Through the introduction of the penalty function based on local edge strength information, the new energy function could prevent segment from smoothing across boundaries. Then we optimize the objective function that stems from the new energy function to obtain an iterative multi-region merging Bayesian maximum posterior mode (MPM) segmentation equation for the new segmentation algorithm. The effectiveness of the proposed algorithm is demonstrated by application to simulated data and real SAR images.
机译:非高斯三重态马尔可夫随机场(TMF)模型适用于处理非平稳和非高斯合成孔径雷达(SAR)图像的多类分割。然而,由于边缘位置的不准确,利用该模型对SAR图像进行分割仍然无法解决分类错误的问题。在本文中,我们将传统的TMF模型能量函数与边缘罚分原理相融合,提出了一种新的无监督的多类分割算法。通过引入基于局部边缘强度信息的惩罚函数,新的能量函数可以防止段跨边界平滑。然后,我们对源自新能量函数的目标函数进行优化,以得到用于新分割算法的迭代多区域合并贝叶斯最大后验模式(MPM)分割方程。通过对仿真数据和真实SAR图像的应用证明了该算法的有效性。

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