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Unsupervised SAR Image Segmentation Based on Conditional Triplet Markov Fields

机译:基于条件三重态马尔可夫场的无监督SAR图像分割

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Conditional random field (CRF) has been widely used in optical image and remote sensing image segmentation because of the advantage of directly modeling the posterior distribution and capturing arbitrary dependencies among observations. However, for nonstationary SAR images, applications of CRF often fail because of their nonstationary property. The triplet Markov field (TMF) model is well appropriate for nonstationary SAR image processing, owing to the introduction of an auxiliary field which reflects the nonstationarity. Therefore, we introduce an auxiliary field to describe the nonstationarity of the posterior distribution and propose an unsupervised SAR image segmentation algorithm based on a conditional TMF (CTMF) framework which combines the advantages of both CRF and TMF. The proposed CTMF framework explicitly takes into account the nonstationary property of SAR images, directly models the posterior distribution, and considers the interactions among the observed data. Experimental results on real SAR images validate the effectiveness of the algorithm proposed in this letter.
机译:由于条件随机场(CRF)可以直接建模后验分布并捕获观测值之间的任意依存关系,因此已广泛用于光学图像和遥感图像分割中。但是,对于非平稳SAR图像,CRF的应用通常因其非平稳特性而失败。由于引入了反映非平稳性的辅助场,因此三重态马尔可夫场(TMF)模型非常适合非平稳SAR图像处理。因此,我们引入一个辅助领域来描述后验分布的非平稳性,并提出一种基于条件TMF(CTMF)框架的无监督SAR图像分割算法,该算法结合了CRF和TMF的优点。提出的CTMF框架明确考虑了SAR图像的非平稳特性,直接对后验分布进行建模,并考虑了观测数据之间的相互作用。在真实SAR图像上的实验结果验证了本文提出的算法的有效性。

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