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Fusion Segmentation Algorithm for SAR Images Based on HMT in Contourlet Domain and D-S Theory of Evidence

机译:基于Contourlet域HMT和D-S证据理论的SAR图像融合分割算法。

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Utilizing the Contourlet's advantages of multiscale, localization, directionality and anisotropy, a new SAR image segmentation algorithm based on hidden Markov tree (HMT) in Contourlet domain and dempster-shafer (D-S) theory of evidence is proposed in this paper. The algorithm extends the hidden Markov tree framework to Contourlet domain and fuses the clustering and persistence of Contourlet transform using HMT model and D-S theory, and then, we deduce the maximum a posterior (MAP) segmentation equation for the new fusion model. The algorithm is used to segment the real SAR images. Experimental results and analysis show that the proposed algorithm effectively reduces the influence of multiplicative speckle noise, improves the segmentation accuracy and provides a better visual quality for SAR images over the algorithms based on HMT-MRF in the wavelet domain, HMT and MRF in the Contourlet domain, respectively.
机译:利用Contourlet在多尺度,定位,方向性和各向异性等方面的优势,提出了一种基于Contourlet域隐马尔可夫树(HMT)和Dempster-shafer(D-S)证据理论的SAR图像分割新算法。该算法将隐马尔可夫树框架扩展到Contourlet域,并使用HMT模型和D-S理论融合了Contourlet变换的聚类和持久性,然后推导了新的最大MAP分割方程。该算法用于分割实际SAR图像。实验结果和分析表明,与基于小波域HMT-MRF,Contourlet HMT和MRF的算法相比,该算法有效地减少了斑点噪声的影响,提高了分割精度,为SAR图像提供了更好的视觉质量。域。

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