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Bayesian estimation of Two-Sided Gamma random vectors in speckle noise

机译:泪水噪声下双面伽马随机载体的贝叶斯估计

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In this paper, we present a novel speckle removal algorithm within the framework of Bayesian estimation and wavelet analysis. The proposed method to apply a logarithmic transformation to convert speckel, multiplicative, noise model into an additive noise model. The subband decomposition of logarithmically transformed image are the best described by a family of heavy-tailed densities such as Two-Sided Gamma. Then, we propose a maximum a posterior (MAP) estimator assuming Two-Sided Gamma random vectors for each parent-child wavelet coefficients of noise-free log-transformed data and log-normal density for speckle noise. The experimental results show that the proposed method yields good denoising results.
机译:在本文中,我们在贝叶斯估计和小波分析框架内提出了一种新的散斑清除算法。应用对数变换的提出方法将斑点,乘法,噪声模型转换为加成噪声模型。对数转换图像的子带分解是由诸如双面伽马等重型密度的家族的最佳描述。然后,我们提出了最大的后(MAP)估计器,假设针对每个父子小波系数的双面伽马随机向量的无辐射对数数据和用于散斑噪声的日志正常密度的双面伽马随机载体。实验结果表明,该方法产生了良好的去噪结果。

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