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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Bayesian Wavelet Shrinkage With Heterogeneity-Adaptive Threshold for SAR Image Despeckling Based on Generalized Gamma Distribution
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Bayesian Wavelet Shrinkage With Heterogeneity-Adaptive Threshold for SAR Image Despeckling Based on Generalized Gamma Distribution

机译:基于广义伽玛分布的具有异质性自适应阈值的贝叶斯小波收缩SAR图像去斑

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摘要

Synthetic aperture radar (SAR) images are inherently affected by multiplicative speckle noise, which will degrade the human interpretation and computer-aided scene analysis. In this paper, we propose a novel Bayesian multiscale method for SAR image despeckling in the non-homomorphic framework. To address the multiplicative nature, we first make the speckle contribution additive by a linear decomposition. Then, in the stationary wavelet transform domain, a two-sided generalized Gamma distribution (G$Gamma$D) is introduced as a prior to capture the heavy-tailed nature of wavelet coefficients of the noise-free reflectivity. By exploiting this prior together with a Gaussian likelihood, an analytical wavelet shrinkage function is derived based on maximum a posteriori criteria, which further adopts heterogeneity-adaptive thresholding technique to achieve better estimates of noise-free wavelet coefficients. Moreover, a pilot-signal-assisted strategy is proposed to estimate the parameters of two-sided G $Gamma$D with the estimator based on second-kind cumulants. Finally, experimental results, carried out on the synthetic and actual SAR images, are given to demonstrate the validity of the proposed despeckling method.
机译:合成孔径雷达(SAR)图像固有地会受到斑点噪声的影响,这会降低人类的解释能力和计算机辅助的场景分析能力。在本文中,我们提出了一种新的贝叶斯多尺度方法用于非同态框架下的SAR图像去斑。为了解决乘法性质,我们首先通过线性分解使斑点贡献加法。然后,在平稳小波变换域中,引入了双面广义Gamma分布(G $ Gamma $ D)作为先验,以捕获无噪声反射率的小波系数的重尾特性。通过与高斯似然一起利用此先验,基于最大后验准则导出分析小波收缩函数,其进一步采用异质性自适应阈值技术来实现对无噪声小波系数的更好估计。此外,提出了一种飞行员信号辅助策略,利用基于第二种累积量的估计器估计两侧G $ Gamma $ D的参数。最后,通过对合成SAR图像和实际SAR图像进行实验,证明了该方法的有效性。

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