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MuLoG: A Generic Variance-Stabilization Approach for Speckle Reduction in SAR Interferometry and SAR Polarimetry

机译:MuLoG:SAR干涉法和SAR极化法中减少斑点的通用方差稳定化方法

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Speckle reduction is a long-standing topic in SAR data processing. Continuous progress made in the field of image denoising fuels the development of methods dedicated to speckle in SAR images. Adaptation of a denoising technique to the specific statistical nature of speckle presents variable levels of difficulty. It is well known that the logarithm transform maps the intrinsically multiplicative speckle into an additive and stationary component, thereby paving the way to the application of general-purpose image denoising methods to SAR intensity images. Multi-channel SAR images such as obtained in interferometric (InSAR) or polarimetric (PolSAR) configurations are much more challenging. This paper describes MuLoG, a generic approach for mapping a multi-channel SAR image into real-valued images with an additive speckle component that has a variance approximately constant. With this approach, general-purpose image denoising algorithms can be readily applied to restore InSAR or PolSAR data. In particular, we show how recent denoising methods based on deep convolutional neural networks lead to state-of-the art results when embedded with MuLoG framework.
机译:减少斑点是SAR数据处理中长期存在的话题。图像去噪领域的不断进步推动了专用于SAR图像斑点的方法的发展。降噪技术适应散斑的特定统计性质会带来不同程度的难度。众所周知,对数变换将本质上乘性的斑点映射为加性和固定成分,从而为将通用图像去噪方法应用于SAR强度图像铺平了道路。诸如以干涉(InSAR)或偏振(PolSAR)配置获得的多通道SAR图像更具挑战性。本文介绍了MuLoG,这是一种通用方法,可将多通道SAR图像映射到具有附加散斑分量的实值图像,该散斑分量的方差近似恒定。通过这种方法,通用图像去噪算法可以轻松应用于恢复InSAR或PolSAR数据。特别是,我们展示了基于深度卷积神经网络的最新去噪方法在嵌入MuLoG框架时如何导致最新的结果。

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