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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Joint Analysis and Weighted Synthesis Sparsity Priors for Simultaneous Denoising and Destriping Optical Remote Sensing Images
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Joint Analysis and Weighted Synthesis Sparsity Priors for Simultaneous Denoising and Destriping Optical Remote Sensing Images

机译:联合分析和加权合成稀疏性引导,用于同时去噪和消除光学遥感图像

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摘要

Stripe and random noise are two different degradation phenomena that commonly coexist in optical remote sensing images, and they are often modeled as inverse problems. In model-based inverse problems, analysis and synthesis sparse representations (SSRs) are used as regularization terms to obtain approximate solutions due to their respective merits, i.e., the nonzero coefficients in SSR are usually used to describe an image, while the indexes of zeros in analysis sparse representation (ASR) are used to characterize the stripe. Inspired by these merits, we propose a unified variational framework, called a joint analysis and weighted synthesis (JAWS) sparsity model, to simultaneously separate the clean image and the stripe from a single optical remote sensing image. To solve the JAWS sparsity model efficiently, an alternating minimization optimization strategy is first employed to separate it into two subproblems that are used for different tasks. One called as weighted SSR (WSSR) is the main for optical remote sensing image denoising, which can be effectively solved by employing the weighted singular value thresholding operator, while the other called as ASR is the main approach for optical remote sensing image destriping, which is optimized by adopting the split Bregman iteration. By minimizing the two subproblems alternatively, the proposed JAWS sparsity model is efficiently solved. Finally, both quantitative and qualitative results of experiments on synthetic and real-world optical remote sensing images validate that the proposed approach is effective and even better than the state of the arts.
机译:条纹和随机噪声是两种不同的劣化现象,即在光学遥感图像中共存,它们通常被建模为逆问题。在基于模型的逆问题中,分析和合成稀疏表示(SSR)用作正则化术语,以获得由于它们各自的优点而获得近似解,即SSR中的非零系数通常用于描述图像,而零的索引索引在分析中,稀疏表示(ASR)用于表征条带。灵感来自这些优点,我们提出了一个统一的变分框架,称为联合分析和加权合成(钳口)稀疏模型,同时将清洁图像和条纹分离出单个光学遥感图像。为了有效地解决jaws稀疏性模型,首先使用交替的最小化优化策略来将其分成两个用于不同任务的子问题。一种称为加权SSR(WSSR)的主要用于光学遥感图像去噪,这可以通过采用加权奇异值阈值操作员有效地解决,而另一个称为ASR是光学遥感图像消除的主要方法通过采用拆分Bregman迭代来优化。通过可选地最小化两个子问题,所提出的钳口稀疏模型是有效解决的。最后,综合性和现实世界光学遥感图像实验的定量和定性结果验证了所提出的方法是有效甚至更好地优于艺术状态。

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