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首页> 外文期刊>Information Sciences: An International Journal >Noise-robust image fusion with low-rank sparse decomposition guided by external patch prior
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Noise-robust image fusion with low-rank sparse decomposition guided by external patch prior

机译:噪声 - 稳健的图像融合,并以外部补丁引导的低级别稀疏分解

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摘要

It is challenging to simultaneously achieve noise suppression and fine detail preservation in noisy image fusion. To address this challenge, we propose a novel strategy for noisy image fusion. Assuming that an image can be modeled as a superposition of low-rank and sparse (LR-and-S) components, we develop a novel discriminative dictionary learning algorithm to construct two dictionaries so as to decompose the input image into LR-and-S components. Specifically, to make dictionary possess discriminative power, we enforce spatial morphology constraint on each dictionary. Furthermore, we develop within-class consistency constraint by exploiting the similarity of low-rank components and impose it on the coding coefficients to further improve the discriminative power of the learned dictionary. In image decomposition, external patch prior and internal self-similarity prior of an image are exploited to build image decomposition model, based on which the latent subspace for fusion and recovery is estimated by minimizing rank-regularization of the subspace learned via clustering of similar patches. To construct different components of fused result, we use l(1) -norm maximization rule to fuse the decomposed components. Finally, the fused image is obtained by adding the fused components together. Experiments demonstrate that our method outperforms several state-of-the-art methods in terms of both objective quality assessment and subjective visual perception. (C) 2020 Elsevier Inc. All rights reserved.
机译:同时实现噪声图像融合中的噪声抑制和细节保存是挑战性的。为了解决这一挑战,我们提出了一种新颖的嘈杂图像融合策略。假设图像可以被建模为低级别和稀疏(LR-AND-S)组件的叠加,我们开发一种新颖的鉴别性词典学习算法来构造两个词典,以便将输入图像分解为LR-和S。成分。具体而言,为了制作字典具有歧视力,我们在每个字典上执行空间形态约束。此外,我们通过利用低秩分量的相似性来开发课堂一致性约束,并将其施加到编码系数上,以进一步提高学习词典的辨别力。在图像分解中,将利用图像之前的外部补丁和内部自相似性以构建图像分解模型,通过最小化通过相似补丁的群集学习的子空间的秩正则化估算融合和恢复的潜伏子空间来构建图像分解模型。要构建融合结果的不同组件,我们使用L(1)-NORM最大化规则来熔化分解组件。最后,通过将熔融组分添加在一起来获得熔融图像。实验表明,我们的方法在客观质量评估和主观视觉感知方面优于几种最先进的方法。 (c)2020 Elsevier Inc.保留所有权利。

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