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Sea-surface image super-resolution based on sparse representation

机译:基于稀疏表示的海面图像超分辨率

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Learning-based super-resolution (SR) is a popular SR technique that uses application-specific priors to recover missing high-frequency components in low resolution (LR) images. In this paper, we propose a novel approach for obtaining high-resolution (HR) image with solely a single low-resolution input sea-surface image. It is based on sparse representation via dictionary learning. As the image patch can be well represented through a sparse linear combination of elements from the training over-complete dictionary, this paper proposes a two-step statistical approach integrating the global model and a local patch model. During the training process, we divide the corresponding training images into patches and take the schismatic hierarchical clustering algorithm to get the idiosyncratic patches aimed at the background of sea-surface, using the jointly training method generating two over-complete dictionaries for the LR and HR images. In the reconstructed process, we infer the HR patch for each LR patch by the sparse prior in the local model, and recover the HR image via the reconstruction constraint in the global model. For our particular applications of sea-surface image SR, the proposed method has a more effective performance than other SR algorithms.
机译:基于学习的超分辨率(SR)是一种流行的SR技术,它使用特定于应用程序的前沿在低分辨率(LR)图像中恢复缺失的高频分量。在本文中,我们提出了一种新的方法,用于获得高分辨率(HR)图像,仅具有单个低分辨率输入海表面图像。它是基于通过字典学习的稀疏表示。由于图像修补程序可以通过训练内结束的元素的稀疏线性组合提供良好的,本文提出了一种二阶统计方法,整合全局模型和本地补丁模型。在培训过程中,我们将相应的训练图像划分为补丁并采取划分的分层聚类算法,以获取旨在瞄准海面背景的特殊补丁,使用共同的训练方法为LR和HR生成两个完整的词典图片。在重建过程中,我们通过本地模型中的稀疏推断每个LR贴片的HR补丁,并通过全局模型中的重建约束恢复HR图像。对于我们对海面图像SR的特定应用,所提出的方法具有比其他SR算法更有效的性能。

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