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Anchored Projection Based Capped l_(2,1)-Norra Regression for Super-Resolution

机译:基于锚定投影的上限l_(2,1)-Norra回归用于超分辨率

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Single image super resolution task is aimed to recover a high resolution image with pleasing visual quality from a single low resolution image. It is a highly under-constrained problem because of the ambiguous mapping between low/high resolution patch domain. In order to alleviate the ambiguity problem, we split input patches into numerous subclasses and collect exemplars according to the sparse dictionary atoms. However, we observe that there still exist some similar regressors do not share the same regression in the same subclass, which may increase the super-resolving error for training data in each cluster. In this paper, we propose a robust and effective method based capped l_(2,1)-norm regression to address this problem. The proposed method can automatically exclude outliers in each cluster during the training phase and give the potential to learn local prior information accurately. Numerous experimental results demonstrate that the proposed algorithm achieves better reconstruction performance against other state-of-the-art methods.
机译:单图像超分辨率任务旨在从单个低分辨率图像中恢复具有令人满意的视觉质量的高分辨率图像。由于低/高分辨率补丁域之间的映射不明确,因此这是一个高度受限的问题。为了减轻歧义问题,我们将输入补丁分成多个子类,并根据稀疏字典原子收集示例。但是,我们观察到,仍然存在一些相似的回归变量在同一子类中没有共享相同的回归变量,这可能会增加每个聚类中训练数据的超分辨误差。在本文中,我们提出了一种基于上限l_(2,1)-范数回归的健壮有效的方法来解决此问题。所提出的方法可以在训练阶段自动排除每个聚类中的离群值,并有可能准确地学习本地先验信息。许多实验结果表明,与其他最新方法相比,该算法具有更好的重建性能。

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