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基于动态轻型数据库和局部特征插值的单幅超分辨率重建方法

Single Image Super-Resolution via Dynamic Lightweight Database with Local-Feature Based Interpolation

  • 摘要: 单幅图像超分辨率致力于从一幅低分辨率图像生成对应的高分辨率图像,因其应用广泛而一直是研究热点。本文提出了一种完全基于输入图像本身的新方法。首先,提出了一种基于局部特征的插值方法,其中同时考虑了边缘像素特性和位置信息。然后,借助于对自相似性的深入研究,建立了由自身样本构成的、动态的轻型数据库,并利用从中学习到的自适应线性回归矩阵将低分辨率图像块直接映射到其高分辨率版本。此外,在逐步放大策略中的每一步,使用迭代优化方法来提高内容一致性。即使没有使用任何外部信息,与一些先进方法在标准图像库上的大量实验对比也证明了本文方案在视觉效果和客观评价标准方面的竞争力。

     

    Abstract: Single image super-resolution is devoted to generating a high-resolution image from a low-resolution one, which has been a research hotspot for its significant applications. A novel method that is totally based on the single input image itself is proposed in this paper. Firstly, a local-feature based interpolation method where both edge pixel property and location information are taken into consideration is presented to obtain a better initialization. Then, a dynamic lightweight database of self-examples is built with the aid of our in-depth study on self-similarity, from which adaptive linear regressions are learned to directly map the low-resolution patch into its high-resolution version. Furthermore, a gradually upscaling strategy accompanied by iterative optimization is employed to enhance the consistency at each step. Even without any external information, extensive experimental comparisons with state-of-the-art methods on standard benchmarks demonstrate the competitive performance of the proposed scheme in both visual effect and objective evaluation.

     

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