单图像超分辨率使用离散余弦变换驱动的回归树

Y. Badran, G. Salama, T. Mahmoud, Aiman M. Mousa, Adel E. Moussa
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摘要

单幅图像超分辨率恢复是解决从一幅低分辨率图像获得高分辨率图像的不适定问题的过程。由于在许多应用中对高分辨率图像的需求增加,该过程被认为是研究的活跃点。本文提出了一种基于取代传统离散余弦变换基的单幅图像超分辨方法。这些基被学习滤波器取代,可以将低分辨率图像从空间域转移到离散余弦域中的高分辨率系数。因此,这些估计滤波器可以然后通过标准的反离散余弦变换过程应用于产生高分辨率的图像在空间域。为了学习这些转换过滤器,在决策树算法中引入了两个修改,以使树的性能适应超分辨率任务。这样做是为了使节点分裂决策依赖于最小化回归误差的外部特征。实验结果表明,该算法的性能优于传统的单图像超分辨率插值方法。
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Single Image Super Resolution Using Discrete Cosine Transform Driven Regression Tree
Single image super resolution restoration is a process for solving the ill-posed problem of achieving a high resolution image from one low resolution image. This process is considered an active point of research due to the increased demands for high resolution imagery in many applications. This paper presents a proposed methodology for single image super resolution based on replacing the traditional discrete cosine transform basis. These bases are replaced by learned filters that can transfer the low resolution image from the spatial domain to high resolution coefficients in the discrete cosine domain. Accordingly, these estimated filters can then be applied to produce a high resolution image in the spatial domain through the standard inverse discrete cosine transform process. To learn these transformation filters two modifications in the decision tree algorithm are introduced to adapt the tree performance for the super resolution task. This is performed such that the node splitting decision depends on external features that minimize the regression errors. Experimental results demonstrate that the performance of the proposed algorithm is superior to that of the traditional interpolation single image super resolution method.
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