Pruned Simple Model Sets for Fast Exact Recovery of Image

Basarab Matei, Younès Bennani
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Abstract

Reconstruction of image can be defined as the general problem of estimating a two-dimensional object from a partial version of this object (a limited set of "projections"). In this paper, we propose new approach for image reconstruction based onsimple quasicrystals and L1 minimisation. We discuss the exact reconstruction of an image supposed to have small spectra. We show that simple model sets may be used as sampling set for exact recovery. Moreover, by eliminating a finite number of points from the simple model sets we still have exact recovery. This last aspect is very important for practical applications, e.g. lossy compression. We run our approch on benchmark images data sets and show that the quasicrystal sampling is more performant than the random uniform in terms of time execution when the dimension of the input image increases.
修剪简单的模型集,快速准确地恢复图像
图像重建可以定义为从该对象的部分版本(有限的“投影”集)估计二维对象的一般问题。在本文中,我们提出了基于简单准晶体和L1最小化的图像重建新方法。我们讨论了假设具有小光谱的图像的精确重建。我们证明了简单的模型集可以作为精确恢复的采样集。此外,通过从简单模型集中消除有限数量的点,我们仍然有精确的恢复。最后一个方面对于实际应用非常重要,例如有损压缩。我们在基准图像数据集上运行了我们的方法,并表明当输入图像的维数增加时,准晶体采样在执行时间方面比随机均匀采样性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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