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Fast sparse fractal image compression

机译:快速稀疏分形图像压缩

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摘要

As a structure-based image compression technology, fractal image compression (FIC) has been applied not only in image coding but also in many important image processing algorithms. However, two main bottlenecks restrained the develop and application of FIC for a long time. First, the encoding phase of FIC is time-consuming. Second, the quality of the reconstructed images for some images which have low structure-similarity is usually unacceptable. Based on the absolute value of Pearson’s correlation coefficient (APCC), we had proposed an accelerating method to significantly speed up the encoding of FIC. In this paper, we make use of the sparse searching strategy to greatly improve the quality of the reconstructed images in FIC. We call it the sparse fractal image compression (SFIC). Furthermore, we combine both the APCC-based accelerating method and the sparse searching strategy to propose the fast sparse fractal image compression (FSFIC), which can effectively improve the two main bottlenecks of FIC. The experimental results show that the proposed algorithm greatly improves both the efficiency and effectiveness of FIC.
机译:分形图像压缩(FIC)作为一种基于结构的图像压缩技术,不仅应用于图像编码,而且还应用于许多重要的图像处理算法中。但是,长期以来,两个主要瓶颈制约了FIC的开发和应用。首先,FIC的编码阶段很耗时。其次,对于一些结构相似度低的图像,重建图像的质量通常是不可接受的。根据皮尔逊相关系数(APCC)的绝对值,我们提出了一种加速方法,以显着加快FIC的编码。在本文中,我们利用稀疏搜索策略极大地提高了FIC中重建图像的质量。我们称其为稀疏分形图像压缩(SFIC)。此外,我们结合基于APCC的加速方法和稀疏搜索策略,提出了快速稀疏分形图像压缩(FSFIC),可以有效地改善FIC的两个主要瓶颈。实验结果表明,该算法大大提高了FIC的效率和有效性。

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